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Support vector machine applications in the field of hydrology: A review

机译:支持向量机在水文学领域的应用:综述

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In the recent few decades there has been very significant developments in the theoretical understanding of Support vector machines (SVMs) as well as algorithmic strategies for implementing them, and applications of the approach to practical problems. SVMs introduced by Vapnik and others in the early 1990s are machine learning systems that utilize a hypothesis space of linear functions in a high dimensional feature space, trained with optimization algorithms that implements a learning bias derived from statistical learning theory. This paper reviews the state-of-the-art and focuses over a wide range of applications of SVMs in the field of hydrology. To use SVM aided hydrological models, which have increasingly extended during the last years; comprehensive knowledge about their theory and modelling approaches seems to be necessary. Furthermore, this review provides a brief synopsis of the techniques of SVMs and other emerging ones (hybrid models), which have proven useful in the analysis of the various hydrological parameters. Moreover, various examples of successful applications of SVMs for modelling different hydrological processes are also provided.
机译:在最近的几十年中,在对支持向量机(SVM)的理论理解以及用于实现它们的算法策略以及该方法在实际问题中的应用方面取得了重大进展。 Vapnik等人在1990年代初引入的SVM是一种机器学习系统,它利用高维特征空间中线性函数的假设空间,并经过优化算法进行训练,这些算法实现了从统计学习理论中得出的学习偏差。本文回顾了最新技术,重点介绍了SVM在水文学领域的广泛应用。使用支持向量机辅助的水文模型,该模型在最近几年中已得到越来越广泛的应用;关于其理论和建模方法的全面知识似乎是必要的。此外,本文还简要介绍了SVM和其他新兴技术(混合模型)的技术,这些技术已被证明可用于分析各种水文参数。此外,还提供了支持向量机成功用于建模不同水文过程的各种示例。

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