What is it about?
The challenge in Net Zero Energy Building (NZEB) design is to find the best combination of design strategies that will face the energy performance problems of a particular building. This paper presents a methodology for the simulation-based multi-criteria optimization of NZEBs. Its main features include four steps: building simulation, optimization process, multi-criteria decision making (MCDM) and testing solution's robustness. The methodology is applied to investigate the cost-effectiveness potential for optimizing the design of NZEBs in different case studies taken as diverse climatic zones in Lebanon and France. The investigated design parameters include: external walls and roof insulation thickness, windows glazing type, cooling and heating set points, and window to wall ratio. Furthermore, the inspected RE systems include: solar domestic hot water (SDHW) and photovoltaic (PV) array. The proposed methodology is a useful tool to enhance NZEBs design and to facilitate decision making in early phases of building design. Specifically, the non-dominated sorting genetic algorithm (NSGA-II) is chosen in order to minimize thermal, electrical demands and life cycle cost (LCC) while reaching the net zero energy balance; thus getting the Pareto-front. A ranking decision making technique Elimination and Choice Expressing the Reality (ELECTRE III) is applied to the Pareto-front so as to obtain one optimal solution.
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Why is it important?
An optimization methodology for Net Zero Energy Buildings’ design is presented. NSGA-II is used as the multi objective optimization approach. ELECTRE III process is applied for decision making. Different climatic zones in Lebanon and France are investigated.
Perspectives
Future studies may be extended to other design parameters including passive parameters (natural ventilation, blinds, overhangs, energy efficient and RE systems, and other objective functions related to energy, environment, economy, comfort, or others. In addition, the simulation-based sensitivity and uncertainty analyses of the passive, energy efficient, and RE systems are interesting topics for the future research works.
Dr. Fatima Harkouss
Read the Original
This page is a summary of: Multi-objective optimization methodology for net zero energy buildings, Journal of Building Engineering, March 2018, Elsevier,
DOI: 10.1016/j.jobe.2017.12.003.
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