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Instance-based learning compared to other data-driven methods in hydrological forecasting

机译:在水文预报中与其他数据驱动方法相比,基于实例的学习

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摘要

Data-driven techniques based on machine learning algorithms are becoming popular in hydrological modelling, in particular for forecasting. Artificial neural networks (ANNs) are often the first choice. The so-called instance-based learning (IBL) has received relatively little attention, and the present paper explores the applicability of these methods in the field of hydrological forecasting. Their performance is compared with that of ANNs, M5 model trees and conceptual hydrological models. Four short-term flow forecasting problems were solved for two catchments. Results showed that the IBL methods often produce better results than ANNs and M5 model trees, especially if used with the Gaussian kernel function. The study showed that IBL is an effective data-driven method that can be successfully used in hydrological forecasting.
机译:基于机器学习算法的数据驱动技术在水文建模中正变得越来越流行,特别是在预测方面。人工神经网络(ANN)通常是首选。所谓的基于实例的学习(IBL)受到的关注相对较少,因此本文探讨了这些方法在水文预报领域的适用性。将它们的性能与人工神经网络,M5模型树和概念性水文模型进行了比较。解决了两个流域的四个短期流量预测问题。结果表明,IBL方法通常比ANN和M5模型树产生更好的结果,尤其是与高斯核函数一起使用时。研究表明,IBL是一种有效的数据驱动方法,可以成功地用于水文预报中。

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