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Keywords: big data
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Proceedings Papers
Proc. ASME. APPC2019, ASME 2019 Asia Pacific Pipeline Conference, V001T11A001, May 15–19, 2019
Publisher: American Society of Mechanical Engineers
Paper No: APPC2019-7609
.... This research relies on actual production data and uses big data mining algorithms such as BP neural network, ARMA, seq2seq to establish oil temperature prediction model. The prediction result is less than 0.5 C, which solves the problem of accurate prediction of dynamic oil temperature during pipeline...