面向雾计算的节能双批评家深度确定性策略梯度框架

Bhargavi Krishnamurthy, S. Shiva
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引用次数: 0

摘要

-如今数据增长速度越来越快,大数据应用要求更加敏捷和灵活。需要一个分散的模型来跨边缘设备执行所需的大量计算,因为它们导致了雾计算的创新。边缘设备之间的能量消耗是雾计算中潜在的威胁问题之一。它们的高能量需求也导致了更高的计算成本。本文在深度确定性策略梯度(Deep Deterministic Policy Gradient, DDPG)技术的基础上,采用双批判(Double Critic, DC)方法设计了一个DC-DDPG框架,该框架为雾计算制定了高质量的能效策略。与基于能耗、响应时间、总成本和吞吐量等指标的现有工作相比,所提议的框架的性能非常出色。它们是在两种不同的雾计算场景下测量的,即一个区域内具有多个实体的雾层和多个区域内具有多个实体的雾层。数学建模表明,制定的能源效率政策是高质量的,因为它们满足质量保证指标,如经验正确性、鲁棒性、模型相关性和数据隐私性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Efficient Double Critic Deep Deterministic Policy Gradient Framework for Fog Computing
-Nowadays the data is growing at a faster pace and the big data applications are required to be more agile and flexible. There is a need for a decentralized model to carry out the required substantial amount of computation across edge devices as they has led to the innovation of fog computing. Energy consumption among the edge devices is one of the potential threatening issues in fog computing. Their high energy demand also contributes to higher computation cost. In this paper Double Critic (DC) approach is enforced over the Deep Deterministic Policy Gradient (DDPG) technique to design the DC-DDPG framework which formulates high quality energy efficiency policies for fog computing. The performance of the proposed framework is outstanding compared to existing works based on the metrics like energy consumption, response time, total cost, and throughput. They are measured under two different fog computing scenarios i.e., fog layer with multiple entities in a region and fog layer with multiple entities in multiple regions. Mathematical modeling reveals that the energy efficiency policies formulated are of high quality as they satisfy the quality assurance metrics, such as empirical correctness, robustness, model relevance, and data privacy.
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