Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost

This paper discusses the thermal and energy performance of a detached lightweight building. The building was monitored with hygrothermal sensors to collect data for building energy model calibration. The calibration was performed using a dynamic simulation through EnergyPlus® (EP) (Version 8...

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Main Authors: Rui Oliveira, António Figueiredo, Romeu Vicente, Ricardo M. S. F. Almeida
Format: Article
Language:English
Published: MDPI AG 2018-07-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/11/7/1863
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spelling doaj-365de7c7ff684447858e747ba81299fc2020-11-24T22:21:50ZengMDPI AGEnergies1996-10732018-07-01117186310.3390/en11071863en11071863Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle CostRui Oliveira0António Figueiredo1Romeu Vicente2Ricardo M. S. F. Almeida3RISCO-Department of Civil Engineering University of Aveiro, Campus Universitário de Santiago, 3810-193 Aveiro, PortugalRISCO-Department of Civil Engineering University of Aveiro, Campus Universitário de Santiago, 3810-193 Aveiro, PortugalRISCO-Department of Civil Engineering University of Aveiro, Campus Universitário de Santiago, 3810-193 Aveiro, PortugalPolytechnic Institute of Viseu, Department of Civil Engineering, Campus Politécnico, 3504-510 Viseu, PortugalThis paper discusses the thermal and energy performance of a detached lightweight building. The building was monitored with hygrothermal sensors to collect data for building energy model calibration. The calibration was performed using a dynamic simulation through EnergyPlus® (EP) (Version 8.5, United States Department of Energy (DOE), Washington, DC, USA) with a hybrid evolutionary algorithm to minimise the root mean square error of the differences between the predicted and real recorded data. The results attained reveal a good agreement between predicted and real data with a goodness of fit below the limits imposed by the guidelines. Then, the evolutionary algorithm was used to meet the compliance criteria defined by the Passive House standard for different regions in Portugal’s mainland using different approaches in the overheating evaluation. The multi-objective optimisation was developed to study the interaction between annual heating demand and overheating rate objectives to assess their trade-offs, tracing the Pareto front solution for different climate regions throughout the whole of Portugal. However, the overheating issue is present, and numerous best solutions from multi-objective optimisation were determined, hindering the selection of a single best option. Hence, the life cycle cost of the Pareto solutions was determined, using the life cycle cost as the final criterion to single out the optimal solution or a combination of parameters.http://www.mdpi.com/1996-1073/11/7/1863optimisationevolutionary algorithmsthermal comfortPassive Houselife cycle cost
collection DOAJ
language English
format Article
sources DOAJ
author Rui Oliveira
António Figueiredo
Romeu Vicente
Ricardo M. S. F. Almeida
spellingShingle Rui Oliveira
António Figueiredo
Romeu Vicente
Ricardo M. S. F. Almeida
Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
Energies
optimisation
evolutionary algorithms
thermal comfort
Passive House
life cycle cost
author_facet Rui Oliveira
António Figueiredo
Romeu Vicente
Ricardo M. S. F. Almeida
author_sort Rui Oliveira
title Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
title_short Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
title_full Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
title_fullStr Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
title_full_unstemmed Multi-Objective Optimisation of the Energy Performance of Lightweight Constructions Combining Evolutionary Algorithms and Life Cycle Cost
title_sort multi-objective optimisation of the energy performance of lightweight constructions combining evolutionary algorithms and life cycle cost
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2018-07-01
description This paper discusses the thermal and energy performance of a detached lightweight building. The building was monitored with hygrothermal sensors to collect data for building energy model calibration. The calibration was performed using a dynamic simulation through EnergyPlus® (EP) (Version 8.5, United States Department of Energy (DOE), Washington, DC, USA) with a hybrid evolutionary algorithm to minimise the root mean square error of the differences between the predicted and real recorded data. The results attained reveal a good agreement between predicted and real data with a goodness of fit below the limits imposed by the guidelines. Then, the evolutionary algorithm was used to meet the compliance criteria defined by the Passive House standard for different regions in Portugal’s mainland using different approaches in the overheating evaluation. The multi-objective optimisation was developed to study the interaction between annual heating demand and overheating rate objectives to assess their trade-offs, tracing the Pareto front solution for different climate regions throughout the whole of Portugal. However, the overheating issue is present, and numerous best solutions from multi-objective optimisation were determined, hindering the selection of a single best option. Hence, the life cycle cost of the Pareto solutions was determined, using the life cycle cost as the final criterion to single out the optimal solution or a combination of parameters.
topic optimisation
evolutionary algorithms
thermal comfort
Passive House
life cycle cost
url http://www.mdpi.com/1996-1073/11/7/1863
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AT romeuvicente multiobjectiveoptimisationoftheenergyperformanceoflightweightconstructionscombiningevolutionaryalgorithmsandlifecyclecost
AT ricardomsfalmeida multiobjectiveoptimisationoftheenergyperformanceoflightweightconstructionscombiningevolutionaryalgorithmsandlifecyclecost
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