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基于灰色关联度分析的山西省PSO-SVR需水量预测模型
引用本文:单义明,杨侃.基于灰色关联度分析的山西省PSO-SVR需水量预测模型[J].水电能源科学,2021(2):18-21.
作者姓名:单义明  杨侃
作者单位:河海大学水文水资源学院
基金项目:山西省水利科学技术研究与推广项目;国家重点基础研究发展计划(973计划)(2012CB417006)。
摘    要:为准确进行需水预测,提出一种基于灰色关联度分析的PSO-SVR需水预测模型,该模型运用灰色关联度分析方法筛选出需水的主要影响因子,在此基础上应用粒子群算法优化支持向量回归机(SVR)模型中的参数,并利用此模型预测2015?2017年山西省需水量.结果表明,总需水量相对误差的绝对值分别为0.02%、0.08%、0.03%...

关 键 词:灰色关联分析  支持向量回归机模型  粒子群算法  需水预测  山西省

Forecasting Model of PSO-SVR Water Requirement in Shanxi Province Based on Grey Correlation Analysis
SHAN Yi-ming,YANG Kan.Forecasting Model of PSO-SVR Water Requirement in Shanxi Province Based on Grey Correlation Analysis[J].International Journal Hydroelectric Energy,2021(2):18-21.
Authors:SHAN Yi-ming  YANG Kan
Affiliation:(College of Hydrology and Water Resources,Hohai University,Nanjing 210098,China)
Abstract:In order to accurately-predict water demand,a PSO-SVR water demand forecast model is proposed based on gray correlation analysis.The gray correlation analysis method was used to screen out the main influencing factors of water demand.And then the particle swarm optimization algorithm was adopted to optimize the parameters of support vector regression machine(SVR) model.The model was used to predict the water demand in Shanxi Province from 2015 to 2017.The results show that the absolute values of the relative errors of the total water demand are 0.02%,0.08%,and0.03%,respectively.It can be seen that the PSO-SVR model has a high degree of fitting and prediction accuracy,which can provide a new method for water demand prediction.
Keywords:grey relational analysis  SVR model  particle swarm algorithm  water demand prediction  Shanxi Province
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