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Mar 2, 2017 - ABSTRACT: This work presents a decision-making framework for stochastic optimization of renewable energy businesses considering technolo...
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Optimization of Renewable Energy Businesses under Operational Level Uncertainties through Extensive Sensitivity Analysis and Stochastic Global Optimization S. D. Salas, A. Geraili, and J. A. Romagnoli* Chemical Engineering Department, Louisiana State University, Baton Rouge, 220 ChE Building, Louisiana 70803, United States S Supporting Information *

ABSTRACT: This work presents a decision-making framework for stochastic optimization of renewable energy businesses considering technological uncertainties and risk management. With the help of a global sensitivity analysis based on Sobol’s method, significant uncertain parameters from biochemical reactions are identified. Moreover, two options for selecting sensitive parameters are explored: (1) when all parameters are simultaneously evaluated, and (2) when parameters are separately evaluated based on their kinetic pathway. For both cases, the renewable energy facility is simulated considering uncertainty. To maximize the profitability of the business, a metaheuristic stochastic global optimization technique is incorporated to the framework. This method uses a radial basis function which approximates a computationally expensive objective function and permits intelligent selection of the best operating conditions. To evaluate the efficacy of this framework, a hypothetical multiproduct lignocellulosic biorefinery modeled under operational uncertainty is optimized.

1. INTRODUCTION Propped by worldwide population and industry surge, it is estimated that global energy consumption will increase in the coming years. By 2040, the global energy consumption will grow in 56%, from 524 quadrillion of British thermal units (Btu) to 820 quadrillion Btu.1 Around 85% of world’s energy comes from fossil fuel sources. In the U.S., approximately 79% of energy comes from nonrenewables, making it the highest share of energy in the market.2 Even though prices of fossil fuels have dropped to lower levels in the past two years, renewable energy sources still appear to be competitive and, in the long term, might have significant impact to global economy. Renewable energy costs are falling and show lower volatility than its competitors, making them attractive alternatives for decisionmakers, investors, and governments.3 The modern portfolio of available renewables includes second generation biofuels produced from biomass which is a sustainable solution for mobile energy services, giving also an innovative usage of organic waste. However, market volatility (e.g., in the second half of 2014 the price of WTI crude oil dropped from $106/bbl to $55/bbl in 6 months), technological uncertainty, and limited experience in renewable energy processes can prevent the development of this burgeoning industry. By processing biomass in biochemical or thermochemical pathways, renewable energy facilities are able to produce fuels, value-added chemicals, heat, and bioelectricity. First and second generation biorefineries are already operating worldwide and are expected to stimulate economic growth while reducing mineral oil dependency.4 Process systems engineering has contributed over the past few years in addressing the complexity of modeling and decision making in order to optimize and make cost-effective © XXXX American Chemical Society

renewable energy projects. Usually, the optimization of renewable energy businesses considers a deterministic design approach5−9 in which all model parameters are assumed to be known. However, during conceptual design there is lack of information and reliability especially in novel or recently developed processes. Technical uncertainty is particularly high when a project is done for the first time. Biorefineries, in order to be competitive, require implementation of more efficient processes which can be relatively new due to the state of art of biorefining technology. Underestimating these limitations may lead into nonoptimal designs and generate extra expenses or difficulties during start-up and operation. Thus, for considering the unknown factors that exist in real life, to design and model including uncertainty is a powerful tool in optimization. Even though there are several parameters in renewable energy models that might introduce uncertainty, it is computationally expensive and unfeasible to include all of them when simulating uncertain conditions. Thus, a sensitivity analysis is required in order to reduce their quantity and select the significant ones to be incorporated. Global sensitivity analysis10−12 is a widely used technique for selecting representative parameters from mathematical models. The identified sensitive parameters are later utilized for modeling the process under uncertainty. A renewable energy business optimization problem can have several local optimal points because it is commonly of Received: Revised: Accepted: Published: A

November 11, 2016 February 4, 2017 March 2, 2017 March 2, 2017 DOI: 10.1021/acs.iecr.6b04395 Ind. Eng. Chem. Res. XXXX, XXX, XXX−XXX

Article

Industrial & Engineering Chemistry Research

Figure 1. Framework for global optimization of a renewable energy businesses under uncertainty at operational level.

conditions. By using this optimization strategy, we aim to overcome limitations found in MC based simulation because operating points are intelligently searched rather than randomly explored in the solution domain. For global sensitivity analysis, the previously implemented efficient computational method developed and tested by Wu et al.12 is employed again with a variation. In this work, the sensitivity analysis is performed by considering two different approaches: to evaluate all parameters simultaneously and to evaluate them separately depending on their product pathway. The second approach intends to select sensitive parameters from each section of the integrated facility rather than evaluate them simultaneously. Once the two groups of sensitive parameters are identified, a metaheuristic stochastic global optimization technique28 maximizes the profitability of a renewable energy business while considering uncertainty and risk management. The algorithm employs radial basis functions (RBFs) as the response surface or surrogate model. Finally, the optimal points obtained are contrasted with optimal values from other optimization methodologies, e.g., MC based optimization. To evaluate the efficiency of the proposed optimization framework, a hypothetical multiproduct lignocellulosic biorefinery is globally optimized at operational level.

nonconvex nature. For optimization of renewable energy businesses, literature presents publications which studied optimization when uncertainties are introduced in price,13 supply chain,14 demand,15 and at the operational level.16,17 Usually, optimization strategies tend to reduce the complexity of the problem by simplifying it into a mixed integer linear programming (MILP) or using stochastic optimization strategies such as the Monte Carlo (MC) based optimization method. Even though these strategies can reach good solutions, they might leave better points unevaluated in the solution domain. Therefore, a more efficient and robust optimization method is required for improving results. Stochastic metaheuristic optimization strategies appear to be suitable for these types of optimization problems when its dimensionality is a few of tens. They treat the mathematical model as a black box which reduces computational effort while it is relatively easy to implement them. By using exploration and exploitation in the solution domain, better solutions, global optimum in some cases, are achievable.18 Surrogate models, also known as response surface or metamodels, can become approximations of detailed mechanistic models. They are incorporated into metaheuristic optimization strategies and are capable of simplifying highly nonlinear and computationally expensive problems. They are widely utilized in multiobjective optimization.19 Surrogate modeling has applications in diverse fields of engineering.20 Some relevant studies present their applicability in analysis and modeling of groundwater systems considering uncertainties,21−24 optimization in groundwater bioremediation,25−28 and uncertainty estimation in aviation environmental systems.29 This type of metaheuristic optimization strategy has not been tested yet for renewable energy processes modeled under uncertain conditions. Therefore, this work aims to study their applicability, efficiency, and effectiveness in these processes. In previous publications, a systematic optimization methodology for biorefining processes under both strategic and operational level uncertainties was developed.16,30 The proposed framework is a continuation of this work and studies a new approach for selecting sensitive parameters to simulate uncertainty while implementing a stochastic global optimization algorithm that uses surrogate modeling to optimize operating

2. MODEL-BASED FRAMEWORK FOR OPTIMIZATION UNDER UNCERTAINTY 2.1. Framework Design. The proposed framework in this paper considers the optimization of renewable energy businesses under uncertainty and it can be adapted to different production portfolios. One relevant characteristic achieved in this study are the two different approaches for selecting significant uncertain parameters while employing a metaheuristic optimization technique that uses a surrogate model. For optimizing the operating conditions of a renewable energy business under technological uncertainties four steps are required: (1) identification of significant uncertain parameters through global sensitivity analysis (simultaneously and separately per product pathway), (2) mechanistic simulation of the process introducing uncertainty, (3) optimization of relevant operating conditions of a renewable energy plant by seeking optimal points using a metaheuristic method which uses a surrogate model, and B

DOI: 10.1021/acs.iecr.6b04395 Ind. Eng. Chem. Res. XXXX, XXX, XXX−XXX

Article

Industrial & Engineering Chemistry Research (4) statistical evaluation of results. Figure 1 shows a general schematic of the proposed framework. 2.2. Sensitivity Analysis. Uncertainties can be found in different sections of a renewable energy business, from volatility in the market to the process itself. The most common uncertainties that have been studied in renewable energy endeavors come from the strategic planning stage. At the operational level, uncertainties can be found in the process model, and a global sensitivity analysis is required for choosing the most significant parameters for simulating uncertain conditions. Operational level uncertainties may be introduced into the process mainly because of errors in experimental measurements, activity changes in microorganisms involved in chemical reactions, impurities in chemical species, and external factors such as weather or environmental conditions. A sensitivity analysis is in general the study of how the uncertainty manifested in the output of a mathematical model can be distributed to different sources such as parameters or state variables.31 A robust variance-based sensitivity analysis technique was developed by I. M. Sobol’.10 The method considers on its standard form a function Y = f(z1, ..., zq, ..., zQ) whose input parameters are mutually independent, and it is defined as a Q-dimensional cube, KQ, which deems the expansion of Y into terms of increasing dimensions such that all summands are mutually orthogonal. The function can be represented in the form of eq 1.

An improvement of Sobol’s standard method reduces the required computational effort by introducing sampling and resampling matrices.11,32 Following this criteria further, Wu et al.12 developed and tested an efficient computational method for global sensitivity analysis. This method reduces even more computational effort by averaging the results of the evaluated functions and using those results as data points. Sq̂ and ŜTq can be compared to evaluate if the model is additive or not. For nonadditive models, Sq̂ < ŜTq and additive, Sq̂ = ŜTq. A model is considered additive when there are no interactions present.33 When evaluating the sensitivity of parameters toward an output, literature presents that most of the time in renewable energy facilities16,17 and other technical problems, e.g., heat exchanger design,34,35 all parameters are evaluated simultaneously. Also, there are cases when parameters are evaluated in different process units, but the grouping criterion is driven by different outputs.33 The current study has the characteristic of analyzing extensively the sensitivity of parameters by evaluating them in two different ways. The first approach evaluates the sensitivity of all uncertain parameters simultaneously. The second approach evaluates the sensitivity of parameters in separate groups which are conformed depending on their product pathway. This procedure aims to incorporate uncertainty by considering that process units are independent from each other. This work follows the next steps in global sensitivity analysis: (1) Define the dimension, N, for a sample of input parameters. For each parameter, define an uncertainty class. Class 1 corresponds to 5% of change, and class 2 corresponds to 20% of change with respect to the parameter default value. (2) Build two random matrices, M1 and M2, of dimension N × Q based on the uncertainty class criterion previously defined. M1 is the sampling matrix, M2 resampling matrix, and Q the total quantity of parameters to be evaluated.

q=1

Y = f0 +

∑ fq (zq) + Q



fqb (zq , zb) + ···

1≤q