Load Prediction Techniques in Cloud Environment

Esraa Mohammad Ahmad Jaradat
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引用次数: 1

Abstract

Businesses and websites have rapidly increased their energy consumption, necessitating the development of data centres tailored to the cloud. Predicting when a system's resources will be needed means you can allocate them more efficiently and save money in the cloud. Predictive accuracy may be increased by classifying loads first. In this research, we offer a new method for predicting future demand for cloud-centric data centres. The Phase Space Reconstruction (PSR) and Extended Approximation-Group Method of Data Handling (EA-GMDH) methods are compared to the Bayesian model for predicting the mean load over a long-term time period. Multi-step ahead CPU load prediction using Support Vector Regression is very stable, i.e., its prediction error increases quite slowly as the predicted steps increase; this is in contrast to a neural network, which predicts the future load based on the past historical data and is distinguished by the presence of hidden layers
云环境下的负荷预测技术
企业和网站的能源消耗迅速增加,因此有必要开发适合云计算的数据中心。预测何时需要系统资源意味着您可以更有效地分配它们,并在云中节省资金。通过首先对负荷进行分类,可以提高预测的准确性。在这项研究中,我们提供了一种预测未来以云为中心的数据中心需求的新方法。将相空间重构(PSR)和扩展近似群数据处理方法(EA-GMDH)方法与贝叶斯模型进行了比较,用于预测长期平均负荷。基于支持向量回归的多步超前CPU负载预测是非常稳定的,即随着预测步长的增加,其预测误差的增加非常缓慢;这与神经网络相反,神经网络根据过去的历史数据预测未来的负荷,并通过隐藏层的存在来区分
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