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Remaining Useful Life Prediction Techniques of Electric Valves for Nuclear Power Plants with Convolution Kernel and LSTM

机译:卷积核和LSTM剩余的核电站电阀的使用寿命预测技术

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Electric valves have significant importance in industrial applications, especially in nuclear power plants. Keeping in view the quantity and criticality of valves in any plant, it is necessary to analyze the degradation of electric valves. However, it is difficult to inspect each valve in conventional maintenance. Keeping in view the quantity and criticality of valves in any plant, it is necessary to analyze the degradation of electric valves. Thus, there exists a genuine demand for remote sensing of a valve condition through nonintrusive methods as well as prediction of its remaining useful life (RUL). In this paper, typical aging modes have been summarized. The data for sensing valve conditions were gathered during aging experiments through acoustic emission sensors. During data processing, convolution kernel integrated with LSTM is utilized for feature extraction. Subsequently, LSTM which has an excellent ability in sequential analysis is used for predicting RUL. Experiments show that the proposed method could predict RUL more accurately compared to other typical machine learning and deep learning methods. This will further enhance maintenance efficiency of any plant.
机译:电阀对工业应用具有重要意义,特别是在核电厂。保持在查看任何植物中阀的数量和临界性,有必要分析电阀的劣化。但是,难以在传统的维护中检查每个阀门。保持在查看任何植物中阀的数量和临界性,有必要分析电阀的劣化。因此,通过非流体方法存在真正的遥感阀状况的要求以及预测其剩余的使用寿命(RUL)。在本文中,总结了典型的老化模式。通过声发射传感器在老化实验期间收集传感阀条件的数据。在数据处理期间,使用与LSTM集成的卷积内核用于特征提取。随后,使用顺序分析具有优异能力的LSTM用于预测RUL。实验表明,与其他典型的机器学习和深度学习方法相比,该方法可以更准确地预测RUL。这将进一步提高任何植物的维护效率。

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