Optimal Processing and Trading for a Commodity in the Presence of Inventory Conversion Flexibility and Random Supply
为印度花生合作社开发决策支持系统,通过多期混合加工和存储优化利润,利用实际数据证明该方法可提升利润100-900%。
This paper presents a decision support system used by an agricultural cooperative in the Indian states of Andhra Pradesh and Telangana to optimize the purchase, blending, sale, and storage of groundnuts for maximum profit. The cooperative buys raw groundnuts (input commodity) from member farmers and processes them into multiple grades of groundnut seeds (output commodity). These may then be blended to create intermediate grades to exploit arbitrage opportunities. The cooperative sells part of the output on the spot market while storing the rest for future periods. A key challenge is the random supply of input commodity—driven by the cooperative’s obligation to accept all member produce—and the option to blend the output. Unlike prior work, this study examines blending across a multiperiod planning horizon, a novel aspect in operations management literature. The problem is modeled as a dynamic program over a harvest season. We analyze the structure of the optimal value function and decisions and find that the function is not separable in input and output inventories, which complicates the identification of optimal solution. However, in special cases such as when blending is disallowed, the function simplifies. An efficient computational procedure is developed for the general case. Using real cooperative data, we demonstrate that multiperiod blending significantly boosts profits—by 100–900%, or Indian National Rupees 1.94–17.46 million annually—highlighting the value of this approach.