首页> 外文会议>International Conference on Knowledge-Based Intelligent Information and Engineering Systems(KES 2005) pt.3; 20050914-16; Melbourne(AU) >Similarity Retrieval from Time-Series Tropical Cyclone Observations Using a Neural Weighting Generator for Forecasting Modeling
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Similarity Retrieval from Time-Series Tropical Cyclone Observations Using a Neural Weighting Generator for Forecasting Modeling

机译:使用神经加权生成器对时间序列热带气旋观测值进行相似性检索以进行建模

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摘要

Building a forecasting model for time-series data is a tough but very valuable research topic in recent years. High variation of time-series features must be considered appropriately for an accurate prediction. For weather forecasting, which is continuous, dynamic and chaotic, it's difficult to extract the most important information present in the knowledge base and determine the importance of each feature. In this paper, taking tropical cyclone (TC) as an example, we present an integrated similarity retrieval model to forecast the intensity of a tropical cyclone using neural network, which is adopted to generate a set of appropriate weights for various associated features of a tropical cyclone. A time adjustment function is used for time-series consideration. The experimental results show that this integrated approach can achieve a better performance.
机译:建立时间序列数据的预测模型是近年来一项艰巨但非常有价值的研究课题。为了正确预测,必须适当考虑时间序列特征的高变化。对于连续,动态且混乱的天气预报,很难提取知识库中存在的最重要的信息并确定每个功能的重要性。在本文中,以热带气旋(TC)为例,我们提出了一个综合相似性检索模型,使用神经网络预测热带气旋的强度,该模型用于为热带的各种相关特征生成一组合适的权重气旋。时间调整功能用于时序考虑。实验结果表明,该集成方法可以实现更好的性能。

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