Earth System Physics, The Abdus Salam International Centre for Theoretical Physics (ICTP), Strada Costiera 11, Trieste, Italy.
International Research Institute for Climate and Society, Lamont-Doherty Earth Observatory, Columbia University, Palisades, New York, United States of America.
PLoS One. 2018 Sep 26;13(9):e0200638. doi: 10.1371/journal.pone.0200638. eCollection 2018.
In this study, experiments are conducted to gauge the relative importance of model, initial condition, and driving climate uncertainty for simulations of malaria transmission at a highland plantation in Kericho, Kenya. A genetic algorithm calibrates each of these three factors within their assessed prior uncertainty in turn to see which allows the best fit to a timeseries of confirmed cases. It is shown that for high altitude locations close to the threshold for transmission, the spatial representativeness uncertainty for climate, in particular temperature, dominates the uncertainty due to model parameter settings. Initial condition uncertainty plays little role after the first two years, and is thus important in the early warning system context, but negligible for decadal and climate change investigations. Thus, while reducing uncertainty in the model parameters would improve the quality of the simulations, the uncertainty in the temperature driving data is critical. It is emphasized that this result is a function of the mean climate of the location itself, and it is shown that model uncertainty would be relatively more important at warmer, lower altitude locations.
在这项研究中,进行了实验以衡量模型、初始条件和驱动气候不确定性对于肯尼亚肯尼亚克里乔高地种植园疟疾传播模拟的相对重要性。遗传算法依次在其评估的先验不确定性范围内校准这三个因素中的每一个,以确定哪个因素最适合确诊病例的时间序列。结果表明,对于接近传播阈值的高海拔地区,气候(特别是温度)的空间代表性不确定性主导了由于模型参数设置引起的不确定性。初始条件不确定性在最初两年后几乎没有作用,因此在预警系统中很重要,但在年代际和气候变化研究中则可以忽略不计。因此,虽然减少模型参数的不确定性会提高模拟的质量,但驱动数据的温度不确定性至关重要。需要强调的是,这一结果是该地点平均气候的函数,并且表明在较温暖、海拔较低的地点,模型不确定性将相对更为重要。