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A novel hybrid decomposition-ensemble model based on VMD and HGWO for container throughput forecasting

机译:基于VMD和HGWO的混合分解集成模型在集装箱吞吐量预测中的应用

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This paper built a hybrid decomposition-ensemble model named VMD-ARIMA-HGWO-SVR for the purpose of improving the stability and accuracy of container throughput prediction. The latest variational mode decomposition (VMD) algorithm is employed to decompose the original series into several modes (components), then ARIMA models are built to forecast the low-frequency components, and the high-frequency components are predicted by SVR models which are optimized with a recently proposed swarm intelligence algorithm called hybridizing grey wolf optimization (HGWO), following this, the prediction results of all modes are ensembled as the final forecasting result. The error analysis and model comparison results show that the VMD is more effective than other decomposition methods such as CEEMD and WD, moreover, adopting ARIMA models for prediction of low-frequency components can yield better results than predicting all components by SVR models. Based on the results of empirical study, the proposed model has good prediction performance on container throughput data, which can be used in practical work to provide reference for the operation and management of ports to improve the overall efficiency and reduce the operation costs.
机译:为了提高集装箱吞吐量预测的稳定性和准确性,本文建立了混合分解集成模型VMD-ARIMA-HGWO-SVR。采用最新的变分模式分解算法将原始序列分解为几种模式(分量),然后建立ARIMA模型预测低频分量,并通过优化后的SVR模型预测高频分量。使用最近提出的称为混合灰狼优化(HGWO)的群体智能算法,之后,将所有模式的预测结果汇总为最终预测结果。误差分析和模型比较结果表明,VMD比其他分解方法(例如CEEMD和WD)更有效,此外,采用ARIMA模型预测低频分量比通过SVR模型预测所有分量能产生更好的结果。基于实证研究的结果,提出的模型对集装箱吞吐量数据具有良好的预测性能,可在实际工作中为港口的经营管理提供参考,以提高港口的整体效率,降低经营成本。

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