Artificial Intelligence-Driven Predictive Modeling and Formulation Optimization of Customized Bio-Pesticides Leveraging Multi-Source Field Data Analytics for Precision Pest Management in Sustainable Agricultural Systems
Abstract
Modern agriculture faces significant challenges in pest management, including pesticide resistance, environmental contamination, and the inefficacy of broad-spectrum chemicals against dynamic pest populations. These limitations necessitate a paradigm shift towards sustainable, precise, and adaptive solutions. This article explores the integration of artificial intelligence (AI) and machine learning (ML) with field-data analytics for the formulation and optimization of custom bio-pesticides. The primary aim is to detail a systemic framework where AI algorithms utilize real-time and historical field data—including pest surveillance imagery, meteorological parameters, soil biomarkers, and crop phenology—to inform the development of tailored bio-pesticidal formulations. Key approaches involve supervised learning models for pest risk prediction, reinforcement learning for dynamic dosage optimization, and clustering algorithms for matching bio-pesticide profiles to specific pest biotypes and agro-ecological conditions. Major applications include AI-prescribed, site-specific application strategies that enhance efficacy while minimizing off-target effects, thereby aligning crop protection with ecological sustainability. The conclusion underscores that this synergistic approach facilitates a closed-loop system of monitoring, prediction, and intervention, ultimately reducing synthetic chemical reliance, preserving biodiversity, and promoting resilient agricultural ecosystems. The convergence of agricultural biotechnology and data science heralds a new era of precision pest management that is both effective and environmentally conscientious.
How to Cite This Article
Dr. Anjali Verma (2022). Artificial Intelligence-Driven Predictive Modeling and Formulation Optimization of Customized Bio-Pesticides Leveraging Multi-Source Field Data Analytics for Precision Pest Management in Sustainable Agricultural Systems . Journal of Agricultural Digitalization Research (JADR), 3(1), 41-45.