Deep Neural Network Based Computational Resource Allocation for Mobile Edge Computing

Ji Li, Tiejun Lv
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引用次数: 5

Abstract

The fifth generation of mobile technology, 5G, is facing a new challenge of explosive data traffic growth and massive device connection. 5G network new businesses such as driverless cars and smart grid require low delay, which are also energy-consuming applications. Mobile Edge Computing (MEC) is proposed as a new paradigm to provide computational resources for mobile users at the edge of mobile networks by deploying dense high-performance servers. Mobile devices (MDs) can migrate part of their tasks to the MEC server for parallel computation via wireless channel to obtain better user experience. Optimization algorithms have been reliable for solving such resource allocation problems. However, the iterative optimization algorithms are not suitable for the high real-time MEC system due to the complex operations and iterations. To tackle this challenge, we propose a deep neural network based algorithm. Firstly we use a classic optimization algorithm sequential quadratic programming (SQP) to get the optimization results. Then we train the DNN to approximate the behavior of SQP with the optimization results. The experiment results show that our proposed DNN based theme can be trained to well approximate SQP with high accuracy while speeding up the running time hundreds of times to meet the real-time requirement. Further, the comparison between the special DNN and general DNN show that we just need to train a general DNN with tolerable performance loss instead of training special DNNs towards different parameters like the number of MDs in the MEC system.
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基于深度神经网络的移动边缘计算资源分配
第五代移动技术5G正面临数据流量爆炸式增长和海量设备连接的新挑战。无人驾驶汽车和智能电网等5G网络新业务需要低延迟,这也是耗能的应用。移动边缘计算(MEC)是一种通过部署密集的高性能服务器为移动网络边缘的移动用户提供计算资源的新范式。移动设备可以通过无线通道将部分任务迁移到MEC服务器进行并行计算,从而获得更好的用户体验。优化算法对于解决这类资源分配问题是可靠的。然而,迭代优化算法由于操作和迭代复杂,不适合高实时性的MEC系统。为了解决这一挑战,我们提出了一种基于深度神经网络的算法。首先,我们使用经典的优化算法序列二次规划(SQP)来得到优化结果。然后用优化结果训练DNN来近似SQP的行为。实验结果表明,本文提出的基于深度神经网络的主题训练可以很好地逼近SQP,精度较高,同时将运行时间加快数百倍,满足实时性要求。此外,通过对特殊DNN和一般DNN的比较,我们只需要训练一个性能损失可以容忍的一般DNN,而不需要针对MEC系统中MDs的数量等不同参数来训练特殊DNN。
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