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Fault Degradation State Prediction under Closed-loop Control for 1000MW Ultra Supercritical Unit

机译:1000MW超超临界机组闭环控制下的故障退化状态预测

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Due to the complicated structure and the harsh operating conditions of 1000MW ultra supercritical unit, it inevitably suffers from fault degradation. Once a fault seriously degrades, it may lead to unplanned shutdown, causing serious economic losses and even casualties. In order to ensure the safe and reliable operation of a 1000MW ultra supercritical unit, it is necessary to predict the fault degradation state to determine the reasonable maintenance time, thus eliminating safety hazards and reducing the risk of unplanned shutdown of the unit. Besides, closed-loop control system is commonly used in 1000MW ultra supercritical units to regulate process disturbance or track set points. Therefore, process dynamics caused by closed-loop control system, including serial correlation and varying speed of process variation, should be considered while forecasting fault degradation state. In this work, a combined Canonical Variate Analysis and Slow Feature Analysis (CVA-SFA) is applied to extract features that can fully reflect process dynamics under closed-loop control. Then, Continuous Hidden Markov Models (CHMMs) are built to predict fault degradation state by these features. Finally, the proposed method is applied in a real industrial process of 1000MW ultra supercritical unit to verify its feasibility and efficacy.
机译:由于1000MW超超临界机组结构复杂,运行条件​​恶劣,不可避免地会出现故障恶化的现象。一旦故障严重恶化,可能会导致计划外停机,从而造成严重的经济损失,甚至造成人员伤亡。为了确保1000MW超超临界机组的安全可靠运行,有必要预测故障的退化状态以确定合理的维护时间,从而消除安全隐患,降低机组意外停机的风险。此外,在1000MW超超临界机组中通常使用闭环控制系统来调节过程干扰或跟踪设定点。因此,在预测故障退化状态时,应考虑由闭环控制系统引起的过程动力学,包括串行相关性和过程变化的变化速度。在这项工作中,应用了规范变量分析和慢特征分析(CVA-SFA)的组合来提取特征,这些特征可以在闭环控制下充分反映过程动态。然后,建立连续隐马尔可夫模型(CHMM)以通过这些功能预测故障退化状态。最后,将该方法应用于实际的1000MW超超临界机组工业过程中,验证了该方法的可行性和有效性。

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