Abstract
Coupling models is becoming more and more important in the fields where modeling relies on interdisciplinary collaboration. This in particular the case in modeling complex systems which often require to either integrate different models at different spatial and temporal scales or to compare their outcomes. The goal of this research is to develop an original agent-based approach to support the coupling heterogeneous models. The architecture that we have designed is implemented in the GAMA modeling and simulation platform [6]. The benefits of our approach is to support coupling and combining various models of heterogeneous types (agent-based, equation-based, cellular automata ) in a flexible and explicit way. It also support the dynamic execution of the models which are supposed to be combined during experiments. We illustrate its use and powerfulness to solve existing problems of coupling between an agent-based model, equation-based model and GIS based model. The outcomes of the simulation of these three models show results compatible with the data observed in reality and demonstrate the interest of our approach for building large, multi-disciplinary models.
Access provided by Autonomous University of Puebla. Download to read the full chapter text
Chapter PDF
Similar content being viewed by others
References
Bertsch, C., Ahle, E., Schulmeister, U.: The functional mockup interface - seen from an industrial perspective, 27–33, March, 2014
Dahmann, J., Fujimoto, R., Weatherly, R.: The DoD high level architecture: an update. In: Simulation Conference Proceedings, Winter, vol. 1, pp. 797–804 (December 1998)
David, D., Payet, D., Botta, A., Lajoie, G., Manglou, S., Courdier, R.: Un couplage de dynamiques comportementales : le modle ds pour l’amnagement du territoire. In: JFSMA 2007, pp. 129–138 (2007)
Fianyo, Y. E.: Couplage de modles l’aide d’agents: le systme OSIRIS. PhD thesis, ANRT, Grenoble (2001)
Gauthier Quesnel, D.V.: Coupling of physical models and social models: multi-modeling and simulation with VLE. Joint Conference on Multi-Agent Modelling for Environmental Management (CABM-HEMA-SMAGET 2005), Bourg Saint Maurice, France, pp. 21–25 (2005)
Grignard, A., Taillandier, P., Gaudou, B., Vo, D.A., Huynh, N.Q., Drogoul, A.: GAMA 1.6: Advancing the Art of Complex Agent-Based Modeling and Simulation. In: Boella, G., Elkind, E., Savarimuthu, B.T.R., Dignum, F., Purvis, M.K. (eds.) PRIMA 2013. LNCS, vol. 8291, pp. 117–131. Springer, Heidelberg (2013)
Hassoumi, I.: Approche multi-agent de couplage de modles pour la modmes complexes spatiaux: application l’amnagement de l’espace urbain (ville de touia). PhD thesis, Paris 6 (2013)
Huang, H., Wang, L., Zhang, X., Luo, Y., Zhao, L.: Coupling multi-agent model and GIS to simulate pine wood nematode disease spread in ZheJiang province, china, pp. 71430X–71430X-8 (October 2008)
Moreira, E., Costa, S., Aguiar, A.P., Cmara, G., Carneiro, T.: Dynamical coupling of multiscale land change models. Landscape Ecology 24(9), 1183–1194 (2009)
Nicolai, T.W., Wang, L., Nagel, K., Waddell, P.: Coupling an urban simulation model with a travel modela first sensitivity test. Computers in Urban Planning and Urban Management (CUPUM), Lake Louise, Canada. Also VSP WP, pp. 11–07 (2011)
Rajeevan, M., Nanjudiah, R.: Coupled model simulations of twentieth century climate of the indian summer monsoon. Current Trends in Science, pp. 537–567 (2009)
Rochette, S., Huret, M., Rivot, E., Le Pape, O.: Coupling hydrodynamic and individual-based models to simulate long-term larval supply to coastal nursery areas. Fisheries Oceanography 21(4), 229–242 (2012)
Rousseaux, F., Bocher, E., Gourlay, A., Petit, G.: Toward a coupling between GIS and agent simulation: USM, an OrbisGIS extension to model urban evolution at a large scale. In: OGRS 2012 Proceedings, pp. 206–214 (October 2012)
Steiner, A.L., Pal, J.S., Rauscher, S.A., Bell, J.L., Diffenbaugh, N.S., Boone, A., Sloan, L.C., Giorgi, F.: Land surface coupling in regional climate simulations of the west african monsoon. Clim. Dyn. 33(6), 869–892 (2009)
van Vliet, J., Hagen-Zanker, A., Hurkens, J., van Delden, H.: A fuzzy set approach to assess the predictive accuracy of land use simulations. Ecol. Model. 261–262, 32–42 (2013)
Vo, D.-A., Drogoul, A., Zucker, J.-D.: Multi-level agent-based modeling: a generic approach and an implementation. In: Barbucha, D., Le, M.T., Howlett, R.J., Jain, L.C. (eds.) KES-AMSTA, vol. 252. Frontiers in Artificial Intelligence and Applications, pp. 91–101. IOS Press (2013)
Waddell, P.: UrbanSim: Modeling urban development for land use, transportation, and environmental planning. Journal of the American Planning Association 68(3), 297–314 (2002)
Yez, E., Hormazbal, S., Silva, C., Montecinos, A., Barbieri, M.A., Valdenegro, A., Rdenes, A., Gmez, F.: Coupling between the environment and the pelagic resources exploited off northern chile: ecosystem indicators and a conceptual model (2008)
Zeigler, B., Moon, Y., Kim, D., Ball, G.: The DEVS environment for high-performance modeling and simulation. IEEE Computational Science Engineering 4(3), 61–71 (1997)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2015 Institute for Computer Sciences, Social Informatics and Telecommunications Engineering
About this paper
Cite this paper
Huynh, N.Q., Huynh, H.X., Drogoul, A., Cambier, C. (2015). Co-modeling: An Agent-Based Approach to Support the Coupling of Heterogeneous Models. In: Vinh, P., Vassev, E., Hinchey, M. (eds) Nature of Computation and Communication. ICTCC 2014. Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, vol 144. Springer, Cham. https://doi.org/10.1007/978-3-319-15392-6_16
Download citation
DOI: https://doi.org/10.1007/978-3-319-15392-6_16
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-15391-9
Online ISBN: 978-3-319-15392-6
eBook Packages: Computer ScienceComputer Science (R0)