首页> 外文期刊>Renewable & Sustainable Energy Reviews >Comparison of four heuristic regression techniques in solar radiation modeling: Kriging method vs RSM, MARS and M5 model tree
【24h】

Comparison of four heuristic regression techniques in solar radiation modeling: Kriging method vs RSM, MARS and M5 model tree

机译:太阳辐射建模中四种启发式回归技术的比较:克里格法与RSM,MARS和M5模型树

获取原文
获取原文并翻译 | 示例
           

摘要

In this study, four different heuristic regression methods including Kriging, response surface method (RSM), multivariate adaptive regression (MARS) and M5 model tree (M5Tree) have been investigated for accurate estimating of solar radiation with different input data. Monthly solar radiation (SR) from Adana and Antakya stations, which are located in Eastern Mediterranean Region of Turkey is estimated based on the input data of maximum temperature (T-max), minimum temperature (T-min), sunshine hours (H-s), wind speed (W-s), and relative humidity (RH). In Adana station, the best MARS model provided slightly better accuracy than the Kriging, RSM and M5Tree while the Kriging was found to be the better than the MARS, RSM and M5Tree in Antakya station. The predictions of M5Tree model are shown inaccurate results for both maximum errors and minimum agreement compared to another models. The effect of periodicity input is examined to obtain the accurate predictions of solar radiation for these stations based on the four heuristic -based modeling Kriging, MARS, RSM, M5Tree approaches. Periodicity input data improved the root mean square errors of the best MARS, RSM, M5Tree and Kriging models as 34%, 37%, 46% and 39% for Adana station and by 51%, 47%, 38% and 49% for Antakya station, respectively. The periodic Kriging models performed superior to the periodic MARS, RSM and M5Tree models.
机译:在这项研究中,已经研究了四种不同的启发式回归方法,包括Kriging,响应面方法(RSM),多元自适应回归(MARS)和M5模型树(M5Tree),以利用不同的输入数据准确估计太阳辐射。根据最高温度(T-max),最低温度(T-min),日照小时(Hs)的输入数据,估算位于土耳其东部地中海地区的Adana和Antakya站的月太阳辐射(SR) ,风速(Ws)和相对湿度(RH)。在阿达纳站,最好的MARS模型提供的精度比Kriging,RSM和M5Tree略好,而发现Kriging优于安塔基亚站的MARS,RSM和M5Tree。与其他模型相比,M5Tree模型的预测显示出最大误差和最小一致性的不准确结果。基于四种启发式建模Kriging,MARS,RSM,M5Tree方法,检查了周期性输入的影响以获得这些站的太阳辐射的准确预测。周期性的输入数据改善了最佳MARS,RSM,M5Tree和Kriging模型的均方根误差,Adana站分别为34%,37%,46%和39%,Antakya分别为51%,47%,38%和49%站。周期性Kriging模型的性能优于周期性MARS,RSM和M5Tree模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号