Li Xu, Xu Zhuofei, Guo Pengcheng
School of Water Resources and Hydroelectric Engineering, Xi'an University of Technology, Xi'an 710048, China.
Sensors (Basel). 2024 May 31;24(11):3551. doi: 10.3390/s24113551.
Hydropower units are the core equipment of hydropower stations, and research on the fault prediction and health management of these units can help improve their safety, stability, and the level of reliable operation and can effectively reduce costs. Therefore, it is necessary to predict the swing trend of these units. Firstly, this study considers the influence of various factors, such as electrical, mechanical, and hydraulic swing factors, on the swing signal of the main guide bearing -axis. Before swing trend prediction, the multi-index feature selection algorithm is used to obtain suitable state variables, and the low-dimensional effective feature subset is obtained using the Pearson correlation coefficient and distance correlation coefficient algorithms. Secondly, the dilated convolution graph neural network (DCGNN) algorithm, with a dilated convolution graph, is used to predict the swing trend of the main guide bearing. Existing GNN methods rely heavily on predefined graph structures for prediction. The DCGNN algorithm can solve the problem of spatial dependence between variables without defining the graph structure and provides the adjacency matrix of the graph learning layer simulation, avoiding the over-smoothing problem often seen in graph convolutional networks; furthermore, it effectively improves the prediction accuracy. The experimental results showed that, compared with the RNN-GRU, LSTNet, and TAP-LSTM algorithms, the MAEs of the DCGNN algorithm decreased by 6.05%, 6.32%, and 3.04%; the RMSEs decreased by 9.21%, 9.01%, and 2.83%; and the CORR values increased by 0.63%, 1.05%, and 0.37%, respectively. Thus, the prediction accuracy was effectively improved.
水轮发电机组是水电站的核心设备,对这些机组的故障预测与健康管理进行研究有助于提高其安全性、稳定性以及可靠运行水平,并能有效降低成本。因此,有必要对这些机组的摆度趋势进行预测。首先,本研究考虑了电气、机械和水力摆度因素等各种因素对主导轴承 - 轴摆度信号的影响。在进行摆度趋势预测之前,使用多指标特征选择算法来获取合适的状态变量,并利用皮尔逊相关系数和距离相关系数算法得到低维有效特征子集。其次,采用具有扩张卷积图的扩张卷积图神经网络(DCGNN)算法来预测主导轴承的摆度趋势。现有的图神经网络方法在预测时严重依赖预定义的图结构。DCGNN算法无需定义图结构即可解决变量之间的空间依赖问题,并提供图学习层模拟的邻接矩阵,避免了图卷积网络中常见的过平滑问题;此外,它有效提高了预测精度。实验结果表明,与RNN-GRU、LSTNet和TAP-LSTM算法相比,DCGNN算法的平均绝对误差分别降低了6.05%、6.32%和3.04%;均方根误差分别降低了9.21%、9.01%和2.83%;相关系数分别提高了0.63%、1.05%和0.37%。因此,有效提高了预测精度。