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Multistage Stochastic Optimization for Production‐Inventory Planning with Intermittent Renewable Energy

Mehdi Golari1; Neng Fan1; Tongdan Jin2

1 Department of Systems and Industrial Engineering, University of Arizona, Tucson, Arizona, 85721, USA · 2 Ingram School of Engineering, Texas State University, San Marcos, Texas, 78666, USA

Production and Operations Management 2017

A growing number of companies install wind and solar generators in their energy‐intensive facilities to attain low‐carbon manufacturing operations. However, there is a lack of methodological studies on operating large manufacturing facilities with intermittent power. This study presents a multi‐period, production‐inventory planning model in a multi‐plant manufacturing system powered with onsite and grid renewable energy. Our goal is to determine the production quantity, the stock level, and the renewable energy supply in each period such that the aggregate production cost (including energy) is minimized. We tackle this complex decision problem in three steps. First, we present a deterministic planning model to attain the desired green energy penetration level. Next, the deterministic model is extended to a multistage stochastic optimization model taking into account the uncertainties of renewables. Finally, we develop an efficient modified Benders decomposition algorithm to search for the optimal production schedule using a scenario tree. Numerical experiments are carried out to verify and validate the model integrity, and the potential of realizing high‐level renewables penetration in large manufacturing system is discussed and justified.

DOI
10.1111/poms.12657
Volume
26 (3)
Pages
409-425
Language
en
Export
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Sources
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