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Recent 10-year Changes and the Prediction of Arctic Sea Ice: A Multivariate SARIMA approach

机译:最近的十年变化和北极海冰的预测:多元SARIMA方法

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The environment of Arctic is very important for the global environment and human society because it is sensitive as sea ice changes and keeps the Earth's cool or warm climate. So we need continuous monitoring of Arctic sea ice to understand and predict the process of climate changes. Satellite remote sensing is a useful tool for monitoring sea ice. Thus, this study analyzed the time-series of Arctic sea ice changes using satellite remote sensing data with a time-series statistical method for last ten years from 2003 and predicted the sea ice extent in the near future. Especially, we used the Multivariate SARIMA(Seasonal Autoregressive Integrated Moving Average) model that reflects multiple meteorological variables and seasonally. It was carried out to convert daily to monthly data of sea ice products because optical sensors have high spatial and temporal resolution than passive microwave sensors, but have difficulty observing the sea ice because of clouds. The result showed that minimum area of sea ice was a decrease trend during the study period and the explanatory power of the constructed Multivariate SARIMA model was about 0.71. It is thought of as a remarkable outcome because there are no studies for the Multivariate SARIMA analysis showing high explanatory power for the changes of sea ice extent. To improve the explanatory power of our model, it will be necessary as a future work to set the optimal thresholds of algorithm for estimating monthly sea ice extent and to increase the accuracy of climate factors data.
机译:北极的环境对全球环境和人类社会非常重要,因为它对海冰变化敏感,并保持地球凉爽或温暖的气候。因此,我们需要持续监测北极海冰,以了解和预测气候变化的过程。卫星遥感是监测海冰的有用工具。因此,本研究使用卫星遥感数据和时间序列统计方法对北极海冰变化的时间序列进行了从2003年开始的最近十年的分析,并预测了不久的将来海冰的范围。特别是,我们使用了多元SARIMA(季节自回归综合移动平均线)模型,该模型反映了多个气象变量和季节性。由于光学传感器比无源微波传感器具有更高的时空分辨率,但是由于有云,因此很难观察到海冰,因此可以将海冰产品的每日数据转换为月度数据。结果表明,在研究期内海冰最小面积呈下降趋势,所建立的多元SARIMA模型的解释力约为0.71。之所以认为这是一个了不起的结果,是因为没有针对多元SARIMA分析的研究显示出对海冰范围变化具有很高的解释力。为了提高我们模型的解释能力,作为未来的工作,有必要设置估计每月海冰范围的算法的最佳阈值,并提高气候因子数据的准确性。

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