Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis

The goal of Disaster Risk Management (DRM) is to ensure that society continues to function, thrive, and recover quickly despite shocks arising from natural or human actions; to ensure, in short, that natural hazards do not become disasters. Success in the world of DRM means 'nothing happens,�...

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Main Authors: Rabonza, Maricar, Lallemant, David, Lin, Yolanda C., Tadepalli, Sanjana, Wagenaar, Dennis, Nguyen, Michele, Choong, Jeanette, Liu, Celine Jia Ni, Sarica, Gizem Mestav, Widawati, Bernadeti Ausie Miranda, Balbi, Mariano, Khan, Feroz, Loos, Sabine, Lim, Tian Ning
Other Authors: Asian School of the Environment
Format: Article
Language:English
Published: 2021
Subjects:
Online Access:https://hdl.handle.net/10356/153502
https://www.undrr.org/publication/shedding-light-avoided-disasters-measuring-invisible-benefits-disaster-risk-reduction
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-153502
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Social sciences::Geography::Natural disasters
Engineering::Computer science and engineering::Mathematics of computing::Probability and statistics
Disaster Risk Management
Counterfactual Analysis
Probability Analysis
spellingShingle Social sciences::Geography::Natural disasters
Engineering::Computer science and engineering::Mathematics of computing::Probability and statistics
Disaster Risk Management
Counterfactual Analysis
Probability Analysis
Rabonza, Maricar
Lallemant, David
Lin, Yolanda C.
Tadepalli, Sanjana
Wagenaar, Dennis
Nguyen, Michele
Choong, Jeanette
Liu, Celine Jia Ni
Sarica, Gizem Mestav
Widawati, Bernadeti Ausie Miranda
Balbi, Mariano
Khan, Feroz
Loos, Sabine
Lim, Tian Ning
Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
description The goal of Disaster Risk Management (DRM) is to ensure that society continues to function, thrive, and recover quickly despite shocks arising from natural or human actions; to ensure, in short, that natural hazards do not become disasters. Success in the world of DRM means 'nothing happens,' but this poses a dilemma towards recognising and incentivising successful DRM interventions since they are made invisible by the very nature of their success. How then do we highlight and learn from successes if we do not see them? Likewise, how do we incentivise policymakers to make better risk-informed decisions when they are not credited for pro-active actions nor accountable for the consequences of doing nothing? This study discusses four types of situations where successful DRM interventions are made invisible: (i) success made invisible in the midst of broader disaster, (ii) success made invisible by nature of the success, (iii) success made invisible due to yet unrealised benefits, (iv) success made invisible due to the randomness of the specific outcome. We propose the use of probabilistic counterfactual analysis to calculate and highlight the `probabilistic lives saved' from disaster risk management interventions, that would otherwise remain unnoticed. Two case-studies are provided, a school seismic retrofit program in Nepal and a cyclone evacuation effort in India. An important conclusion that emerges from these studies is that the value of risk reduction interventions should not be judged on the basis of specific outcomes, but on the basis of a broader exploration of potential outcomes. The shift in focus from realised outcome to counterfactual alternative provides a framework to identify and learn from successes in DRM, and reward individuals and institutions who have displayed political bravery in committing to the implementation of DRM measures despite invisible benefits.
author2 Asian School of the Environment
author_facet Asian School of the Environment
Rabonza, Maricar
Lallemant, David
Lin, Yolanda C.
Tadepalli, Sanjana
Wagenaar, Dennis
Nguyen, Michele
Choong, Jeanette
Liu, Celine Jia Ni
Sarica, Gizem Mestav
Widawati, Bernadeti Ausie Miranda
Balbi, Mariano
Khan, Feroz
Loos, Sabine
Lim, Tian Ning
format Article
author Rabonza, Maricar
Lallemant, David
Lin, Yolanda C.
Tadepalli, Sanjana
Wagenaar, Dennis
Nguyen, Michele
Choong, Jeanette
Liu, Celine Jia Ni
Sarica, Gizem Mestav
Widawati, Bernadeti Ausie Miranda
Balbi, Mariano
Khan, Feroz
Loos, Sabine
Lim, Tian Ning
author_sort Rabonza, Maricar
title Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
title_short Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
title_full Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
title_fullStr Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
title_full_unstemmed Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
title_sort shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis
publishDate 2021
url https://hdl.handle.net/10356/153502
https://www.undrr.org/publication/shedding-light-avoided-disasters-measuring-invisible-benefits-disaster-risk-reduction
_version_ 1738844801044840448
spelling sg-ntu-dr.10356-1535022022-07-09T20:11:07Z Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis Rabonza, Maricar Lallemant, David Lin, Yolanda C. Tadepalli, Sanjana Wagenaar, Dennis Nguyen, Michele Choong, Jeanette Liu, Celine Jia Ni Sarica, Gizem Mestav Widawati, Bernadeti Ausie Miranda Balbi, Mariano Khan, Feroz Loos, Sabine Lim, Tian Ning Asian School of the Environment School of Physical and Mathematical Sciences Earth Observatory of Singapore Institute of Catastrophe Risk Management (ICRM) Social sciences::Geography::Natural disasters Engineering::Computer science and engineering::Mathematics of computing::Probability and statistics Disaster Risk Management Counterfactual Analysis Probability Analysis The goal of Disaster Risk Management (DRM) is to ensure that society continues to function, thrive, and recover quickly despite shocks arising from natural or human actions; to ensure, in short, that natural hazards do not become disasters. Success in the world of DRM means 'nothing happens,' but this poses a dilemma towards recognising and incentivising successful DRM interventions since they are made invisible by the very nature of their success. How then do we highlight and learn from successes if we do not see them? Likewise, how do we incentivise policymakers to make better risk-informed decisions when they are not credited for pro-active actions nor accountable for the consequences of doing nothing? This study discusses four types of situations where successful DRM interventions are made invisible: (i) success made invisible in the midst of broader disaster, (ii) success made invisible by nature of the success, (iii) success made invisible due to yet unrealised benefits, (iv) success made invisible due to the randomness of the specific outcome. We propose the use of probabilistic counterfactual analysis to calculate and highlight the `probabilistic lives saved' from disaster risk management interventions, that would otherwise remain unnoticed. Two case-studies are provided, a school seismic retrofit program in Nepal and a cyclone evacuation effort in India. An important conclusion that emerges from these studies is that the value of risk reduction interventions should not be judged on the basis of specific outcomes, but on the basis of a broader exploration of potential outcomes. The shift in focus from realised outcome to counterfactual alternative provides a framework to identify and learn from successes in DRM, and reward individuals and institutions who have displayed political bravery in committing to the implementation of DRM measures despite invisible benefits. Ministry of Education (MOE) National Research Foundation (NRF) Published version We thank Dr. Nama Budhathoki, Kathmandu Living Labs and the GFDRR Open Data for Resilience Initiative for data on retrofitted schools in Nepal. This project is supported by the National Research Foundation, Prime Minister’s Office, Singapore under the NRF-NRFF2018-06 award, the Earth Observatory of Singapore (EOS), the National Research Foundation of Singapore, and the Singapore Ministry of Education under the Research Center of Excellence initiative. 2021-12-06T07:58:11Z 2021-12-06T07:58:11Z 2022 Journal Article Rabonza, M., Lallemant, D., Lin, Y. C., Tadepalli, S., Wagenaar, D., Nguyen, M., Choong, J., Liu, C. J. N., Sarica, G. M., Widawati, B. A. M., Balbi, M., Khan, F., Loos, S. & Lim, T. N. (2022). Shedding light on avoided disasters: measuring the invisible benefits of disaster risk management using probabilistic counterfactual analysis. UNDRR Global Assessment Report 2022, 1-25. - https://hdl.handle.net/10356/153502 https://www.undrr.org/publication/shedding-light-avoided-disasters-measuring-invisible-benefits-disaster-risk-reduction 1 25 en NRF-NRFF2018-06 UNDRR Global Assessment Report 2022 © 2022 United Nations Office for Disaster Risk Reduction. Some rights reserved. This work is made available under the Creative Commons Attribution-NonCommercial 3.0 IGO Licence (CC BY-NC IGO); https://creativecommons.org/licenses/by-nc/3.0/igo/legalcode. This paper was published as a contributing paper in the United Nations Office for Disaster Risk Reduction (UNDRR) Global Assessment Report 2022 and is made available with the permission of UNDRR. application/pdf