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抽水蓄能电站地下水位预测的优化神经网络模型--郭浩然,李映,黄鹤程

摘要:

抽水蓄能电站地下水位预测的优化神经网络模型--郭浩然,李映,黄鹤程

摘要:

分类:2022年第03期(总第168期)

发布: 2022-07-05 17:32:49

详情描述

  郭浩然1,李 映1,黄鹤程2

  (1.中国电建集团贵阳勘测设计研究院有限公司,贵州 贵阳 550081;

  2.南方电网调峰调频发电有限公司,广东 广州 510630)

  摘 要:抽水蓄能电站上、下水库落差大,水头高,针对输水系统沿线山体地下水位变化的监测和预测对电站安全运行过程中的监测分析具有重要意义。为实现施工期山体水位预测,通过环境监测站获取多项环境监测数据,结合PCA(主成分分析)和GA(遗传算法)优化BP神经网络方法,建立PCA-GA-BP优化模型对地下水位进行预测。选取广东某抽水蓄能电站环境量及输水系统沿线山体水位孔数据,在分析测点、测站布置及地下水位影响因素基础上,对优化算法模型进行验证、比较。实验结果表明:优化模型具有较高预测精度,在高、中、低水位预测中综合相对误差较低,决定系数更高,均优于单BP预测模型,并通过PCA法使得网络拓扑结构更简单,提高综合预测精度,具有较好的预测效果,在实际运用中可以为安全分析、工程预警等领域提供一定参考。

  关键词:地下水位预测;主成分分析;遗传算法;优化神经网络;抽水蓄能电站;输水系统

  Optimized neural network model for groundwater level prediction in pumped-storage power stations

  GUO Haoran1,LI Ying1,HUANG Hecheng2

  (1.Powerchina Guiyang Engineering Corporation Limiter,Guiyang 550081,China;

  2.CSG Power Generation Co.,Ltd.,Guangzhou 510630,China)

  Abstract:The drop between upper and lower reservoirs of a pumped-storage power station is large, and the water head is high. The monitoring and prediction of mountain groundwater level change along the water conveyance system is of great significance to safe operation monitoring of the power station. In order to predict mountain groundwater level during construction period, environmental monitoring data were obtained through the environmental monitoring station. By combining PCA (Principal Component Analysis) and GA (Genetic Algorithm) to optimize the BP neural network method, a PCA-GA-BP optimization model was established for groundwater level prediction. One pumped-storage power station in Guangdong is selected, and its environmental factors and mountain groundwater well data along the water delivery system are used. The optimized algorithm model is verified on the basis of analyzing measuring points, layout of the measuring station and impact factors of the groundwater level. The results show that the optimized model has high prediction accuracy, low comprehensive relative error and high determination coefficient in high, medium and low water level prediction, which is better than the single BP prediction model. And the network topology is simpler than the PCA method, which improves comprehensive prediction accuracy and thus has a better prediction performance. In practice, the optimized model can provide reference for safety analysis, engineering early warning and other fields.

  Key words:groundwater level prediction;principal component analysis;genetic algorithm;optimized BP neural network;pumped-storage power station;water conveyance system;

  • 抽水蓄能电站地下水位预测的优化神经网络模型.pdf
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版权所有:水利部南京水利水文自动化研究所     苏ICP备05086125号     中企动力  南京