We propose the SH model, a simplified version of the well-known SIR compartmental model of infectious diseases. With optimized parameters and initial conditions, this time-invariant two-parameter two-dimensional model is able to fit COVID-19 hospitalization data over several months with high accuracy (e.g., the root relative squared error is below 10% for Belgium over the period from 2020-03-15 to 2020-07-15). Moreover, we observed that, when the model is trained on a suitable three-week period around the first hospitalization peak for Belgium, it forecasts the subsequent two months with mean absolute percentage error (MAPE) under 4%. We repeated the experiment for each French department and found 14 of them where the MAPE was below 20%. However, when the model is trained in the increase phase, it is less successful at forecasting the subsequent evolution.
翻译:我们提出SH模式,这是众所周知的SIR传染病分区模式的简化版本。根据最优化参数和初始条件,这一时空的二参数二维模型能够在几个月内非常精确地匹配COVID-19住院数据(例如,比利时在2020-03-15至2020-07-15年期间的根位相对方位错误低于10% ) 。此外,我们注意到,当该模式在比利时第一个住院高峰期前后三个星期的适当时期接受培训时,它预测了随后两个月的绝对百分比差(MAMEE)低于4 % 。我们重复了法国每个部的实验,发现其中14个部的MAPE低于20%。然而,当该模型在增加阶段接受培训时,在预测随后的演变方面不太成功。