AI-Driven Climate Policy Scenario Generation for Sub-Saharan Africa
Rafiu Adekoya Badekale, Adewale Akinfaderin

TL;DR
This paper introduces a novel AI-based method using large language models to generate and evaluate diverse climate policy scenarios for Sub-Saharan Africa, addressing limitations of traditional approaches.
Contribution
It demonstrates the application of generative AI models for plausible climate policy scenario creation and automated evaluation in data-limited regional contexts.
Findings
88% of generated scenarios passed expert validation
Generated scenarios were coherent, relevant, and diverse
Automated evaluation effectively replaced human assessment
Abstract
Climate policy scenario generation and evaluation have traditionally relied on integrated assessment models (IAMs) and expert-driven qualitative analysis. These methods enable stakeholders, such as policymakers and researchers, to anticipate impacts, plan governance strategies, and develop mitigation measures. However, traditional methods are often time-intensive, reliant on simple extrapolations of past trends, and limited in capturing the complex and interconnected nature of energy and climate issues. With the advent of artificial intelligence (AI), particularly generative AI models trained on vast datasets, these limitations can be addressed, ensuring robustness even under limited data conditions. In this work, we explore the novel method that employs generative AI, specifically large language models (LLMs), to simulate climate policy scenarios for Sub-Saharan Africa. These scenarios…
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Taxonomy
TopicsEconomic and Technological Innovation · Regional Development and Policy
MethodsFocus · ALIGN
