利用机器学习方法预测办公大楼的供暖和制冷能源需求

Xavier Godinho, Hermano Bernardo, F. Oliveira, J. Sousa
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引用次数: 1

摘要

预测建筑物的供暖和制冷能源需求在支持建筑物管理和运营方面起着关键作用。因此,分析建筑物的能源消耗模式可以帮助设计潜在的节能和运行故障检测,同时有助于为建筑物的居住者提供适当的室内环境条件。本文旨在介绍一项研究的主要结果,该研究包括预测位于葡萄牙里斯本的办公楼的每小时供暖和制冷需求,使用机器学习模型并分析外生变量对这些预测的影响。为了预测所考虑建筑的供暖和制冷需求,考虑了一些传统模型,如线性和多项式回归,以及面向机器学习的人工神经网络和支持向量回归。在开发这些模型时考虑的输入参数是每小时的供暖和制冷能源历史记录、占用率、通过玻璃获得的太阳能和外部干球温度。使用平均绝对误差(MAE)和均方根误差(RMSE)验证了所开发的模型,用于将机器学习模型获得的值与通过在适当校准的模型上执行的建筑能源模拟获得的数据进行比较。提出的探索性分析集成在一个研究项目中,该项目侧重于应用机器学习方法来支持建筑物的能源预测。因此,本文提出的研究路线对应于与特征选择/提取和评估机器学习方法的潜在用途相关的初步项目任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Heating and Cooling Energy Demand in an Office Building using Machine Learning Methods
Forecasting heating and cooling energy demand in buildings plays a critical role in supporting building management and operation. Thus, analysing the energy consumption pattern of a building could help in the design of potential energy savings and also in operation fault detection, while contributing to provide proper indoor environmental conditions to the building’s occupants.This paper aims at presenting the main results of a study consisting in forecasting the hourly heating and cooling demand of an office building located in Lisbon, Portugal, using machine learning models and analysing the influence of exogenous variables on those predictions. In order to forecast the heating and cooling demand of the considered building, some traditional models, such as linear and polynomial regression, were considered, as well as artificial neural networks and support vector regression, oriented to machine learning. The input parameters considered in the development of those models were the hourly heating and cooling energy historical records, the occupancy, solar gains through glazing and the outside dry-bulb temperature.The models developed were validated using the mean absolute error (MAE) and the root mean squared error (RMSE), used to compare the values obtained from machine learning models with data obtained through a building energy simulation performed on an adequately calibrated model.The proposed exploratory analysis is integrated in a research project focused on applying machine learning methodologies to support energy forecasting in buildings. Hence, the research line proposed in this article corresponds to a preliminary project task associated with feature selection/extraction and evaluation of potential use of machine learning methods.
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