ONLY $9.90 DELIVERY INFO

Close Notification

Your cart does not contain any items

Intelligent Internet of Everything for Automated and Sustainable Farming

Biplob Ray Jahan Hassan Hailong Huang Nahina Islam

$380.95   $304.91

Paperback

Not in-store but you can order this
How long will it take?

QTY:

English
IGI Global
01 May 2025
With the convergence of technology in agriculture, intelligent Internet of Everything (IoE) creates efficient sustainable farming practices. The integration of Internet of Things (loT), robotics, and data analytics optimize the technology used for efficient farming practices and improved environmental conditions. By leveraging the power of IoE, this approach enhances productivity and crop quality and addresses critical challenges such as climate change, labor shortages, and food security, laying the groundwork for a resilient and tech-driven agricultural future. Intelligent Internet of Everything for Automated and Sustainable Farming explores IoE in smart farming applications. It examines the advancements of drone technologies and AI in agriculture sustainability, using real world issues as examples on how to expertly use IoE in smart sustainable agriculture. This book covers topics such as agriculture technology, smart farming, and autonomous weeding, and is a useful resource business owners, engineers, agriculturalists, farmers, academicians, scientists, and researchers.
Edited by:   , , , ,
Imprint:   IGI Global
Country of Publication:   United States [Currently unable to ship to USA: see Shipping Info]
Dimensions:   Height: 254mm,  Width: 178mm, 
ISBN:   9798337300214
Pages:   478
Publication Date:  
Audience:   College/higher education ,  Professional and scholarly ,  Primary ,  Undergraduate
Format:   Paperback
Publisher's Status:   Active

Biplob Ray will deliver an informative talk that delves into the possibilities and challenges involved in automating Unmanned Aerial Vehicles (UAVs) for intelligent and precise herbicide spraying, aiming to eliminate weeds. The talk will cover various topics, ranging from UAV image collection to processing using machine learning to detect weeds to prepare weed maps. The coordinates of the detected weeds can then be utilised by spraying UAVs for precision herbicide spraying. Attendees can expect to understand better how the entire process can be made more efficient and automated, resulting in reduced costs and increased crop yield. Bio: Biplob Ray (Senior Member, IEEE) is currently an Associate Professor and research cluster leader in CML-NET (Centre for Machine Learning - Networking and Education Technology), School of Engineering and Technology (SET), Central Queensland University (CQU), Melbourne, Australia. A/Prof. Ray is elected Vice-Chair (2024-25) of the IEEE Victorian Section. He is an outstanding researcher with a background mix of research, academic, and industry experience. A/Prof. Ray is highly interested in multidisciplinary research with core interests in smart farming and secure communication protocols of Cyber-Physical systems driven by Artificial Intelligence (AI), the Internet of Drones (IoD), and the Internet of Things (IoT). As a lead Chief Investigator (CI) or CI, Associate Professor Ray has received research funding of over three million from the Australian Federal Government and industry since 2016. He has received several awards, including the Dean's Awards for Outstanding Researchers in 2023 (Mid-Career Research Category) and 2019 (Early-Career Research Category), as well as a Vice-Chancellor's commendation Award for being outstanding researcher in both years. He has also served (or is serving) as a guest editor, editorial board member, and reviewer in reputable journals and as a keynote speaker, organising chair, PC member, and reviewer for several conferences since 2012. Jahan Hassan is a Senior Lecturer at the School of Engineering and Technology, Central Queensland University, Australia. She earned her PhD from the University of New South Wales (Sydney, Australia), and her Bachelor degree from Monash University (Australia), both in Computer Science. Dr Hassan has dedicated her work to developing unmanned aerial vehicle (UAV) networks for various applications, with a focus on improving efficiency and effective communication among UAVs. Her work has utilized advanced machine learning algorithms to optimize UAV movement and energy usage based on experience. Additionally, she has explored in-flight UAV recharging methods, using energy sources in the air. She is an Area Editor for Elsevier Ad Hoc Networks journal. She has served as Guest Editor for IEEE Communications Magazine, IEEE Network, Elsevier Ad Hoc Networks, and MDPI Drones. Dr Hassan is a Senior Member of the IEEE.

See Also