Artificial intelligence-based inventory management: a Monte Carlo tree search approach

被引:0
作者
Deniz Preil
Michael Krapp
机构
[1] University of Augsburg,Department of Quantitative Methods in Economics
来源
Annals of Operations Research | 2022年 / 308卷
关键词
Monte Carlo tree search; Supply chain inventory management; Artificial intelligence; Bullwhip effect;
D O I
暂无
中图分类号
学科分类号
摘要
The coordination of order policies constitutes a great challenge in supply chain inventory management as various stochastic factors increase its complexity. Therefore, analytical approaches to determine a policy that minimises overall inventory costs are only suitable to a limited extent. In contrast, we adopt a heuristic approach, from the domain of artificial intelligence (AI), namely, Monte Carlo tree search (MCTS). To the best of our knowledge, MCTS has neither been applied to supply chain inventory management before nor is it yet widely disseminated in other branches of operations research. We develop an offline model as well as an online model which bases decisions on real-time data. For demonstration purposes, we consider a supply chain structure similar to the classical beer game with four actors and both stochastic demand and lead times. We demonstrate that both the offline and the online MCTS models perform better than other previously adopted AI-based approaches. Furthermore, we provide evidence that a dynamic order policy determined by MCTS eliminates the bullwhip effect.
引用
收藏
页码:415 / 439
页数:24
相关论文
共 164 条
  • [1] Badakhshan E(2020)Using simulation-based system dynamics and genetic algorithms to reduce the cash flow bullwhip in the supply chain International Journal of Production Research 58 5253-5279
  • [2] Humphreys P(2017)A comparison of Monte Carlo tree search and rolling horizon optimization for large-scale dynamic resource allocation problems European Journal of Operational Research 263 664-678
  • [3] Maguire L(2011)A review of the causes of bullwhip effect in a supply chain The International Journal of Advanced Manufacturing Technology 54 1245-1261
  • [4] McIvor R(2012)A survey of Monte Carlo tree search methods IEEE Transactions on Computational Intelligence and AI in Games 4 1-43
  • [5] Bertsimas D(2008)Application of machine learning techniques for supply chain demand forecasting European Journal of Operational Research 184 1140-1154
  • [6] Griffith JD(2008)A reinforcement learning model for supply chain ordering management: An application to the beer game Decision Support Systems 45 949-959
  • [7] Gupta V(2013)Application of decision-making techniques in supplier selection: A systematic review of literature Expert Systems with Applications 40 3872-3885
  • [8] Kochenderfer MJ(2004)The bullwhip effect–impact of stochastic lead time, information quality, and information sharing: A simulation study Production and Operations Management 13 340-353
  • [9] Mišić VV(2006)Behavioral causes of the bullwhip effect and the observed value of inventory information Management Science 52 323-336
  • [10] Bhattacharya R(2005)A simulation-based genetic algorithm for inventory optimization in a serial supply chain International Transactions in Operational Research 12 101-127