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Short-Term Freeway Traffic Flow Prediction: Bayesian Combined Neural Network Approach

机译:短期高速公路交通流量预测:贝叶斯组合神经网络方法

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Short-term traffic flow prediction has long been regarded as a critical concern for intelligent transportation systems. On the basis of many existing prediction models, each having good performance only in a particular period, an improved approach is to combine these single predictors together for prediction in a span of periods. In this paper, a neural network model is introduced that combines the prediction from single neural network predictors according to an adaptive and heuristic credit assignment algorithm based on the theory of conditional probability and Bayes' rule. Two single predictors, i.e., the back propagation and the radial basis function neural networks are designed and combined linearly into a Bayesian combined neural network model. The credit value for each predictor in the combined model is calculated according to the proposed credit assignment algorithm and largely depends on the accumulative prediction performance of these predictors during the previous prediction intervals. For experimental test, two data sets comprising traffic flow rates in 15-min time intervals have been collected from Singapore's Ayer Rajah Expressway. One data set is used to train the two single neural networks and the other to test and compare the performances between the combined and singular models. Three indices, i.e., the mean absolute percentage error, the variance of absolute percentage error, and the probability of percentage error, are employed to compare the forecasting performance. It is found that most of the time, the combined model outperforms the singular predictors. More importantly, for a given time period, it is the role of this newly proposed model to track the predictors' performance online, so as to always select and combine the best-performing predictors for prediction.
机译:长期的交通流量预测长期以来一直被视为智能交通系统的关键问题。在许多现有的预测模型的基础上,每个模型仅在特定时间段内具有良好的性能,一种改进的方法是将这些单个预测器组合在一起,以便在一定时期内进行预测。本文介绍了一种神经网络模型,该模型基于条件概率理论和贝叶斯规则,根据自适应和启发式信用分配算法,结合了单个神经网络预测变量的预测。设计了两个单一的预测变量,即反向传播和径向基函数神经网络,并将其线性组合为贝叶斯组合神经网络模型。组合模型中每个预测变量的信用值是根据提出的信用分配算法计算的,并且很大程度上取决于这些预测变量在先前预测间隔内的累积预测性能。为了进行实验测试,已经从新加坡的Ayer Rajah高速公路收集了两个数据集,包括15分钟时间间隔内的交通流量。一个数据集用于训练两个单个神经网络,另一个数据集用于测试和比较组合模型和奇异模型之间的性能。使用三个指数,即平均绝对百分比误差,绝对百分比误差的方差和百分比误差的概率来比较预测性能。发现大多数情况下,组合模型的性能优于奇异的预测变量。更重要的是,在给定的时间段内,此新提出的模型的作用是在线跟踪预测变量的性能,以便始终选择并组合性能最佳的预测变量进行预测。

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