摘要

Stochastic weather generators are commonly used to generate time series of weather variables to drive agricultural and hydrologic models. One of their most appealing features is the ability to rapidly generate the very long time series used in agricultural and hydrological impact studies. However, they also have various problems, such as the inability to represent the interannual variability of the climate system, and it is difficult for them to accurately preserve the auto- and cross-correlation of maximum and minimum temperatures (T(max) and T(min)). This research aims to merge two widely used weather generators (CLIGEN (v5.22564) and WGEN) into a hybrid method that combines the strengths of each (referred to as the conditional method) for generating T(max) and T(min) and apply an approach to correct the interannual variability of T(max) and T(min) (referred to as the spectral correction method). The results show that CLIGEN reproduced mean daily T(max) and T(min) very well. WGEN also produced mean daily T(max) reasonably well but slightly underestimated mean daily T(min). Moreover, CLIGEN was better than WGEN at producing standard deviations of daily T(max) and T(min) The conditional and spectral correction methods resulted in a weather generator that accurately produced means, standard deviations, and extremes of daily T(max) and T(min). The auto- and cross-correlations of and between daily T(max) and T(min) were well reproduced and much better than those of CLIGEN- and WGEN-generated data. Moreover, the spectral correction approach successfully reproduced the observed interannual variability of T(max) and T(min).

  • 出版日期2011-10