基于马尔可夫链误差校正的SVM-LSTM联合负荷预测模型

Qi Yang, Xin Han, Yibo Ning, Yujie Hui, ZhiQiang Qin, XiaoYing Xiao
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引用次数: 0

摘要

负载均衡一般分为静态负载均衡策略和动态负载均衡策略两种。静态负载均衡策略缺乏实时性,而动态负载均衡策略可以根据服务器的实时性选择合适的服务器来处理请求。随着机器学习和深度学习的发展,可以建立模型来预测服务器未来的负载,可以提前知道服务器的性能。本文将支持向量机与LSTM相结合,提出了一种基于马尔可夫链纠错的SVM-LSTM组合负荷预测模型。在公开数据集上的实验表明,该模型的实验结果优于单一预测模型和不加马尔可夫误差校正的组合预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined Load Prediction Model of SVM-LSTM based on Markov Chain Error Correction
Generally, load balancing is implemented based on static load balancing strategy or dynamic load balancing strategy. Static load balancing strategy lacks real-time performance, while dynamic load balancing strategy can select the appropriate server to process requests according to the real-time performance of the server. With the development of machine learning and deep learning, models can be built to predict the load of the server in the future, and the performance of the server can be known in advance. In this paper, a combined load prediction model of SVM-LSTM based on Markov chain error correction is proposed by combining support vector machine and LSTM. Experiments on public data sets show that the experimental results of this model are better than the single prediction model and the combined prediction model without Markov error correction.
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