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Real-time Forecasting for Short-term Traffic Flow Based on General Regression Neural Network

机译:基于一般回归神经网络的短期交通流量实时预测

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Analysis and forecasting for short-term traffic flow have become a critical problem in intelligent transportation system (ITS). This paper introduces the basic theory and features of General Regression Neural Network (GRNN) and its advantages. A forecasting model based on GRNN is built for short-term traffic flow time series at urban road section in 10-minutes interval. In order to get ideal forecasting results, the search method is used to obtain the number of input neurons and the value of smooth factor. When the number of input neuron and training samples are defined, the model can forecast the next 10-minutes traffic flow using the method of dynamic learning and single-step forecasting. Compared with the forecasting results of the traditional BP neural network (BPNN) which adopts error back-propagation learning method, this model is more accurate, and more suitable for short-term traffic flow forecasting.
机译:短期交通流量的分析和预测已成为智能交通系统(其)的关键问题。本文介绍了一般回归神经网络(GRNN)的基本理论和特征及其优势。基于GRNN的预测模型为10分钟间隔内城市道路段的短期交通流时间序列为基础。为了获得理想的预测结果,搜索方法用于获得输入神经元的数量和平滑因子的值。当定义输入神经元和培训样本的数量时,模型可以使用动态学习方法和单步预测方法预测未来10分钟的交通流量。与传统的BP神经网络(BPNN)的预测结果相比,采用误差反向传播学习方法,该模型更准确,更适合短期交通流预测。

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