Axle temperature fault detection method based on NEST and SPRT fusion algorithm
A technology of fault detection and fusion algorithm, which is applied in the direction of mechanical bearing testing, mechanical component testing, machine/structural component testing, etc. It can solve the problem of low accuracy of shaft temperature detection and achieve high accuracy
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[0037] Embodiment 1, the shaft temperature fault detection method based on NEST and SPRT fusion algorithm, such as figure 1 shown, including the following steps:
[0038] S1) Obtain the characteristic set of the historical data of the train axle temperature, and use the gray correlation analysis algorithm to perform feature dimensionality reduction on the historical data feature set of the train axle temperature, and obtain the characteristic parameters of the train axle temperature after dimensionality reduction.
[0039] Due to the complex working environment in the actual operation of the standard EMU, the relevant factors affecting the axle temperature of the EMU are also different. Due to the large data dimension of the data returned by the EMU, some indicators have no effect on the axle temperature, and some indicators have an impact on the axle temperature. is very small, therefore, it is necessary to reduce the dimensionality of the returned data set, and further reduc...
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