RL-Driven Sustainable Land-Use Allocation for the Lake Malawi Basin
Ying Yao

TL;DR
This paper introduces a deep reinforcement learning framework to optimize land-use in the Lake Malawi Basin, aiming to enhance ecosystem services while considering ecological and spatial constraints.
Contribution
It develops a novel RL-based approach with spatial reward shaping for sustainable land-use planning in ecologically sensitive regions.
Findings
RL agent effectively increases total ecosystem service value.
Spatial reward shaping guides land-use patterns towards ecological sustainability.
Framework responds to policy changes, aiding environmental scenario analysis.
Abstract
Unsustainable land-use practices in ecologically sensitive regions threaten biodiversity, water resources, and the livelihoods of millions. This paper presents a deep reinforcement learning (RL) framework for optimizing land-use allocation in the Lake Malawi Basin to maximize total ecosystem service value (ESV). Drawing on the benefit transfer methodology of Costanza et al., we assign biome-specific ESV coefficients -- locally anchored to a Malawi wetland valuation -- to nine land-cover classes derived from Sentinel-2 imagery. The RL environment models a 50x50 cell grid at 500m resolution, where a Proximal Policy Optimization (PPO) agent with action masking iteratively transfers land-use pixels between modifiable classes. The reward function combines per-cell ecological value with spatial coherence objectives: contiguity bonuses for ecologically connected land-use patches (forest,…
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