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An overall velocity distribution and optimization method for crude oil fouling mitigation in heat exchanger networks Yufei Wang, Ruonan Liu, Xiao Feng, and Shihui Zhan Ind. Eng. Chem. Res., Just Accepted Manuscript • DOI: 10.1021/acs.iecr.7b01569 • Publication Date (Web): 12 Sep 2017 Downloaded from http://pubs.acs.org on September 17, 2017
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Industrial & Engineering Chemistry Research
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An overall velocity distribution and optimization
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method for crude oil fouling mitigation in heat
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exchanger networks
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Yufei Wang,*,† Ruonan Liu,† Xiao Feng,‡ and Shihui Zhan†
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†
6
Beijing 102249, China
7
‡
8
China
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ABSTRACT: Fouling problem can seriously affect heat exchanger network (HEN) efficiency
10
and its normal operation. From fouling threshold model, a higher velocity can effectively
11
mitigate fouling. There are two ways to change velocity in a heat exchanger. One is to adjust
12
flow rate distribution in parallel structure of heat exchangers, the other is to modify detailed heat
13
exchanger structure. However, there is no such research to consider both ways simultaneously to
14
mitigate fouling. Fluid velocity is also an important factor that related to heat transfer and
15
pressure drop. But this point is also ignored in most of work. In this paper, a new method is
16
proposed to promote the HEN performance with consideration of fouling, pressure drop and heat
17
transfer simultaneously by an overall optimization of velocity. The problem is analyzed in the
18
entire operation time horizon, and it is divided into several time intervals to describe the dynamic
State Key Laboratory of Heavy Oil Processing, China University of Petroleum (Beijing),
School of Chemical Engineering & Technology, Xi’an Jiaotong University, Xi’an 710049,
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nature of the fouling problem. All variables are established in each time interval, and adjacent
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intervals are linked by the fouling resistance. Simulated Annealing (SA) is used in optimization
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method. A case study is illustrated to show the capacity of method. From results, it can be noted
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that the optimal solution reduces the utility consumption and total annual cost significantly.
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INTRODUCTION
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Heat integration technologies in HEN have been studied for several decades to satisfy energy
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saving in process industries. One commonly used method is Pinch Analysis, which combines
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process logistics via HEN to achieve heat recovery, and another method for HEN synthesis is
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mathematical programming1.
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Fouling in heat exchangers will severely affect the performance of a HEN, resulting in a
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reduction in energy recovery and operation stability. Since the concept of fouling was proposed
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for fouling mitigation by Ebert and Panchal2, fouling mitigation has been a research hotspot,
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especially for crude oil preheat train. Regular cleaning of fouled heat exchange units is a
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responsive mitigation strategy to minimize the losses due to fouling. Ishiyama et al.3 firstly
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proposed a new methodology to identify optimum cleaning cycles and optimal cleaning time
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between plant shutdowns by idealizing the foulant deposit as two layers, fresh and aged. In their
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work, they considered two available cleaning methods, chemical clean and mechanical clean,
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and introduced economic competition between the two methods. Pogiatzis et al.4, 5 successively
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established a nonlinear programming (NLP)-based approach and a mixed-integer nonlinear
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programming (MINLP) model to optimize the schedule of cleaning actions of a heat exchanger
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subject to fouling and aging, considering the combinations of chemical clean and mechanical
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clean. Smaïli et al.6, 7 extended the scheduling problem for a large continuously operating HEN,
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and a mixed-integer nonlinear programming (MINLP) model was introduced to optimize the
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cleaning schedule with the objective of minimizing the total operating cost. Aforementioned
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papers are focused on the cleaning schedule problems, but this method cannot mitigate fouling,
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and the interaction between fouling and network characteristics is ignored. More recently,
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optimization of cleaning cycle is further combined with more features of crude oil preheat train.
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Rodriguez and Smith8 put forward a new proactive method exploiting the effects of wall
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temperature on fouling to depress the occurrence of fouling deposition. The method combines
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the optimization of wall temperature with the optimal management of cleaning actions applied to
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an existing HEN, of which the results indicated higher energy savings, lower operational costs
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and fewer disturbances to the background process, compared with optimizing cleaning schemes
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only. The mean idea for optimization of wall temperature is to make more crisscross match to
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reduce wall temperature, although it reduces fouling, it also reduces heat recovery when all heat
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exchangers are clean. Ishiyama et al. combined the desalter inlet temperature control9 with the
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cleaning schedule optimization to aid fouling management by using hot stream bypassing. They
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considered hydraulic behavior10 in their continuous paper, where they developed a highly
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flexible preheat train simulator in MATLABTM/ExcelTM to accommodate variable throughput
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in scheduling the cleaning operations. Biyanto et al.11 developed an improved optimization
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problem for the cleaning schedule of heat exchangers in a crude preheat train considering the
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hydraulic impact of fouling through the additional pressure drops and proposed recent stochastic
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optimization methods to solve the problem.
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The utilization of heat transfer enhancement devices in the HEN synthesis is another effective
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strategy for fouling mitigation. Wang and Smith12 proposed a method based on simulated
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annealing to solve HEN retrofit problems on the basis of heat-transfer enhancement by
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considering fouling. The method applied to HEN retrofit under fouling was optimized with
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different kinds of crude oils. Pan et al.13 developed a new mixed-integer linear programming
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(MILP)-based iteration method for HEN retrofit considering fouling effects by implementing
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tube-side intensification. They extended the work for more practical problems in a retrofitted
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HEN within the operating period, addressing fouling effects and pressure drop constraints in
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their continuous work14. In addition, some researchers have found that sol-gel coating can be
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used for fouling mitigation in heat exchangers, which focus on the material and the interaction
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between crude oil fouling and network characteristics is not considered15, 16.
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Several researchers found that optimizing flow velocity can be applied to fouling mitigation.
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Assis et al.17 developed a constrained nonlinear programming formulation for fouling
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management considering the hydraulic behavior of a HEN. In their work, velocity is
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redistributed through optimizing split ratio of parallel structure in HEN design. In another work,
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the work is further extended to consider dynamic nature of fouling18. In the work of Ishiyama et
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al.19, flow rates optimization is incorporated with cleaning of parallel heat exchangers. The
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thermo-hydraulic effects of fouling is discussed in their following work20. Wang et al.21 proposed
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a velocity optimization method to mitigate fouling of heat exchangers over the entire operating
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cycle through optimizing the velocity distribution with the consideration of heat transfer and
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pressure drop simultaneously. In this work, velocity is no longer changed through flow rate
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redistribution in parallel structure but by changing detailed design of heat exchangers. By doing
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this, velocity in heat exchangers in series structure can be also optimized. Tian et al.22 further
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extended fouling mitigation approach by optimizing velocity and cleaning schedule
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simultaneously.
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Based on the literature review, velocity is an important factor that can mitigate fouling. It can
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be changed through both adjusting flow rate ratio in parallel structure and modifying detailed
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design of heat exchangers. Adjusting flow rate ratio in parallel structure is a very easy and
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economical way to be operated, but with an increased flow rate in one branch, flow rate in the
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other branch will be reduced, leading to a lower heat transfer coefficient and anti-fouling
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capacity. Additionally, it can be only applied in parallel structure. For modifying detailed design
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of heat exchangers, it can be applied in both series and parallel structure, and the velocity change
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in one heat exchanger will not affect the velocity in other heat exchangers. But this method leads
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to higher pressure drop, and in retrofit, it is expensive and sometime not easy to be implemented.
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The focus of this paper is to propose a method to promote refinery HEN performance by
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optimizing velocity through both ways aforementioned with comprehensive considerations of
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fouling, heat transfer and pressure drop. Split ratio adjustment is considered for both hot and cold
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stream. Fouling, heat transfer and pressure drop are all correlated to velocity. To describe
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dynamic nature of fouling, the investigated time horizon is divided into several intervals and all
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relevant parameters are recalculated at each interval using the connections with fouling
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resistance. The objective function is to minimize total annual cost (TAC) including hot utility
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cost, pumping cost and detailed structure modification cost.
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MODEL FORMULATIONS
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Fouling Rate Model. The new approach proposed in this paper considers the effects of fouling
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in tube-side of heat exchangers on HENs’ performance. Polley fouling threshold model is used to
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describe the impact of the variation of the operating variables on fouling rate, which is presented
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in eq 123. The fouling rate of heat exchanger can not be less than 0.
108
-E dRf = max α Re−0.8 Pr -0.33exp - γ Re0.8 , 0 RT dt g w
(1)
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where Rf is fouling resistance, Re and Pr are Reynolds number and Prandtl number, α and γ are
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model parameters, E is activation energy, R is gas constant, and Tw represents wall temperature
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of heat exchanger.
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As deposition layer accumulates with time, fouling problem is a dynamic optimization
113
problem. To handle the dynamic nature of fouling, the investigated time is divided into several
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time intervals, as shown in eq 2. Adjacent intervals are linked by the fouling resistance, which
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can be calculated by eq 3. τ=
116
t m
(2)
Rfn+1 = Rfn + (dRf / dt)n ⋅τ
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(3)
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where τ is time interval width, t is investigated operation period, m is number of time interval, n
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is the index for time interval.
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Fouling rate in each time interval is assumed as constant, all variables are recalculated in each
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time interval. More details about the relationship between fouling resistance and other variables
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can be found in the work presented by Zhan et al21.
123 124
Heat Exchanger Equations. The convective heat transfer coefficient (HTC) for tube side is changing with time during the operational period, which is calculated by eq 4-618, 24.
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The shell side convective heat transfer coefficient is assumed constant along the HEN, because
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streams prone to fouling normally flow through tube side. Eq 7 is given to calculate the overall
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heat transfer coefficient K.
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hT = hT ,n=0 (vn / vn=0 )0.8
(4)
0.8
0.4
129
λ d v ρ µ Cp hT ,n=0 = 0.023 n=0 n=0 d µ λ
130
v n = v n = 0 d / ( d − 2δ ex , n −1
2
(5)
(6)
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1 1 K = + + RfT + RfS hS hT
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Tw = Tcbulk +
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hS × (Thbulk − Tcbulk ) hS + hT
(7)
(8)
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where hT and hS are convective heat transfer coefficient for tube and shell side of heat exchanger,
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d is the inner diameter (ID) of tubes, λ is fluid heat conductivity, v is fluid velocity of tube side, ρ
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is fluid density, µ is fluid viscosity, δ is the thickness of foulant layer, which can be calculated on
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the basis of fouling rate, RfS is the shell side fouling resistance, subscript n=0 means the starting
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point of operation time period, Tcbulk and Thbulk are bulk temperature of cold and hot streams,
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subscripts S and T represent shell side and tube side.
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For parallel heat exchangers, the initial velocity vn=0 of tube side is co-determined by the
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detailed design modification of the heat exchanger and the mass flow rate in the optimization, as
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shown in eq 9. The shell side convective heat transfer coefficient for parallel heat exchanger is
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related to mass flow rate, presented in eq 10.
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vn=0 = vmodify (MT ,optimized / MT ,base )
(9)
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hS = hS ,base (M S ,optimized / M S ,base )0.6
(10)
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where vmodify is the velocity of heat exchanger considering only the detailed design modification,
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M is the mass flow rate, subscripts base and optimized represent base case before optimization
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and optimized case.
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P-NTU method is used to calculate heat transfer of heat exchanger in this work, which is
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always directed to one stream, without depending on the minimum heat capacity of stream. The
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heat exchangers considered in this paper present counter flow with single shell pass and two tube
151
passes, the corresponding P-NTU expression is shown as eq 11. And the related stream by the
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method is cold stream in this work.
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1 + exp − NTU n (1 + Rn 2 )1/ 2 2 1/ 2 P = 2 1 + Rn + (1 + Rn ) × 1 − exp − NTU n (1 + Rn2 )1/ 2
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(11)
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where P is the thermal effectiveness, R is heat capacity ratio of cold stream and hot stream and
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NTU is heat transfer unit, which are described in eq 12-14.
Tcout − Tcin Thin − Tcin
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P=
157
Rn =
158
NTU n =
(12)
M c , n Cpc , n
(13)
M h , n Cph , n
Kn A M c ,nCpc, n
(14)
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where Th and Tc are respectively temperature of hot streams and cold streams, the superscript in
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and out are inlet and outlet, A is heat transfer area of a heat exchanger, Cp is the specific heat
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capacity of a stream, subscripts c and h are cold and hot streams.
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Pressure Drop. As the deposition of fouling in tube-side, the actual fluid flowing area
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constantly decreases, which promotes the fluid velocity and results in higher pressure drop. The
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total pressure drop for the tube side ∆Pf of a heat exchanger consisting of three parts can be
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calculated by eq 15.
∆Pfex,n=0 = ∆Psex,n=0 + ∆Plex,n=0 + ∆Pnex,n=0
166 167
where ∆Psex,n ,
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resistance. The three resistances can be calculated by eqs 16-1925.
(15)
∆Plex,n and ∆Pnex,n represent straight pipe resistance, local resistance, and nozzle
L ρ vex,n=0 ∆Psex,n=0 = ξex,n=0 N d 2 2
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ξex ,n=0 = 0.01227 + ∆Plex,n =0 = ζ
0.7543 0.38 Reex,n=0
ρ vex2 ,n=0 2
N
(16)
(17)
(18)
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∆Pnex,n=0 = 1.5 ×
172
ρvex2 ,n=0
(19)
2
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where ξ is friction coefficient, which can be calculated by eq 17 proposed by Gu26. Subscript ex
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means heat exchanger, L is the length of tubes, N is the number of tube passes, and ζ in eq 18 is
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the local resistance coefficient, it values 3~4 for multiple tube passes, while it equals to 2 for
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single tube pass.
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Once the initial pressure drop is known, change of pressure drop under fouling over the investigated time can be obtained from the correlation shown in eq 20.
∆Pfex,n
179
∆Pf ex,n=0
δ = 1 − ex,n d
−5
(20)
180
In this paper, pipeline pressure drop is not considered, thus, the total pressure drop ∆PT for a
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HEN is the sum of pressure drop of heat exchangers in series and pressure drop of parallel heat
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exchangers, shown in eq 21.
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∆PT = ∑ ∆Pfex,series + ∑ ∆PT , parallel ∆PT , parallel = max {∆PT ,branch ,1 , ∆PT ,branch ,2 ,L , ∆PT ,branch ,i }
(21) (22)
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where ∆Pfex,series is the pressure drop of a heat exchanger in series, ∆PT,parallel represents the
186
pressure drop of parallel heat exchangers, which is depended on which branch gets the maximal
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pressure drop, as shown in eq 22, where ∆PT,branch,i is the accumulation of pressure drop for all
188
heat exchanger on branch i. For branches with lower pressure drops, throttle valves will be
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installed in these branches to make pressure drops of all branches are equal.
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Optimization Constraints. The main optimization constraints are composed of bounds for
191
velocity in tube side of a heat exchanger, bounds for mass flow rate of each branch, mass and
192
energy balances, heat exchanger equations and fouling rate model equations. To keep heat
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exchangers working away from vibration and abrasion problems, fluid velocity must be limited
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to the lower and upper bounds, which is represented by eq 23. Generally, the maximum flow
195
velocity in a tube and shell heat exchanger can reach 3 m/s, while the minimum value cannot be
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less than 0.5 m/s, so the limitations for velocity variations are set to be 0.5~3 m/s. The
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constraints for mass flow rate of each branch is shown in eq 24.
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vLB ≤ v ≤ vUB
199
MLB ≤ Mbranch ≤ MUB
200
(23) (24)
where the subscripts UB and LB represent the upper and lower bound.
201
The constraints for inlet and outlet temperatures of cold and hot streams of every heat
202
exchanger are given by eq 25-28. The outlet temperature of cold streams in hot utility heat
203
exchanger must be equal to target temperature of cold streams, and the outlet temperature of hot
204
streams in cold utility heat exchanger must be equal to target temperature of hot streams, as
205
shown in eq 29-30.
206
Tcout ≤ Thin ≤ Thsupply
(25)
207
Thtarget ≤ Thout ≤ Thin
(26)
208
Tcsupply ≤ Tcin ≤ Thout
(27)
209
Tcin ≤ Tcout ≤ Tctarget
(28)
210
Tcexout,hu = Tctarget
(29)
211
Thexout,cu = Thtarget
(30)
212
where subscripts supply and target represent the supply temperature and target temperature of
213
the streams, subscripts ex,hu and ex,cu are hot utility and cold utility heat exchangers.
214 215 216
Eq 31-34 show the mass balances and energy balances for splitters and mixers.
∑M = ∑M ∑M = ∑M in SP
in MX
out SP
(31)
out MX
(32)
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∑(MCpT )
in SP
217
∑(MCpT )
in MX
218 219
= ∑(MCpT )out SP
= ∑(MCpT )out MX
(33) (34)
where subscripts SP represents the splitter and MX represents the mixer.
220
Objective Function. The objective function in this work is to minimize the total annual cost,
221
which is the sum of energy cost, power cost (electricity charges for pumps), equipment capital
222
cost and detailed structure modification cost for heat exchangers, as shown in eq 35.
obj = CQ + Cpower + Cpump + Cex,modify
223
(35)
224
where CQ, Cpower, Cpump, and Cmodify are annual cost for hot and cold utility, power, pump
225
investment and detailed structure modification.
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Eq 36-37 are the calculations of hot utility Qhu and cold utility Qcu respectively, the price of utility CQ can be calculated by eq 38. Qhu =
228
∑ M Cp × (Tc c
ex , hu
Qcu =
229
∑ M
ex , cu
h
− Tcexin , hu )
(36)
Cph × (Thexout, cu − Thexin, cu )
(37)
c
out ex , hu
CQ = ∑[ hu × Qhu + cu × Qcu ]
230
(38)
t
231
where subscripts ex,hu and ex,cu represent hot and cold utility heat exchangers located at the end
232
of cold and hot streams, hu and cu represent the unit price of hot utility and cold utility.
233 234
Power cost is related to volume flow rate of fluid and pressure drop, which can be calculated by eq 3927. V × ∆PT C power = ∑ pc × η t
235
(39)
236
where pc is the unit electricity cost, η represents the pump efficiency, V is volumetric flow rate
237
for a stream.
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Pump investment meets exponential function of the flow rate and pressure drop, annualized
239
pump capital cost Cpump is calculated by eq 4027. Heat exchanger annualized capital cost Cex is
240
related to its heat exchange area and device lifetime, which can be calculated by eq 41. Eq 42 is
241
used to calculate detailed structure modification cost Cex,modify for optimized cases.
242
C pump =
2.365 + 0.151 × (V × ∆PT , n = m ) 0.86 Yrpump
Cex =
243
a + bA β Yrex
Cex,modify = ∑Cex ⋅θ
244
(40)
(41)
(42)
ex
245
where Yrpump is pump lifetime, subscript n=m indicates the last time interval of the operational
246
time horizon, Yrex is lifetime of heat exchanger, θ is structure modification cost coefficient, and
247
a, b and c are model parameters.
248
OPTIMIZATION ALGORITHM
249
The proposed method is to minimize total annual cost by overall velocity distribution
250
optimization to simultaneously correlate fouling, heat transfer and pressure drop of heat
251
exchangers. Accounting for the highly nonlinear property of fouling problems, simulated
252
annealing (SA) algorithm is used to solve the optimization problem in this paper. The proposed
253
method can be used for both retrofit and design problems.
254
Figure 1 presents the flowchart for HEN optimization of the proposed method. The
255
optimization variables in this method are velocity of heat exchangers and the split ratio of each
256
splitter for both cold and hot streams. The former refers to changing velocity through detailed
257
design modification of heat exchangers. Obviously, the velocities for heat exchangers in series
258
can be only changed by detailed design modification, while both split ratios optimization and
259
detailed design modification are considered for parallel heat exchangers. These two control
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variables jointly determine the initial velocity distribution, which can be seen from Figure 1. The
261
objective function is to minimize annual total cost with trade-off between fouling, heat transfer
262
and pressure drop. Therefore, the optimal velocity distribution can be eventually obtained for
263
each heat exchanger by simultaneously adjusting fluid velocity in heat exchanger and split ratio
264
in splitters when objective function reaches the minimum value. Input the original HEN in base case
Simulated annealing algorithm (SA) Randomly selected by SA
Randomly changes velocity distribution (detail structure modification)
Randomly changes the split ratios
The constraints of velocity are satisfied
The constraints of split ratio are satisfied
NO
NO
YES
YES
Calculate detail structure modification cost
Synthesis the HEN in the first time interval, n=1 Calculate fouling resistance, utility cost and power cost in time interval n Calculate velocity distribution in next time interval, n=n+1 If n >the number of investigated time interval ?
NO
YES Calculate pump investment cost and the objective function NO
The constraints in SA are satisfied YES Output the optimization results
265 266
Figure 1. Flowchart for HEN optimization.
267
CASE STUDY
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Basic Data for The Crude Oil Preheat Train. This section illustrates the application of the
269
proposed optimization approach by using a simplified crude oil HEN, as shown in Figure 2. The
270
case is based on the work presented by Smaïli et al.7, which is composed of nine shell-and-tube
271
heat exchangers, four splitters and four mixers. The HEN can be considered as two sections. The
272
section upstream the flash contains three heat exchangers in series and the section downstream
273
the flash contains six heat exchangers aligned equally in two parallel branches. The temperature
274
change in flash is neglected, while there is a loss of 5 ~10% in flow rate7. In Figure 2, SP is the
275
index for splitter and MX is the index for mixer. The stream split ratios of base case for all
276
splitters are equal to 0.5 over the whole operational period7. gas E4
E5
E6
Flash
Crude Oil
MX-H1
MX-H2
H6
MX-H3 H4
H5
Branch A E2A
E1A
E3A
MX-C SP-C
FIT
Furnace
Branch B
SP-H1 H1
277 278
E3B
E2B
E1B
SP-H2 H2
SP-H3 H3
Figure 2. Flowsheet of crude oil preheat train for case study.
279
The mass flow rates, temperatures and heat capacities of the process streams are presented in
280
Table 1. The prefix H represents hot streams. Crude oil is the only cold stream in this case. The
281
heat capacity of the hot streams are assumed constant along the HEN, while the heat capacity of
282
crude oil upstream the flash is 2.3 kJ/(kg K) and crude downstream the flash has a heat capacity
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of 2.4 kJ/(kg K). The other physical properties of crude oil are displayed in Table 2. The heat
284
capacity and other physical properties of process streams are assumed constants along the HEN.
285
Table 1. Streams data
286
287
Streams
Mass flow rate (kg/s)
Specific heat (kJ/(kg K))
Tsupply (°C)
Ttarget (°C)
H1
142.0
2.8
327
200
H2
127.0
2.9
292
200
H3
127.5
2.8
282
180
H4
63.2
2.9
251
150
H5
68.5
2.6
233
120
H6
70.9
2.8
205
100
Crude
95
2.3/2.4
135
385
Table 2. Physical properties of crude Density (kg·m-3)
Viscosity (Pa·s)
Thermal conductivity (W·m-1 K-1)
800
1×10-3
1×10-4
Table 3. Heat exchangers data Exchangers
ID (mm)
Area (m2)
Heat duty (kW)
E1A
15.4
310
E1B
15.4
E2A
Initial velocity (m/s)
Shell side HTC
Base case
Optimized case
(kW/m2/K)
2648
1.5
2.84
0.451
360
2673
1.4
2.94
0.451
15.4
300
2388
1.4
2.12
0.523
E2B
15.4
350
2634
1.2
1.77
0.523
E3A
15.4
200
2400
1.1
1.55
0.482
E3B
15.4
250
2787
1.1
1.66
0.482
E4
15.4
600
5642
1.1
1.10
0.590
E5
15.4
300
5034
2.4
0.82
0.653
E6
15.4
400
5872
1.8
0.58
0.653
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Table 3 displayed the other detailed data of the heat exchangers. The size of heat exchangers in
289
Branch B are larger than heat exchangers in Branch A. The heat duties of heat exchangers in
290
Table 3 are the average heat duties during the operational time period. Fouling in heat
291
exchangers is mainly due to deposition of crude oil, and crude always flows in the tube side of
292
heat exchangers in this case. So only the tube side fouling is considered in this case, which is
293
calculated by Polley’s model. In Polley’s model, the values of parameters are the same for all
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heat exchangers in this case study: α = 8×105 m2·K·kW-1·h-1, E= 55 kJ/mol, γ = 2×10-9
295
m2·K·kW-1·h-1. All heat exchangers are clean at the beginning of the operational time. The
296
thermal conductivity of fouling resistance is 0.5 W·m-1 K-1. Fouling resistances in shell side are
297
assumed constants along the HEN in the investigated time period. Several optimizations are
298
carried out under different values of detailed structure modification cost coefficient to determine
299
the optimal value. The detailed structure modification cost coefficient for heat exchangers is set
300
to be 0.02 through comparing the effect of different values on the optimization results and
301
referring to the practical cost.
300
E2B E3B E3A
250
Temperature(°C)
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E1B E1A
Threshold Fouling Curve
E2A
E4 200
E5 E6
150
100
50
0 0
1
2
3
4
5
Velocity(m/s)
302 303
Figure 3. Fouling threshold curve and exchangers condition in base case.
304
Figure 3 presents conditions for all heat exchangers in the base case compared with the
305
threshold fouling condition. The fouling threshold curve is corresponding to the wall temperature
306
and velocity, which can be determined at condition when fouling rate is equal to zero. Fouling
307
condition of heat exchangers can be judged from the comparison of positions for the
308
corresponding temperature and velocity points with the threshold fouling curve. Fouling is going
309
to develop when the position is above curve, and fouling will not occur and the heat exchanger
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surface will remain clean during the operation time when the position is below the curve. Higher
311
wall temperature and lower velocity positively lead to more fouling deposition formed in the
312
operation period. In Figure 3, the points are corresponding to the conditions for the nine heat
313
exchangers in the base case, and it can be seen that all the heat exchangers are above the fouling
314
threshold curve. Moreover, heat exchanger E1A and E1B are far from the threshold curve,
315
indicating that these two heat exchangers will be severely fouled. The reason is that E1A and
316
E1B are located at the hot end of cold stream, the wall temperatures are high and the initial
317
velocities are low. Meanwhile, heat exchanger E5 and E6 are closed to the threshold fouling
318
curve, because both heat exchangers are far from the hot end of the preheat train, the wall
319
temperature for both heat exchangers are too low to lead to severe fouling.
320
Optimization Results. The optimization results of stream split ratios over the whole
321
operational period are described in Table 4. The split fractions are based on the streams directed
322
to the heat exchangers in Branch A. For example, the split ratio for SP-H1 is 0.466, representing
323
that 46.6% of the mass flow rate of hot stream H1 is distributed to the heat exchanger E1A at
324
Branch A. As we can see that the values of split ratio for all splitters after optimization decrease
325
compared with the base case. For crude oil, the split ratio is mainly depended on the difference
326
of fouling resistances and heat duty between the parallel branches. Although all the heat
327
exchangers in this case are clean at the initial time, heat exchangers present different fouling
328
rates due to different velocity and wall temperature. The average fouling resistances of Branch A
329
and Branch B during the investigated time horizon are 4.91 m2K/kW and 5.29 m2K/kW. This
330
indicates that Branch B is easier to get fouled, so more mass flow rate is required to increase
331
velocity for fouling mitigation. Moreover, the increase in mass flow rate can positively affects
332
the convective heat transfer coefficient for both shell and tube side besides mitigating fouling.
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The average heat duty of Branch B is higher than that of Branch A in base case, which indicates
334
that with same increasing percentage of heat transfer coefficient, the increase of heat duty in
335
Branch B is larger than that of Branch A.
336
Table 4. Stream split ratio in base case and optimized case Splitters
SP-C
SP-H1
SP-H2
SP-H3
Split ratio (base case)
0.5
0.5
0.5
0.5
Split ratio (optimized case)
0.475
0.473
0.493
0.468
3.5
base case optimized case detailed design modification
3.0
Initial Velocity(m/s)
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
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2.5 2.0 1.5 1.0 0.5 0.0 E6
E5
E4
E3A
E3B
E2A
E2B
E1A
E1B
Exchangers
337 338
Figure 4. Initial velocity distribution in base case and optimized case.
339
Figure 4 presents the initial crude oil velocity distribution in base case and optimized case. It
340
can be seen from the figure, for heat exchangers upstream the flash, the initial velocities of heat
341
exchangers E6 and E5 after optimization decrease sharply. This is because E6 and E5 are far
342
from fouling region, and no severe fouling is going to occur in E6 and E5 even with low
343
velocities. Thus, the velocities are decreased to save pump capacity for increasing velocity in
344
other heat exchangers prone to fouling. It is needed to emphasize that velocity have to be kept at
345
a reasonable value to maintain heat transfer efficiency. For E4, the initial velocity in optimized
346
case is the same as that in base case mainly because it is near optimal value in base case when
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considering trade-off between fouling, pressure drop and heat transfer. For parallel heat
348
exchangers downstream the flash, velocities for heat exchangers after flash are increased not
349
only by changing the split ratios, but also detailed structure modification of heat exchangers,
350
because the wall temperature is high, velocity tends to be high to avoid fast fouling after
351
optimization, especially for E1A and E1B (with the highest wall temperature). The case is a
352
simplified preheat train, in industrial case, the velocity of heat exchanger with low wall
353
temperature will reduce to save pump power.
354
exchangers E3A to E1B represents the optimal velocity distribution with detailed structure
355
modification only (cold stream split ratio is set to be 0.5). The difference between the values of
356
the second columns and the third columns is helpful for us to see clearly the contribution of split
357
fractions and detailed structure modification to the initial velocity of parallel heat exchangers.
358
For example, the second columns are generally higher than the third columns for heat exchangers
359
in Branch B due to the increase of the mass flow rate of crude oil in Branch B after optimization.
360
It is worth noting that the initial velocities of heat exchangers in Branch A are improved after
361
optimization even with a reduction in crude oil split fraction, which offset the defect of method
362
only considering the optimization of split ratio in parallel structure of heat exchangers.
In Figure 4, the third column for parallel heat
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7000
base case(X) base case(average)
6000
optimized case(X ) optimized case(average)
5000
Heat duty(kW)
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4000 3000 2000 1000 0
E6
E5
E4
E3A
E3B
E2A
E2B
E1A
E1B
Exchangers
363 364
Figure 5. Initial and average heat duty of heat exchangers in base and optimized case.
365
Figure 5 shows the initial and average heat duty of heat exchangers in both base case and
366
optimized case. The index X represents the difference between initial and average heat duty of
367
every heat exchanger. Heat duty reflects heat recovery and it is directly related to the cost of
368
utility, which is the major component of total cost. In Figure 5, both initial and average heat duty
369
of E6 and E5 in optimized case decrease compared with base case owing to the reduction in
370
velocities. For E4, both initial and average heat duty increase after optimization even without
371
change in velocity. This is because the up and down streams relation between heat exchangers.
372
The inlet temperature of crude oil in E4 is dropped due to the reduction of heat duty in E6 and
373
E5, so that the heat transfer driving force in E4 is increased to have a larger heat duty. The
374
reduction in duty of E1A can be also explained by the up and down streams relation between
375
heat exchangers. In addition, the decrease in flow rate in branch A makes temperature for both
376
hot and cold streams change more significantly, result in a reduction of heat transfer driving
377
force. On the contrary, the increase in flow rate of branch B makes the increase in heat duty of
378
heat exchangers in branch B after optimization larger than that in branch A.
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379
It is known that the heat duty of a heat exchanger decreases with time due to fouling in the
380
operational period, so the difference (X) between initial and average heat duty can represent the
381
severity of fouling in heat exchangers. It can be seen that the difference between initial and
382
average heat duty of the parallel heat exchangers decrease after optimization due to the fouling
383
mitigation.
384
Figure 6 presents the fouling rates of E6 and E1B during the investigated time both in base and
385
optimized case. It can be seen in Figure 6 that the fouling rate of E1B is much higher than that of
386
E6, and it decreases rapidly with time. This is because the increase of deposition of foulant leads
387
to a decline of the wall temperature and an increase in velocity, and both aspects positively
388
decrease the fouling rate. It can be predicted that the fouling rate will eventually tend to be a
389
fixed value if the investigated period is long enough. It can be also seen that the fouling rate of
390
E1B after optimization presents an apparent reduction mainly due to the increase in velocity of
391
E1B. On the contrary, the fouling rate of E6 in both case are almost horizontal and on the verge
392
of zero, which indicates that fouling problem is almost not going to occur in E6.
E6-base E1B-base E6-optimized E1B-optimized
0.0010
Fouling rate(m2•K•kW-1•h-1)
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Industrial & Engineering Chemistry Research
0.0008
0.0006
0.0004
0.0002
0.0000 0
1
2
3
4
5
6
7
8
9
10
11
12
Time (months)
393 394
Figure 6. Fouling rates of E6 and E1A both in base and optimized case
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base case optimized case
305 300
Temperature(°C)
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
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295 290 285 280 275 270 0
1
2
3
4
5
6
7
8
9
10
11
12
Time(months)
395 396
Figure 7. Comparison of FIT in base case and optimized case
397
Furnace inlet temperature (FIT) profile is an important indicator for the performance of crude
398
oil preheat train, which can estimate the fuel consumption to meet target temperature of crude
399
oil. Figure 7 shows the comparison of FIT profile between base case and optimized case over the
400
operational period (12 months). It can be seen that the trend of two curves are similar, which are
401
decrease with time due to fouling. The decline rate of FIT profile also gradually decrease with
402
time, which can be explained based on the interaction with fouling rates of heat exchangers. FIT
403
decreases from 304.5 °C to 281.2 °C by 23.3 °C during the operational period in optimized
404
case, while FIT changing from 302.2 °C to 273.9 °C by 28.3 °C before optimization. The
405
comparison of FIT profile clearly indicates a better HEN performance and appreciable energy
406
savings after optimization.
407
Table 5. Cost related data Items
Value
Power cost ($/kW• y)
400
Cold utility ($/kW• y)
11.8
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Hot utility ($/kW• y)
118
Pump efficiency (%)
70
408 409
Table 5 presents the cost related data. Utility cost used in this paper refers to the work of
410
Panjeshahi and Tahouni28 , power charge refers to current price. Table 6 presents the annualized
411
cost in base case, optimized case, and two reference cases. For the optimized case, compared
412
with the annualized cost in base case, the power cost and cold utility cost after optimization
413
change slightly, but utility cost decreases sharply by 193.03 k$/y. The lifetime for all pumps and
414
heat exchangers is set to be 5 years. The total annual cost is reduced from 4677.87 k$/y to
415
4535.00 k$/y, saving about 142.87 k$/y. Two reference cases are performed to compare the
416
optimization results. Reference case 1 is based on the method proposed by Assis et al.17, which
417
choose stream split ratios both for cold and hot streams as optimization variables and the hot
418
utility cost is treated as objective function without considering the cost for power and pump.
419
From the results, it can be seen that the total annual cost has increased when compared to the
420
base case even with a reduction in the utility cost. This is because the changes in mass flow rate
421
of the two parallel branches can cause very high pressure drop which is not considered in this
422
case. Reference case 2 is based on the work of Wang et al.21, which mitigates fouling by
423
optimizing velocity only through modifying detailed design of heat exchangers, saving about
424
128.44 k$/y compared with base case as shown in Table 6. Considering overall velocity
425
distribution, the proposed method in this work has a higher economic efficiency.
426
Table 6. Economic efficiency in different case Base
Optimized
Reference
Reference
case
case
case1
case2
Utility cost(k$/y)
4423.51
4230.48
4410.20
4266.35
Power cost(k$/y)
16.73
19.08
20.62
17.48
Pump capital cost(k$/y)
237.62
272.00
282.95
252.15
Items
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427 428
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Detailed structure modification cost(k$/y)
0
13.44
0
13.44
Total cost(k$/y)
4677.87
4535.00
4713.77
4549.43
CONCLUSIONS
429
This paper presents a method to mitigate fouling in crude oil preheat train by optimizing
430
overall velocity distribution. Accounting for that fluid velocity can correlate fouling, heat
431
transfer and pressure drop, the new method can make design for the HEN more practical
432
compared with traditional optimization of flow rate distribution. In this work, velocity can be
433
changed through detailed structure modification of heat exchangers and adjusting spilt ratio of
434
splitters. A simplified crude oil pre-heat train is used to illustrate the application of the proposed
435
method. From the analysis for the optimization results, it is found out that the optimal initial
436
velocity distribution is apparently affected by the initial fouling behavior of each heat exchanger,
437
which is related to the detailed design modification of heat exchanger and the crude split
438
fraction. The optimal split ratios are determined by the difference of fouling resistance and heat
439
duty between the parallel branches. The optimization results show that the annual total cost is
440
decreased from 4677.87 k$/y to 4535.00 k$/y through optimizing overall velocity distribution.
441
Meanwhile, optimization results of two reference cases mitigating fouling respectively by
442
optimizing split fractions and velocity are presented to prove the practicability of proposed
443
method. Reference case 1 considers hot utility cost as objective function ignoring the effects of
444
pressure drop. Hence, the total annual cost is more than that in base case. The savings of
445
reference case 2 is less than the optimized case. The whole investigated time horizon is divided
446
into 12 time intervals to describe the dynamic nature of fouling for all case. Fouling rate in each
447
interval is treated in steady state, all related variables are recalculated in each interval and
448
adjacent intervals are linked through fouling resistance.
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AUTHOR INFORMATION
450
Corresponding Author
451
*E-mail:
[email protected] 452
Notes
453
The authors declare no competing financial interest.
454
ACKNOWLEDGMENTS
455
Financial support from the National Natural Science Foundation of China under Grant No.
456
21306228 and Science Foundation of China University of Petroleum, Beijing (2462017BJB03)
457
are gratefully acknowledged.
458
NOMENCLATURE a A b c cu C Cp d ex E h hu hS hT K L LB m M MX n N NTU obj pc P
= = = = = = = = = = = = = = = = = = = = = = = = = =
equation parameter heat exchange area, m2 equation parameter index for cold streams cold utility cost coefficient, $/(kW y) cost, $/(kW y) specific heat capacity of stream, kJ/(kg K) inner diameter of tubes, m index for heat exchanger activation energy, kJ/mol index for hot streams hot utility cost coefficient, $/(kW y) shell side convective heat transfer coefficient, kW/(m2 K) tube side convective heat transfer coefficient, kW/(m2 K) overall heat transfer coefficient, kW/(m2 K) tube length, m
lower bound number of time interval mass flow rate, kg/s index for mixer index for time interval tube passes heat transfer unit objective function, k$/y unit electricity cost, $/(kW y) thermal effectiveness
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1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Pr Q R Re Rf Rg S SP t T Tc Th Tw UB v V Yr
= = = = = = = = = = = = = = = = =
Page 26 of 29
Prandtl number index for utility consumption, kW heat capacity ratio of cold stream and hot stream Reynolds number fouling resistance, m2•K/kW gas constant, kJ/(mol K) index for shell side index for splitter Time index for tube side cold stream temperature, K hot stream temperature, K wall temperature, K
upper bound fluid velocity, m/s volume flow rate, m3/s lifetime of equipment, y
Greek symbols α β γ τ δ ξ ζ ρ η µ θ
△Pf △Pl △Pn △Ps △P T
= = = = = = = = = = = = = = = =
model parameter, m2•K/(kW•h) model parameter model parameter, m2•K/(kW•h) time interval length thickness of foulant layer, m friction coefficient local resistance coefficient fluid density, kg/m3 pump efficiency Fluid viscosity, Pa·s structure modification cost coefficient total pressure drop for a heat exchanger, kPa local resistance, kPa connection pipe resistance, kPa straight pipe resistance, kPa total pressure drop for a HEN, kPa
459 460
REFERENCE
461 462 463 464 465 466 467 468 469 470 471 472 473
(1) Klemeš, J. J.; Varbanov, P. S.; Kravanja, Z., Recent developments in Process Integration. Chemical Engineering Research and Design 2013, 91, (10), 2037-2053. (2) Ebert, W.; Panchal, C. Analysis of Exxon crude-oil-slip stream coking data; Argonne National Lab., IL (United States): 1995. (3) Ishiyama, E. M.; Paterson, W. R.; Ian Wilson, D., Optimum cleaning cycles for heat transfer equipment undergoing fouling and ageing. Chemical Engineering Science 2011, 66, (4), 604-612. (4) Pogiatzis, T.; Ishiyama, E. M.; Paterson, W. R.; Vassiliadis, V. S.; Wilson, D. I., Identifying optimal cleaning cycles for heat exchangers subject to fouling and ageing. Applied Energy 2012, 89, (1), 60-66. (5) Pogiatzis, T. A.; Wilson, D. I.; Vassiliadis, V. S., Scheduling the cleaning actions for a fouled heat exchanger subject to ageing: MINLP formulation. Computers & Chemical Engineering 2012, 39, 179-185.
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For Table of Contents Only Input the original HEN in base case
Simulated annealing algorithm (SA) Randomly selected by SA
Randomly changes velocity distribution (detail structure modification)
Randomly changes the split ratios
The constraints of velocity are satisfied
The constraints of split ratio are satisfied
NO
NO
YES
YES
Calculate detail structure modification cost
Synthesis the HEN in the first time interval, n=1 Calculate fouling resistance, utility cost and power cost in time interval n Calculate velocity distribution in next time interval, n=n+1 NO
If n >the number of investigated time interval ? YES Calculate pump investment cost and the objective function NO
The constraints in SA are satisfied YES Output the optimization results
3.5
310
base case optimized case detailed design modification
3.0
base case optimized case
305 300
2.5
Temperature(°C)
Initial Velocity(m/s)
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
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2.0 1.5 1.0
295 290 285 280
0.5
275
0.0
270
E6
E5
E4
E3A
E3B
E2A
E2B
E1A
E1B
0
1
2
3
4
539
5
6
7
8
9
10
11
12
Time(months)
Exchangers Initial velocity distributions
FIT profile
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