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A Learning Approach for Joint Design of Event-Triggered Control and Power-Efficient Resource Allocation

Atefeh Termehchi, Mehdi Rasti

2022IEEE Transactions on Vehicular Technology11 citationsDOIOpen Access PDF

Abstract

In emerging Industrial Cyber-Physical Systems (ICPSs), the joint design of communication and control sub-systems is essential, as these sub-systems are interconnected. In this paper, we study the joint design problem of an event-triggered control and an energy-efficient resource allocation in a fifth generation (5 G) wireless network. We formally state the problem as a multi-objective optimization one, aiming to minimize the number of updates on the actuators’ input and the power consumption in the downlink transmission. To address the problem, we propose a model-free hierarchical reinforcement learning approach with uniformly ultimate boundedness stability guarantee that learns four policies simultaneously. These policies contain an update time policy on the actuators’ input, a control policy, and energy-efficient sub-carrier and power allocation policies. Our simulation results show that the proposed approach can properly control a simulated ICPS and significantly decrease the number of updates on the actuators’ input as well as the downlink power consumption.

Topics & Concepts

Resource allocationComputer scienceJoint (building)Power controlControl (management)Resource management (computing)Event (particle physics)Resource (disambiguation)Power (physics)EngineeringDistributed computingArtificial intelligenceComputer networkArchitectural engineeringPhysicsQuantum mechanicsAdvanced Memory and Neural ComputingSmart Grid Security and ResilienceFault Detection and Control Systems