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Main Authors: Vandervoort, Arthur, Costa, Miguel, Petersen, Morten W., Drews, Martin, Haustein, Sonja, Morrissey, Karyn, Pereira, Francisco C.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.10031
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author Vandervoort, Arthur
Costa, Miguel
Petersen, Morten W.
Drews, Martin
Haustein, Sonja
Morrissey, Karyn
Pereira, Francisco C.
author_facet Vandervoort, Arthur
Costa, Miguel
Petersen, Morten W.
Drews, Martin
Haustein, Sonja
Morrissey, Karyn
Pereira, Francisco C.
contents Subjective wellbeing is a fundamental aspect of human life, influencing life expectancy and economic productivity, among others. Mobility plays a critical role in maintaining wellbeing, yet the increasing frequency and intensity of both nuisance and high-impact floods due to climate change are expected to significantly disrupt access to activities and destinations, thereby affecting overall wellbeing. Addressing climate adaptation presents a complex challenge for policymakers, who must select and implement policies from a broad set of options with varying effects while managing resource constraints and uncertain climate projections. In this work, we propose a multi-modular framework that uses reinforcement learning as a decision-support tool for climate adaptation in Copenhagen, Denmark. Our framework integrates four interconnected components: long-term rainfall projections, flood modeling, transport accessibility, and wellbeing modeling. This approach enables decision-makers to identify spatial and temporal policy interventions that help sustain or enhance subjective wellbeing over time. By modeling climate adaptation as an open-ended system, our framework provides a structured framework for exploring and evaluating adaptation policy pathways. In doing so, it supports policymakers to make informed decisions that maximize wellbeing in the long run.
format Preprint
id arxiv_https___arxiv_org_abs_2504_10031
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Using Reinforcement Learning to Integrate Subjective Wellbeing into Climate Adaptation Decision Making
Vandervoort, Arthur
Costa, Miguel
Petersen, Morten W.
Drews, Martin
Haustein, Sonja
Morrissey, Karyn
Pereira, Francisco C.
Machine Learning
Subjective wellbeing is a fundamental aspect of human life, influencing life expectancy and economic productivity, among others. Mobility plays a critical role in maintaining wellbeing, yet the increasing frequency and intensity of both nuisance and high-impact floods due to climate change are expected to significantly disrupt access to activities and destinations, thereby affecting overall wellbeing. Addressing climate adaptation presents a complex challenge for policymakers, who must select and implement policies from a broad set of options with varying effects while managing resource constraints and uncertain climate projections. In this work, we propose a multi-modular framework that uses reinforcement learning as a decision-support tool for climate adaptation in Copenhagen, Denmark. Our framework integrates four interconnected components: long-term rainfall projections, flood modeling, transport accessibility, and wellbeing modeling. This approach enables decision-makers to identify spatial and temporal policy interventions that help sustain or enhance subjective wellbeing over time. By modeling climate adaptation as an open-ended system, our framework provides a structured framework for exploring and evaluating adaptation policy pathways. In doing so, it supports policymakers to make informed decisions that maximize wellbeing in the long run.
title Using Reinforcement Learning to Integrate Subjective Wellbeing into Climate Adaptation Decision Making
topic Machine Learning
url https://arxiv.org/abs/2504.10031