An Experimental Study of Smart Sub Surface Precision Irrigation System
Kunj Thakor , Ankit Chauhan
In farming, a smart subsurface accuracy water system framework is a mix of relocated equipment hardware and programming applications, as well as numerous innovations. Among them, artificial intelligence (AI) has a vital role to play. Drought is the greatest serious threat to agricultural productivity, and its severity is growing in most farmed regions across the globe. As a result, the major goal of sustainable agriculture is to increase water production. In this trial study a savvy subsurface exactness based on water system framework is created to accomplish higher precision. In the flow away and flow research the water system is done dependent on the information which can ascertain the outcome utilizing the measurable information. The authors are utilizing AI calculation to figure the water utilization for the harvest. It will plan and execute deductively demonstrated, carried out and tried on field, sharp subsurface water system framework which is reasonable to utilize less water/battle dry spell (even not as much as dribble/flood/sprinkler water system), utilize less power, decrease amount manures utilized, diminish amount of water utilized for explicit yield and gather and break down information for expectation of necessities and spending the executives.
Artificial Intelligence, Irrigation System. Linear Regression, Productivity, Machine Learning.
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[Kunj Thakor , Ankit Chauhan (2022) An Experimental Study of Smart Sub Surface Precision Irrigation System IJIREM Vol-9 Issue-2 Page No-324-330] (ISSN 2350 - 0557). www.ijirem.org
Computer Science And Engineering and Technology Parul University Vadodara, Gujrat, India.