Li-BIM, an agent-based approach to simulate occupant-building interaction from the Building-Information Modelling

Abstract Building design involves many challenges and requires to take into account the interaction between the building and the users. Different occupant behaviour models implemented with building simulation tools (thermal, air quality, lighting) have been proposed. Among these, models based on the agent approach seem to be the most promising. However, existing models poorly describe human cognition and the social dimension. Moreover, they are often oriented towards a specific use (thermal simulation, waste management) without being transposable to another field, and they require a significant instantiation effort for each new case, making their use difficult. This article proposes an agent-based model called Li-BIM that simulates the behaviour of the occupants in a building and their indoor comfort. Li-BIM model is structured around the numerical modelling of the building –BIM- (with standard exchange format IFC), a high-resolution cognitive model, and the coupling with various physical models. Li-BIM simulates the reactive, deliberative and social behaviour of occupants in residential dwellings based on the Belief–Desire–Intention architecture. This model, thanks its ease of use and flexibility, is an operational and relevant tool to support building design process with a human-centred approach. An application of the model is presented, focusing on energy consumption and the inhabitants’ comfort. In-situ data obtained from the instrumented house that served as case study have been compared with simulation results from Li-BIM and a standard energy simulation software, demonstrating the reliability of the proposed model.

[1]  Jan Hensen,et al.  Thermal comfort in residential buildings: Comfort values and scales for building energy simulation , 2009 .

[2]  Benoit Gaudou,et al.  Exploring Agent Architectures for Farmer Behavior in Land-Use Change. A Case Study in Coastal Area of the Vietnamese Mekong Delta , 2015, MABS.

[3]  Tao Yu,et al.  Making incentive policies more effective: An agent-based model for energy-efficiency retrofit in China , 2019, Energy Policy.

[4]  Burcin Becerik-Gerber,et al.  Lights, building, action: Impact of default lighting settings on occupant behaviour , 2016 .

[5]  Mathieu Bourgais,et al.  Using parallel computing to improve the scalability of models with BDI agents , 2017 .

[6]  Ali Malkawi,et al.  Simulating multiple occupant behaviors in buildings: An agent-based modeling approach , 2014 .

[7]  Ali Mostafavi,et al.  Understanding Fundamental Phenomena Affecting the Water Conservation Technology Adoption of Residential Consumers Using Agent-Based Modeling , 2018, Water.

[8]  Bilal Succar,et al.  Building information modelling framework: A research and delivery foundation for industry stakeholders , 2009 .

[9]  Da Yan,et al.  Quantitative description and simulation of human behavior in residential buildings , 2012 .

[10]  Tina Balke,et al.  How Do Agents Make Decisions? A Survey , 2014, J. Artif. Soc. Soc. Simul..

[11]  Tao Zhang,et al.  Simulating User Learning in Authoritative Technology Adoption: An Agent Based Model for Council-Led Smart Meter Deployment Planning in the UK , 2016, ArXiv.

[12]  Elie Azar,et al.  Framework to investigate energy conservation motivation and actions of building occupants: The case of a green campus in Abu Dhabi, UAE , 2017 .

[13]  Tianzhen Hong,et al.  Occupant behavior modeling for building performance simulation: Current state and future challenges , 2015 .

[14]  Jean-Michel Cayla,et al.  From practices to behaviors: Estimating the impact of household behavior on space heating energy consumption , 2010 .

[15]  Jun Zhang,et al.  Collecting Fire Evacuation Performance Data Using BIM-Based Immersive Serious Games for Performance-Based Fire Safety Design , 2015 .

[16]  Ruchi Choudhary,et al.  OCCUPANCY BASED THERMAL ENERGY MODELLING IN THE URBAN RESIDENTIAL SECTOR , 2017 .

[17]  Thorben Jensen,et al.  Technological Forecasting & Social Change Agent-based assessment framework for behavior-changing feedback devices : Spreading of devices and heating behavior , 2015 .

[18]  Arash Shahi,et al.  IFC-centric performance-based evaluation of building evacuations using fire dynamics simulation and agent-based modeling , 2019, Automation in Construction.

[19]  Emile J.L. Chappin,et al.  Adoption of energy efficient technologies by households – Barriers, policies and agent-based modelling studies , 2019, Renewable and Sustainable Energy Reviews.

[20]  Leonardo Bobadilla,et al.  Modeling Occupant-Building-Appliance Interaction for Energy Waste Analysis , 2016 .

[21]  Mohamed Medhat Gaber,et al.  A Hybrid Agent-Based and Probabilistic Model for Fine-Grained Behavioural Energy Waste Simulation , 2017, 2017 IEEE 29th International Conference on Tools with Artificial Intelligence (ICTAI).

[22]  Bernard Marie Lachal,et al.  Predicted versus observed heat consumption of a low energy multifamily complex in Switzerland based on long-term experimental data , 2004 .

[23]  Raja R. A. Issa,et al.  BIM's Impact on the Success Measures of Construction Projects , 2009 .

[24]  Benoit Gaudou,et al.  A Simple-to-Use BDI Architecture for Agent-Based Modeling and Simulation , 2015, ESSA.

[25]  Xiangyu Wang,et al.  Developing an evacuation evaluation model for offshore oil and gas platforms using BIM and agent-based model , 2018 .

[26]  Elie Azar,et al.  A conceptual framework to energy estimation in buildings using agent based modeling , 2010, Proceedings of the 2010 Winter Simulation Conference.

[27]  Margaret J. Robertson,et al.  Design and Analysis of Experiments , 2006, Handbook of statistics.

[28]  Peer-Olaf Siebers,et al.  On the multi-agent stochastic simulation of occupants in buildings , 2018 .

[29]  Benoit Gaudou,et al.  A BDI Agent Architecture for the GAMA Modeling and Simulation Platform , 2016, MABS.

[30]  Wolfgang Hauser,et al.  Analysis and agent-based modelling of lifestyle aspects influencing the residential energy demand in France and Germany , 2013 .

[31]  Prabir Barooah,et al.  Agent-based and graphical modelling of building occupancy , 2012 .

[32]  François Sempé,et al.  Dynamic Organisation of the Household Activities for Energy Consumption Simulation , 2013, PAAMS.

[33]  Xuan Luo,et al.  An agent-based stochastic Occupancy Simulator , 2018 .

[34]  Ardeshir Mahdavi,et al.  A preliminary study of representing the inter-occupant diversity in occupant modelling , 2017 .

[35]  Tianzhen Hong,et al.  Occupancy schedules learning process through a data mining framework , 2015 .

[36]  Cui Jian,et al.  EvacAgent: A Building Emergency Evacuation Simulation Model Based on Agent , 2017, AIACT '17.

[37]  Marie-Odile Lebeaux,et al.  Les usages du temps : cumuls d'activités et rythmes de vie , 2002 .

[38]  Barbara Messing,et al.  An Introduction to MultiAgent Systems , 2002, Künstliche Intell..

[39]  G. Otte,et al.  Entwicklung und Test einer integrativen Typologie der Lebensführung für die Bundesrepublik Deutschland / Construction and Test of an Integrative Lifestyle-Typology for Germany , 2005 .

[40]  Murray Thomson,et al.  High-resolution stochastic integrated thermal–electrical domestic demand model , 2016 .

[41]  Clinton J. Andrews,et al.  Designing Buildings for Real Occupants: An Agent-Based Approach , 2011, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[42]  John Tookey,et al.  Building Information Modelling (BIM) uptake: Clear benefits, understanding its implementation, risks and challenges , 2017 .

[43]  Fu Zhao,et al.  Agent-based modeling of the adoption of high-efficiency lighting in the residential sector , 2017 .

[44]  Winfried Lamersdorf,et al.  Jadex: A BDI Reasoning Engine , 2005, Multi-Agent Programming.

[45]  Benoit Gaudou,et al.  GAMA 1.6: Advancing the Art of Complex Agent-Based Modeling and Simulation , 2013, PRIMA.

[46]  Mathieu Bourgais,et al.  An Agent Architecture Coupling Cognition and Emotions for Simulation of Complex Systems , 2016 .

[47]  Stefano Paolo Corgnati,et al.  Predicted and actual indoor environmental quality: Verification of occupants' behaviour models in residential buildings , 2016 .

[48]  Jin Wen,et al.  Simulating the human-building interaction: Development and validation of an agent-based model of office occupant behaviors , 2015 .

[49]  REMODECE Brochure Residential Monitoring to Decrease Energy Use and Carbon Emissions in Europe , 2019 .

[50]  J. Svennevig Getting acquainted in conversation , 1999 .

[51]  Tao Zhang,et al.  Modelling Electricity Consumption in Office Buildings: An Agent Based Approach , 2013, ArXiv.

[52]  Milind Tambe,et al.  Coordinating occupant behavior for building energy and comfort management using multi-agent systems , 2012 .

[53]  Qi Sun,et al.  A BIM Based Simulation Framework for Fire Evacuation Planning , 2019 .

[54]  Michael Wooldridge,et al.  Introduction to multiagent systems , 2001 .

[55]  Raja R. A. Issa,et al.  Human Library for Emergency Evacuation in BIM-Based Serious Game Environment , 2014 .

[56]  Jian Kang,et al.  A stochastic model of integrating occupant behaviour into energy simulation with respect to actual energy consumption in high-rise apartment buildings , 2016 .

[57]  Stéphane Ploix,et al.  Simulating the dynamics of occupant behaviour for power management in residential buildings , 2013 .

[58]  Christoph Weber,et al.  Modelling Impacts of Lifestyle on Energy Demand and Related Emissions , 2000 .

[59]  William F. Eddy,et al.  SPEW: Synthetic Populations and Ecosystems of the World , 2017, Journal of Computational and Graphical Statistics.

[60]  Jonas Hinker,et al.  Impact assessment of inhabitants on the economic potential of energy efficient refurbishment by means of a novel socio-technical multi-agent simulation , 2016 .

[61]  Rita Streblow,et al.  Energy performance gap in refurbished German dwellings: Lesson learned from a field test , 2016 .

[62]  Ben Croxford,et al.  Understanding occupants’ behaviours using detailed agent- based modelling. , 2014 .

[63]  Hiam Khoury,et al.  Behavioral and parametric effects on energy consumption through BIM, BEM, and ABM , 2018 .

[64]  Réjean Samson,et al.  An agent-based model to evaluate smart homes sustainability potential , 2017, 2017 IEEE 28th Annual International Symposium on Personal, Indoor, and Mobile Radio Communications (PIMRC).

[65]  Alberto E. Cerpa,et al.  Energy efficient building environment control strategies using real-time occupancy measurements , 2009, BuildSys '09.

[66]  Jose Juan Hernandez,et al.  Agent-Based Modelling of Electrical Load at Household Level , 2011 .

[67]  Antonio Sanfilippo,et al.  Modeling residential adoption of solar energy in the Arabian Gulf Region , 2018, Renewable Energy.

[68]  Jukka Paatero,et al.  A model for generating household electricity load profiles , 2006 .

[69]  A. Bouchaïr,et al.  Uncertainty analysis of occupant behavior and building envelope materials in office building performance simulation , 2018, Journal of Building Engineering.

[70]  Benoit Gaudou,et al.  BDI agents in social simulations: a survey , 2016, The Knowledge Engineering Review.

[71]  F. Kaiser,et al.  Reviving Campbell’s Paradigm for Attitude Research , 2010, Personality and social psychology review : an official journal of the Society for Personality and Social Psychology, Inc.

[72]  Stefano Paolo Corgnati,et al.  The influence of realistic schedules for the use of appliances on the total energy performances in dwellings , 2014 .

[73]  Andrew Lucas,et al.  JACK Intelligent Agents – Summary of an Agent Infrastructure , 2001 .

[74]  Carol C. Menassa,et al.  Impact of Social Network Type and Structure on Modeling Normative Energy Use Behavior Interventions , 2014, J. Comput. Civ. Eng..

[75]  Patrick Taillandier,et al.  Comparing Agent Architectures in Social Simulation: BDI Agents versus Finite-state Machines , 2017, HICSS.

[76]  A. Grefhorst,et al.  Sex difference in cold perception and shivering onset upon gradual cold exposure. , 2018, Journal of thermal biology.

[77]  François Sempé,et al.  Simulating Human Activities to Investigate Household Energy Consumption , 2013, ICAART.

[78]  Mathieu Bourgais,et al.  Enhancing the Behavior of Agents in Social Simulations with Emotions and Social Relations , 2017, MABS.

[79]  T. Theis,et al.  Emergent Effects of Residential Lighting Choices: Prospects for Energy Savings , 2015 .

[80]  Luis M. Camarinha-Matos,et al.  Coalitions of manufacturing components for shop floor agility - the CoBASA architecture , 2003, Int. J. Netw. Virtual Organisations.

[81]  P Pieter-Jan Hoes,et al.  Occupant behavior in building energy simulation: towards a fit-for-purpose modeling strategy , 2016 .

[82]  A. J. Watts,et al.  Hypothermia in the aged: a study of the role of cold-sensitivity. , 1972, Environmental research.