Novel intelligent TOPSIS variant to rank regions for disaster preparedness

Dublin Core

Title

Novel intelligent TOPSIS variant to rank regions for disaster preparedness

Subject

COVID-19
Decision support system
Disaster management
Multi-criteria decision-making
Technique for order of preference by similarity to ideal solution

Description

An important facet of disaster mitigation is discovering regions based on their lack of preparedness for combating disaster. Accordingly, organizations can lay down appropriate risk management strategies and guidelines to minimize loss due to disaster. “Technique for order of preference by similarity to ideal solution (TOPSIS)” is a popular multi-criteria decision-making (MCDM) method that is deployed for ranking alternatives based on multiple pre-specified criteria. However, the method’s efficiency in ranking region as per multiple criteria for disaster management is far from the ground truth. The authors propose a novel intelligent method HCF-TOPSIS, an extension of traditional TOPSIS, to deliver an efficient ranking mechanism for regional safety assessment of disaster affected regions. HCF-TOPSIS capitalizes on entropy (H), closeness (C), and farness (F) metrics to obtain efficient ranking scores of the disaster affected regions. Extensive experimentation validates the claim and proves the superiority of HCF-TOPSIS over existing TOPSIS variants. The proposed research presents many benefits, especially to governments and stakeholders, intending to take appropriate actions to contain disasters.

Creator

Harita Ahuja1, Sharanjit Kaur1, Sunita Narang1, Rakhi Saxena2

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

19 Jan 2024

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Harita Ahuja1, Sharanjit Kaur1, Sunita Narang1, Rakhi Saxena2, “Novel intelligent TOPSIS variant to rank regions for disaster preparedness,” Repository Horizon University Indonesia, accessed January 12, 2026, https://repository.horizon.ac.id/items/show/10114.