An advancing method for web service reliability and scalability using ResNet convolution neural network optimized with Zebra Optimization Algorithm

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS Transactions on Emerging Telecommunications Technologies Pub Date : 2024-04-24 DOI:10.1002/ett.4968
D. Gokulakrishan, R. Ramakrishnan, G. Saritha, B. Sreedevi
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Abstract

Web service reliability and scalability is an important mission that keeps web services running normally. Within web service, the web services invoked by users not only depend on the service itself, but also on web load condition. Due to the features of web dynamics, traditional reliability and scalability methods have become inappropriate; at the same time, the web condition parameter sparsity problem will cause inaccurate reliability prediction. To address these challenges, Web Service Reliability and Scalability Determination Using ResNet Convolutional Neural Network optimized with Zero Optimization Algorithm (WRS-ResNetCNN-ZOA) is proposed in this manuscript. Initially, the input data is collected from WSRec dataset. The ResNet convolutional neural network (ResNetCNN) with Business Process Execution Language (BPEL) specification is introduced to forecast the reliability and scalability of web service. The results are categorized as right and wrong based on ResNetCNN. The weight parameters of the ResNetCNN is optimized by Zebra Optimization Algorithm to improve accuracy of the prediction. The performance of the proposed method is examined under some performance metrics, like F-measure, reliability, scalability, accuracy, sensitivity, specificity, and precision. The proposed technique attains 15.36%, 35.39%, 23.87%, 20.67% better reliability, 42.39%, 11.39%, 34.16%, 25.78% better accuracy when analyzed to the existing methods, like Web Reliability based on K-clustering, (WRS-KClustering), Web Reliability prediction based on AdaBoostM1 and J48 (WRS-AdaM1-J48), Web Reliability prediction based on Online service Reliability (WRS-OPUN), and Web Reliability prediction based on Dynamic Bayesian Network (WRS-DBNS), respectively.

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利用斑马优化算法优化的 ResNet 卷积神经网络提高网络服务可靠性和可扩展性的方法
网络服务的可靠性和可扩展性是保证网络服务正常运行的一项重要任务。在网络服务中,用户调用的网络服务不仅取决于服务本身,还取决于网络负载状况。由于网络动态性的特点,传统的可靠性和可扩展性方法已不适用;同时,网络条件参数稀疏性问题也会导致可靠性预测不准确。为解决这些难题,本文提出了使用零优化算法优化的 ResNet 卷积神经网络(WRS-ResNetCNN-ZOA)进行网络服务可靠性和可扩展性判断。最初,输入数据来自 WSRec 数据集。在此基础上,引入带有业务流程执行语言(BPEL)规范的 ResNet 卷积神经网络(ResNetCNN)来预测网络服务的可靠性和可扩展性。预测结果根据 ResNetCNN 分为正确和错误。ResNetCNN 的权重参数通过斑马优化算法进行优化,以提高预测的准确性。根据一些性能指标,如 F 值、可靠性、可扩展性、准确性、灵敏度、特异性和精确度,对所提出方法的性能进行了检验。所提出的技术的可靠性分别提高了 15.36%、35.39%、23.87% 和 20.67%,准确性分别提高了 42.39%、11.39%、34.16% 和 25.78%。与基于 K 聚类的网络可靠性预测(WRS-KClustering)、基于 AdaBoostM1 和 J48 的网络可靠性预测(WRS-AdaM1-J48)、基于在线服务可靠性的网络可靠性预测(WRS-OPUN)和基于动态贝叶斯网络的网络可靠性预测(WRS-DBNS)等现有方法相比,所提技术的准确率分别提高了 15.36%、35.39%、23.87%、20.67%、42.39%、11.39%、34.16%、25.78%。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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