Temperature Prediction Method for Force Sensor Based on VMD -CNN-LSTM-Attention
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更新:2025-10-11 22:50:17 浏览:8次
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摘要
Nonlinear zero drift in force sensors is caused by factors such as non-uniform temperature heating of strain gauges during actual operation and temperature imbalance caused by self-heating of the acquisition and amplification module. To achieve effective compensation, this research puts forward a temperature prediction and compensation solution integrating VMD decomposition and the CNN-LSTM-Attention model. The workflow is structured as: first, applying VMD to decompose filtered data; then, using CNN to extract local features, LSTM to capture time-series dependencies, and the learnable attention mechanism to focus on temperature mutation points—measures that effectively elevate compensation precision.
关键词
deep learning; VMD; Temperature compensation; Learnable attention
稿件作者
Wenkai Su
Anhui University
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