Bi-objective Intelligent Task Scheduling for Green Clouds with Deep Learning-based Prediction

Heng Liu, Xiaofen Zhang, J. Bi, Haitao Yuan, Mengchu Zhou
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引用次数: 2

Abstract

The ever-increasing deployment of cloud data centers causes high energy consumption, high cost, and harmful environmental pollution. To solve above problems, cloud service providers are actively exploring to use green cloud data centers (GCDCs) by using green energy. Yet it is challenging to accurately predict the future wind and solar energy before making intelligent task scheduling decisions. In addition, it is difficult to jointly optimize cost and revenue. In this work, to make optimal task scheduling, various types of applications, service level agreements, service rates, task loss probability, electricity prices and green energy in different GCDCs are considered. First, this work employs a long short-term memory network to predict wind and solar energy. Then, it adopts a bi-objective optimization algorithm to achieve a better trade-off between cost and revenue of GCDCs. Finally, it adopts real-world data including workload trace, wind energy, solar energy and electricity prices to demonstrate the effectiveness of the proposed energy prediction and task scheduling methods. It's shown that the proposed methods achieve higher performance than other neural network methods.
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基于深度学习预测的绿色云双目标智能任务调度
随着云数据中心部署的不断增加,能耗高、成本高、环境污染严重。为了解决上述问题,云服务提供商正在积极探索利用绿色能源使用绿色云数据中心。然而,在制定智能任务调度决策之前,准确预测风能和太阳能的未来是一项挑战。此外,成本和收益难以共同优化。为了优化任务调度,本文考虑了不同gdc中的各类应用、服务水平协议、服务率、任务损失概率、电价和绿色能源等因素。首先,这项工作采用长短期记忆网络来预测风能和太阳能。然后,采用双目标优化算法,实现gdcs成本与收益的更好权衡。最后,采用工作负荷跟踪、风能、太阳能和电价等实际数据,验证了所提出的能源预测和任务调度方法的有效性。结果表明,该方法比其他神经网络方法具有更高的性能。
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