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基于典型相关和人工粒子群的大坝监测分析模型
引用本文:花胜强,高 磊,潘 琳,周锡琅.基于典型相关和人工粒子群的大坝监测分析模型[J].水电能源科学,2013,31(10):64-66.
作者姓名:花胜强  高 磊  潘 琳  周锡琅
作者单位:南瑞集团公司 水利水电技术分公司, 江苏 南京 210003;南瑞集团公司 水利水电技术分公司, 江苏 南京 210003;南瑞集团公司 水利水电技术分公司, 江苏 南京 210003;南瑞集团公司 水利水电技术分公司, 江苏 南京 210003
基金项目:江苏省自然科学基金资助项目(BK2011136)
摘    要:针对大坝安全监测多效应量统计分析模型存在相关性而影响模型精度问题,提出了优化方案,预先对效应量和影响因子进行典型相关性分析,实现变量降维并提取与效应量相关性大的自变量作为模型输入因子构建多元线性回归模型,并基于人工粒子群算法求解最优偏回归系数。经与全回归、逐步回归、偏最小二乘回归模型比较验证,实例表明所建模型有较优的拟合效果和预测精度、鲁棒性强。

关 键 词:大坝监测    回归分析    多重线性相关    典型相关性分析    人工粒子群算法

Dam Monitoring Analysis Model Based on Typical Correlation and PSO
HUA Shengqiang,GAO Lei,PAN Lin and ZHOU Xilang.Dam Monitoring Analysis Model Based on Typical Correlation and PSO[J].International Journal Hydroelectric Energy,2013,31(10):64-66.
Authors:HUA Shengqiang  GAO Lei  PAN Lin and ZHOU Xilang
Abstract:In this paper, an optimization program is proposed for accuracy problem caused by the correlation of multi factors on dam safety monitoring analysis model. Firstly, typical correlation analysis is carried out with effect variables and influencing factor to obtain dimension reduction and principal components, on which a multiple linear regression model would be built as input factors. And then, partial regression coefficients are solved based on artificial particle swarm optimization algorithm. Compared with full regression, stepwise regression, and partial least squares regression, the results show that the proposed model has good fitting effect and forecast accuracy, as well as strong robustness.
Keywords:dam monitoring  regression analysis  multi linear correlation  typical correlation analysis  PSO
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