从常规城市交通中识别隐藏的高风险状态

Shiyan Liu, Mingyang Bai, Shengmin Guo, Jianxi Gao, Huijun Sun, Ziyou Gao, Daqing Li
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引用次数: 0

摘要

风险管理的核心任务之一是识别可能导致系统崩溃的隐藏高危状态,从而提供有价值的预警知识。然而,由于像城市交通这样的大规模复杂系统蕴含着高维度和非线性相互作用,要从巨大的系统状态空间中识别出隐藏的高危状态仍是一项挑战,因为在这些空间中,超过 99% 的可能系统状态尚未在经验数据中被访问过。通过这种方法,我们可以找到从未从实际数据中观察到的隐藏的高风险状态。这些状态可以作为风险信号,极有可能进入能量景观中的危险极小值,从而导致巨大的恢复成本。我们的发现可能会为复杂系统的风险管理提供启示。
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Hidden high-risky states identification from routine urban traffic
One of the core risk management tasks is to identify hidden high-risky states that may lead to system breakdown, which can provide valuable early warning knowledge. However, due to high dimensionality and nonlinear interaction embedded in large-scale complex systems like urban traffic, it remains challenging to identify hidden high-risky states from huge system state space where over 99% of possible system states are not yet visited in empirical data. Based on maximum entropy model, we infer the underlying interaction network from complicated dynamical processes of urban traffic, and construct system energy landscape. In this way, we can locate hidden high-risky states that have never been observed from real data. These states can serve as risk signals with high probability of entering hazardous minima in energy landscape, which lead to huge recovery cost. Our finding might provide insights for complex system risk management.
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