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Examining the applicability of different sampling techniques in the development of decomposition-based streamflow forecasting models

机译:检查不同采样技术在基于分解的流流预测模型中的开发中的适用性

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The applicability of the traditionally used overall decomposition-based (ODB) sampling technique in the development of forecasting models is controversial. This study first conducts a systematic investigation of the performance of models developed using the ODB sampling technique. A stepwise decomposition-based (SDB) sampling technique that is consistent with actual forecasting practice is then proposed. Moreover, a novel calibration algorithm that couples a two-stage calibration strategy with a shuffled complex evolutionary approach is formulated to help maintain the performance of models. The application of models produced using these different sampling techniques to four gauging stations in China and Canada indicates that (1) the ODB sampling technique that employ the discrete wavelet transform (DWT), empirical mode decomposition (EMD) and variational mode decomposition (VMD) as series decomposition techniques do not produce convincing forecasting models because additional information on the future streamflow that is to be predicted is introduced into the explanatory variables of the samples; (2) the SDB sampling technique strictly excludes information on future streamfiow from the explanatory variables and is thus as an appropriate alternative for developing forecasting models; (3) the DWT and VMD techniques benefit models by enhancing their performance; on the other hand, the EMD is unsuitable for use in forecasting, due to the variable number of subseries that result from the implementation of the stepwise decomposition strategy. Finally, methods that can be used to enhance the performance of decomposition-based models and the prediction accuracy of nonstationary streamflow are suggested.
机译:传统上使用的总基于分解(ODB)采样技术的适用性在预测模型的开发中具有争议性。本研究首先对使用ODB采样技术开发的模型性能进行了系统的调查。然后提出了一种基于逐步分解的(SDB)采样技术,其与实际预测实践一致。此外,配方耦合具有播种复杂进化方法的两级校准策略的新型校准算法,以帮助维持模型的性能。模型的应用程序中使用这些不同的采样技术,以在中国和加拿大4个测量站指示产生了(1)的ODB采样技术,该技术采用离散小波变换(DWT),经验模式分解(EMD)和变模式分解(VMD)由于串联分解技术不会产生令人信服的预测模型,因为关于要预测的未来流流的附加信息被引入样本的解释性变量; (2)SDB采样技术严格排除了未来流入从解释性变量的信息,因此作为开发预测模型的适当替代方案; (3)DWT和VMD技术通过提高其性能来利用模型;另一方面,EMD由于实现逐步分解策略的实现而导致的可变子系列,EMD不适合使用。最后,提出了可以用于增强基于分解的模型的性能的方法和非间断流流的预测精度。

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