Rainfall Prediction and Soil Based Crop Recommendation Using Machine Learning
1Mr. PATAN VAZID, 2 Mr. P.SAI SATISH, 3 Mr. P.NIKHILESWARA RAO
4Mrs. R. SHOBA RANI, 5Dr.J.JAYA PRAKASH, ⁶Mrs. CHINCHU NAIR
1,2,3 Students, 4,5,6 Professor
vazidcse@gmail.com, saisatishpaluri@gmail.com,puthanikhilrao@gmail.com
Department of Computer Science and Engineering,
Dr. M.G.R. Educational And Research Institute,
Maduravoyal, Chennai-95, Tamil Nadu, India.
Abstract- India, being an agrarian nation, relies vigorously upon farming yields and ago-modern items for its economy. High return the board is significant for ranchers who generally need to anticipate the normal yield. To accomplish this, different significant qualities, for example, the area of soil alkalinity file and soil pH esteem are examined. The percentage of vital elements such as potassium (K), phosphorus (P), and nitrogen (N) is also taken into consideration. Utilizing outsider applications, for example, climate and temperature APIs, it is feasible to assemble data about precipitation and soil organization in a particular region, as well as soil type and supplement values. By examining the qualities of this information, AI calculations are utilized to prepare the information and make a prescient model. The model intends to furnish ranchers with exact suggestions on proper manure costs in view of the environment and soil boundaries of their territory, in this way expanding ranchers' yields and pay. What's more, the framework gives extra guides, for example, gel, oil or different synthetic compounds expected for better harvest development. This coordinated methodology empowers ranchers to get exact exhortation custom fitted to their particular cultivating conditions and advances proficient and useful cultivating rehearses by incorporating rainfall prediction models, the system enhances agricultural planning, promotes resource efficiency, and supports sustainable and profitable farming practices.
Keywords: Machine Learning, Rainfall, Crop, nitrogen (N), phosphorus (P), and potassium (K), Climate, Temperature