Kravtsov S, Gavrilov A, Buyanova M, Loskutov E, Feigin A
University of Wisconsin-Milwaukee, School of Freshwater Sciences, Atmospheric Sciences Group, Great Lakes Research Facility, 600 E Greenfield Ave., Milwaukee, Wisconsin 53204, USA.
Institute of Applied Physics, Russian Academy of Sciences, 46 Ul'yanov St., Nizhny Novgorod 603950, Russia.
Chaos. 2022 Dec;32(12):123130. doi: 10.1063/5.0106514.
Advanced numerical models used for climate prediction are known to exhibit biases in their simulated climate response to variable concentrations of the atmospheric greenhouse gases and aerosols that force a non-uniform, in space and time, secular global warming. We argue here that these biases can be particularly pronounced due to misrepresentation, in these models, of the multidecadal internal climate variability characterized by large-scale, hemispheric-to-global patterns. This point is illustrated through the development and analysis of a prototype climate model comprised of two damped linear oscillators, which mimic interannual and multidecadal internal climate dynamics and are set into motion via a combination of stochastic driving, representing weather noise, and deterministic external forcing inducing a secular climate change. The model time series are paired with pre-specified patterns in the physical space and form, conceptually, a spatially extended time series of the zonal-mean near-surface temperature, which is further contaminated by a spatiotemporal noise simulating the rest of climate variability. The choices of patterns and model parameters were informed by observations and climate-model simulations of the 20th century near-surface air temperature. Our main finding is that the intensity and spatial patterns of the internal multidecadal variability associated with the slow-oscillator model component greatly affect (i) the ability of modern pattern-recognition/fingerprinting methods to isolate the forced response of the climate system in the 20th century ensemble simulations and (ii) climate-system predictability, especially decadal predictability, as well as the estimates of this predictability using climate models in which the internal multidecadal variability is underestimated or otherwise misrepresented.
用于气候预测的先进数值模型,在模拟气候对大气温室气体和气溶胶浓度变化的响应时,已知会表现出偏差。这些气体和气溶胶在时空上造成了不均匀的长期全球变暖。我们在此认为,由于这些模型对以大规模、半球到全球模式为特征的年代际内部气候变率的错误表述,这些偏差可能会特别明显。这一点通过一个由两个阻尼线性振荡器组成的原型气候模型的开发和分析得到了说明。该模型模拟了年际和年代际内部气候动态,并通过代表天气噪声的随机驱动和诱导长期气候变化的确定性外部强迫的组合而启动。模型时间序列与物理空间中的预先指定模式配对,从概念上讲,形成了纬向平均近地表温度的空间扩展时间序列,该序列进一步受到模拟其余气候变率的时空噪声的污染。模式和模型参数的选择是基于20世纪近地表气温的观测和气候模型模拟。我们的主要发现是,与慢振荡器模型组件相关的内部年代际变率的强度和空间模式极大地影响了:(i)现代模式识别/指纹识别方法在20世纪集合模拟中分离气候系统强迫响应的能力;(ii)气候系统的可预测性,特别是年代际可预测性,以及使用内部年代际变率被低估或以其他方式错误表述的气候模型对这种可预测性的估计。