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Observability quantification of public transportation systems with heterogeneous data sources: An information-space projection approach based on discretized space-time network flow models

机译:具有异构数据源的公共交通系统的可观察性量化:基于离散时空网络流模型的信息空间投影方法

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Focusing on how to quantify system observability in terms of different interested states, this paper proposes a modeling framework to systemically account for the multi-source sensor information in public transportation systems. By developing a system of linear equations and inequalities, an information space is generated based on the available data from heterogeneous sensor sources. Then, a number of projection functions are introduced to match the relation between the unique information space and different system states of interest, such as, the passenger flow/density on the platform or in the vehicle at specific time intervals, the path flow of each origin-destination pair, the earning collected from the tickets to different operation companies etc., in urban rail transit systems as our study object. Their corresponding observability represented by state estimate uncertainties is further quantified by calculating its maximum feasible state range in proposed space-time network flow models. All of proposed models are solved as linear programming models by Dantzig-Wolfe decomposition, and a k-shortest-path-based approximation approach is also proposed to solve our models in large-scale networks. Finally, numerical experiments are conducted to demonstrate our proposed methodology and algorithms. (C) 2019 Published by Elsevier Ltd.
机译:着眼于如何根据不同的关注状态量化系统的可观察性,本文提出了一个建模框架,以系统地解释公共交通系统中的多源传感器信息。通过开发线性方程和不等式系统,基于来自异构传感器源的可用数据生成信息空间。然后,引入了许多投影函数以匹配唯一信息空间和不同系统关注状态之间的关系,例如,在特定时间间隔内平台或车辆中的乘客流量/密度,每条路径的路径流量作为研究对象,以城市轨道交通系统中从目的地到目的地,从到不同运营公司等的票务中收集的收入为目标。通过在建议的时空网络流模型中计算其最大可行状态范围,可以进一步量化由状态估计不确定性表示的它们相应的可观察性。通过Dantzig-Wolfe分解将所有提出的模型作为线性规划模型进行求解,并且还提出了一种基于k最短路径的近似方法来求解大规模网络中的模型。最后,进行数值实验以证明我们提出的方法和算法。 (C)2019由Elsevier Ltd.发布

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