Modeling Heating and Cooling Loads in Buildings Using Gaussian Processes

L. G. Fonseca, P. Capriles, G. R. Duarte
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引用次数: 9

Abstract

The basic principle of the building energy efficiency is to use less energy for operations such as heating, cooling, lighting and other appliances, without impacting the health and comfort of its occupants. In order to measure energy efficiency in a building, it is necessary to estimate its heating and cooling loads, considering some of its physical characteristics such as geometry, material properties as well as local weather conditions, project costs and environmental impact. Machine Learning Methods can be applied to solve this problem by estimating a response from a set of inputs. This paper evaluates the performance of Gaussian Processes, also known as kriging, for predicting cooling and heating loads of residential buildings. The dataset consists of 768 samples with eight input variables and two output variables derived from building designs. The parameters were selected based on exhaustive search with cross validation. Four statistical measures and one synthesis index were used for the performance assessment and comparison. The results show Gaussian Processes consistently outperform other machine learning techniques such as Neural Networks, Support Vector Machines and Random Forests. The proposed framework resulted in accurate prediction models contributing to savings in the initial phase of the project avoidlng the modeling and testing of several designs.
基于高斯过程的建筑冷热负荷建模
建筑节能的基本原则是在不影响居住者健康和舒适的情况下,减少在加热、制冷、照明和其他电器等操作上的能源消耗。为了测量建筑物的能源效率,有必要估计其加热和冷却负荷,考虑其一些物理特性,如几何形状、材料特性以及当地天气条件、项目成本和环境影响。机器学习方法可以通过估计一组输入的响应来解决这个问题。本文评估了高斯过程(也称为克里格)在预测住宅建筑冷热负荷方面的性能。该数据集由768个样本组成,其中8个输入变量和2个输出变量来自建筑设计。基于交叉验证的穷举搜索选择参数。采用4项统计指标和1项综合指标进行绩效评价和比较。结果表明,高斯过程始终优于其他机器学习技术,如神经网络、支持向量机和随机森林。建议的框架产生了准确的预测模型,有助于在项目的初始阶段节省成本,避免了对几种设计进行建模和测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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