LGAISYDec 1, 2025

A TinyML Reinforcement Learning Approach for Energy-Efficient Light Control in Low-Cost Greenhouse Systems

arXiv:2512.01167v11 citationsh-index: 142025 Interdisciplinary Conference on Electrics and Computer (INTCEC)
Originality Synthesis-oriented
AI Analysis

This work addresses energy-efficient lighting control for low-cost greenhouse systems, representing an incremental application of existing RL methods to a new domain.

This study tackled the problem of adaptive lighting control in greenhouses by implementing a reinforcement learning approach on a low-power microcontroller, achieving effective stabilization at 13 distinct light intensity levels with minimal overshooting and smooth convergence.

This study presents a reinforcement learning (RL)-based control strategy for adaptive lighting regulation in controlled environments using a low-power microcontroller. A model-free Q-learning algorithm was implemented to dynamically adjust the brightness of a Light-Emitting Diode (LED) based on real-time feedback from a light-dependent resistor (LDR) sensor. The system was trained to stabilize at 13 distinct light intensity levels (L1 to L13), with each target corresponding to a specific range within the 64-state space derived from LDR readings. A total of 130 trials were conducted, covering all target levels with 10 episodes each. Performance was evaluated in terms of convergence speed, steps taken, and time required to reach target states. Box plots and histograms were generated to analyze the distribution of training time and learning efficiency across targets. Experimental validation demonstrated that the agent could effectively learn to stabilize at varying light levels with minimal overshooting and smooth convergence, even in the presence of environmental perturbations. This work highlights the feasibility of lightweight, on-device RL for energy-efficient lighting control and sets the groundwork for multi-modal environmental control applications in resource-constrained agricultural systems.

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