基于支持向量机的组合模型船舶交通流量预测

W. Haiyan, Wang Youzhen
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引用次数: 14

摘要

船舶交通流量预测研究是航道规划、设计和船舶航行管理的重要依据。船舶交通模型是一个非线性的、不确定的、复杂的动力学系统,很难用精确的数学模型来表达。预测模型在反映整体交通流状况时都有一定的局限性。本文介绍了基于RBF神经网络、灰色预测和自回归的船舶交通流单一预测模型。然后将三种模型与支持向量机(SVM)相结合,进行组合预测。以长江船舶交通流量数据为基础,组合预测结果作为最终预测值。将适合船舶交通流预测的多种预测方法融合在一起,可以减少单一预测方法的不确定性,提高预测的准确性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vessel traffic flow forecasting with the combined model based on support vector machine
The research of vessel traffic flow prediction is important basis of waterway planning, design and vessel navigation management. Vessel traffic model is a nonlinear, uncertain and complex dynamics system, which hardly can be expressed using some precise mathematical models. Forecasting models all have limitations to reflect the overall traffic flow situations. This article introduces three single forecasting models of vessel traffic flow with RBF neural network, Grey forecasting and auto-regression. And then combining the three models with the support vector machine (SVM) is to make the combination forecasting. Based on the vessel traffic flow dates of the Yangtze River, the result of combination forecasting is as the final predicted value. Kinds of forecasting method fusion which are fit with the vessel traffic flow forecasting, can reduce the uncertainty of single prediction methods and increase the accuracy and robustness of the prediction.
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