Progressive Generalization Augmentation with Deeply Coupled RND-PPO and Domain-Prioritized Noise Injection for Robust Crop Management Reinforcement Learning
Wu Yang

TL;DR
This paper presents a novel reinforcement learning framework with progressive augmentation, coupled architecture, and domain-specific noise injection to improve robustness and efficiency in agricultural crop management tasks.
Contribution
It introduces three innovations: a curriculum-based augmentation, a deeply coupled RND-PPO architecture, and domain-prioritized noise injection, enhancing robustness and performance.
Findings
8.43% yield improvement over SOTA in Florida
94.4% robustness under combined perturbations
16.42% nitrogen use efficiency improvement
Abstract
Our preliminary experiments on gym-DSSAT maize irrigation tasks revealed that +/-2 degrees C temperature noise causes an 11.9% reduction in economic returns for PPO policies trained under clean conditions - a systematic robustness deficit that existing research has not adequately addressed. This paper tackles three interconnected limitations impeding practical deployment of agricultural RL systems: the trade-off between early-stage learning efficiency and late-stage generalization capability; the naive additive combination of intrinsic and extrinsic rewards in exploration-augmented PPO; and uniform measurement noise injection strategies that disregard empirically validated differential sensitivity across agricultural state variables. We introduce three systematic innovations: Progressive Generalization Augmentation (PGA) implementing a three-phase curriculum (clean training 0-800…
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