Eang Chanthol, Lee Seungjae
Department of Computer Science and Engineering, Intelligent Robot Research Institute, Sun Moon University, Asan 31460, Republic of Korea.
Sensors (Basel). 2024 Dec 24;25(1):25. doi: 10.3390/s25010025.
This research work presents an integrated method leveraging Convolutional Neural Networks and Recurrent Neural Networks (CNN-RNN) to enhance the accuracy of predictive maintenance and fault detection in DC motor drives of industrial robots. We propose a new hybrid deep learning framework that combines CNNs with RNNs to improve the accuracy of fault prediction that may occur on a DC motor drive during task processing. The CNN-RNN model determines the optimal maintenance strategy based on data collected from sensors, such as air temperature, process temperature, rotational speed, and so forth. The proposed AI model has the capacity to make highly accurate predictions and detect faults in DC motor drives, thus helping to ensure timely maintenance and reduce operational breakdowns. As a result, comparative analysis reveals that the proposed framework can achieve higher accuracy than the current existing method of combining CNN with Long Short-Term Memory networks (CNN-LSTM) as well as other CNNs, LSTMs, and traditional methods. The proposed CNN-RNN model can provide early fault detection for motor drives of industrial robots with a simpler architecture and lower complexity of the model compared to CNN-LSTM methods, which can enable the model to process faster than CNN-LSTM. It effectively extracts dynamic features and processes sequential data, achieving superior accuracy and precision in fault diagnosis, which can make it a practical and efficient solution for real-time fault detection in motor drive control systems of industrial robots.
这项研究工作提出了一种利用卷积神经网络和循环神经网络(CNN-RNN)的集成方法,以提高工业机器人直流电机驱动中预测性维护和故障检测的准确性。我们提出了一种新的混合深度学习框架,将卷积神经网络与循环神经网络相结合,以提高在任务处理过程中直流电机驱动可能出现的故障预测的准确性。CNN-RNN模型根据从传感器收集的数据,如空气温度、过程温度、转速等,确定最佳维护策略。所提出的人工智能模型有能力在直流电机驱动中进行高度准确的预测和故障检测,从而有助于确保及时维护并减少运行故障。结果,对比分析表明,所提出的框架比目前将卷积神经网络与长短期记忆网络相结合的现有方法(CNN-LSTM)以及其他卷积神经网络、长短期记忆网络和传统方法能实现更高的准确性。与CNN-LSTM方法相比,所提出的CNN-RNN模型可以为工业机器人的电机驱动提供早期故障检测,其架构更简单,模型复杂度更低,这使得该模型比CNN-LSTM处理速度更快。它有效地提取动态特征并处理序列数据,在故障诊断中实现卓越的准确性和精度,这使其成为工业机器人电机驱动控制系统实时故障检测实用且高效的解决方案。