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A virtual machine energy consumption prediction method

A prediction method and virtual machine technology, applied in the field of cloud computing, can solve the problems of large training errors, affecting the stability of incremental extreme learning machines, reducing the accuracy and efficiency of virtual machine energy consumption prediction, and reducing network training errors. , the effect of speeding up network convergence and improving stability

Active Publication Date: 2020-08-04
BEIJING INSTITUTE OF TECHNOLOGYGY
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AI Technical Summary

Problems solved by technology

In the prior art, the prediction model based on the traditional incremental extreme learning machine has many redundant nodes that reduce the accuracy and efficiency of virtual machine energy consumption prediction, and the random generation of hidden layer node parameters affects the stability of the incremental extreme learning machine Therefore, it is very important to design an efficient prediction model for virtual machine energy consumption prediction

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  • A virtual machine energy consumption prediction method
  • A virtual machine energy consumption prediction method
  • A virtual machine energy consumption prediction method

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Embodiment Construction

[0044] The present invention will be described in detail below with reference to the accompanying drawings and examples.

[0045] The invention provides a method for predicting energy consumption of a virtual machine, the basic idea of ​​which is: the historical data of energy consumption of the virtual machine is input into an incremental extreme learning machine to predict and obtain the current energy consumption of the virtual machine. At the same time, the incremental extreme learning machine is improved. First, an acceleration item is added to the incremental extreme learning machine model. This acceleration item expresses the impact of the compression factor and network training errors on the prediction results, which can speed up the incremental The convergence speed of the extreme learning machine can improve the generalization performance of the incremental extreme learning machine; the second is to optimize the random parameters used in the training process of the ex...

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Abstract

The invention discloses a virtual machine energy consumption prediction method. The invention can realize the energy consumption prediction of the virtual machine. In this invention, by adding an acceleration term to the existing incremental limit learning machine model, the training error and compression factor of the network are fed back to the output of the hidden layer, so that the predictionresult is closer to the output sample, the number of redundant hidden layer nodes of the incremental limit learning machine can be reduced, and the network convergence speed of the incremental limit learning machine can be accelerated. By introducing compression factor and evolutionary solution, in the training process, by the output weights generated randomly, the network training errors, compression factors, input samples, better hidden layer node parameters including input weights, threshold, output weights, network training errors are calculated, the network structure can be optimized, thestability of the network training process is improved, thereby effectively reducing the network training errors.

Description

technical field [0001] The invention relates to the technical field of cloud computing, in particular to a virtual machine energy consumption prediction method. Background technique [0002] With the rapid development of the Internet and cloud computing, many cloud data centers use cloud computing services to provide cloud services, that is, cloud service providers. Currently, cloud data centers that provide cloud services consume a large amount of energy every day, and energy consumption costs have become a problem that cannot be ignored by cloud service providers. Therefore, how to save energy and reduce energy consumption has become a key issue that cloud service providers need to solve urgently. In the cloud service model of infrastructure as a service (IaaS), accurately predicting the energy consumption of virtual machines (VMs) is of great importance for the formulation of scheduling strategies and migration and merging strategies for virtual machine scheduling betwee...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F11/30G06N3/02
CPCG06F11/3062G06N3/02Y02D10/00
Inventor 邹伟东夏元清李慧芳张金会翟弟华戴荔刘坤
Owner BEIJING INSTITUTE OF TECHNOLOGYGY
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