基于深度对数网络的云负载估计与时间序列优化

N. Bhalaji
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引用次数: 6

摘要

近年来,我们面临着云计算的工作量和时间序列问题。这导致了网络、计算和资源的浪费。为了克服这个问题,我们在我们提出的工作中使用了集成的深度学习方法。利用时间序列对工作负载和资源分配进行准确的预测,提高了网络的性能。首先采用对数运算减小标准差,然后采用强力滤波器去除极值点和噪声干扰。进一步采用综合深度学习方法对时间序列进行预测。该方法随时间序列准确地预测了资源的工作负荷和顺序。然后用最小-最大标量对得到的数据进行标准化,并结合网络模型保持网络的质量。最后,将本文提出的方法与目前常用的方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud Load Estimation with Deep Logarithmic Network for Workload and Time Series Optimization
In recent days, we face workload and time series issue in cloud computing. This leads to wastage of network, computing and resources. To overcome this issue we have used integrated deep learning approach in our proposed work. Accurate prediction of workload and resource allocation with time series enhances the performance of the network. Initially the standard deviation is reduced by applying logarithmic operation and then powerful filters are adopted to remove the extreme points and noise interference. Further the time series is predicted by integrated deep learning method. This method accurately predicts the workload and sequence of resource along with time series. Then the obtained data is standardized by a Min-Max scalar and the quality of the network is preserved by incorporating network model. Finally our proposed method is compared with other currently used methods and the results are obtained.
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