AI-Powered Adaptive Fertilizer Recommendation System Using Soil And Weather Data
DOI:
https://doi.org/10.64252/00tx6j54Keywords:
Fertilizer Recommendation; Precision Agriculture; Machine Learning; Soil Data; Weather Data; IoT; Adaptive Management; Nutrient Use Efficiency; Decision Support System; Environmental Sustainability.Abstract
Advances in AI-powered precision agriculture have enabled adaptive fertilizer recommendation systems that integrate real-time soil and weather data to optimize crop nutrition. This paper presents a comprehensive framework that ingests soil nutrient measurements (e.g. N–P–K levels, pH, moisture) and weather forecasts (temperature, precipitation, humidity) to drive machine learning models for site-specific fertilizer guidance. The proposed system leverages publicly available datasets and sensor networks, with algorithms such as gradient-boosted trees achieving up to 99% accuracy in recommending appropriate fertilizer application rates. In simulated evaluations and literature-based experiments, this approach reduced fertilizer usage by ~10% while maintaining yield, demonstrating significant environmental and economic benefits. Key contributions include integrating soil–weather inputs, using explainable ML for model interpretability, and validating performance on real-world data.