Optimizing complex interaction dynamics in critical infrastructure with a stochastic kinetic model


연구 분야: Infrastructure



학회: WSC '19: Proceedings of the Winter Simulation Conference


초록

Emerging data that track the dynamics of large populations bring new potential for understanding human decision-making in a complex world and supporting better decision-making through the integration of continued partial observations about dynamics. However, existing models have difficulty with capturing the complex, diverse, evolving, and partially unknown dynamics in social networks, and with inferring system state from isolated observations about a tiny fraction of the individuals in the system. To solve real-world problems with a huge number of agents and system states and complicated agent interactions, we propose a stochastic kinetic model that captures complex decision-making and system dynamics using atomic events that are individually simple but together exhibit complex behaviors. As an example, we show how this model offers significantly better results for city-scale multi-objective driver route planning in significantly less time than models based on deep neural networks or co-evolution.


Author Profile
Fan Yang

State University of New York at Buffalo

Austria
Author Profile
Alina Vereshchaka

State University of New York at Buffalo

Austria
Author Profile
Wen Dong

State University of New York at Buffalo

Austria

📄 논문 정보

발행 연도 2020년
인용수 0
출판 국가 Austria
사이트 ACM
좋아요 수 0

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