Zhao Lijuan, Wang Dongyang, Lin Guocong, Tian Shuo, Zhang Hongqiang, Wang Yadong
School of Mechanical Engineering, Liaoning Technical University, Fuxin, China.
Liaoning Province Large Scale Industrial and Mining Equipment Key Laboratory, Fuxin, China.
PLoS One. 2025 Feb 4;20(2):e0318767. doi: 10.1371/journal.pone.0318767. eCollection 2025.
The frequent bending of shearer cables during operation often leads to mechanical fatigue, posing risks to equipment safety. Accurately predicting the mechanical properties of these cables under bending conditions is crucial for improving the reliability and service life of shearers. This paper proposes a shearer optical fiber cable mechanical characteristics prediction model based on Temporal Convolutional Network (TCN), Bidirectional Long Short-Term Memory (BiLSTM), and Squeeze-and-Excitation Attention (SEAttention), referred to as the TCN-BiLSTM-SEAttention model. This method leverages TCN's causal and dilated convolution operations to capture long-term sequential features, BiLSTM's bidirectional information processing to ensure the completeness of sequence information, and the SEAttention mechanism to assign adaptive weights to features, effectively enhancing the focus on key features. The model's performance is validated through comparisons with multiple other models, and the contributions of input features to the model's predictions are quantified using Shapley Additive Explanations (SHAP). By learning the stress variation patterns between the optical fiber, power conductor, and control conductor in the shearer cable, the model enables accurate prediction of the stress in other cable conductors based on optical fiber stress data. Experiments were conducted using a shearer optical fiber cable bending simulation dataset with traction speeds of 6 m/min, 8 m/min, and 10 m/min. The results show that, compared to other predictive models, the proposed model achieves reductions in Mean Squared Error (MSE), Root Mean Squared Error (RMSE), and Mean Absolute Error (MAE) to 0.0002, 0.0159, and 0.0126, respectively, with the coefficient of determination (R2) increasing to 0.981. The maximum deviation between predicted and actual values is only 0.86%, demonstrating outstanding prediction accuracy. SHAP feature analysis reveals that the control conductor features have the most substantial influence on predictions, with a SHAP value of 0.095. The research shows that the TCN-BiLSTM-SEAttention model demonstrates outstanding predictive capability under complex operating conditions, providing a novel approach for improving cable management and equipment safety through optical fiber monitoring technology in the intelligent development of coal mines, highlighting the potential of deep learning in complex mechanical predictions.
采煤机电缆在运行过程中频繁弯曲,常导致机械疲劳,对设备安全构成风险。准确预测这些电缆在弯曲条件下的力学性能,对于提高采煤机的可靠性和使用寿命至关重要。本文提出了一种基于时间卷积网络(TCN)、双向长短期记忆网络(BiLSTM)和挤压激励注意力机制(SEAttention)的采煤机光纤电缆力学特性预测模型,简称TCN-BiLSTM-SEAttention模型。该方法利用TCN的因果卷积和扩张卷积操作来捕捉长期序列特征,BiLSTM的双向信息处理来确保序列信息的完整性,以及SEAttention机制为特征分配自适应权重,有效增强对关键特征的关注。通过与其他多个模型进行比较验证了该模型的性能,并使用Shapley值法(SHAP)量化了输入特征对模型预测的贡献。通过学习采煤机电缆中光纤、动力线芯和控制线芯之间的应力变化模式,该模型能够基于光纤应力数据准确预测其他电缆线芯中的应力。利用牵引速度分别为6米/分钟、8米/分钟和10米/分钟的采煤机光纤电缆弯曲模拟数据集进行了实验。结果表明,与其他预测模型相比,所提模型的均方误差(MSE)、均方根误差(RMSE)和平均绝对误差(MAE)分别降至0.0002、0.0159和0.0126,决定系数(R2)提高到0.981。预测值与实际值之间的最大偏差仅为0.86%,显示出出色的预测精度。SHAP特征分析表明,控制线芯特征对预测的影响最大,SHAP值为0.095。研究表明,TCN-BiLSTM-SEAttention模型在复杂运行条件下表现出出色的预测能力,为煤矿智能化发展中通过光纤监测技术改善电缆管理和设备安全提供了一种新方法,凸显了深度学习在复杂机械预测中的潜力。