Cooperative Partial Task Offloading and Resource Allocation for IIoT Based on Decentralized Multiagent Deep Reinforcement Learning.

IEEE Internet of Things Journal(2024)

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摘要
Edge computing has become increasingly important to fulfill the diversified quality of service (QoS) or quality of experience (QoE) demands for industrial internet of things (IIoT) applications, such as machine condition monitoring, fault diagnosis, intelligent production scheduling, and production quality control. Due to the heterogeneity of IIoT systems, it is of urgent necessity to concentrate on the cloud-edge-end cooperative partial task offloading and resource allocation (CPTORA) problem for realizing workload balancing, efficient resource utilization, and better QoS/QoE of IIoT applications. However, the challenge lies in how to make real-time, accurate, decentralized task offloading and resource allocation decisions for dynamic and device-intensive IIoT. Therefore, this work examines the CPTORA problem for IIoT, aiming at minimizing its long-run overall delay and energy costs. To lower the problem complexity, this problem is decomposed into the task offloading subproblem and the resource allocation subproblem. Then, an improved soft actor-critic-based decentralized multi-agent deep reinforcement learning (MADRL) algorithm is proposed to address the task offloading subproblem, where each IIoT device can learn its globally optimal policy and make its decisions independently. This algorithm innovatively combines the divergence regularization, the distributional reinforcement learning, and the value function decomposition methods to improve convergence speed and accuracy of the existing MADRL methods. After receiving the task offloading decisions of every IIoT device, every edge server employs the Lagrange multiplier method and Karush-Kuhn-Tucker condition to solve its resource allocation subproblem. The experimental results show that the proposed algorithm decreases the overall delay and energy costs more effectively, compared to the other state-of-the-art MADRL approaches.
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关键词
Improved soft actor-critic,cooperative task offloading,resource allocation,multi-agent deep reinforcement learning,IIoT
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