Deep Reinforcement Learning-Based Service-Oriented Resource Allocation in Smart Grids

Volume: 9, Pages: 77637 - 77648
Published: Jan 1, 2021
Abstract
Resource allocation has a direct and profound impact on the performance of resource-limited smart grids with diversified services that need to be timely processed. In this paper, we investigate a joint communication, computing, and caching resource allocation problem with distinct delay requirement of services in smart grids. This paper aims to optimize the long-term system utility based on reward and loss function. Considering the unknown...
Paper Details
Title
Deep Reinforcement Learning-Based Service-Oriented Resource Allocation in Smart Grids
Published Date
Jan 1, 2021
Volume
9
Pages
77637 - 77648
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