HierFedCEA: Hierarchical Federated Edge Learning for Privacy-Preserving Climate Control Optimization Across Heterogeneous Controlled Environment Agriculture Facilities
Andrii Vakhnovskyi

TL;DR
HierFedCEA is a hierarchical federated learning framework that enables privacy-preserving climate control optimization across heterogeneous controlled environment agriculture facilities, significantly reducing energy use and communication costs.
Contribution
It introduces a novel hierarchical federated learning approach tailored for CEA, decomposing neural network models into tiers aligned with physical control structures.
Findings
Achieves 94% of centralized training performance
Reduces communication cost to under 1 MB
Provides privacy with less than 0.15% excess risk
Abstract
Cross-facility knowledge transfer in Controlled Environment Agriculture (CEA) can reduce HVAC energy consumption by 30-38% and accelerate new facility commissioning from months to days. However, facility operators refuse to share raw operational data because it encodes commercially sensitive grow recipes. We present HierFedCEA, a hierarchical federated learning framework that enables privacy-preserving climate control optimization across heterogeneous CEA facilities. HierFedCEA decomposes the neural network PID auto-tuning model into three tiers aligned with the physical structure of the control problem: (1) a global physics tier capturing universal thermodynamic relationships; (2) a crop-cluster tier encoding cultivar-specific VPD-to-gain mappings; and (3) a local personalization tier adapting to facility-specific equipment dynamics. The framework applies tier-specific differential…
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