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Multi-Resource Scheduling and Routing for Emergency Recovery Operations

journal contribution
posted on 2024-11-02, 14:00 authored by Behrooz Bodaghi, Shahrooz ShahparvariShahrooz Shahparvari, Masih FadakiMasih Fadaki, Kwok Hung LauKwok Hung Lau, Ekambaram Palaneeswaran, Prem ChhetriPrem Chhetri
Efficient delivery of multiple resources for emergency recovery during disasters is a matter of life and death. Nevertheless, most studies in this field only handle situations involving single resource. This paper formulates the Multi-Resource Scheduling and Routing Problem (MRSRP) for emergency relief and develops a solution framework to effectively deliver expendable and non-expendable resources in Emergency Recovery Operations. Six methods, namely, Greedy, Augmented Greedy, k-Node Crossover, Scheduling. Monte Carlo, and Clustering, are developed and benchmarked against the exact method (for small instances) and the genetic algorithm (for large instances). Results reveal that all six heuristics are valid and generate near or actual optimal solutions for small instances. With respect to large instances, the developed methods can generate near-optimal solutions within an acceptable computational time frame. The Monte Carlo algorithm, however, emerges as the most effective method. Findings of comprehensive comparative analysis suggest that the proposed MRSRP model and the Monte Carlo method can serve as a useful tool for decision-makers to better deploy resources during emergency recovery operations.

History

Journal

International Journal of Disaster Risk Reduction

Volume

50

Number

101780

Start page

1

End page

23

Total pages

23

Publisher

Elsevier

Place published

Netherlands

Language

English

Copyright

© 2020 Elsevier Ltd. All rights reserved.

Former Identifier

2006101316

Esploro creation date

2023-04-28

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