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隔河岩大坝拱冠梁位移与环境量关系的分析
引用本文:肖泽云,田斌.隔河岩大坝拱冠梁位移与环境量关系的分析[J].水电自动化与大坝监测,2010,34(5).
作者姓名:肖泽云  田斌
作者单位:三峡大学水利与环境学院,湖北省宜昌市,443002
摘    要:清江隔河岩水电站自1993年蓄水发电至今已运行近20年,各项性态趋于稳定.根据清江隔河岩大坝近年来的大坝安全监测资料,主要针对拱冠梁15号坝段的位移,在基于物理推断分析的基础上,采用统计模型和反向传播(BP)神经网络模型进行了分析与研究.通过对2种模型分析的结果进行比较,应用BP神经网络模型进行分析具有更高的拟合精度和预测精度.分析结果表明:隔河岩大坝拱冠梁径向位移与上游水位呈正相关,与气温呈显著的负相关;拱冠梁切向位移与上游水位和气温无明显的关系,且径向位移非常小,拱冠基本呈对称状态,符合拱坝变形规律.

关 键 词:大坝  拱冠梁  环境量  统计模型  BP神经网络模型

Relationship Between Environmental Variables and Displacements of Crown Cantilever of Geheyan Dam
XIAO Zeyun , TIAN Bin.Relationship Between Environmental Variables and Displacements of Crown Cantilever of Geheyan Dam[J].HYDROPOWER AUTOMATION AND DAM MONITORING,2010,34(5).
Authors:XIAO Zeyun  TIAN Bin
Affiliation:XIAO Zeyun,TIAN Bin(China Three Gorges University,Yichang 443002,China)
Abstract:Geheyan Hydropower Station on Qingjiang River has been in service for nearly 20 years since it begun to impound water and generate power in 1993,and every parameter tends to be stable.According to the monitoring data of Geheyan Dam in recent years,the statistical model and BP neural network model are employed to analyze the displacement of the crown cantilever of dam section No.15 based on the physical inference analysis.By comparing the results of the two models,it is found that the results of the BP neura...
Keywords:dam  crown cantilever  environmental variable  statistical model  BP neural network model  
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