PREDICTION AND ANALYSIS OF BUILDING ENERGY EFFICIENCY USING ARTIFICIAL NEURAL NETWORKS AND DESIGN OF EXPERIMENTS

Authors

  • S. Sholahudin S. Sholahudin College of Mechanical Engineering, Kookmin University, 77 Jeongneung-ro, Seongbuk-gu, Seoul. 136-702, Korea
  • Azimil Gani Alam College of Mechanical Engineering, Kookmin University, 77 Jeongneung-ro, Seongbuk-gu, Seoul. 136-702, Korea
  • Chang-In Baek Chang-In Baek College of Mechanical Engineering, Kookmin University, 77 Jeongneung-ro, Seongbuk-gu, Seoul. 136-702, Korea
  • Hwataik Han Suwon Science College, 288 Sejaro, Jeongnam-myun, Hwaseong-si, Gyeonggi-do. 445-742, Korea

Keywords:

Building, Energy, Prediction, Neural Networks, Design of Experiment

Abstract

In this paper, an artificial neural network model has been developed to predict the heating and cooling loads of a building based on simulation data for building energy performance. The input variables include the overall height, relative compactness, surface area, wall area, roof area, orientation, glazing area, and glazing area distribution of building. The output variables are the heating and cooling loads. The simulation data used for training the model are the data published in the literature for various parametric combinations of a residential building. Artificial neural networks (ANNs) have a merit in estimating output values for given input values satisfactorily, but they have a limitation in acquiring the effects of input variables individually. In order to analyze the effects of the individual variables, we used a method for the design of experiment (DOE) and conducted an analysis of variance (ANOVA). As the result, overall height, relative compactness, wall area, and glazing area have significant effect to reduce heating and cooling loads. Moreover, the surface area is influential on the heating load and the roof area in regard to the cooling load only.

References

Lombard, L.P., Ortiz, J., and Pout, C., 2008. A review on buildings energyb consumption information, Energy and Buildings 40 (3), 394-398.

Cai, W.G., Wu, Y., Zhong, Y., and Ren, H., 2009. China building energy consumption: situation, challenges and corresponding measures, Energy Policy 37 (6), 2054-2059.

Yu, Z., Haghighat, F., Fung, B.C.M., and Yoshino, H., 2010. A decision tree method for building energy demand modelling, Energy and Building 42, 1637- 1646.

Wan, K.K.W., Li, D.H.W., Liu, D., and Lam, J.C., 2011. Future trends of building heating and cooling loads and energy consumption in different climates, Building and Environment 46, 223-234.

Enshen, L., 2005. Influence of inner heat sources on annual heating and cooling energy consumption and its relative variation rates (RVRs), Building and Environment 40, 579-586.

Yildiz, Y. and Arsan, Z.D., 2011, Identification of the building parameters that influence heating and cooling energy loads for apartment buildings in hot-humid climates, Energy 36, 4287-4296.

Grygierek, J.F., 2014. Indoor environment quality in the museum building and its effect on heating and cooling demand, Energy and Buildings 85, 32-44.

Magnier, L. and Haghighat, F., 2010. Multiobjective optimization of building design using genetic algorithm and artificial neural network, Building and Environment 45, 739-746.

Dong, B., Cao, C., and Lee, S.E., 2005. Applying support vector machines to predict building energy consumption in tropical region, Energy and Buildings 37, 545-553.

Catalina, T., Virgone, J., and Blanco, E., 2008. Development and validation of regression models to predict monthly heating demand for residential buildings, Energy and Buildings 40, 1825-1832.

Gonzalez, P.A. and Zamarreno J.M., 2005. Prediction of hourly energy consumption in buildings based on a feedback artificial neural network, Energy and Buildings 37, 595–601

Schiavon, S., Lee, K.H., Bauman, F., and Webster, T., 2010. Influence of raised floor on zone design cooling load in commercial buildings, Energy and Buildings 42, 1182-1191.

Tsanas, A. and Xifara, A., 2012. Accurate quantitative estimation of energy performance of residential buildings using statistical machine learning tools, Energy and Buildings 49, 560-567.

Krose, B. and Smagt, P., 1996. An introduction to neural network 8 th edition, The University of Amsterdam.

Ripley, B.D., 1996. Pattern Recognition and Neural Networks, University Press, Cambridge.

Telford, J.K., 2007. A Brief Introduction to Design of Experiments, Vol. 27 No. 3, Johns Hopkins APL Technical Digest.

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Published

2018-04-01

How to Cite

S. Sholahudin, S. S., Gani Alam, A., Chang-In Baek, C.-I. B., & Han, H. (2018). PREDICTION AND ANALYSIS OF BUILDING ENERGY EFFICIENCY USING ARTIFICIAL NEURAL NETWORKS AND DESIGN OF EXPERIMENTS. Jurnal Mekanikal, 37(2). Retrieved from https://jurnalmekanikal.utm.my/index.php/jurnalmekanikal/article/view/40

Issue

Section

Mechanical

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