基于随机因子的观察链流OD矩阵估计

Guohui Zhang, Yi Zhang, Jianming Hu, Jiang-tao Ren, Chun-guang Zong
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引用次数: 0

摘要

建立了一种考虑积分随机因素的起点-终点(OD)矩阵估计迭代方法。给出了连杆选择比例的解析形式。通过最小化估计和观察到的链接流之间的平方误差,数学模型平衡了限制方程的所有近似程度。基于估计理论,采用递推最小二乘法对OD矩阵进行估计。所述方法由于集成了随机干扰(包括测量误差和观测链路流量的时间变化)而更容易接受观测中的波动,并且可以更好地利用来自观测系统的交通信息。分析和仿真研究表明,该方法是可行的。讨论了影响OD矩阵计算结果的因素,并提出了今后的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Observed-link-flow-based OD matrix estimation with stochastic factors
A new iterative procedure with the consideration of the integrating stochastic factors is established for estimating origin-destination (OD) matrices. The analytical form of the link choice proportions is developed. By minimizing the squared errors between estimated and observed link flows, the mathematical model balances all degrees of approximation for restricted equations. The recursive least squares method is conducted to evaluate OD matrices based on the estimation theory. The conducted method is more receptive to fluctuations in the observation due to integrating stochastic disturbances including the measurement errors and temporal variations of the observed link flows, and can make better use of traffic information from observation systems. The analysis and simulation study show that the method is feasible. Factors influencing the computed results of OD matrices are discussed and directions for future researches are proposed.
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