Title | Modular supply chain optimization considering demand uncertainty to manage risk |
Publication Type | Journal Article |
Year of Publication | 2021 |
Authors | Bhosekar, A, Badejo, O, Ierapetritou, M |
Journal | AIChE Journal |
Volume | 67 |
Date Published | aug |
ISSN | 0001-1541 |
Keywords | 7.6, BP5Q4, BP5Q5, feasibility analysis, Machine Learning, modular manufacturing, stochastic mixed integer programming, supply chain optimization |
Abstract | Supply chain under demand uncertainty has been a challenging problem due to increased competition and market volatility in modern markets. Flexibility in planning decisions makes modular manufacturing a promising way to address this problem. In this work, the problem of multiperiod process and supply chain network design is considered under demand uncertainty. A mixed integer two-stage stochastic programming problem is formulated with integer variables indicating the process design and continuous variables to represent the material flow in the supply chain. 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 model. The results demonstrate the several advantages of modular designs in meeting product demands. A pareto-optimal curve for minimizing the objectives of expected cost and downside risk is obtained. |
URL | https://aiche.onlinelibrary.wiley.com/doi/10.1002/aic.17367 |
DOI | 10.1002/aic.17367 |