基于神经网络的锅炉四管泄漏故障诊断

Liangyu Ma, Ting Liu, Lei Cheng, Ningshu Wang
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引用次数: 1

摘要

四管泄漏故障是大型电厂锅炉机组最常见的故障之一,可能会导致锅炉异常停机,造成经济损失,甚至危及操作人员的安全。因此,利用先进的故障诊断方法,掌握四管泄漏故障规律,实时识别故障类型和位置具有重要意义。利用全范围模拟机,对某600MW超临界锅炉机组在不同协调控制方式下的四管泄漏故障进行了详细的故障模拟试验。将人工神经网络(ANN)与症状变焦技术相结合的智能故障诊断方法,实现了多负荷点、不同运行模式下不同严重程度的四管泄漏故障的在线诊断。故障诊断仿真试验表明,该方法能正确识别四管泄漏故障,具有一定的工程实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANN-based diagnosis of boiler four-tube leakage faults under different loads and operating modes
Four-tube leakage faults are among the most common faults in a large-scale power plant boiler unit, which may result in abnormal boiler shutdown, economic loss and even endanger the safety of operating personnel. Therefore, It is of great significance to grasp the rules of four-tube leakage faults and to recognize the fault type and location in real time with advanced fault diagnosis approach. With the help of a full-scope simulator, detailed fault simulation tests are carried out for the four-tube leakage faults of a 600MW supercritical boiler unit under different coordinated control modes. An intelligent fault diagnosis method, which combines artificial neural network (ANN) with symptom zoom technology, is applied to realize online fault diagnosis of four-tube leakage faults of varied severity at multiple load points and different operating modes. Fault diagnosis simulation tests show that this method can recognize the four-tube leakage faults correctly with certain engineering practicability.
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