Wang Shan, Li Jiaxiang, Xu Xinsheng, Wu Ruiqi, Qiu Yuhang, Chen Xuwen, Qiao Zijian
Tianjin Key Laboratory for Advanced Mechatronic System Design and Intelligent Control, School of Mechanical Engineering, Tianjin University of Technology, Tianjin 300384, China.
National Demonstration Center for Experimental Mechanical and Electrical Engineering Education, Tianjin University of Technology, Tianjin 300384, China.
Sensors (Basel). 2025 Jun 11;25(12):3654. doi: 10.3390/s25123654.
Bearings are critical yet vulnerable components in mechanical equipment, with potential failures that can significantly impact system performance. As stochastic resonance methods effectively convert noise energy into fault characteristic energy within bearing vibration signals, they remain a research focus in bearing fault diagnosis. This study proposes a coupled neuron model based on biological stochastic resonance effects for processing bearing vibration signals. To enhance parameter optimization, we develop an improved deep reinforcement learning algorithm that incorporates a prioritized experience replay buffer into the network architecture. Using the SNR as the evaluation metric, the algorithm performs data screening on the replay buffer parameters before training the deep network for predicting coupled neuron model performance. In terms of experimental content, the study performed data processing on simulated signals and vibration signals of gearbox bearing faults collected in the laboratory environment. By comparing the coupled neuron model optimized with a reinforcement learning algorithm, particle swarm algorithm, and quantum particle swarm algorithm, the experimental results show that the coupled neuron model optimized with a deep reinforcement learning algorithm has the optimal signal-to-noise ratio of the output signal and recognition rate of the bearing faults, which are -13.0407 dB and 100%, respectively. The method shows significant performance advantages in realizing the energy enhancement of the bearing fault eigenfrequency and provides a more efficient and accurate solution for bearing fault diagnosis, which has important engineering application value.
轴承是机械设备中关键但易损的部件,其潜在故障会对系统性能产生重大影响。由于随机共振方法能有效将噪声能量转换为轴承振动信号中的故障特征能量,因此一直是轴承故障诊断领域的研究热点。本研究提出一种基于生物随机共振效应的耦合神经元模型,用于处理轴承振动信号。为了加强参数优化,我们开发了一种改进的深度强化学习算法,该算法将优先经验回放缓冲区纳入网络架构。以信噪比作为评估指标,该算法在训练深度网络以预测耦合神经元模型性能之前,对回放缓冲区参数进行数据筛选。在实验内容方面,该研究对实验室环境中收集的齿轮箱轴承故障的模拟信号和振动信号进行了数据处理。通过比较用强化学习算法、粒子群算法和量子粒子群算法优化后的耦合神经元模型,实验结果表明,用深度强化学习算法优化后的耦合神经元模型输出信号的信噪比最优,轴承故障识别率为100%,分别为-13.0407 dB和100%。该方法在实现轴承故障特征频率能量增强方面表现出显著的性能优势,为轴承故障诊断提供了一种更高效、准确的解决方案,具有重要的工程应用价值。