利用卫星图像上的云运动模式预测旋风

Rhoma Cahyanti, Rendra Budi Hutama, Rafi Haidar Ramdlon, Windasari Dwiastuti, Fadilah Fahrul Hardiansyah, A. Basuki
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引用次数: 5

摘要

旋风是一种局地尺度的气象现象,在短时间内发生,具有破坏性,可造成生命和物质损失。到目前为止,还不能准确地预测旋风发生的时间和地点。然而,从现象发生前的一些症状仍然可以识别出这些迹象,例如高温和许多积云的形成,然后突然转变为积雨云。因为这次事件造成了很大的损失和人员伤亡,所以需要对旋风进行预测,以便后期人们更加警惕,将影响降到最低。本研究旨在建立一个从观测云团的卫星图像中获取云运动模式的系统。采用聚类方法对云进行分类,然后找出每一簇云的运动规律。这种运动模式是预测旋风发生的模型。印度尼西亚境内几次旋风事件的试验结果表明,在旋风事件发生前24小时,至少有积云、中云和/或层积云具有弯曲模式;接近然后离开旋风出现的位置。进一步,收集云的运动模式,建立数据测试。通过K-NN方法得到的结果表明,从2016年的一些旋风现象中收集的数据测试的准确率为88%。同时,用SVM方法对数据进行测试时,准确率达到84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Whirlwind prediction using cloud movement patterns on satellite image
Whirlwind is a local-scale meteorological phenomenon that occurs in a short time, destructive, and can cause loss of life and material. Until now, when and where the whirlwind will occur can not be predicted precisely. However, the signs are still recognizable from some of the symptoms before the phenomenon occurs, such as high temperatures and the formation of many Cumulus clouds which then suddenly transform into Cumulonimbus clouds. Because this incident caused a lot of damage and casualties, the whirlwind needs to be predicted, so that later people can be more vigilant and the impact can be minimized. This research aims to build a system for taking cloud movement patterns from observing cloud clusters on the satellite image. The clustering method is used to classify clouds, and then find out the pattern of movement in each cluster. This pattern of movement is a model to predict the occurrence of the whirlwind. The results obtained from the experiments in several whirlwind incidents in Indonesian territory indicate that at 24 hours before the event, there are at least Cumulus, Middle Cloud and/or Stratocumulus clouds that have a curving pattern; approaching and then away from the location where the whirlwind appears. Furthermore, the pattern of cloud movement will be collected to build a data test. The results obtained from the K-NN method show the accuracy of the data test collected from a number of the whirlwind phenomenon in 2016 is 88%. Meanwhile, when the data test tested with SVM method, the percentage of accuracy is 84%.
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