基于深度强化学习的边缘计算能耗策略梯度

G. Saranya, E. Sasikala
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引用次数: 0

摘要

物联网设备在当今世界备受关注,包括自然语言处理、人脸识别和增强现实等各种应用。上述应用程序需要大量的资源,这将破坏设备的能量。随着设备使用量的增加,计算任务是一个关键的过程。解决这个问题的一个先锋解决方案是边缘计算,它将使计算更接近物联网设备。计算既可以在设备中完成,也可以在远程边缘完成,它基于物联网应用的需求和资源可用性。通过深度强化学习算法(Deep Reinforcement learning algorithm, DRL)获取纳什均衡(Nash Equilibrium)的概念,可以实现卸载。基于策略梯度算法的卸载决策可以克服马尔可夫决策过程的问题。将各种策略梯度算法与标准卸载算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Reinforcement Learning based policy gradient for Energy Consumption in Edge Computing
IoT devices gain much attention in today's world, including various applications like natural language processing, face recognition and augmented reality etc. The above applications need huge resources which will ruin the energy of the device. Based upon the increase of the device usage, the task of computation is a critical process. A pioneer solution to solve the problem is Edge computing, which will bring the computation closer to the IoT device. The computation can be done both in the device and in the remote edge, it is based on the need and resource availability of the IoT application. The offloading can be achieved by using the Deep Reinforcement learning algorithm (DRL) to acquire the concept of Nash Equilibrium. The offloading decisions can be taken based on Policy Gradient algorithm to overcome the problem of Markov Decision Process. The various algorithms of policy gradient are compared with the standard algorithm used for offloading.
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