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Metamodel-based metaheuristics in optimal responsive adaptation and recovery of traffic networks
Date Issued
2022-03-11
Date Available
2024-05-27T15:03:43Z
Abstract
Different emerging threats highlighted the relevance of recovery and adaptation modelling in the functioning of societal systems. However, as modelling of systems becomes more complex, its effort increases challenging the practicality of the engineering analyses required for efficient recovery and adaptation. In the present work, metamodels are researched as a tool to enable these analyses in traffic networks. One of the main advantages of metamodeling is their synergy with the short decision times required in recovery and adaptation. A sequential global metamodeling technique is proposed and applied to three macroscopic day-to-day user-equilibrium models. Two reference contexts of application are researched: optimal recovery to a perturbation (with response times reduced by 98% with loss of accuracy lower than 1%) and adaptation under uncertainty with perturbation-dependent optimality. Results show that metamodeling-based metaheuristics enable fast resource-intensive engineering analyses of traffic recovery and adaptation, which may change the paradigm of decision-making in this field
Type of Material
Journal Article
Publisher
Taylor & Francis
Journal
Sustainable and Resilient Infrastructure
Volume
7
Issue
6
Start Page
756
End Page
774
Copyright (Published Version)
2022 the Authors
Language
English
Status of Item
Peer reviewed
ISSN
2378-9689
This item is made available under a Creative Commons License
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(2022)_Metamodel-based metaheuristics in optimal recovery and adaptation.pdf
Size
7.18 MB
Format
Adobe PDF
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