TinyML-Enabled IoT for Sustainable Precision Irrigation
Kamogelo Taueatsoala, Caitlyn Daniels, Angelina J. Ramsunar, Petrus Bronkhorst, Absalom E. Ezugwu

TL;DR
This paper introduces a TinyML-enabled IoT framework for sustainable precision irrigation, combining low-cost hardware and offline AI models to optimize water use in small-scale farming.
Contribution
It presents a novel four-layer edge-first architecture integrating TinyML for autonomous irrigation decisions without cloud reliance.
Findings
Gradient boosting achieved R^2 of 0.9973 and MAPE of 0.99%.
System reduced water usage significantly in controlled tests.
Deployed TinyML model on ESP32 for accurate, offline irrigation prediction.
Abstract
Small-scale farming communities are disproportionately affected by water scarcity, erratic climate patterns, and a lack of access to advanced, affordable agricultural technologies. To address these challenges, this paper presents a novel, edge-first IoT framework that integrates Tiny Machine Learning (TinyML) for intelligent, offline-capable precision irrigation. The proposed four-layer architecture leverages low-cost hardware, an ESP32 microcontroller as an edge inference node, and a Raspberry Pi as a local edge server to enable autonomous decision-making without cloud dependency. The system utilizes capacitive soil moisture, temperature, humidity, pH, and ambient light sensors for environmental monitoring. A rigorous comparative analysis of ensemble models identified gradient boosting as superior, achieving an R^2 score of 0.9973 and a Mean Absolute Percentage Error (MAPE) of 0.99%,…
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Taxonomy
TopicsSmart Agriculture and AI · IoT and Edge/Fog Computing · Water Quality Monitoring Technologies
