State of Energy Prediction in Renewable Energy-driven Mobile Edge Computing using CNN-LSTM Networks

Yu-Jen Ku, Sandalika Sapra, S. Baidya, S. Dey
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引用次数: 10

Abstract

Renewable energy (RE) is a promising solution to save grid power in mobile edge computing (MEC) systems and thus reducing the carbon footprints. However, to effectively operate the RE-based MEC system, a method for predicting the state of energy (SoE) in the battery is essential, not only to prevent the battery from over-charging or over-discharging, but also allowing the MEC applications to adjust their loads in advance based on the energy availability. In this work, we consider RE-powered MEC systems at the Road-side Unit (RSU) and focus on predicting its battery's SoE by using machine learning technique. We developed a real-world RE-powered RSU testbed consisting of edge computing devices, small cell base station, and solar as well as wind power generators. By operating RE-powered RSU for serving real-world computation task offloading demands, we collect the corresponding data sequences of battery's SoE and other observable parameters of the MEC systems that impact the SoE. Using a variant of Long Short-term Memory (LSTM) model with additional convolutional layers, we form a CNN-LSTM model which can predict the SoE accurately with very low prediction error. Our results show that CNN-LSTM outperforms other Recurrent Neural Networks (RNN) based models for predicting intra-hour and hour-ahead SoE.
基于CNN-LSTM网络的可再生能源驱动移动边缘计算的能量状态预测
可再生能源(RE)是一种很有前途的解决方案,可以在移动边缘计算(MEC)系统中节省电网电力,从而减少碳足迹。然而,为了有效地运行基于re的MEC系统,一种预测电池能量状态(SoE)的方法是必不可少的,不仅可以防止电池过充或过放电,而且可以使MEC应用程序根据能量可用性提前调整其负载。在这项工作中,我们考虑了道路侧单元(RSU)的re供电MEC系统,并专注于通过使用机器学习技术预测其电池的SoE。我们开发了一个真实世界的re供电RSU测试平台,包括边缘计算设备、小型蜂窝基站、太阳能和风力发电机。通过运行re供电的RSU来满足现实世界的计算任务卸载需求,我们收集了电池SoE的相应数据序列以及MEC系统中影响SoE的其他可观察参数。利用一种长短期记忆(LSTM)模型的变体,加上额外的卷积层,我们形成了一个CNN-LSTM模型,该模型可以准确地预测SoE,预测误差很低。我们的研究结果表明,CNN-LSTM在预测小时内和小时前SoE方面优于其他基于循环神经网络(RNN)的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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