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Fault intelligent diagnosis for high-pressure feed-water heater system of a 300 MW coal-fired power unit based on improved BP neural network

机译:基于改进的BP神经网络的300 MW燃煤电力单元的高压进料热水器系统故障智能诊断

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In this paper, the multi-layer forward-direction ANN is used for fault intelligent diagnosis for thermal systems in power stations. In order to overcome the demerit of overlong training time and slow convergence rate of the BP algorithm, an improved BP algorithm, "learning rate self-adaptive adjusting method based on constant error correction rate", is put forward, with which the network training efficiency can be greatly Improved. Besides the ANN structure and its training algorithm, another important factor to realize fault diagnosis with neural network is the fault symptom calculation. The calculating methods for different fault symptoms are discussed in detail. At last, the high-pressure feed-water heater system of a 300MW thermal power generating unit is taken as example of fault diagnosis. The fault knowledge library of the system is summarized with the fault symptom calculation method, and the fault diagnosis is further realized based on above improved BP neural network.
机译:在本文中,多层向前方向ANN用于电站热系统的故障智能诊断。为了克服VP算法的重叠训练时间和缓慢收敛速率的缺点,提出了一种改进的BP算法,“基于恒定纠错率的学习率自适应调整方法”,是网络训练效率可以大大提高。除了ANN结构及其训练算法外,还有神经网络实现故障诊断的另一个重要因素是故障症状计算。详细讨论了不同故障症状的计算方法。最后,300MW火力发电单元的高压进料热水器系统作为故障诊断的示例。系统的故障知识库总结了故障症状计算方法,基于上述改进的BP神经网络进一步实现了故障诊断。

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