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Applying Neural Networks to detect the failures of turbines in thermal power facilities

机译:应用神经网络检测火力发电设备中的涡轮机故障

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Due to the growing demand on electricity, how to improve the efficiency of equipment has become one of the critical issues in a thermal power plant. Related works reported that efficiency and availability depend heavily on high reliability and maintainability. Recently, the concept of e-maintenance has been introduced to reduce the cost of maintenance. In e-maintenance systems, the intelligent fault detection system plays a crucial role for identifying failures. Machine learning techniques are at the core of such intelligent systems and can greatly influence their performance. Applying these techniques to fault detection makes it possible to shorten shutdown maintenance and thus increase the capacity utilization rates of equipment. Therefore, this work applies Back-propagation Neural Networks (BPN) to analyze the failures of turbines in thermal power facilities. Finally, a real case from a thermal power plant is provided to evaluate the effectiveness.
机译:由于对电力的需求不断增长,如何提高设备效率已成为火力发电厂的关键问题之一。相关工作报道,效率和可用性在很大程度上取决于高可靠性和可维护性。最近,引入了电子维护的概念以降低维护成本。在电子维护系统中,智能故障检测系统对于识别故障至关重要。机器学习技术是此类智能系统的核心,可以极大地影响其性能。将这些技术应用于故障检测可以缩短停机维护时间,从而提高设备的产能利用率。因此,这项工作应用了反向传播神经网络(BPN)来分析火力发电设备中的涡轮机故障。最后,提供了一个热电厂的真实案例来评估有效性。

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