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Multiple-Clustering ARMAX-Based Predictor and its Application to Freeway Traffic Flow Prediction

机译:基于群集的基于ARMAX的预测和应用于高速公路交通流量预测

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An adaptive predictor for a linear discrete time-varying stochastic system is proposed in this paper in order to forecast freeway traffic flow at a specific location over a one-hour horizon. Historical sensor data is first clustered by the K-means method to obtain the representative data pattern of the sensor. For each K-means cluster and using the clusters centroid as the exogenous input, the time-varying output of the sensor is subsequently modeled as an ARMAX stochastic process, and identified in real time using a recursive least squares (RLS) with forgetting factor algorithm. Based on the identified ARMAX model, a D-step ahead optimal predictor is generated for each cluster and its associated estimated error prediction variance calculated. The cluster and its associated ARMAX estimate that produces the smallest estimated D-step ahead error prediction variance is selected at each sampling time instant to generate the optimal D-step ahead predictor of the sensor output. The proposed technique is applied to empirical vehicle detector station (VDS) data to forecast both freeway mainline and on-ramp traffic flow at specific locations over a horizon of one hour. Results indicate that the proposed traffic flow predictor often offers superior flexibility and overall forecast performance compared to using either only historical data or only real-time sensor data on both normal commute days and days when unusual incidents occur.
机译:本文提出了一种用于线性离散时变随机系统的自适应预测器,以预测在一个小时地平线上的特定位置的高速公路交通流量。历史传感器数据是由K-均值方法聚集的,以获得传感器的代表性数据模式。对于每个k均值集群并使用簇质心作为外源输入,传感器的时变输出随后被建模为ARMAX随机过程,并使用递归最小二乘法(RLS)实时识别为遗忘因子算法。基于所识别的ARMAX模型,为每个群集生成D-Step前方最佳预测器,并且计算的相关估计误差预测方差。在每个采样时间即时选择产生最小估计的D-阶梯前进的误差预测方差的群集及其相关的ARMAX估计,以产生传感器输出的最佳D-Step预测器。所提出的技术应用于经验车辆检测器站(VDS)数据,以预测高速公路主线和在一个小时的地平线上的特定位置上的斜坡交通流量。结果表明,与使用在发生异常通勤日常的正常通勤日和日期时,建议的交通流量预测器通常提供卓越的灵活性和总体预测性能。

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