Department of Atmospheric Sciences, Yonsei University, Seoul, South Korea.
Center for Climate Physics, Institute for Basic Science, Busan, South Korea.
PLoS One. 2019 Apr 10;14(4):e0214535. doi: 10.1371/journal.pone.0214535. eCollection 2019.
We present a novel quasi-Bayesian method to weight multiple dynamical models by their skill at capturing both potentially non-linear trends and first-order autocorrelated variability of the underlying process, and to make weighted probabilistic projections. We validate the method using a suite of one-at-a-time cross-validation experiments involving Atlantic meridional overturning circulation (AMOC), its temperature-based index, as well as Korean summer mean maximum temperature. In these experiments the method tends to exhibit superior skill over a trend-only Bayesian model averaging weighting method in terms of weight assignment and probabilistic forecasts. Specifically, mean credible interval width, and mean absolute error of the projections tend to improve. We apply the method to a problem of projecting summer mean maximum temperature change over Korea by the end of the 21st century using a multi-model ensemble. Compared to the trend-only method, the new method appreciably sharpens the probability distribution function (pdf) and increases future most likely, median, and mean warming in Korea. The method is flexible, with a potential to improve forecasts in geosciences and other fields.
我们提出了一种新的准贝叶斯方法,通过其在捕捉潜在非线性趋势和基础过程一阶自相关可变性方面的技能,对多个动力模型进行加权,并进行加权概率预测。我们使用一系列逐个交叉验证实验来验证该方法,这些实验涉及北大西洋经向翻转环流(AMOC)及其基于温度的指数,以及韩国夏季平均最高温度。在这些实验中,该方法在权重分配和概率预测方面,相对于仅趋势的贝叶斯模型平均加权方法,表现出更好的技能。具体来说,投影的可信区间均值宽度和均方误差趋于改善。我们将该方法应用于使用多模型集合预测 21 世纪末韩国夏季平均最高温度变化的问题。与仅趋势方法相比,新方法明显锐化了概率分布函数(pdf),并增加了韩国未来最可能、中位数和平均变暖的可能性。该方法具有灵活性,有可能改善地球科学和其他领域的预测。