Meta-Optimized Continual Adaptation for smart agriculture microgrid orchestration during mission-critical recovery windows Introduction: The Day the Grid Went Dark It was 3 AM on a humid July morning when I first truly understood the fragility of our agricultural infrastructure. I was monitoring a test deployment of a reinforcement learning (RL) agent for a smart agriculture microgrid in California’s Central Valley—a system I had spent months building. The agent was designed to balance solar generation, battery storage, and irrigation pumps across a network of sensors and actuators. But then, a wildfire-induced power outage struck. The grid went dark, and my carefully tuned RL policy—trained on sunny-day data—began to fail catastrophically. Pumps stalled, battery levels plummeted, and crop sensors went silent. In that moment, I realized that static, pre-trained models are worthless when the environment shifts unpredictably.…