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A way to deal with model-plant mismatch for a reliable diagnosis in transient operation

机译:处理模型工厂不匹配的方法,以便在瞬态运行中进行可靠的诊断

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摘要

Least-squares health parameter identification techniques, such as the Kalman filter, have been extensively used to solve diagnosis problems. Indeed, such methods give a good estimate provided that the discrepancies between the model prediction and the measurements are Zero-mean, white, Gaussian random variables. In a turbine engine diagnosis, however this assumption does not always hold due to the presence of biases in the model. This is especially true for a transient operation. As a result, the estimated parameters tend to diverge from their actual values, which strongly degrades the diagnosis. The purpose of this contribution is to present a Kalman filter diagnosis tool where the model biases are treated as an additional random measurement error. The new methodology is tested on simulated transient data representative of a current turbofan engine configuration. While relatively simple to implement, the newly developed diagnosis tool exhibits a much better accuracy than the original Kalman filter in the presence of model biases.
机译:最小二乘健康参数识别技术(例如卡尔曼滤波器)已广泛用于解决诊断问题。的确,只要模型预测和测量之间的差异是零均值,白色,高斯随机变量,则此类方法可提供良好的估计。然而,在涡轮发动机诊断中,由于模型中存在偏差,该假设并不总是成立。对于瞬态操作尤其如此。结果,估计的参数趋向于偏离其实际值,这大大降低了诊断的质量。该贡献的目的是提出一种卡尔曼滤波器诊断工具,其中将模型偏差视为附加的随机测量误差。在代表当前涡扇发动机配置的模拟瞬态数据上测试了新方法。尽管实现起来相对简单,但是在存在模型偏差的情况下,新开发的诊断工具比原始的卡尔曼滤波器具有更高的准确性。

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