Deep Learning for Agricultural IoT
$ 45.5
Author:
Dr. K. R. Martin
Pages:51
Published:
2026-05-05
ISBN:978-99993-4-315-2
Category:
New Release
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Description
Deep Learning for Agricultural IoT bridges the critical gap between field sensors and intelligent farm management. As agriculture faces mounting pressure to increase yield while reducing water, fertilizer, and pesticide use, the convergence of IoT and deep learning offers a pathway to precision at scale. Yet, most resources treat these technologies separately. This book integrates them systematically.
Written for researchers, graduate students, and agtech practitioners, the text progresses from foundational principles to deployment realities. It begins with sensor modalities (soil moisture, multispectral, UAV), multi-modal data fusion, and core architectures (CNNs, LSTMs, Transformers, Vision Transformers). Dedicated chapters then address real-world applications: real-time pest and disease detection using YOLO and few-shot learning; smart irrigation via LSTM forecasting and deep reinforcement learning; agricultural robotics for automated harvesting under occlusion; digital twins powered by deep learning surrogates; and generative AI (LLMs, diffusion models) for synthetic data and farmer decision support.
Trust and practicality are emphasized throughout. Explainable AI (Grad-CAM, Shapley values) and federated learning enable privacy-preserving, transparent models. A final deployment roadmap covers connectivity intermittency, edge-cloud trade-offs, and four phased rollout stages.
With 12 chapters, 25+ tables, schematic diagrams, and 25 IEEE references, this book delivers both theoretical depth and implementable guidance. It is an essential reference for anyone building the intelligent, climate-smart farms of tomorrow.