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Task scheduling based on deep reinforcement learning in a cloud manufacturing environment

Tingting Dong, Fei Xue, Chuangbai Xiao, Juntao Li

2020Concurrency and Computation Practice and Experience113 citationsDOI

Abstract

Summary Cloud manufacturing promotes the transformation of intelligence for the traditional manufacturing mode. In a cloud manufacturing environment, the task scheduling plays an important role. However, as the number of problem instances increases, the solution quality and computation time always go against. Existing task scheduling algorithms can get local optimal solutions with the high computational cost, especially for large problem instances. To tackle this problem, a task scheduling algorithm based on a deep reinforcement learning architecture (RLTS) is proposed to dynamically schedule tasks with precedence relationship to cloud servers to minimize the task execution time. Meanwhile, the Deep‐Q‐Network, as a kind of deep reinforcement learning algorithms, is employed to consider the problem of complexity and high dimension. In the simulation, the performance of the proposed algorithm is compared with other four heuristic algorithms. The experimental results show that RLTS can be effective to solve the task scheduling in a cloud manufacturing environment.

Topics & Concepts

Computer scienceReinforcement learningScheduling (production processes)Distributed computingCloud computingJob shop schedulingTwo-level schedulingCloud manufacturingServerDynamic priority schedulingArtificial intelligenceComputationFair-share schedulingScheduleMathematical optimizationAlgorithmComputer networkOperating systemMathematicsIoT and Edge/Fog ComputingCloud Computing and Resource ManagementDigital Transformation in Industry
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