计算机科学
Lyapunov优化
资源配置
云计算
推论
任务(项目管理)
强化学习
边缘设备
移动边缘计算
分布式计算
实时计算
边缘计算
GSM演进的增强数据速率
软件部署
最优化问题
无线
人工智能
计算机网络
算法
工程类
系统工程
李雅普诺夫指数
操作系统
混乱的
Lyapunov重新设计
电信
作者
Wenhao Fan,Zeyu Chen,Zhibo Hao,Yi Su,Fan Wu,Bihua Tang,Yuanan Liu
标识
DOI:10.1109/tii.2022.3192882
摘要
Joint task inference, which fully utilizes end edge cloud cooperation, can effectively enhance the performance of deep neural network (DNN) inference services in the industrial internet of things (IIoT) applications. In this paper, we propose a novel joint resource management scheme for a multi task and multi service scenario consisting of multiple sensors, a cloud server, and a base station equipped with an edge server . A time slotted system model is proposed, incorporating DNN deployment, data size control, task offloading, computing resource allocation, and wireless channel allocation. Among them, the DNN deployment is to deploy proper DNNs on the edge server under its total resource constraint, and the data size control is to make trade off between task inference accuracy and task transmission delay through changing task da ta size. Our goal is to minimize the total cost including total task processing delay and total error inference penalty while guaranteeing long term task queue stability and all task inference accuracy requirements. Leveraging the Lyapunov optimization, we first transform the optimization problem into a deterministic problem for each time slot. Then, a deep deterministic policy gradient (DDPG) based deep reinforcement learning (DRL) algorithm is designed to provide the near optimal solution. We further desi gn a fast numerical method for the data size control sub problem to reduce the training complexity of the DRL model, and design a penalty mechanism to prevent frequent optimizations of DNN deployment. Extensive experiments are conducted by varying differen t crucial parameters. The superiority of our scheme is demonstrated in comparison with 3 other schemes.
科研通智能强力驱动
Strongly Powered by AbleSci AI