包括在基于代理的网络模型中避免交通堵塞。

Q1 Mathematics
Computational Social Networks Pub Date : 2018-01-01 Epub Date: 2018-05-14 DOI:10.1186/s40649-018-0053-y
Christian Hofer, Georg Jäger, Manfred Füllsack
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引用次数: 6

摘要

背景:了解交通是不同科学领域的一个重要挑战。虽然有许多构建交通模型的方法,但大多数方法依赖于出发地-目的地数据,并且在研究对出发地-目的地矩阵有影响的现象时存在困难。方法:介绍了一种宏观交通模型,该模型在不需要作为输入的始发目的地数据的意义上是新颖的。这些信息是从移动行为数据中生成的,使用基于代理的建模和网络技术的混合方法来找到每辆车的起点和终点,并有效地找到最有可能用于连接这些点的路线。将模拟的道路利用率和由此产生的拥堵与交通数据进行比较,定量评价结果。避免交通堵塞的行为在模型中包含了几个变量,然后对它们进行了定量评估。结果:所描述的模型适用于格拉茨市,这是一个典型的欧洲城市,约有32万居民。计算结果与实际吻合较好。结论:本文引入的交通模型使用出行数据而不是出发地-目的地数据作为输入,与传统模型相比,该模型得到了成功的应用,并具有独特的优势:出行行为数据适用于不同的系统,而出发地-目的地数据非常特定于所讨论的区域,更难获得。此外,可以快速评估和比较不同的情景(人口增加,更多地使用公共交通工具等)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Including traffic jam avoidance in an agent-based network model.

Including traffic jam avoidance in an agent-based network model.

Including traffic jam avoidance in an agent-based network model.

Including traffic jam avoidance in an agent-based network model.

Background: Understanding traffic is an important challenge in different scientific fields. While there are many approaches to constructing traffic models, most of them rely on origin-destination data and have difficulties when phenomena should be investigated that have an effect on the origin-destination matrix.

Methods: A macroscopic traffic model is introduced that is novel in the sense that no origin-destination data are required as an input. This information is generated from mobility behavior data using a hybrid approach between agent-based modeling to find the origin and destination points of each vehicle and network techniques to find efficiently the routes most likely used to connect those points. The simulated road utilization and resulting congestion is compared to traffic data to quantitatively evaluate the results. Traffic jam avoidance behavior is included in the model in several variants, which are then all evaluated quantitatively.

Results: The described model is applied to the City of Graz, a typical European city with about 320,000 inhabitants. Calculated results correspond well with reality.

Conclusions: The introduced traffic model, which uses mobility data instead of origin-destination data as input, was successfully applied and offers unique advantages compared to traditional models: Mobility behavior data are valid for different systems, while origin-destination data are very specific to the region in question and more difficult to obtain. In addition, different scenarios (increased population, more use of public transport, etc.) can be evaluated and compared quickly.

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来源期刊
Computational Social Networks
Computational Social Networks Mathematics-Modeling and Simulation
自引率
0.00%
发文量
0
审稿时长
13 weeks
期刊介绍: Computational Social Networks showcases refereed papers dealing with all mathematical, computational and applied aspects of social computing. The objective of this journal is to advance and promote the theoretical foundation, mathematical aspects, and applications of social computing. Submissions are welcome which focus on common principles, algorithms and tools that govern network structures/topologies, network functionalities, security and privacy, network behaviors, information diffusions and influence, social recommendation systems which are applicable to all types of social networks and social media. Topics include (but are not limited to) the following: -Social network design and architecture -Mathematical modeling and analysis -Real-world complex networks -Information retrieval in social contexts, political analysts -Network structure analysis -Network dynamics optimization -Complex network robustness and vulnerability -Information diffusion models and analysis -Security and privacy -Searching in complex networks -Efficient algorithms -Network behaviors -Trust and reputation -Social Influence -Social Recommendation -Social media analysis -Big data analysis on online social networks This journal publishes rigorously refereed papers dealing with all mathematical, computational and applied aspects of social computing. The journal also includes reviews of appropriate books as special issues on hot topics.
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