基于核参数和存储效应的支持向量机回归预测大型商业建筑电力需求

N. Samarawickrama, K.T.M.U. Hemapala, A. Jayasekara
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引用次数: 5

摘要

在竞争激烈的商业世界中,拥有准确的能源预测工具成为建筑物业主的关键绩效指标(KPI)。能源预测在任何建筑进行改造工程时都起着至关重要的作用,以最大限度地提高效益和效用。本文提出了一种基于支持向量机回归(SVMR)的准确、高效的能源预测工具。本文介绍了斯里兰卡科伦坡商业建筑实际案例研究的结果和讨论。在案例研究中,随机选择了四栋商业建筑,并使用业主每月的水电费来开发和测试模型。对现有数据的仔细分析揭示了对模型影响最大的参数,这些参数是:平均室外干球温度(T)、太阳辐射(SR)和相对湿度(RH)。利用径向基函数(RBF)选择核,基于逐步搜索方法,考察支持向量机相对于C、γ和ε三个参数的性能。结果表明,训练集的结构对预测的准确性有显著影响。对实验结果的分析表明,所有的预测模型对4个商业建筑均具有较低的方差系数和较低的误差率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine Regression for forecasting electricity demand for large commercial buildings by using kernel parameter and storage effect
In the framework of a competitive commercial world, having accurate energy forecasting tools becomes a Key Performance Indicator (KPI) to the building owners. Energy forecasting plays a crucial role for any building when it undergoes the retrofitting works in order to maximize the benefits and utilities. This paper provides accurate and efficient energy forecasting tool based on Support Vector Machine Regression (SVMR). Results and discussions from real-world case studies of commercial buildings of Colombo, Sri Lanka are presented. In the case study, four commercial buildings are randomly selected and the models are developed and tested using monthly landlord utility bills. Careful analysis of available data reveals the most influential parameters to the model and these are as follows: mean outdoor dry-bulb temperature (T), solar radiation (SR) and relative humidity (RH). Selection of the kernel with radial basis function (RBF) is based on stepwise searching method to investigate the performance of SVM with respect to the three parameters such as C, γ and ε. The results showed that the structure of the training set has significant effect to the accuracy of the prediction. The analysis of the experimental results reveals that all the forecasting models give an acceptable result for all four commercials buildings with low coefficient of variance with a low percentage error.
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