Product details:

ISBN13:9783030841508
ISBN10:3030841502
Binding:Paperback
No. of pages:288 pages
Size:235x155 mm
Weight:468 g
Language:English
Illustrations: 24 Illustrations, black & white; 89 Illustrations, color
572
Category:

Information and Communication Technologies for Agriculture?Theme II: Data

 
Edition number: 1st ed. 2022
Publisher: Springer
Date of Publication:
Number of Volumes: 1 pieces, Book
 
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EUR 128.39
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  Piece(s)

 
Short description:

This volume is the second (II) of four under the main themes of Digitizing Agriculture and Information and Communication Technologies (ICT). The four volumes cover rapidly developing processes including Sensors (I), Data (II), Decision (III), and Actions (IV). Volumes are related to ?digital transformation? within agricultural production and provision systems, and in the context of Smart Farming Technology and Knowledge-based Agriculture. Content spans broadly from data mining and visualization to big data analytics and decision making, alongside with the sustainability aspects stemming from the digital transformation of farming. The four volumes comprise the outcome of the 12th EFITA Congress, also incorporating chapters that originated from select presentations of the Congress. 

The first part of this book (II) focuses on data technologies in relation to agriculture and presents three key points in data management, namely, data collection, data fusion, and their uses in machine learning and artificial intelligent technologies. Part 2 is devoted to the integration of these technologies in agricultural production processes by presenting specific applications in the domain. Part 3 examines the added value of data management within agricultural products value chain.

The book provides an exceptional reference for those researching and working in or adjacent to agricultural production, including engineers in machine learning and AI, operations management, decision analysis, information analysis, to name just a few. 

Specific advances covered in the volume: 
  • Big data management from heterogenous sources 
  • Data mining within large data sets
  • Data fusion and visualization
  • IoT based management systems
  • Data Knowledge Management for converting data into valuable information
  • Metadata and data standards for expanding knowledge throughdifferent data platforms
  • AI - based image processing for agricultural systems
  • Data - based agricultural business
  • Machine learning application in agricultural products value chain

Long description:
This volume is the second (II) of four under the main themes of Digitizing Agriculture and Information and Communication Technologies (ICT). The four volumes cover rapidly developing processes including Sensors (I), Data (II), Decision (III), and Actions (IV). Volumes are related to ?digital transformation? within agricultural production and provision systems, and in the context of Smart Farming Technology and Knowledge-based Agriculture. Content spans broadly from data mining and visualization to big data analytics and decision making, alongside with the sustainability aspects stemming from the digital transformation of farming. The four volumes comprise the outcome of the 12th EFITA Congress, also incorporating chapters that originated from select presentations of the Congress. 

The first part of this book (II) focuses on data technologies in relation to agriculture and presents three key points in data management, namely, data collection, data fusion, and their uses in machine learning and artificial intelligent technologies. Part 2 is devoted to the integration of these technologies in agricultural production processes by presenting specific applications in the domain. Part 3 examines the added value of data management within agricultural products value chain.

The book provides an exceptional reference for those researching and working in or adjacent to agricultural production, including engineers in machine learning and AI, operations management, decision analysis, information analysis, to name just a few. 

Specific advances covered in the volume: 
  • Big data management from heterogenous sources 
  • Data mining within large data sets
  • Data fusion and visualization
  • IoT based management systems
  • Data Knowledge Management for converting data into valuable information
  • Metadata and data standards for expanding knowledge through different data platforms
  • AI - based image processing for agricultural systems
  • Data - based agricultural business
  • Machine learning application in agricultural products value chain
Table of Contents:
Section 1 Data Technologies: You Got Data?. Now What: Building the Right Solution for the Problem (Jackman).- Data fusion and its applications in Agriculture (Moshou).- Machine learning technology and its current implementation in agriculture (Anagnostis).- Section 2 Applications: Application possibilities of IoT based management systems in agriculture (Tóth).- Plant species detection using image processing and deep learning: A mobile-based application (Mangina).- Computer vision-based detection and tracking in the olive sorting pipeline(Gogos).- Integrating spatial with qualitative data to monitor land use intensity: evidence from arable land ? animal husbandry systems (Vasilakos).- Air drill seeder distributor head evaluation: a comparison between laboratory tests and Computational Fluid Dynamics simulations (R. Scola).- Section 3 Value Chain: Data - based agricultural business continuity management policies (Podaras).- Soybean price trend forecast using deep learning techniques based on prices and text sentiments (F. Silva).- Use of unsupervised machine learning for agricultural supply chain data labeling (F. Silva).