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首页> 外文期刊>Journal of Water and Land Development >Comparison of machine learning methods for runoff forecasting in mountainous watersheds with limited data / Porównanie metod uczenia maszynowego do prognozowania sp?ywu w zlewniach górskich na podstawie ograniczonych danych
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Comparison of machine learning methods for runoff forecasting in mountainous watersheds with limited data / Porównanie metod uczenia maszynowego do prognozowania sp?ywu w zlewniach górskich na podstawie ograniczonych danych

机译:数据有限的山区流域径流预测的机器学习方法比较/数据有限的山区流域径流预测的机器学习方法比较

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Runoff forecasting in mountainous regions with processed based models is often difficult and inaccurate due to the complexity of the rainfall-runoff relationships and difficulties involved in obtaining the required data. Machine learning models offer an alternative for runoff forecasting in these regions. This paper explores and compares two machine learning methods, support vector regression (SVR) and wavelet networks (WN) for daily runoff forecasting in the mountainous Sianji watershed located in the Himalayan region of India. The models were based on runoff, antecedent precipitation index, rainfall, and day of the year data collected over the three year period from July 1, 2001 and June 30, 2004. It was found that both the methods provided accurate results, with the best WN model slightly outperforming the best SVR model in accuracy. Both the WN and SVR methods should be tested in other mountainous watershed with limited data to further assess their suitability in forecasting.
机译:由于降雨-径流关系的复杂性以及获取所需数据的难度,使用处理后的模型在山区进行径流预报通常是困难且不准确的。机器学习模型为这些地区的径流预报提供了一种替代方法。本文探索并比较了两种机器学习方法,即支持向量回归(SVR)和小波网络(WN),用于在印度喜马拉雅山地区的Sianji流域进行每日径流预报。这些模型基于2001年7月1日至2004年6月30日这三年期间的径流,前期降水指数,降雨量和一年中的当日数据。发现这两种方法均能提供准确的结果,且效果最佳。 WN模型在准确性方面略胜于最佳SVR模型。 WN和SVR方法都应在数据有限的其他山区流域进行测试,以进一步评估其在预测中的适用性。

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