2024
DOI: 10.1088/1361-6501/ad66f7
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Dual temporal attention mechanism-based convolutional LSTM model for industrial dynamic soft sensor

Jiarui Cui,
Yuyu Shi,
Jian Huang
et al.

Abstract: Deep learning is an appropriate methodology for modeling complex industrial data in the field of soft sensors, owing to its powerful feature representation capability. Given the nonlinear and dynamic nature of the process industry, the key challenge for soft sensor technology is to effectively mine dynamic information from long sequences and accurately extract features of relevance to quality. A dual temporal attention mechanism-based convolutional long short-term memory network (DTA-ConvLSTM) under an encoder… Show more

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