Hubei Key Laboratory of Power Equipment & System Security for Integrated Energy, Wuhan 430072, China.
School of Electrical Engineering and Automation, Wuhan University, Wuhan 430072, China.
Sensors (Basel). 2023 May 25;23(11):5082. doi: 10.3390/s23115082.
The intelligent fault diagnosis of main circulation pumps is crucial for ensuring their safe and stable operation. However, limited research has been conducted on this topic, and applying existing fault diagnosis methods designed for other equipment may not yield optimal results when directly used for main circulation pump fault diagnosis. To address this issue, we propose a novel ensemble fault diagnosis model for the main circulation pumps of converter valves in voltage source converter-based high voltage direct current transmission (VSG-HVDC) systems. The proposed model employs a set of base learners already able to achieve satisfying fault diagnosis performance and a weighting model based on deep reinforcement learning that synthesizes the outputs of these base learners and assigns different weights to obtain the final fault diagnosis results. The experimental results demonstrate that the proposed model outperforms alternative approaches, achieving an accuracy of 95.00% and an score of 90.48%. Compared to the widely used long and short-term memory artificial neural network (LSTM), the proposed model exhibits improvements of 4.06% in accuracy and 7.85% in score. Furthermore, it surpasses the latest existing ensemble model based on the improved sparrow algorithm, with enhancements of 1.56% in accuracy and 2.91% in score. This work presents a data-driven tool with high accuracy for the fault diagnosis of main circulation pumps, which plays a critical role in maintaining the operational stability of VSG-HVDC systems and satisfying the unmanned requirements of offshore flexible platform cooling systems.
主循环泵的智能故障诊断对于确保其安全稳定运行至关重要。然而,针对这一主题的研究有限,并且将针对其他设备设计的现有故障诊断方法直接应用于主循环泵故障诊断可能无法获得最佳结果。为了解决这个问题,我们提出了一种用于电压源换流器高压直流输电(VSG-HVDC)系统中换流阀主循环泵的新型集成故障诊断模型。所提出的模型采用了一组已经能够实现令人满意的故障诊断性能的基础学习者,以及基于深度强化学习的加权模型,该模型综合了这些基础学习者的输出,并为每个学习者分配不同的权重,以获得最终的故障诊断结果。实验结果表明,所提出的模型优于替代方法,达到了 95.00%的准确率和 90.48%的 F1 分数。与广泛使用的长短期记忆人工神经网络(LSTM)相比,所提出的模型在准确率上提高了 4.06%,在 F1 分数上提高了 7.85%。此外,它还超越了基于改进的麻雀算法的最新现有集成模型,在准确率上提高了 1.56%,在 F1 分数上提高了 2.91%。这项工作提出了一种具有高精度的主循环泵故障诊断数据驱动工具,对于维持 VSG-HVDC 系统的运行稳定性和满足海上柔性平台冷却系统的无人要求至关重要。