Capacity reliability under uncertainty in transportation networks: an optimization framework and stability assessment methodology

IF 4.8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Fuzzy Optimization and Decision Making Pub Date : 2021-10-25 DOI:10.1007/s10700-021-09374-9
Hosseini, Ahmad, Pishvaee, Mir Saman
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引用次数: 6

Abstract

Destruction of the roads and disruption in transportation networks are the aftermath of natural disasters, particularly if they are of great magnitude. As a version of the network capacity reliability problem, this work researches a post-disaster transportation network, where the reliability and operational capacity of links are uncertain. Uncertainty theory is utilized to develop a model of and solve the uncertain maximum capacity path (UMCP) problem to ensure that the maximum amount of relief materials and rescue vehicles arrive at areas impacted by the disaster. We originally present two new problems of \(\alpha\)-maximum capacity path (\(\alpha\)-MCP), which aims to determine paths of highest capacity under a given confidence level \( \alpha\), and most maximum capacity path (MMCP), where the objective is to maximize the confidence level under a given threshold of capacity value. We utilize these auxiliary programming models to explicate the method to, in an uncertain network, achieve the uncertainty distribution of the MCP value. A novel approach is additionally suggested to confront, in the framework of uncertainty programming, the stability analysis problem. We explicitly enunciate the method of computing the links’ tolerances in \({\mathcal{O}}\left( m \right)\) time or \({\mathcal{O}}\left( {\left| {P^{*} } \right|m} \right)\) time (where \(m\) indicates the number of links in the network and \(\left| {{\text{P}}^{*} } \right|\) the number of links on the given MCP \({\text{P}}^{*}\)). After all, the practical performance of the method and optimization model is illustrated by adopting two network samples from a real case study to show how our approach works in realistic contexts.

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交通网络不确定条件下的容量可靠性:优化框架与稳定性评估方法
道路的破坏和交通网络的中断是自然灾害的后果,特别是如果它们是巨大的。作为网络容量可靠性问题的一个版本,本文研究了一个链路可靠性和运行能力不确定的灾后交通网络。利用不确定性理论建立了不确定最大容量路径(UMCP)问题的模型,并对其进行求解,以保证最大数量的救援物资和救援车辆到达受灾地区。我们最初提出了两个新问题\(\alpha\)——最大容量路径(\(\alpha\) -MCP),其目的是在给定的置信水平下确定最高容量的路径\( \alpha\),以及最大容量路径(MMCP),其目标是在给定的容量值阈值下最大化置信水平。利用这些辅助规划模型,阐述了在不确定网络中实现MCP值不确定分布的方法。本文还提出了一种新的方法来解决不确定性规划框架下的稳定性分析问题。我们明确地阐述了在\({\mathcal{O}}\left( m \right)\)时间或\({\mathcal{O}}\left( {\left| {P^{*} } \right|m} \right)\)时间(\(m\)表示网络中的链路数,\(\left| {{\text{P}}^{*} } \right|\)表示给定MCP上的链路数\({\text{P}}^{*}\))中计算链路容差的方法。毕竟,该方法和优化模型的实际性能是通过采用来自实际案例研究的两个网络样本来说明的,以显示我们的方法如何在现实环境中工作。
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来源期刊
Fuzzy Optimization and Decision Making
Fuzzy Optimization and Decision Making 工程技术-计算机:人工智能
CiteScore
11.50
自引率
10.60%
发文量
27
审稿时长
6 months
期刊介绍: The key objective of Fuzzy Optimization and Decision Making is to promote research and the development of fuzzy technology and soft-computing methodologies to enhance our ability to address complicated optimization and decision making problems involving non-probabilitic uncertainty. The journal will cover all aspects of employing fuzzy technologies to see optimal solutions and assist in making the best possible decisions. It will provide a global forum for advancing the state-of-the-art theory and practice of fuzzy optimization and decision making in the presence of uncertainty. Any theoretical, empirical, and experimental work related to fuzzy modeling and associated mathematics, solution methods, and systems is welcome. The goal is to help foster the understanding, development, and practice of fuzzy technologies for solving economic, engineering, management, and societal problems. The journal will provide a forum for authors and readers in the fields of business, economics, engineering, mathematics, management science, operations research, and systems.
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