In this paper, a novel soft sensor is developed by combining long short-term memory (LSTM) network with normalized mutual information feature selection (NMIFS). In the proposed algorithm, LSTM is designed to handle time series with high nonlinearity and dynamics of industrial processes. NMIFS is conducted to perform the input variable selection for LSTM to simplify the excessive complexity of the model. The developed soft sensor combines the excellent dynamic modelling of LSTM and precise variable selection of NMIFS. Simulations on two actual production datasets are used to demonstrate the performance of the proposed algorithm. The developed soft sensor could precisely predict the objective variables and has better performance than other methods.
CITATION STYLE
Li, D., Li, Z., & Sun, K. (2020). Development of a Novel Soft Sensor with Long Short-Term Memory Network and Normalized Mutual Information Feature Selection. Mathematical Problems in Engineering, 2020. https://doi.org/10.1155/2020/7617010
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