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Combination Prediction for Short-term Traffic Flow Based on Artificial Neural Network

机译:基于人工神经网络的短期交通流量组合预测

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As the basis of urban traffic control and guidance, the prediction for short-term traffic flow is constrained by its dynamic properties. To build an optimum model and enhance the predicting accuracy of the traffic flow, a combination prediction algorithm based on neural network is proposed. According to the algorithm, the first Lyapunov exponent and recurrence plot are used to analyze the forecasting property of a traffic flow, and a set of predicting models are determined corresponding to the analysis. The predicted results of the traffic flow are obtained by a nonlinear combination model based on a neural network. Both simulated and real detected traffic volume are used to verify the effectiveness of the algorithm.
机译:作为城市交通管制和指导的基础,短期交通流量的预测受其动态特性的约束。为了构建最佳模型并增强流量的预测精度,提出了一种基于神经网络的组合预测算法。根据该算法,第一Lyapunov指数和复发曲线用于分析业务流量的预测性能,并确定对应于分析的预测模型。业务流的预测结果由基于神经网络的非线性组合模型获得。模拟和实际检测到的流量卷都用于验证算法的有效性。

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