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Similarity Study of Hydrological Time Series Based on Data Mining

机译:基于数据挖掘的水文时间序列的相似性研究

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The rapid development of data mining in recent years provides new research ideas and methods for hydrologic time series similarity, which can be used to mine hidden patterns and laws in massive hydrologic data as well as useful information for predicting hydrological processes. By using the hydro-logic time series data, through the deep learning and data mining related technology, the hydrologic time series prediction research. In order to better study the hydrological time series similarity based on data mining, this paper use the integral autoregressive moving average model (ARIMA) model for linear autocorrelation is part of the hydrological time series prediction, then use support vector regression (S VR) model to predict nonlinear part, the forecast results together and get the confidence of A confidence interval, which determine the actual value is not in the confidence interval of outliers, the last in a river basin liuhe measured data validation of the test sites, the results show that the similarity detection efficiency of 32.9%.
机译:近年来数据挖掘的快速发展为水文时间序列相似性提供了新的研究思路和方法,可用于挖掘巨大水文数据中的隐藏模式和法律以及预测水文过程的有用信息。通过使用水力逻辑时间序列数据,通过深度学习和数据挖掘相关技术,水文时间序列预测研究。为了更好地研究基于数据挖掘的水文时间序列相似度,本文使用了线性自相关的积分自回归移动平均模型(ARIMA)模型是水文时间序列预测的一部分,然后使用支持向量回归(S VR)模型为了预测非线性部分,预测结果将结果在一起并获得置信区间的置信度,这决定了实际价值不是异常值的置信区间,最后在河流河流域刘海测量了测试网站的数据验证,结果表明相似性检测效率为32.9%。

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