2019
DOI: 10.3390/app9204338
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Predicting Heating Load in Energy-Efficient Buildings Through Machine Learning Techniques

Abstract: The heating load calculation is the first step of the iterative heating, ventilation, and air conditioning (HVAC) design procedure. In this study, we employed six machine learning techniques, namely multi-layer perceptron regressor (MLPr), lazy locally weighted learning (LLWL), alternating model tree (AMT), random forest (RF), ElasticNet (ENet), and radial basis function regression (RBFr) for the problem of designing energy-efficient buildings. After that, these approaches were used to specify a relationship a… Show more

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Cited by 36 publications
(12 citation statements)
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“…This paper proposes an NZEB delivery control method based on controlling the parameters that impact the energy need for heating and cooling because they are the basis of calculation of right sizing HAVC systems. The energy needs for heating and cooling are mostly analyzed factors of whole building energy needs (e.g., [13,[30][31][32][33][34]) because they are recognized as the main characteristic of building envelope in protecting the building environment from the outside climatic conditions [29].…”
Section: Motivation and Methodologymentioning
confidence: 99%
“…This paper proposes an NZEB delivery control method based on controlling the parameters that impact the energy need for heating and cooling because they are the basis of calculation of right sizing HAVC systems. The energy needs for heating and cooling are mostly analyzed factors of whole building energy needs (e.g., [13,[30][31][32][33][34]) because they are recognized as the main characteristic of building envelope in protecting the building environment from the outside climatic conditions [29].…”
Section: Motivation and Methodologymentioning
confidence: 99%
“…It has already proven itself in a wide variety of real life applications [9] such as www.ijacsa.thesai.org health [10], [13], wind speed [11], heating load in buildings. Energy efficiency [12], natural language processing [14] and bioinformatics [15]. Among the multi-output regression algorithms, we opted for the multi-output support vector regression (M-SVR) algorithm proposed by Pérez-Cruz et al [19].…”
Section: State Of the Artmentioning
confidence: 99%
“…Furthermore, when looking at each variable separately, orientation is the variable most investigated in AI research studies. Most buildings’ energy prediction studies, such as Yeom et al (2020) , Moayedi et al (2019) , Navarro-Gonzalez & Villacampa (2019) , Seyedzadeh et al (2019) and Sadeghi et al (2020) , conducted their experiments on a dataset, created by Tsanas & Xifara (2012) of 768 records and eight characteristics (relative compactness, surface area, wall area, roof area, overall height, orientation, glazing area, and distribution) used as predictors to estimate the energy consumption of the buildings.…”
Section: Introductionmentioning
confidence: 99%