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Название: The Digital Agricultural Revolution

Автор: Группа авторов

Издательство: John Wiley & Sons Limited

Жанр: Программы

Серия:

isbn: 9781119823445

isbn:

СКАЧАТЬ rel="nofollow" href="#u9a54c766-3c26-54e6-87c1-3f1f9b8e41f5">Chapter 13 discusses the need for an institutional approach of using digital techniques in modern agrarian production. This approach is illustrative of the synergy of economic, ecological, and social effectiveness as a progressive direction in which the development of a global economic system can be worked out. A general model was used to determine a new organization of the informational paradigm of agricultural activities based on the agility of the knowledge and analytical data being transferred into the value of information.

       – Chapter 14 provides a comprehensive analysis of four aspects of AI implementation in treatment of wastewater: management, technology, reuse and economics of wastewater. It also provides an insight into the future prospects of the use of AI in the treatment of wastewater, which, in complex practical applications, simultaneously addresses pollutant removal, water reuse and management and cost-efficient challenges.

       – Chapter 15 presents methods for assessing the impact of digital transformation risks on the business model of agricultural enterprises. Industry 4.0 is accompanied by the rapid transformation of several sectors under the influence of “breakthrough” digital innovations such as blockchain, IoT, AI, and augmented reality.

       – Chapter 16 presents a unified systematic approach to the issue of modeling the dynamics of water management facilities. There is a wide range of mathematical models of individual objects of different complexity, which is why the choice of mathematical models that will describe the complex processes of water distribution in water management systems with the required degree of accuracy is a very problematic task.

       – Chapter 17 showcases the use of blockchain technology that has become a phenomenon in recent years and is evolving into a form that institutionalized organizations can benefit from. The IoT integrates blockchain technology into the agricultural sector and provides the automation of the control mechanisms in the agricultural food supply chain. The study evaluated in this chapter utilizes technology in various forms, from farm to fork. Furthermore, a Fintech solution framework via blockchain created for digitalization of the agricultural commodity value chain is presented that secures the contract creation, transfer, and redemption (burn) processes.

       – Chapter 18 discusses how new-age entrepreneurs are using technological innovations to address supply chain challenges and unlock value across it. India’s startup agricultural ecosystem is mushrooming, with over 450 startups that are currently operational, over 50% of which are focused on making the supply chain more efficient by improving market linkages. Inputs play a crucial role in extracting higher yields. The existing delivery system is not appropriate due to poor supply, lack of subsidies, improper infrastructure, lack of farm credit, and poor delivery systems.

       – Chapter 19 is about the adoption of blockchain technology in the Malaysian agriculture sector and proposes a framework of blockchain agriculture supply chain management. As the blockchain supply chain framework in the agriculture sector is still limited, social network theory tends to be used in the development of the framework. This chapter has collected quantitative survey and social network data from firms registered in the Federation of Malaysian Manufacturers that operate in the agriculture sector. The demographic profiles were analyzed through IBM SPSS 26 and the social network data was analyzed through Social Network Visualizer.

       – Chapter 20 discusses the use of machine learning algorithms to study soil fertility, salinity, dynamics, and the relationship of soil organic carbon with the environment, spatial and temporal variation of soil water content, soil and water pollution, soil formation processes, soil classification, prediction, nutrient availability, etc.

      Our intent in writing this book was to provide a foundation of comprehensive knowledge for others to build on; therefore, it is our sincerest hope that it will prove to be beneficial to people from different domains. We hope that you find it useful and engaging as you continue your journey to expand the sphere of human knowledge, if only by an inch.

      The editorsDr. Roheet BhatnagarDr. Nitin Kumar TripathiDr. Chandan Kumar PandaDr. Nitu Bhatnagar April 2022

      1

      Scope and Recent Trends of Artificial Intelligence in Indian Agriculture

       X. Anitha Mary1, Vladimir Popov2,3, Kumudha Raimond4, I. Johnson5 and S. J. Vijay6*

       1Department of Robotics Engineering, Karunya Institute of Technology and Sciences, Coimbatore, Tamil Nadu, India

       2Additive Manufacturing, Technion-Israel Institute of Technology, Haifa, Israel

       3Ural Federal University, Ekaterinburg, Russia

       4Department of Computer Science and Engineering, Karunya Institute of Technology and Sciences, Coimbatore, Tamil Nadu, India

       5Department of Plant Pathology, TamilNadu Agricultural University, Coimbatore, India

       6Department of Mechanical Engineering, Karunya Institute of Technology and Sciences, Coimbatore, Tamil Nadu, India

       Abstract

      Agriculture is the economic backbone of India. About 6.4% of the total world’s economy relies on agriculture [1]. Automation in agriculture is the emerging sector as there is an increase in food demand and employment. The traditional ways used by farmers are not sufficient to fulfill the demands and it is high time that newer technologies are implementing in the agricultural sector. Artificial Intelligence (AI) is one of the emerging and promising technologies where intelligence refers to developing and utilizing human-level thinking machines through learning algorithms programmed to solve critical problems. Artificial Intelligence plays an important role in supporting agriculture sectors with the objectives of boosting productivity, efficiency, and farmers’ income. This chapter focuses on how AI helps in increasing the socioeconomic and environmental sustainability in the Indian agricultural sector. Also, it highlights the AI practices in India incorporated by farmers having small and medium-size agricultural lands.

      Keywords: Indian agriculture, Artificial Intelligence, farmers

      Artificial Intelligence (AI) is a broad field of computer science that focuses on creating intelligent machines that can accomplish activities that would normally need human intelligence. Although AI is a multidisciplinary field with many methodologies, advances in machine learning (ML) and deep learning (DL) [4] are causing a paradigm shift in nearly every sector of the IT industry.

      One of the oldest occupations in the world is farming and agriculture. It has a significant impact on the economy. Climate variations also play СКАЧАТЬ