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Fault Diagnosis of Steam Turbine-Generator Sets Using an EPSO-Based Support Vector Classifier

机译:基于EPSO的支持向量分类器的汽轮发电机组故障诊断。

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This paper proposes an enhanced particle swarm optimization (EPSO)-based support vector classifier (SVC) that extracts the support vector from databases, in order to diagnose vibration faults in steam turbine-generator sets (STGS). SVC has been successfully applied to the classification of data with linear or nonlinear features, because it allows generalization. However, the design of the best SVC model for the acquisition of the best hyperplane is often difficult and depends heavily on the operators' experience or on trial-and-error experiments. In this paper, an EPSO algorithm is used to automatically tune the control parameters of an SVC. Since EPSO is an excellent optimization tool, it is easily sufficient for the design of an optimal SVC model. The proposed approach is applied to an STGS, to test its diagnostic accuracy. The test results demonstrate that the proposed EPSO-based SVC method has a higher diagnostic accuracy and a shorter learning time than classical neural network-based methods. This study also provides advice on handling a loss of data features for unknown reasons.
机译:本文提出了一种基于增强粒子群优化(EPSO)的支持向量分类器(SVC),该分类器从数据库中提取支持向量,以诊断汽轮发电机组(STGS)的振动故障。由于SVC可以泛化,因此已成功应用于具有线性或非线性特征的数据分类。但是,为获得最佳超飞机而设计最佳SVC模型通常很困难,并且在很大程度上取决于运营商的经验或反复试验。在本文中,EPSO算法用于自动调整SVC的控制参数。由于EPSO是出色的优化工具,因此对于设计最佳SVC模型来说就足够了。所提出的方法应用于STGS,以测试其诊断准确性。测试结果表明,与传统的基于神经网络的方法相比,基于EPSO的SVC方法具有更高的诊断准确度和较短的学习时间。这项研究还提供了处理未知原因的数据丢失功能的建议。

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