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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Adaptive gas path diagnostics using strong tracking filter
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Adaptive gas path diagnostics using strong tracking filter

机译:使用强跟踪滤波器的自适应气路诊断

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摘要

Kalman filters are very popular in gas path diagnostics. This algorithm estimates the engine state variables to assess engine health conditions and is accurate in tracking gradual deterioration. However, the performance of the Kalman filter deteriorates when an abrupt fault occurs. There could be a long delay with the Kalman filter in diagnosing the abrupt fault. In addition, the Kalman filter may transfer the abrupt fault on to other components. In this article, an adaptive gas path diagnostic method using strong tracking filter is described that can track gradual deterioration and abrupt fault accurately. The strong tracking filter is an adaptive extended Kalman filter, which introduces suboptimal fading factors into the prediction error covariance of the extended Kalman filter algorithm. The suboptimal fading factors automatically increase when an abrupt fault occurs, therefore, more importance is given to the new measurement in state estimation which allows the filter to quickly track abrupt faults. All of the suboptimal fading factors become one when gradual deterioration occurs, and in this situation, the strong tracking filter becomes the common extended Kalman filter to filter the measurement noise. Therefore, the strong tracking filter can track abrupt faults quickly and accurately, filter measurement noise, and obtain noise-free parameter estimation for gradual deterioration. The strong tracking filter is applied to heavy-duty gas turbine gas path diagnostics for a variety of simulated fault cases to demonstrate the capability of the strong tracking filter in accurately tracking gradual deterioration and abrupt fault.
机译:卡尔曼过滤器在气路诊断中非常受欢迎。该算法估计发动机状态变量以评估发动机的健康状况,并且可以准确地跟踪逐渐恶化的状况。但是,发生突发故障时,卡尔曼滤波器的性能会下降。诊断突发故障时,卡尔曼滤波器可能会有较长的延迟。另外,卡尔曼滤波器可以将突变故障转移到其他组件上。在本文中,描述了一种使用强跟踪滤波器的自适应气路诊断方法,该方法可以准确地跟踪逐渐恶化和突变的故障。强跟踪滤波器是自适应扩展卡尔曼滤波器,它将次优衰落因子引入扩展卡尔曼滤波器算法的预测误差协方差中。当发生突发故障时,次优衰落因子会自动增加,因此,状态估计中的新测量将获得更多的重视,它可以使滤波器快速跟踪突发故障。当逐渐恶化时,所有次优衰落因子都变为1,在这种情况下,强跟踪滤波器成为常见的扩展卡尔曼滤波器,以滤除测量噪声。因此,强大的跟踪滤波器可以快速,准确地跟踪突发故障,过滤测量噪声,并获得无噪声的参数估计值,以进行逐步恶化。强跟踪滤波器适用于各种模拟故障情况下的重型燃气轮机气路诊断,以证明强跟踪滤波器能够准确跟踪逐渐恶化和突变的故障。

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