| 注册
首页|期刊导航|辽宁石油化工大学学报|基于SVM-GA模型的城市天然气长期负荷预测

基于SVM-GA模型的城市天然气长期负荷预测

董明亮 刘培胜 潘振 文江波 李秉繁

辽宁石油化工大学学报2017,Vol.37Issue(2):31-36,6.
辽宁石油化工大学学报2017,Vol.37Issue(2):31-36,6.DOI:10.3969/j.issn.1672-6952.2017.02.007

基于SVM-GA模型的城市天然气长期负荷预测

A Forecasting Model of Natural Gas Long-Term Load Based on SVM-GA

董明亮 1刘培胜 1潘振 1文江波 1李秉繁1

作者信息

  • 1. 辽宁石油化工大学 石油天然气工程学院,辽宁 抚顺 113001
  • 折叠

摘要

Abstract

Long-term natural gas load forecasting can solve the problem of the imbalance between supply and demand of city gas and provide assistance for the city gas company's management and running.In order to improve the accuracy of predicting the long-term natural gas load, a forecasting model of natural gas long-term load was built based on SVM-GA(Support Vector Machines-Genetic Algorithm).The relevant factors influencing natural gas consumption was analyzed and determined.In order to improve prediction accuracy, the penalty factor c and the kernel parameter g of support vector machines were optimized using genetic algorithm and cross validation methods.Optimized parameters were inputted support vector machines model and long-term natural gas load forecasting was made.In a case study from a certain city, a comparative analysis was made of the forecasting results among SVM-GA, SVM and cross-validation method combined prediction model and BP(Back Propagation) neural networks.The forecasting model based on SVM-GA was validated with a high prediction accuracy and the resulted relative mean square error, normalization mean square error,normalization absolute square error,normalization root-mean square error, maximum absolute error resulted from the SVM-GA were lower than those from SVM and cross-validation method combined prediction model or BP neural networks by 0.58%,3.98%,2.99%,4.58%,8.64% and 6.13%,26.28%,19.71%,21.09%,31.48%.Therefore,the support vector machine and genetic algorithm combined model can accurately predict the long-term natural gas load.

关键词

天然气长期负荷/SVM/BP神经网络/遗传算法/交叉验证法/预测/精度

Key words

Natural gas long-term load/SVM/BP neural networks/Genetic algorithm/Cross validation/Forecast/Accuracy

分类

能源科技

引用本文复制引用

董明亮,刘培胜,潘振,文江波,李秉繁..基于SVM-GA模型的城市天然气长期负荷预测[J].辽宁石油化工大学学报,2017,37(2):31-36,6.

基金项目

辽宁省高等学校优秀人才支持计划项目(LJQ2014038). (LJQ2014038)

辽宁石油化工大学学报

1672-6952

访问量0
|
下载量0
段落导航相关论文