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Numerical investigation on development of initial ash deposition layer for a high-alkali coal Chao Liu, Zhaohui Liu, Tai Zhang, Xiaohong Huang, Junjun Guo, and Chuguang Zheng Energy Fuels, Just Accepted Manuscript • DOI: 10.1021/acs.energyfuels.6b03043 • Publication Date (Web): 01 Feb 2017 Downloaded from http://pubs.acs.org on February 10, 2017
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Energy & Fuels
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Numerical investigation on development of initial ash
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deposition layer for a high-alkali coal
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Chao Liu, Zhaohui Liu*, Tai Zhang, Xiaohong Huang*, Junjun Guo, Chuguang Zheng
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State Key Laboratory of Coal Combustion, School of Energy and Power Engineering, Huazhong
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University of Science and Technology, Wuhan, 430074, China
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ABSTRACT: Burning high-alkali content coals frequently causes severe fouling and slagging
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problems, which greatly threat the efficiency and safety of boilers. In this paper, a set of
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numerical models have been integrated and validated to predict the development of initial
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deposition on the tube of super-heater for high-alkali yield fly ash particles. Besides the normally
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used ash particles transport models (inertial force, turbulent eddy effect, thermophoretic force)
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and adhesion model (alkali coating surface model), a deposit erosion model based on the energy
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dissipation at impaction has been introduced. The predicted characteristics, such as mass,
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morphology of deposit, and particle size distribution of deposited ashes, are compared with
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experimental observations in a 350MWe boiler and a 10kW laboratory furnace respectively. The
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results show that, for a coal with high-alkali content, the proposed models can well predict the
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development of initial ash deposit layer, especially the phenomena of windward deposit erosion
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at high Reynolds number surrounding flow in real facility.
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KEYWORDS: High-alkali coal; Ash deposition; Slagging and Fouling; Numerical simulation 1
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1. Introduction Coals with high-alkali content are used as fuel for stationary boiler in many region of the [1,2]
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world
. In China, Zhundong coal, which has a huge reserve about 390Gt, is a high-alkali
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content coal with low ignition point, high burning rate and high calorific value
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high-alkali content in its ash, usually ≥5%, many alkali metal compounds such as sodium sulfate
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will condense to form a sticky coat on the fly ash particle and heat exchanger surface [4,5,6]. This
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sticky coat greatly enhances the sticking probability of ash particles impacted on the heating
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surface. Therefore, severe slagging and fouling on boiler heating surfaces are induced, which
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leads to more frequent sootblowing or even unplanned boiler shutdown to maintain a safe and
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stable operation of the boiler. So far, many researches including experimental tests and numerical
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simulations have been implemented to study the mechanisms of the deposition of ash with
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high-alkali content [5,6].
[3]
. Due to the
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By investigating the formation of high-alkali coal ash in different facilities, many
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researchers concluded that the mineral vapor, such as Na2SO4 (g), will condense on the surface of
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fly ash particles and the exposed tube wall, when the temperature below about 1250±50K
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The condensation mixture is molten at the temperature near 1200K, thus forming a sticky coating
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surface on the fly ash particles and the bare tube surface. As a consequence, the ash deposition
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was greatly enhanced [5,7,8]. Based on tests on a 1.5 MWth pilot plant, Shimogori et al. found that
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the Na2O and K2O mass percentages in parent coals also greatly influence the formation of
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deposit initial layer [9].
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[6-8]
.
In order to evaluate the potential of ash deposition in boilers, many empirical fouling and 2
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slagging indices has been developed. Coal ash deformation temperature and softening
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temperature, the ratio of silica to alumina and the ratio of basic to acidic oxides (B/A) in the ash
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are some commonly used indices
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and the fusibility data, these indices can be easily caculated. However, due to the variation of flue
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gas flow properties, such as velocities and temperature, and different arrangements of heat
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exchanging surface, the fouling and slagging degree at different positions of boilers can not be
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well estimated. So recently, more complicated computational fluid dynamics (CFD) based models
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for characterizing the whole process of coal ash deposition are developed
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have been successfully used to aid the design and arrangement of heat exchanging devices.
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Transport of ash particles, adhesion of ash particles and deposit erosion, are three main aspects
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employed to predict the ash deposition particularly. We will briefly review them below.
[10]
. Based on the fundamental analyze of the ash composition
[11-19]
. Some of them
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For predicting the ash particles impaction on the tube wall, inertial impaction, turbulent eddy
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effect, thermophoretic effects, Fick diffusion are regarded as the main mechanisms in previous
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works
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employed to get a reasonable simulation on impaction process of ash deposition. For predicting
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deposition of coal ash with high-silicon content, inertial impaction is always taken as the only
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way for ash deposition
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high-alkali content, besides the initial impaction, turbulent eddy effect and thermophoretic effects
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are always taken into account [23].
[20,21]
. According to the differences in fuel properties, different impaction models are
[16,22]
. For simulating ash deposition in boilers burning biomass fuel with
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Various models had been developed to predict the coal ash adhesion. Watt et al. [24] proposed
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the popularly used ash viscosity model, in which ash viscosity was used as the main factor to 3
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determine the adhesion of ash particles. Based on the correlation between temperature and the
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viscosity of some individual minerals, the viscosity caculation method had been rectified by
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Urbain et al. [25] and Senior et al. [26] to obtain predictions with better accuracy. However, in many
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cases, the sticking probability was also greatly influenced by parameters such as impaction
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velocity, impaction angle and surface tension of ash particles
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particles are coated with a sticky surface formed by the molten sodium sulfate, Walsh et al. [4] put
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forward the alkali coating surface model. In this model, the sticking probablity of different size
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ash particles with high-alkali content could be reasonably estimated. Based on the Walsh’s model,
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Lee et al. [30] modified the reflected velocity prediction to improve the prediction accuracy. Walsh
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and Lee focused mainly on the deposit mass of fly ash particles. However, other characteristics of
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ash deposition, such as leeward deposition and deposit morphology, are also very important and
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seldom evaluated.
[27-29]
. By assuming that the fly ash
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In addition to the sticking process of fly ash particles, ash deposition is also greatly affected
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by the rebound of ash particles, which always accompanies with the removal of already deposited
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ash particles [22,31,32]. In previous studies, the critical velocity model derived by the JKR theory [27]
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and the extra energy model
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particles, while the deposit erosion had not been taken into consideration. In some investigations
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[4]
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erosion of ash deposit. In the work of Strandström et al.
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particles had been investigated. By comparing with the experimental result, a set of correction
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factors are applied to modify the erosivity of different size non-sticky particles. The erosion
[33]
have been successfully used to evaluate the rebound of ash
, a constant value of the erosivity (mass removed/mass impacting) has been used to predict the [22]
, the erosion degree of non-sticky
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process related to the energy loss at impaction is also greatly affected by properties of the
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impaction particles [34]. At the time being, there’s no report on erosion characteristics of sticky
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particles.
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In this paper, based on the previous works [4,11,16,19,30], a set of models have been constructed
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firstly for simulating the transport and adhesion of high-alkali ash particles. A new deposit
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erosion model, which combines the energy dissipation at impaction and the surface energy of
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alkali surface coating particles
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been integrated to predict the ash deposition of a coal with high-alkali content at initial stage.
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Predicted deposit characteristics, such as the deposit morphology, the deposit mass and the size
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distribution of deposited ash particles, are examined by the experimental data.
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2. Numerical models
[4,30]
, has been developed and validated then. These models have
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The overall computational algorithm is shown in Figure 1. The transport models, the
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adhesion model for high-alkali ash particles and the deposit erosion model, which describe the
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whole ash deposition progress, have been integrated in this paper. In order to simplify the models,
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some key assumptions, such as the ash particles are considerated as inert particles without mass
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change, and the most of the alkali vapor condensed rather than nucleated, have been adopted in
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this work. The detail of these models is shown in the following parts.
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Inertial impaction
Transport of ash particles
Turbulent eddy effect Thermophoresis
Adhesion of ash particles
Alkali coating surface model
Deposit erosion
Walsh’ s model/ New developed erosion model
99 100 101 102
Figure 1. The computational algorithm used to predict the high-alkali ash deposition 2.1 Transport models In order to obtain detail movement characteristics of the ash particles, the ash particles were [19]
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individually tracked (Single Particle Tracking - SPT
, which makes the trajectories and the
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deposition charateristics of individual particles can be obtained) in a Lagrangian frame of
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reference. The force balance equates the particle inertia with the forces acting on the particle, and
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can be expressed as follows [13,23]: uur du p uur uur uur uur = FD (u f + u ' − u p ) + FT dt uur d x p uur dt = u p
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where FD =
(1)
18µ CD Re is the drag force per unit particle mass, Re p is the relative Reynolds ρ p d p2 24 uur uur
ρ f dp up − uf
. CD is the spherical drag coefficient, µ is the
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number, which is defined as Re p =
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fluid viscosity, ρ p is the particle density, d p is the particle diameter, ρ f is the fluid density,
µ
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uur uur uur u p is the particle velocity(m/s), u f is the fluid phase mean velocity, u ' is the fluid phase
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fluctuation velocity, x p is the particle position in the fluid field.
uur
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Large velocity fluctuation exists in the high-temperature flue gas flow in furnace, which is
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regarded as the turbulent eddy effect. It will lead to random tortuous movement of particularly
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small fly ash particles. In this study, discrete random walk model with random eddy lifetime is
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employed to consider the random eddy effect. The integral time for tracked particles is TL = CL ,
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and the characteristic random lifetime of the eddy is τ = −TL ln(r ) , where r is a uniform random
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number greater than zero and less than 1, CL is taken as 0.3 for the Reynolds stress model (RSM)
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used in this paper [35].
k
ε
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Large temperature gradient exists between the high temperature flue gas and the tube wall at
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lower temperature, which also influences especially the movement of fine particles (10 µm) with high impaction kinetic energy can hardly be captured and possess
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high erosivity. So in Case 1, when the gas velocity is high, windward deposit is corroded
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seriously by large ash particles and becomes very thin. Ash deposit mainly consists of fine ash
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particles (