College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter, UK
Philos Trans A Math Phys Eng Sci. 2014 Jun 28;372(2018):20130286. doi: 10.1098/rsta.2013.0286.
Regime predictability in atmospheric low-order models augmented with stochastic forcing is studied. Atmospheric regimes are identified as persistent or metastable states using a hidden Markov model analysis. A somewhat counterintuitive, coherence resonance-like effect is observed: regime predictability increases with increasing noise level up to an intermediate optimal value, before decreasing when further increasing the noise level. The enhanced regime predictability is due to increased persistence of the regimes. The effect is found in the Lorenz '63 model and a low-order model of barotropic flow over topography. The increased predictability is only present in the regime dynamics, that is, in a coarse-grained view of the system; predictability of individual trajectories decreases monotonically with increasing noise level. A possible explanation for the phenomenon is given and implications of the finding for weather and climate modelling and prediction are discussed.
本文研究了加入随机强迫的大气低阶模型中的气候预测可预报性。利用隐马尔可夫模型分析,将大气气候识别为持久或亚稳状态。观察到一种有些违反直觉的相干共振样效应:气候预测可预报性随着噪声水平的增加而增加,直到达到中间最优值,然后当噪声水平进一步增加时减小。增强的气候预测可预报性是由于气候的持久性增加所致。该效应在 Lorenz '63 模型和地形上的正压流的低阶模型中均有发现。可预测性的增加仅存在于气候动态中,即系统的粗粒化视图中;随着噪声水平的增加,单个轨迹的可预测性单调减小。对该现象给出了可能的解释,并讨论了该发现对天气和气候建模和预测的影响。