Health prediction of lifting machinery based on CNN and bidirectional LSTM with encoder-decoder architecture
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School of Big Data & Software Engineering, Chongqing University, Chongqing 400044, P. R. China

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Supported by the National Key R&D Program of China(2024YFC3014900).

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    Abstract:

    To address challenges in multi-time-step health prediction for lifting machinery, such as short data spans, high-frequency measurements, multi-dimensional feature complexity, and limited labeled data, this paper proposes a hybrid method combining convolutional neural network (CNN) and bidirectional long short-term memory (BiLSTM) networks with an encoder-decoder architecture (ED-BLSTM). The method begins by chronologically organizing monitoring data, followed by segmenting and reconstructing the dataset while maintaining consistent input-output time step sizes. The processed data is first fed into a CNN to extract the main features, generating a multi-dimensional feature matrix. This matrix then trains a BiLSTM network within an encoder-decoder framework to build a predictive model for multistep forecasting of machinery health status. Comparative experimental results show that the method reduces validation loss by 0.097% to 0.474% and prediction loss by 1.230% to 1.411%, outperforming current mainstream approaches. These results demonstrate its potential to advance predictive maintenance in industrial equipment.

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陈宇豪,杨正益,文俊浩.CNN和双向编码解码LSTM融合的起重机械健康预测方法[J].重庆大学学报,2025,48(6):74~83

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  • Received:May 11,2021
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  • Online: July 11,2025
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