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- 2011 Annual Meeting
- Computing and Systems Technology Division
- Design and Operations Under Uncertainty II
- (581c) An Optimization-Based Framework for Process Planning Under Uncertainty with Risk Management
This work proposes a computationally-tractable, optimization-based framework for risk management in mid-term process planning under uncertainty. In general, the two major methodologies for addressing optimization problems under uncertainty are recourse-based two-stage or multi-stage stochastic programming [1,2] and robust optimization [3,4,5]. In this work, the latter is employed with a scenario-based approach adopted to represent uncertainties in the stochastic parameters. The problem is formulated as a recourse-based two-stage stochastic program that incorporates a mean-risk structure in the objective function. Two risk measures, with origins in the insurance and finance industries, are considered, namely Value-at-Risk (VaR) [6] and Conditional Value-at-Risk (CVaR) [7]. We account for uncertainty in prices of crude oil and commercial products, market demands of products, and production yields. However, since a large number of scenarios are often required to capture the stochasticity of the problem, the model suffers from a curse of dimensionality since the model size scales exponentially with the number of scenarios and the uncertain parameters. To circumvent this problem, we propose a framework with relatively low computational burden that involves the following two major steps. First, a linear programming (LP) approximation of the risk-inclined version of the planning model is solved for a number of randomly generated scenarios. Subsequently, the VaR parameters of the model are simulated and incorporated into an LP approximation of the risk-averse version of the planning model, which is a mean-CVaR stochastic program [8].
The proposed approach is illustrated through a petroleum refinery planning case study to demonstrate how solutions with relatively affordable computational expense can be attained in a risk-averse model in the face of uncertainty.