Neural network based system for detecting and diagnosing faults in steam turbine of thermal power plant

Arian Dhini, B. Kusumoputro, I. Surjandari
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引用次数: 14

Abstract

Steam turbine is the main system of a steam power plant and critical for power generation. Therefore, there is urgency for maintaining the reliability and availability of a steam turbine. A fast and accurate fault detection and diagnosis (FDD) system should be developed as an integral part to prevent a system from catastrophic disaster due to unhandled failures. Many previous studies applied model-based methods to build the FDD system. However, using those approaches required prior knowledge of the system. The power plant is a complex system, where comprehensive process knowledge is a real challenge. On the other hand, power plants have implemented condition monitoring which resulted in process monitoring data. Therefore, this study proposed a data-driven FDD system in a steam turbine of thermal power plant. The study used the process monitoring data from an Indonesian government owned steam power plant. A neural network based classifier was constructed to detect and diagnose faults as well as normal operating condition based on three scenarios. The result showed that the last two scenarios, with and without PCA approach, outperformed the first scenario which only used selected process parameters. The study demonstrated the superiority of data driven approach in the fault detection and diagnosis area.
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基于神经网络的火电厂汽轮机故障检测与诊断系统
汽轮机是蒸汽发电厂的主要系统,对发电至关重要。因此,保持汽轮机的可靠性和可用性是当务之急。快速准确的故障检测与诊断(FDD)系统是防止系统因未处理的故障而造成灾难性灾难的重要组成部分。以往的许多研究都采用基于模型的方法来构建FDD系统。然而,使用这些方法需要系统的先验知识。电厂是一个复杂的系统,全面的工艺知识是一个真正的挑战。另一方面,电厂实施了状态监测,产生了过程监测数据。因此,本研究提出了一种数据驱动的火电厂汽轮机FDD系统。该研究使用了印度尼西亚政府拥有的蒸汽发电厂的过程监测数据。基于三种场景,构建了基于神经网络的分类器,对故障和正常运行状态进行检测和诊断。结果表明,最后两个场景,使用和不使用PCA方法,优于仅使用选定工艺参数的第一个场景。研究证明了数据驱动方法在故障检测与诊断领域的优越性。
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