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Gas turbine sensor failure detection utilizing a sparse coding methodology

机译:利用稀疏编码方法的燃气轮机传感器故障检测

摘要

A method and system for recognizing (and/or predicting) failures of sensors used in monitoring gas turbines applies a sparse coding process to collected sensor readings and defines the L-1 norm residuals from the sparse coding process as indicative of a potential sensor problem. Further evaluation of the group of residual sensor readings is perform to categorize the group and determine if there are significant outliers (“abnormal data”), which would be considered as more likely associated with a faulty sensor than noisy data. A time component is introduced into the evaluation that compares a current abnormal result with a set of prior results and making the faulty sensor determination if a significant number of prior readings also have an abnormal value. By taking the time component into consideration, the number of false positives is reduced.
机译:一种用于识别(和/或预测)用于监视燃气轮机的传感器故障的方法和系统,将稀疏编码过程应用于收集的传感器读数,并将稀疏编码过程中的L-1范数残差定义为潜在的传感器问题。对剩余传感器读数组进行进一步评估,以对该组进行分类,并确定是否存在明显的异常值(“异常数据”),与噪声数据相比,异常值更可能与故障传感器相关联。在评估中引入了时间分量,该时间分量将当前的异常结果与一组先前的结果进行比较,并确定传感器是否有故障,如果大量先前的读数也具有异常值。通过考虑时间分量,减少了误报的数量。

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