Forecasting Typhoon Damage Scale with SOM Trained by Selective Presentation Learning

We previously proposed a new typhoon warning system which forecasts the likely extent of damage associated with a typhoon towards humans and buildings. The relation between typhoon data and damage data was learned by SOM (self-organizing maps) and typhoon damage scale (small, middle or large) was fo...

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Veröffentlicht in:通讯和计算机:中英文版 2013, Vol.10 (9), p.1237-1246
1. Verfasser: KazuhiroKohara Isao Sugiyama
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creator KazuhiroKohara Isao Sugiyama
description We previously proposed a new typhoon warning system which forecasts the likely extent of damage associated with a typhoon towards humans and buildings. The relation between typhoon data and damage data was learned by SOM (self-organizing maps) and typhoon damage scale (small, middle or large) was forecast by the SOM using typhoon data. Although average accuracy for actually small scale damage data was comparatively high (96.2%), average accuracy for actually large scale damage data was comparatively low (65.2%). Thus, we apply a selective presentation learning technique for improving the predictability of large scale damage by SOM. Learning data corresponding to middle and large scale damage are presented more often. Average accuracy for actually large scale damage data was increased by about 9%. The accuracy for actually large scale of numbers of fatalities and houses under water was increased by 25% and 20%, respectively.
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identifier ISSN: 1548-7709
ispartof 通讯和计算机:中英文版, 2013, Vol.10 (9), p.1237-1246
issn 1548-7709
1930-1553
language eng
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source EZB-FREE-00999 freely available EZB journals; Alma/SFX Local Collection
subjects SOM
台风
大规模数据
学习技术
平均精度
损害
演示
自组织特征映射
title Forecasting Typhoon Damage Scale with SOM Trained by Selective Presentation Learning
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