亚洲西南中部的机会次季节降水预报

Melissa Breeden, J. Albers, A. Hoell
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引用次数: 3

摘要

摘要利用线性逆模型(LIM)提高的预期预报技能,确定了西南亚1 - 3月在3-6周的降水机会亚季节预报(SFOs),线性逆模型是一种经验动力学模型,利用统计关系推断系统的可预测动力学。这种基于大气环流、热带外传长波辐射和海洋表面温度的LIM的预期预报能力,捕捉到与许多相关信号相关的可预测性,而不是仅仅依靠预测。El Niño-Southern涛动(ENSO)和Madden-Julian涛动(MJO)两种变率模式与西南亚降水sfo有关,这两种模式本身由于变化缓慢而可预测。1983年、1998年和2016年观测到的强厄尔尼诺Niño事件,使SFO提前3-4周和5-6周发生的可能性显著增加了3倍。1989年、1999年和2000年观察到的强La Niña事件也显著增加了在相同的提前期发生SFO的可能性。2-4和6-8阶段的高振幅MJO事件大于一次标准化偏离也显著增加了提前3-4周发生SFO的可能性。异常湿期之前的可预测大气环流模式表明南太平洋辐合带(SPCZ)区域的热带对流增强,而在可预测的干期之前观测到的对流抑制。在El Niño和La Niña条件下,该地区的异常加热可以区分湿期和干期,尽管大气环流对加热的响应在每个ENSO阶段之间有所不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subseasonal precipitation forecasts of opportunity over central southwest Asia
Abstract. Subseasonal forecasts of opportunity (SFOs) for precipitation over southwest Asia during January–March at lead times of 3–6 weeks are identified using elevated expected forecast skill from a linear inverse model (LIM), an empirical dynamical model that uses statistical relationships to infer the predictable dynamics of a system. The expected forecast skill from this LIM, which is based on the atmospheric circulation, tropical outgoing longwave radiation, and sea surface temperatures, captures the predictability associated with many relevant signals as opposed to just one. Two modes of variability, El Niño–Southern Oscillation (ENSO) and the Madden–Julian Oscillation (MJO), which themselves are predictable because of their slow variations, are related to southwest Asia precipitation SFOs. Strong El Niño events, as observed in 1983, 1998, and 2016, significantly increase the likelihood by up to 3-fold of an SFO 3–4 and 5–6 weeks in advance. Strong La Niña events, as observed in 1989, 1999, 2000, also significantly increase the likelihood of an SFO at those same lead times. High-amplitude MJO events in phases 2–4 and 6–8 of greater than one standardized departure also significantly increase the likelihood of an SFO 3–4 weeks in advance. Predictable atmospheric circulation patterns preceding anomalously wet periods indicate a role for enhanced tropical convection in the South Pacific convergence zone (SPCZ) region, while suppressed convection is observed preceding predictable dry periods. Anomalous heating in this region is found to distinguish wet and dry periods during both El Niño and La Niña conditions, although the atmospheric circulation response to the heating differs between each ENSO phase.
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