An Optimization-Based Framework for Process Planning under Uncertainty with Risk Management
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Cheng Seong Khor
, Sara Giarola , Benoit Chachuat und Nilay Shah
In the current challenging and volatile political and economic environment, the process industry is exposed to a high degree of uncertainty that renders the production planning task to be a risky and complex optimization problem requiring high computational expense. This work proposes a computationally-tractable optimization-based framework for risk management in midterm process planning under uncertainty. We employ stochastic programming to account for the uncertainty in which a scenario-based approach is used to approximate the underlying probability distribution of the uncertain 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 are applied, namely Value-at-Risk (VaR) and Conditional Value-at-Risk (CVaR). However, since a large number of scenarios are often required to capture the stochasticity of the problem, the model suffers from the curse of dimensionality. To circumvent this problem, we propose a computational procedure with a 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 a meanCVaR stochastic LP approximation of the risk-averse version of the planning model. The proposed approach is implemented on a petroleum refinery planning case study with satisfactory results that demonstrate how solutions with relatively affordable computational expense can be attained in a risk-averse model in the face of uncertainty. Future work will mainly involve extending the approach to a multiobjective formulation as well as for mixed-integer optimization problems.
©2011 Walter de Gruyter GmbH & Co. KG, Berlin/Boston
Artikel in diesem Heft
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- Editorial: Special Issue of CAPE FORUM 2011
- Optimisation of Emulsion Copolymerization of Styrene and MMA in Batch and Semi-batch Reactors
- Modelling and Optimization of Crude Oil Hydrotreating Process in Trickle Bed Reactor: Energy Consumption and Recovery Issues
- An Optimization-Based Framework for Process Planning under Uncertainty with Risk Management
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- Numerical Simulation of Fluid Flow and Heat Transfer in a Counter-Current Reactor System for Nanomaterial Production
- Knowledge Based System Implementation for Lean Process in Low Volume Automotive Manufacturing (LVAM) with Reference to Process Manufacturing
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Artikel in diesem Heft
- Article
- Editorial: Special Issue of CAPE FORUM 2011
- Optimisation of Emulsion Copolymerization of Styrene and MMA in Batch and Semi-batch Reactors
- Modelling and Optimization of Crude Oil Hydrotreating Process in Trickle Bed Reactor: Energy Consumption and Recovery Issues
- An Optimization-Based Framework for Process Planning under Uncertainty with Risk Management
- Modelling and Control of Reactive Polymer Composite Moulding Using Bootstrap Aggregated Neural Network Models
- Numerical Simulation of Fluid Flow and Heat Transfer in a Counter-Current Reactor System for Nanomaterial Production
- Knowledge Based System Implementation for Lean Process in Low Volume Automotive Manufacturing (LVAM) with Reference to Process Manufacturing
- Novel Heuristic for Low-Batch Manufacturing Process Scheduling Optimisation with Reference to Process Engineering
- CFD Modelling of Reverse Osmosis Channels with Potential Applications to the Desalination Industry