2021 Annual Meeting
(612f) Supply Chain Optimization for Modular Manufacturing with Production Feasibility Analysis Under Uncertainty
Authors
In this work, simultaneous strategic and tactical decisions are considered under demand uncertainty, using a risk averse model. The problem is formulated as a multiperiod planning model, which optimizes supply chain cross functional drivers â production facilities (location and capacity), inventory, transportation - as well as production amount. Flexibility of facilities capacity was increased by using modular strategy. A mixed-integer two-stage stochastic programming problem is formulated with integer variables indicating the process design and continuous variables representing the supply chain network's material flow. The problem is solved using a rolling horizon approach. Benders decomposition is used to reduce the computational complexity of the optimization problem. To promote risk-averse decisions, a downside risk measure is incorporated in the model4,5. The results demonstrate the several advantages of modular designs in meeting product demands. Finally, a Pareto optimal curve for minimizing the objectives of expected cost and downside risk is obtained to guide the decision making.
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