2016
DOI: 10.3844/erjsp.2016.24.34
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Building Energy Modeling Using Artificial Neural Networks

Abstract: Accurate modeling of total building energy is now vital to reduce energy consumption. This is especially true for buildings since they are considered as the largest energy consumer in the United States. This paper investigates modeling methods for building energy-systems using non-linear auto-regression artificial neural networks. The proposed model can forecast the whole building energy consumptions given the four input variables: Dry-bulb and wet-bulb outdoor air temperatures, hours of day and type of days. … Show more

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Cited by 6 publications
(2 citation statements)
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“…Widely used are: traditional numerical methods, statistical methods and intelligent methods. Promised results were given by: Ekici and Aksoy (2009) using backpropagation ANN; Holcomb et al, (2009) with support vector regression, ANN and multilinear regression; Ahmad et al, (2014) with support vector machine and ANN concluding that hybridization of these methods is suitable for more accurate prediction; Arida et al, (2016) using ANN, particular non-linear auto-regression ANN; Amber et al, (2017) using the Multiple Regression technique; Li et al, (2017) using extreme deep learning approach, etc.…”
Section: Literature Reviewmentioning
confidence: 99%
See 1 more Smart Citation
“…Widely used are: traditional numerical methods, statistical methods and intelligent methods. Promised results were given by: Ekici and Aksoy (2009) using backpropagation ANN; Holcomb et al, (2009) with support vector regression, ANN and multilinear regression; Ahmad et al, (2014) with support vector machine and ANN concluding that hybridization of these methods is suitable for more accurate prediction; Arida et al, (2016) using ANN, particular non-linear auto-regression ANN; Amber et al, (2017) using the Multiple Regression technique; Li et al, (2017) using extreme deep learning approach, etc.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Some of them are soft computing methods (SCMs). SCMs are noted as useful for developing models for different sustainable problems in construction (Polat et al, 2014;Ahmad et al, 2014;Arida et al, 2016). Therefore, the aim of this paper is to present a brief review of the authors' research on several construction sustainability issues by using SCMs.…”
Section: Introductionmentioning
confidence: 99%