E3S Web of Conferences (Jan 2021)

Supply Chain Scheduling Using Double Deep Time-Series Differential Neural Network

  • Lu Wei,
  • Tan Hua,
  • Yan Xiaohui,
  • Lv Cixing

DOI
https://doi.org/10.1051/e3sconf/202125703038
Journal volume & issue
Vol. 257
p. 03038

Abstract

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The purpose of supply chain scheduling is to be able to find an optimized plan and strategy so as to optimize the benefits of the entire supply chain. This paper proposes a method for processing tightly coordinated supply chain task scheduling problems based on an improved Double Deep Timing Differential Neural Network (DDTDN) algorithm. The Semi-Markov Decision Process (SMDP) modeling of the state characteristics and action characteristics of the supply chain scheduling problem is realized, so as to transform the task scheduling problem of the tightly coordinated supply chain into a multi-stage decision problem. The deep neural network model can help fit the state value function, and the unique reinforcement learning online evaluation mechanism can realize the selection of the best action strategy combination, and optimize it under the condition of only the stator processing time. Finally, the optimal action strategy group is obtained.