2023
DOI: 10.3390/app13148335
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Data-Driven Model Space Method for Fault Diagnosis of High-Speed Train Air Brake Pipes

Abstract: A data-driven fault diagnosis method is proposed in this study to address the challenge of handling a large volume of pressure data in the air brake pipe of high-speed trains. The suggested method utilizes a BP (back propagation) neural network to transform the time series pressure data into model elements in the model space, ensuring simplicity and stability. Various fitting functions, including Fourier basis, Gaussian basis, polynomial basis, sine basis, and others, are employed to accurately fit the pressur… Show more

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