Time Series Prediction of Wastewater Flow Rate by Bidirectional LSTM Deep Learning

This paper not only addresses a feasible strategy in predicting time series or sequences by using deep neural nets such as bi-LSTM (bidirectional Long Short-Term Memory), but also demonstrates fairly good results of forecasting wastewater flow rate for a municipal wastewater treatment plant in a pra...

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Veröffentlicht in:International journal of control, automation, and systems 2020, Automation, and Systems, 18(12), , pp.3023-3030
Hauptverfasser: Kang, Hoon, Yang, Seunghyeok, Huang, Jianying, Oh, Jeill
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Sprache:eng
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Zusammenfassung:This paper not only addresses a feasible strategy in predicting time series or sequences by using deep neural nets such as bi-LSTM (bidirectional Long Short-Term Memory), but also demonstrates fairly good results of forecasting wastewater flow rate for a municipal wastewater treatment plant in a practical sense. The basic procedures of time series prediction by deep learning are to collect the past information of all available states for deep learning and to utilize p -step ahead delays of a no-training interval with a sliding time window. Therefore, the sequence-to-point p -step prediction of sewage flow of Yangju wastewater treatment plant could be made possible by using bi-LSTM in accordance with this fundamental principle.
ISSN:1598-6446
2005-4092
DOI:10.1007/s12555-019-0984-6