Agents Vote for the Environment: Designing Energy-Efficient Architecture

Saving energy is a major concern. Hence, it is fundamental to design and construct buildings that are energy-efficient. It is known that the early stage of architectural design has a significant impact on this matter. However, it is complex to create designs that are optimally energy efficient, and at the same time balance other essential criterias such as economics, space, and safety. One state-of-the art approach is to create parametric designs, and use a genetic algorithm to optimize across different objectives. We further improve this method, by aggregating the solutions of multiple agents. We evaluate diverse teams, composed by different agents; and uniform teams, composed by multiple copies of a single agent. We test our approach across three design cases of increasing complexity, and show that the diverse team provides a significantly larger percentage of optimal solutions than single agents.

[1]  Danelle Briscoe Parametric Planting: Green Wall System Research + Design using BIM , 2014 .

[2]  Tane Moleta,et al.  Selective interference emergent complexity informed by programmatic, social and performative criteria , 2014 .

[3]  V. M. Kureichik,et al.  Parallel genetic algorithms: a survey and problem state of the art , 2010 .

[4]  David Jason Gerber,et al.  Evolutionary energy performance feedback for design: Multidisciplinary design optimization and performance boundaries for design decision support , 2014 .

[5]  Nikunj C. Oza,et al.  Online Ensemble Learning , 2000, AAAI/IAAI.

[6]  Gavin Brown,et al.  Ensemble Learning , 2010, Encyclopedia of Machine Learning and Data Mining.

[7]  David Jason Gerber,et al.  Measuring the impact of scale and coupling on solution quality for building design problems , 2014 .

[8]  Ariel D. Procaccia,et al.  When do noisy votes reveal the truth? , 2013, EC '13.

[9]  David Jason Gerber,et al.  Designing in complexity: Simulation, integration, and multidisciplinary design optimization for architecture , 2014, Simul..

[10]  Leandro Soriano Marcolino,et al.  Multi-Agent Team Formation: Diversity Beats Strength? , 2013, IJCAI.

[11]  John S. Gero,et al.  Tradeoff diagrams for the integrated design of the physical environment in buildings , 1980 .

[12]  Antonio J. Nebro,et al.  A survey of multi-objective metaheuristics applied to structural optimization , 2014 .

[13]  Ulrich Bogenstätter,et al.  Prediction and optimization of life-cycle costs in early design , 2000 .

[14]  Ariel D. Procaccia,et al.  Better Human Computation Through Principled Voting , 2013, AAAI.

[15]  David C. Parkes,et al.  Random Utility Theory for Social Choice , 2012, NIPS.

[16]  Leandro Soriano Marcolino,et al.  Give a Hard Problem to a Diverse Team: Exploring Large Action Spaces , 2014, AAAI.