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IDENTIFICATION OF NETWORK SENSOR LOCATIONS FOR TRAFFIC FLOW ESTIMATION

机译:交通流量估计的网络传感器位置识别

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This paper deals with the network sensor location problem (NSLP) for identifying the set of sensor locations that minimizes the variability of traffic flow estimation given a budget constraint. The trace of the covariance matrix is adopted as a measure of traffic flow variability. Based on the trace of the covariance matrix of the posterior traffic flow estimation conditional on a given set of sensor locations, the general form of the NSLP is derived. For illustration purposes, the multivariate normal distribution for the prior traffic flow estimation is assumed. In this case, the actual value of the counted flows is not required. Furthermore, an incremental method, which can avoid matrix inversion and give priorities of the identified sensor locations, is presented to solve the NSLP. Finally, a numerical example based on the Nguyen–Dupuis network is given to illustrate the NSLP approach and clarify some of its implementation details.
机译:本文讨论了用于识别传感器位置集合的网络传感器位置问题(NSLP) 在给定预算约束的情况下,可最大程度地减少交通流量估算的可变性。协方差的痕迹 采用矩阵作为交通流量可变性的量度。基于轨迹的协方差矩阵 在给定的传感器位置集合的条件下进行后路交通流量估算,NSLP的一般形式为 衍生的。出于说明目的,先前交通流量估算的多元正态分布为 假定。在这种情况下,不需要计数流量的实际值。此外,增量 提出了一种方法,该方法可以避免矩阵求逆并给出已识别传感器位置的优先级, 解决NSLP。最后,给出了一个基于Nguyen–Dupuis网络的数值示例,以说明 NSLP方法并阐明了其一些实现细节。

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