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Developing a predictive method based on optimized M5Rules-GA predicting heating load of an energy-efficient building system

机译:基于优化的M5RULES-GA预测能量效率建筑系统的加热负荷开发一种预测方法

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摘要

The main objective of this study is to examine the feasibility of several novel machine learning models and compare their network performance with the hybrid evolutionary based algorithm. In this regard, the best fit from the above machine learning-based solutions (i.e., known as M5Rules) were combined with the genetic algorithm (GA). These techniques were used to estimate the amount of heating load (H_L) mitigation from an EEB (energy efficiency buildings) system. Then, the mentioned methods are utilized to identify a relationship between the input and output parameters of the EEB system. The amount of H_L was taken as the essential output of the EEB system, while the input parameters were relative compactness, surface area, wall area, roof area, overall height, orientation, glazing area, and glazing area distribution. The predicted results for datasets from each of the above-mentioned models were evaluated according to several known statistical indices such as correlation coefficient (R~2), mean absolute error (MAE), root mean squared error (RMSE), relative absolute error (RAE), and root relative squared error (RRSE) as well as novel ranking systems of colour intensity rating and total ranking method. The M5Rules has been proposed as the best predictive network in this study and combined with the GA optimization algorithm. The results of the M5Rules-GA network indicated the R~2, MAE, RMSE, RAE, and RRSE for the training and testing datasets were (0.9992, 0.0406, 0.0617, 6.2156, and 6.0189) and (0.9984, 0.0401, 0.0548, 6.4058, and 6.1785), respectively. Comparing to another non-hybrid proposed model with high accuracy (i.e., MLP Regressor with the R~2 equal to 0.9876 and 0.9903 for the training and testing datasets, respectively), the results revealed that the M5Rules-GA network model could accomplish better performance.
机译:本研究的主要目的是研究几种新型机器学习模型的可行性,并通过混合进化基于算法比较其网络性能。在这方面,与上述基于机器的基于机器的溶液(即,称为m5rules)的最佳拟合与遗传算法(GA)相结合。这些技术用于估计EEB(能效建筑物)系统的加热负荷(H_L)缓解量。然后,利用所提到的方法来识别EEB系统的输入和输出参数之间的关系。将H_L的量作为EEB系统的基本输出,而输入参数是相对紧凑性,表面积,壁面积,屋顶区域,整体高度,方向,玻璃面积和玻璃区域分布。根据相关系数(R〜2),平均绝对误差(MAE),具有相对绝对误差(RMSE),相对绝对误差(RMSE),具有相对绝对误差( RAE)和根相对平方误差(RRSE)以及颜色强度等级的新型排名系统和总排名方法。已经提出了M5Rules作为本研究中最佳预测网络并与GA优化算法结合。 M5Rules-GA网络的结果表示R〜2,MAE,RMSE,RAE和RRSE用于训练和测试数据集(0.9992,0.0406,0.0617,6.2156和6.0189)和(0.9984,0.0401,0.0548,6.4058和6.1785)分别。与具有高精度的另一种非混合提出的模型(即,MLP回归相同的R〜2等于0.9876和0.9903,分别用于训练和测试数据集),结果表明,M5Rules-GA网络模型可以实现更好的性能。

著录项

  • 来源
    《Engineering with Computers》 |2020年第3期|931-940|共10页
  • 作者单位

    Department of Surface Mining Mining Faculty Hanoi University of Mining and Geology 18 Vien Street Duc Thang Ward Bac Tu Liem District Hanoi Vietnam Center for Mining Electro-Mechanical Research Hanoi University of Mining and Geology 18 Vien Street Duc Thang Ward Bac Tu Liem District Hanoi Vietnam;

    Department for Management of Science and Technology Development Ton Duc Thang University Ho Chi Minh City Vietnam Faculty of Civil Engineering Ton Duc Thang University Ho Chi Minh City Vietnam;

    Department of Geotechnics and Transportation School of Civil Engineering Faculty of Engineering Universiti Teknologi Malaysia Johor Bahru Malaysia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Optimization; M5Rules-GA; Genetic algorithm; Hybrid algorithm; Heating load;

    机译:优化;m5rules-ga;遗传算法;混合算法;加热负荷;
  • 入库时间 2022-08-18 21:22:06

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