- Ferrara M, Fabrizio E, Virgone J, Filippi M. A simulation-based optimization method for cost-optimal analysis of nearly Zero Energy Buildings. Energy and Buildings. 2014;84:442-57.
- CHANGE OC. Intergovernmental panel on climate change. World Meteorological Organization. 2007;52.
- Al-Homoud MS. Optimum thermal design of air-conditioned residential buildings. Building and Environment. 1997;32(3):203-10.
- Pisello AL, Goretti M, Cotana F. A method for assessing buildings’ energy efficiency by dynamic simulation and experimental activity. Applied Energy. 2012;97:419-29.
- Bandara R, Attalage R, editors. Optimization methodologies for building performance modelling and optimization. 18th ERU symposium, Sri Lanka; 2012.
- Zhang Y, Korolija I, editors. Performing complex parametric simulations with jEPlus. SET2010-9th International Conference on Sustainable Energy Technologies; 2010.
- Nguyen A-T, Reiter S, Rigo P. A review on simulation-based optimization methods applied to building performance analysis. Applied energy. 2014;113:1043-58.
- Ghodrati A, Zahedi R, Ahmadi A. Analysis of cold thermal energy storage using phase change materials in freezers. Journal of Energy Storage. 2022;51:104433.
- Chantrelle FP, Lahmidi H, Keilholz W, El Mankibi M, Michel P. Development of a multicriteria tool for optimizing the renovation of buildings. Applied Energy. 2011;88(4):1386-94.
- Tuhus-Dubrow D, Krarti M. Genetic-algorithm based approach to optimize building envelope design for residential buildings. Building and environment. 2010;45(7):1574-81.
- Saporito A, Day A, Karayiannis T, Parand F. Multi-parameter building thermal analysis using the lattice method for global optimisation. Energy and buildings. 2001;33(3):267-74.
- Gossard D, Lartigue B, Thellier F. Multi-objective optimization of a building envelope for thermal performance using genetic algorithms and artificial neural network. Energy and Buildings. 2013;67:253-60.
- Yu W, Li B, Jia H, Zhang M, Wang D. Application of multi-objective genetic algorithm to optimize energy efficiency and thermal comfort in building design. Energy and Buildings. 2015;88:135-43.
- Kim D-W, Park C-S, editors. Manual vs. optimal control of exterior and interior blind systems. Proceedings 11th International IBPSA Conference; 2009.
- Ascione F, Bianco N, De Masi RF, Mauro GM, Vanoli GP. Design of the building envelope: A novel multi-objective approach for the optimization of energy performance and thermal comfort. Sustainability. 2015;7(8):10809-36.
- Ascione F, Bianco N, De Stasio C, Mauro GM, Vanoli GP. A new methodology for cost-optimal analysis by means of the multi-objective optimization of building energy performance. Energy and Buildings. 2015;88:78-90.
- Yong Z, Li-Juan Y, Qian Z, Xiao-Yan S. Multi-objective optimization of building energy performance using a particle swarm optimizer with less control parameters. Journal of Building Engineering. 2020;32:101505.
- Zhang Y, Yuan L-j, Cheng S, editors. Building energy performance optimization: a new multi-objective particle swarm method. International Conference on Swarm Intelligence; 2019: Springer.
- Sanaye S, Dehghandokht M. Modeling and multi-objective optimization of parallel flow condenser using evolutionary algorithm. Applied Energy. 2011;88(5):1568-77.
- Ryu J-h, Kim S, Wan H, editors. Pareto front approximation with adaptive weighted sum method in multiobjective simulation optimization. Proceedings of the 2009 Winter Simulation Conference (WSC); 2009: IEEE.
- Marler RT, Arora JS. Survey of multi-objective optimization methods for engineering. Structural and multidisciplinary optimization. 2004;26(6):369-95.
- Stoppato A, Cavazzini G, Ardizzon G, Rossetti A. A PSO (particle swarm optimization)-based model for the optimal management of a small PV (Photovoltaic)-pump hydro energy storage in a rural dry area. Energy. 2014;76:168-74.
- Reyes-Sierra M, Coello CC. Multi-objective particle swarm optimizers: A survey of the state-of-the-art. International journal of computational intelligence research. 2006;2(3):287-308.
- Eberhart RC, Shi Y, editors. Tracking and optimizing dynamic systems with particle swarms. Proceedings of the 2001 congress on evolutionary computation (IEEE Cat No 01TH8546); 2001: IEEE.
- Chaudhary DK, Dua RL. Application of multi objective particle swarm optimization to maximize coverage and lifetime of wireless sensor network. Int J Comput Eng Res. 2012;2:1628-33.
- Deb K, Pratap A, Agarwal S, Meyarivan T. A fast and elitist multiobjective genetic algorithm: NSGA-II. IEEE transactions on evolutionary computation. 2002;6(2):182-97.
- Djedjig R, Bozonnet E, Belarbi R. Analysis of thermal effects of vegetated envelopes: Integration of a validated model in a building energy simulation program. Energy and buildings. 2015;86:93-103.
- Delgarm N, Sajadi B, Kowsary F, Delgarm S. Multi-objective optimization of the building energy performance: A simulation-based approach by means of particle swarm optimization (PSO). Applied energy. 2016;170:293-303.
- Calafiore G, Tommolillo C, Novara C, Fabrizio E, editors. APSEplus: A MATLAB toolbox for parametric energy simulation of reference buildings. Proceedings of the 6th International Conference on Software and Computer Applications; 2017.
- Dornelles K, Roriz V, Roriz M, editors. Determination of the solar absorptance of opaque surfaces. 24th International Conference on Passive and Low Energy Architecture; 2007.
|