A Bayesian Network under Strict Chain Model for Computing Flow Risks in Smart City

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Abstract

Risk management is a key factor for smart city running. There are many risk events in a strict process like transportation management of a smart city or a medical surgery in a smart hospital, and every step may lead to one kind of risk or more. In view of the fact that the occurrence of the flow risks follows the sequence formed by each process step, this paper presents a Bayesian network under strict chain (BN_SC) to model this situation. In this model, the probabilistic reasoning formula is given according to the sequence of process steps, and the probabilities given by the model can do risk factor analysis to support the system to find an effective way to improve the process like machine manufacturing or a medical surgery. Finally, an example is analyzed based on the information given by doctors according to the situation of LC in their hospital located in Sichuan Province of China, which shows the effectiveness and rationality of the proposed BN_SC model.

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Wei, Z., Zhang, L., Yue, Q., & Zhong, M. (2020). A Bayesian Network under Strict Chain Model for Computing Flow Risks in Smart City. Complexity, 2020. https://doi.org/10.1155/2020/5920827

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