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Forecasting model of residential load based on general regression neural network and PSO-Bayes least squares support vector machine 被引量:5

Forecasting model of residential load based on general regression neural network and PSO-Bayes least squares support vector machine
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摘要 Firstly,general regression neural network(GRNN) was used for variable selection of key influencing factors of residential load(RL) forecasting.Secondly,the key influencing factors chosen by GRNN were used as the input and output terminals of urban and rural RL for simulating and learning.In addition,the suitable parameters of final model were obtained through applying the evidence theory to combine the optimization results which were calculated with the PSO method and the Bayes theory.Then,the model of PSO-Bayes least squares support vector machine(PSO-Bayes-LS-SVM) was established.A case study was then provided for the learning and testing.The empirical analysis results show that the mean square errors of urban and rural RL forecast are 0.02% and 0.04%,respectively.At last,taking a specific province RL in China as an example,the forecast results of RL from 2011 to 2015 were obtained. Firstly, general regression neural network (GRNN) was used for variable selection of key influencing factors of residential load (RL) forecasting. Secondly, the key influencing factors chosen by GRNN were used as the input and output terminals of urban and rural RL for simulating and learning. In addition, the suitable parameters of final model were obtained through applying the evidence theory to combine the optimization results which were calculated with the PSO method and the Bayes theory. Then, the model of PSO-Bayes least squares support vector machine (PSO-Bayes-LS-SVM) was established. A case study was then provided for the learning and testing. The empirical analysis results show that the mean square errors of urban and rural RL forecast are 0.02% and 0.04%, respectively. At last, taking a specific province RL in China as an example, the forecast results of RL from 2011 to 2015 were obtained.
出处 《Journal of Central South University》 SCIE EI CAS 2011年第4期1184-1192,共9页 中南大学学报(英文版)
基金 Project(07JA790092) supported by the Research Grants from Humanities and Social Science Program of Ministry of Education of China Project(10MR44) supported by the Fundamental Research Funds for the Central Universities in China
关键词 最小二乘支持向量机 广义回归神经网络 贝叶斯理论 负荷预测 PSO 模型基 住宅 影响因素 residential load load forecasting general regression neural network (GRNN) evidence theory PSO-Bayes least squaressupport vector machine
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