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Using remote sensing data to develop seasonal outlooks for Arctic regional sea-ice minimum extent

机译:利用遥感数据确定北极区域海冰最小范围的季节性前景

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This paper discusses the development of simple multiple linear regression (MLR) models for developing seasonal forecasts of the annual minimum sea-ice extent in the Beaufort/Chukchi Seas, the Laptev/East Siberian Seas, the Kara/Barents Seas, and the Canadian Arctic Archipelago regions. The potential predictor data are based on mean monthly weighted indices of sea-ice concentration, rnultiyear sea-ice concentration, surface skin temperature, surface albedo, and downwelling longwave radiation flux at the surface. Predictions are developed based on data available in March (spring forecast), to coincide with the National American Ice Service's annual outlooks, and based on data available in June (summer forecast), which would provide a seasonal revision. The final regression equations retain one to three predictors, and each of the MLR models is superior to climatology. The r{sup}2 for the MLR models range from a low of 0.44 (for the spring forecast in the Canadian Arctic Archipelago) to a high of 0.80 (for the summer forecast in the Beaufort/Chukchi Seas).
机译:本文讨论了简单多元线性回归(MLR)模型的开发,用于开发Beaufort / Chukchi海,Laptev / East西伯利亚海,Kara / Barents海和加拿大北极地区的年度最小海冰范围的季节性预测群岛地区。潜在的预测数据基于海冰浓度,海藻多年浓度,地表皮肤温度,地表反照率和地表下深波辐射通量的月平均加权指数。预测是根据三月份的可用数据(春季预测),与美国国家冰雪服务局的年度展望相一致的,并且基于六月份的可用数据(夏季预测)进行的,这将提供季节性修订。最终的回归方程保留了1-3个预测变量,并且每个MLR模型都优于气候学。 MLR模型的r {sup} 2从低点0.44(加拿大北极群岛的春季预报)到高点0.80(Beaufort /楚科奇海的夏季预报)。

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