一种新的飓风强度预测数据挖掘模型

Y. Su, Sudheer Chelluboina, Michael Hahsler, M. Dunham
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引用次数: 16

摘要

基于特征权学习(WFL)和可扩展马尔可夫模型(EMM)的数据挖掘技术,提出了一种新的飓风强度预测模型WFL-EMM。所使用的数据特征是最流行的强度预测模型之一SHIPS所采用的数据特征。在我们的算法中,利用历史飓风数据,通过遗传算法(GA)来学习特征的权重。作为GAs适应度函数,我们使用给定特征权值学习到的EMM的强度预测误差。对于适应度计算,我们在训练数据上使用类似于k-fold交叉验证的技术。利用遗传算法得到的最佳权值,构建包含所有训练数据的EMM。然后应用该EMM预测飓风强度,并计算测试数据的预测误差。利用1982 ~ 2003年命名大西洋热带气旋的历史数据,实验证明WFL-EMM在72小时内的强度预报精度明显高于SHIPS。由于我们在这里报告了第一个结果,我们指出了未来如何改进WFL-EMM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Data Mining Model for Hurricane Intensity Prediction
This paper proposes a new hurricane intensity prediction model, WFL-EMM, which is based on the data mining techniques of feature weight learning (WFL) and Extensible Markov Model (EMM). The data features used are those employed by one of the most popular intensity prediction models, SHIPS. In our algorithm, the weights of the features are learned by a genetic algorithm (GA) using historical hurricane data. As the GAs fitness function we use the error of the intensity prediction by an EMM learned using given feature weights. For fitness calculation we use a technique similar to k-fold cross validation on the training data. The best weights obtained by the genetic algorithm are used to build an EMM with all training data. This EMM is then applied to predict the hurricane intensities and compute prediction errors for the test data. Using historical data for the named Atlantic tropical cyclones from 1982 to 2003, experiments demonstrate that WFL-EMM provides significantly more accurate intensity predictions than SHIPS within 72 hours. Since we report here first results, we indicate how to improve WFL-EMM in the future.
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