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MST-HA: Multi-Modal Signal Fusion with Bayesian Optimization for Robust Industrial Robot Joint Health Assessment

Haoyu Wang, Zilong Yin, Bin Chen, Xiyue Yan, Chenyu Zhou, Beibei Zhang, Xinyuan Li, Haichao Xu

Year
2025
Citations
4

Abstract

This paper presents a novel multi-modal deep learning framework for industrial robot joint health assessment and prediction, leveraging non-invasive signal fusion and Bayesian optimization. The proposed method addresses the challenges of comprehensive joint state monitoring in complex industrial environments without disrupting normal operations. We integrate Hall-effect current sensors, external accelerometers, and joint encoders to collect multi-modal data, including motor currents, vibrations, and kinematic information. A novel Adaptive Multi-Receptive Field Attention Network (AMRFAN) is employed to extract features from each modality, while a synchrosqueezing transform (SST) is utilized to capture time-frequency characteristics. An attention mechanism dynamically adjusts the weights of different modalities, and a bidirectional long short-term memory (BiLSTM) network models the temporal dependencies in the fused features. To enhance model performance and generalization, we implement a Bayesian optimization framework for hyperparameter tuning. Furthermore, we incorporate a Bayesian neural network to quantify prediction uncertainties, providing reliability metrics for decision-making processes. Experimental results on a four-axis industrial robot demonstrate that our framework achieves a 98.3% accuracy in joint health state classification and a mean absolute error of 4.2 in remaining useful life prediction, outperforming state-of-the-art single-modality methods. The proposed approach offers a robust, adaptable solution for real-time health monitoring and predictive maintenance of industrial robot joints, potentially improving manufacturing efficiency and reliability.

Keywords

Computer scienceModalBayesian probabilityJoint (building)Sensor fusionRobotSIGNAL (programming language)FusionBayesian optimizationArtificial intelligence

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