Revolutionizing Agriculture: A Comprehensive Review of Artificial Intelligence Techniques in Farming

Author:

Kashyap Gautam Siddharth1ORCID,Kamani Prerna2,Kanojia Malvika3,Wazir Samar1,Malik Karan4,Sehgal Vinay Kumar5,Dhakar Rajkumar5

Affiliation:

1. Jamia Hamdard, New Delhi, India

2. B-74-S/4 Ganapati Apartment, Dilshad Colony, Delhi, India

3. F-131/132, Near Ram Mandir, West Vinod Nagar, New Delhi, India

4. Arizona State University, Tempe, Arizona, USA

5. ICAR-Indian Agricultural Research Institute, Pusa Campus, New Delhi, India

Abstract

Abstract Artificial Intelligence (AI) is a relatively new branch of information technology. It is one of the pillars of many industrial innovations, as well as a critical component in supporting and advancing them. There are numerous studies and innovations that employ AI techniques in a variety of fields. AI has played an important role in agriculture, healthcare, education, finance, governance, and other fields. This paper attempts to highlight studies that used AI techniques in agriculture, as this is a complex topic in itself. Agriculture is important to the global economy. In this regard, the demand for adequate and safer agricultural methods has increased over the last 21 years. AI-powered solutions can establish a model in farming while also increasing crop yield and quality. This paper provides a thorough examination of the AI techniques used in agriculture. In this paper, we present 77 papers from the last 21 years that take a variety of approaches but all revolve around the concept of AI. Furthermore, this research will enable the researchers to investigate both AI techniques and the agricultural field.

Publisher

Research Square Platform LLC

Reference88 articles.

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4. Shah JP, Prajapati HB, Dabhi VK (2016) : A survey on detection and classification of rice plant diseases. In: IEEE International Conference on Current Trends in Advanced Computing, ICCTAC 2016. Institute of Electrical and Electronics Engineers Inc. (2016)

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