抽水蓄能电站大坝变形改进因子模型与预测方法研究OA
Research on improved factor model and prediction method for dam deformation in pumped storage power stations
我国规划建设了大批抽水蓄能电站.抽蓄电站具有水位变化速率快、变幅大的特征,构建适合其运行特征的大坝变形因子模型及预测方法对其安全评价具有重要意义.针对传统因子模型未考虑库水位变化速率影响的问题,本研究在传统模型基础上新增库水位变化速率因子,构建了改进的变形因子模型.针对高维因子冗余问题,提出了融合核主成分分析和深度自回归神经网络的组合模型,通过因子降维与深度学习建模以提高预测性能.以溧阳抽蓄电站大坝工程为例进行分析,结果表明:融入水位变化速率因子后,模型精度显著优于传统模型;所提出的组合预测模型平均绝对误差较对比模型平均降低约36.27%,预测性能明显提升.本研究为抽水蓄能电站大坝变形分析与安全评价提供了新的定量分析方法.
China has planned and built many pumped-storage hydropower stations which are characterized by rapid and large-amplitude water-level fluctuations.Developing dam deformation factor models and prediction methods that can describe these operating characteristics is crucial for dam safety assessment.Based on traditional models,this study develops an improved deformation factor model that is equipped with an additional factor representing the water-level change rate,to address the limitation of conventional factor models caused by lack of this rate factor.To mitigate redundancy in high-dimensional factors,we work out a new hybrid framework that is used to integrate kernel principal component analysis and a deep autoregressive neural network,thereby enhancing predictive performance through jointly applying factor dimensionality reduction and deep-learning-based modeling.Application to a case study of the dam for a pumped-storage station shows this method achieves an accuracy significantly higher than that of the conventional models by adding the water-level change rate factor.And,it reduces the mean absolute error by roughly 36.27%on average relative to the benchmark models,demonstrating a significant improvement in model prediction,as a new approach to dam deformation analysis and safety evaluation.
宋锦焘;谢锦华;许增光;覃源;程琳;马春辉
西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048西安理工大学 水利水电学院,西安 710048||西安理工大学 省部共建西北旱区生态水利国家重点实验室,西安 710048
建筑与水利
抽水蓄能电站大坝变形深度自回归神经网络核主成分分析
pumped-storage power stationdam deformationdeep autoregressive neural networkkernel principal component analysis
《水力发电学报》 2026 (6)
52-63,12
国家自然科学基金面上项目(52579135)国家自然科学基金联合重点项目(U25B20224)陕西水利科技计划项目(2025slkj-8)
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