Predicting the failure of railway point machines by using Autoregressive Integrated Moving Average and Autoregressive-Kalman methods
2017 ◽
Vol 232
(6)
◽
pp. 1790-1799
Keyword(s):
In this paper, forercasting methods that use autoregressive integrated moving average (ARIMA) and autoregressive-Kalman (AR-Kalman) are presented for the prediction of the failure state of S700K railway point machines. Using signal processing methods such as wavelet transform and statistical analysis and the stator current signal, the authors have acquired the time series data of the point machine behavior using a near-failure test point machine. Prediction methods are implemented by utilizing the acquired time series data, and the results are compared with the specified failure margin. Furthermore, the prposed ARIMA method used in this study is compared with the AR-Kalman prediction method, and prediction errors are analysed.
2019 ◽
Vol 9
(1)
◽
pp. 220
2019 ◽
Vol 13
(3)
◽
pp. 135-144
1997 ◽
Vol 1581
(1)
◽
pp. 89-92
2015 ◽
Vol 1
(1)
◽
pp. 15
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Prediction Of Tiger Shrimp Supply Using Time Series Anlysis Method Case Study CV.Surya Perdana Benur
2021 ◽
Vol 3
(1)
◽
pp. 27-32