An intelligent approach to assessing the effect of building occupancy on building cooling load prediction

Building cooling load prediction is one of the key factors in the success of energy-saving measures. Many computational models available in the industry have been developed from either forward or inverse modeling approaches. However, these models usually require extensive computer resources and leng...

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Veröffentlicht in:Building and environment 2011-08, Vol.46 (8), p.1681-1690
Hauptverfasser: Kwok, Simon S.K., Yuen, Richard K.K., Lee, Eric W.M.
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container_end_page 1690
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container_title Building and environment
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creator Kwok, Simon S.K.
Yuen, Richard K.K.
Lee, Eric W.M.
description Building cooling load prediction is one of the key factors in the success of energy-saving measures. Many computational models available in the industry have been developed from either forward or inverse modeling approaches. However, these models usually require extensive computer resources and lengthy computation. This paper discusses the use of the multi-layer perceptron (MLP) model, one of the artificial neural network (ANN) models widely adopted in engineering applications, to estimate the cooling load of a building. The training samples used include weather data obtained from the Hong Kong Observatory and building-related data acquired from an existing prestigious commercial building in Hong Kong that houses a mega complex and operates 24 h a day. The paper also discusses the practical difficulties encountered in acquiring building-related data. In contrast to other studies that use ANN models to predict building cooling load, this paper includes the building occupancy rate as one of the input parameters used to determine building cooling load. The results demonstrate that the building occupancy rate plays a critical role in building cooling load prediction and significantly improves predictive accuracy.
doi_str_mv 10.1016/j.buildenv.2011.02.008
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source Elsevier ScienceDirect Journals
subjects Applied sciences
Artificial neural network
Building energy
Building technical equipments
Buildings
Buildings. Public works
Commercial buildings
Computation
Computation methods. Tables. Charts
Computer simulation
Construction
Cooling load
Cooling loads
Energy management and energy conservation in building
Environmental engineering
Exact sciences and technology
Houses
Learning theory
Mathematical models
Neural networks
Occupancy
Structural analysis. Stresses
title An intelligent approach to assessing the effect of building occupancy on building cooling load prediction
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