cs.AI updates on arXiv.org 10月09日 12:09
PINNs在COVID-19传播动力学中的应用
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本文采用PINNs解决SIR模型的逆问题,分析了德国各联邦州三年内的COVID-19传播动力学,揭示了地区间传播行为的差异及与疫苗接种和疫情阶段的关联。

arXiv:2510.06776v1 Announce Type: cross Abstract: The COVID-19 pandemic has highlighted the need for quantitative modeling and analysis to understand real-world disease dynamics. In particular, post hoc analyses using compartmental models offer valuable insights into the effectiveness of public health interventions, such as vaccination strategies and containment policies. However, such compartmental models like SIR (Susceptible-Infectious-Recovered) often face limitations in directly incorporating noisy observational data. In this work, we employ Physics-Informed Neural Networks (PINNs) to solve the inverse problem of the SIR model using infection data from the Robert Koch Institute (RKI). Our main contribution is a fine-grained, spatio-temporal analysis of COVID-19 dynamics across all German federal states over a three-year period. We estimate state-specific transmission and recovery parameters and time-varying reproduction number (R_t) to track the pandemic progression. The results highlight strong variations in transmission behavior across regions, revealing correlations with vaccination uptake and temporal patterns associated with major pandemic phases. Our findings demonstrate the utility of PINNs in localized, long-term epidemiological modeling.

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PINNs COVID-19 SIR模型 传播动力学 疫苗接种
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