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SVM-DS fusion based soft fault detection and diagnosis in solar water heaters

机译:基于SVM-DS融合的太阳能热水器软故障检测与诊断

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摘要

As faults in the solar water heaters are structurally complicated and highly correlated, an approach of fault diagnosis on the basis of support vector machine and D-S evidence theory has been proposed in this study, attempting to enhance the system's thermal efficiency and ensure its safety. In the approach presented, information of audio conditions, temperature at the outlet of solar thermal collectors, hourly flow and hourly heat transfer rate are accessible, which facilitate the feature evidence and are diagnosed by using one-against-one multi-class support vector machine. Experiments are conducted to diagnose fault information fusion and the results show that the diagnosis approach proposed in this study is of high reliability with fewer uncertainties, indicating that the approach is capable to recognize and diagnose solar water heater faults accurately.
机译:由于太阳能热水器的故障结构复杂,相关性高,本研究提出了一种基于支持向量机和D-S证据理论的故障诊断方法,试图提高系统的热效率,确保系统的安全性。在提出的方法中,可以访问音频条件,太阳能集热器出口温度,每小时流量和每小时传热速率的信息,这些信息有助于特征证据,并且可以使用一对一的多类支持向量机进行诊断。 。进行了故障信息融合诊断实验,结果表明,本文提出的诊断方法具有较高的可靠性,不确定性较小,表明该方法能够准确地识别和诊断太阳能热水器的故障。

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