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Machine-Learning-Based Frameworks for Reliable and Sustainable Crop Forecasting

Khushwant Singh, Mohit Yadav, Dheerdhwaj Barak, Shivani Bansal, Fernando Moreira

2025Sustainability14 citationsDOIOpen Access PDF

Abstract

Fueled by scientific innovations and data-driven approaches, accurate agriculture has arisen as a transformative sector in contemporary agriculture. The present investigation provides a summary of modern improvements in machine-learning (ML) strategies utilized for crop prediction, accompanied by a performance exploration of contemporary models. It examines the amalgamation of sophisticated technologies, cooperative objectives, and data-driven methodologies designed to address the obstacles in conventional agriculture. The study examines the possibilities and intricacies of precision agriculture by analyzing various models of deep learning, machine learning, ensemble learning, and reinforcement learning. Highlighting the significance of worldwide collaboration and data-sharing activities elucidates the evolving landscape of the precision farming industry and indicates prospective advancements in the sector.

Topics & Concepts

Transformative learningAgricultureArtificial intelligenceMachine learningComputer scienceReinforcement learningData sciencePrecision agricultureGeographyArchaeologyPedagogyPsychologySmart Agriculture and AIRemote Sensing in AgricultureGreenhouse Technology and Climate Control
Machine-Learning-Based Frameworks for Reliable and Sustainable Crop Forecasting | Litcius