Method for Reliable Shortest Path Determination in Stochastic Networks using Parametrically Defined Stable Probability Distributions

Q3 Mathematics
A. Agafonov, V. Myasnikov
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引用次数: 3

Abstract

An increase in the number of vehicles, especially in large cities, and inability of the existing road infrastructure to distribute transport flows, leads to a higher congestion level in transport networks. This problem makes the solution to navigational problems more and more important. Despite the popularity of these tasks, many existing commercial systems find a route in deterministic networks, not taking into account the time-dependent and stochastic properties of traffic flows, i.e. travel time of road links is considered as constant. This paper addresses the reliable routing problem in stochastic networks using actual information of the traffic flow parameters. We consider the following optimality criterion: maximization of the probability of arriving on time at a destination given a departure time and a time budget. The reliable shortest path takes into account the variance of the travel time of the road network segments, which makes it more applicable for solving routing problems in transport networks compared to standard shortest path search algorithms that take into account only the average travel time of network segments. To describe the travel time of the road network segments, it is proposed to use parametrically defined stable Levy probability distributions. The use of stable distributions allows replacing the operation of calculating convolution to determine the reliability of the path to recalculating the parameters of the distributions density, which significantly reduces the computational time of the algorithm. The proposed method gives a solution in the form of a decision, i.e. the route proposed in the solution is not fixed in advance, but adaptively changes depending on changes in the real state of the network. An experimental analysis of the algorithm carried out on a large-scale transport network of Samara, Russia, showed that the presented algorithm can significantly reduce the computational time of the reliable shortest path algorithm with a slight increase in travel time.
基于参数定义稳定概率分布的随机网络可靠最短路径确定方法
车辆数量的增加,特别是在大城市,以及现有道路基础设施无法分配运输流量,导致运输网络的更严重拥堵。这一问题使得导航问题的解决变得越来越重要。尽管这些任务很受欢迎,但许多现有的商业系统在确定性网络中寻找路线,而没有考虑交通流的时间依赖性和随机性,即道路连接的旅行时间被认为是恒定的。本文利用交通流参数的实际信息,研究了随机网络中的可靠路由问题。我们考虑以下最优性准则:给定出发时间和时间预算,准时到达目的地的概率最大化。可靠最短路径算法考虑了路网段行驶时间的方差,与仅考虑路网段平均行驶时间的标准最短路径搜索算法相比,更适用于求解交通网络中的路由问题。为了描述路网段的行驶时间,提出使用参数定义的稳定Levy概率分布。利用稳定分布,可以代替计算卷积确定路径可靠性的操作,重新计算分布密度的参数,大大减少了算法的计算时间。该方法以决策的形式给出解决方案,即解决方案中提出的路由不是预先固定的,而是根据网络实际状态的变化自适应地变化。在俄罗斯Samara的大型交通网络上进行的实验分析表明,该算法可以显著减少可靠最短路径算法的计算时间,而行程时间略有增加。
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来源期刊
SPIIRAS Proceedings
SPIIRAS Proceedings Mathematics-Applied Mathematics
CiteScore
1.90
自引率
0.00%
发文量
0
审稿时长
14 weeks
期刊介绍: The SPIIRAS Proceedings journal publishes scientific, scientific-educational, scientific-popular papers relating to computer science, automation, applied mathematics, interdisciplinary research, as well as information technology, the theoretical foundations of computer science (such as mathematical and related to other scientific disciplines), information security and information protection, decision making and artificial intelligence, mathematical modeling, informatization.
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