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Seasonal prediction of Indian wintertime aerosol pollution using the ocean memory effect

机译:海洋记忆效应对印度冬季气溶胶污染的季节预测

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As China makes every effort to control air pollution, India emerges as the world’s most polluted country, receiving worldwide attention with frequent winter (boreal) haze extremes. In this study, we found that the interannual variability of wintertime aerosol pollution over northern India is regulated mainly by a combination of El Ni?o and the Antarctic Oscillation (AAO). Both El Ni?o sea surface temperature (SST) anomalies and AAO-induced Indian Ocean Meridional Dipole SST anomalies can persist from autumn to winter, offering prospects for a prewinter forecast of wintertime aerosol pollution over northern India. We constructed a multivariable regression model incorporating El Ni?o and AAO indices for autumn to predict wintertime AOD. The prediction exhibits a high degree of consistency with observation, with a correlation coefficient of 0.78 (P 0.01). This statistical model could allow the Indian government to forecast aerosol pollution conditions in winter and accordingly improve plans for pollution control.
机译:随着中国竭尽全力控制空气污染,印度已成为世界上污染最严重的国家,并因冬季(北方)经常出现雾霾而受到全世界的关注。在这项研究中,我们发现印度北部冬季气溶胶污染的年际变化主要受厄尔尼诺现象和南极涛动(AAO)的共同影响。厄尔尼诺海面温度(SST)异常和AAO引起的印度洋子午线偶极子SST异常在秋天到冬季都可以持续存在,为印度北部冬季气溶胶污染的冬季初预报提供了前景。我们构建了一个包含El Ni?o和AAO指数的多变量回归模型来预测冬季的AOD。该预测与观察结果具有高度一致性,相关系数为0.78(P <0.01)。这种统计模型可以使印度政府预测冬季的气溶胶污染状况,从而改善污染控制计划。

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