Authors
Weishan Zhang, Wuwu Guo, Xin Liu, Yan Liu, Jiehan Zhou, Bo Li, Qinghua Lu, Su Yang
Publication date
2018/4/11
Journal
IEEE Access
Volume
6
Pages
23551-23560
Publisher
IEEE
Description
Industrial Internet of Things (IIoT) is producing massive data which are valuable for knowing running status of the underlying equipment. However, these data involve various operation events that span some time, which raise questions on how to model long memory of states, and how to predict the running status based on historical data accurately. This paper aims to develop a method of: (1) analyzing equipment working condition based on the sensed data; (2) building a prediction model for working status forecasting and designing a deep neural network model to predict equipment running data; and (3) improving the prediction accuracy by systematic feature engineering and optimal hyperparameter searching. We evaluate our method with real-world monitoring data collected from 33 sensors of a main pump in a power station for three months. The model achieves less root mean square error than that of …
Total citations
20182019202020212022202320245191927291910
Scholar articles
W Zhang, W Guo, X Liu, Y Liu, J Zhou, B Li, Q Lu… - IEEE Access, 2018