Building a time series predictive model using machine learning or deep learning for, intermittently sampled, vehicle diagnostic data

I’m relatively new to machine learning and deep learning subjects but have experience in matlab programming. I’m looking for a fundamental method of predicting the occurance of diagnostic data from a complex vehicle system such as a plane or train. Diagnostic data is recorded when an event with a particular code is triggered; that code then retrieves a set of environment variables such as speed, pressure, temperature etc. The data is sampled only when an event it triggered so the sampling, more often then not, does not have a constant frequency. I have data that tells me that the accumulation of an event and its environment variable leads to a maintenance action. Any pointers towards building a predictive model would be nice. Thanks Faz.

카테고리

도움말 센터File Exchange에서 Statistics and Machine Learning Toolbox에 대해 자세히 알아보기

제품

릴리스

R2018b

질문:

2019년 8월 9일

답변:

2019년 9월 10일

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