IoT based Crop Yield Prediction System using Arduino

Volume: 10 | Issue: 02 | Year 2024 | Subscription
International Journal of Analog Integrated Circuits
Received Date: 10/09/2024
Acceptance Date: 11/11/2024
Published On: 2024-11-20
First Page: 1
Last Page: 10

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By: Girija Snatosh Kangutkar, Gauri Kangutkar, Omkar More, Tejas Padte, and S.C. Munghate

1.Girija Snatosh Kangutkar* , Student, Department of Electronics and Telecommunication Engineering, Gharda Institute of Technology, Lavel, Khed, Ratnagiri, Maharashtra, India

2.Gauri Kangutkar, Student, Department of Electronics and Telecommunication Engineering, Gharda Institute of Technology, Lavel, Khed, Ratnagiri, Maharashtra, India

3.Omkar More,Student, Department of Electronics and Telecommunication Engineering, Gharda Institute of Technology, Lavel, Khed, Ratnagiri, Maharashtra, India

4.Tejas Padte,Student, Department of Electronics and Telecommunication Engineering, Gharda Institute of Technology, Lavel, Khed, Ratnagiri, Maharashtra, India

5. S.C.Munghate, Assistant Professor, Department of Electronics and Telecommunication Engineering, Gharda Institute of Technology, Lavel, Khed, Ratnagiri, Maharashtra, India

Abstract

India is known as an agriculture country, where most villagers have agriculture as a main income source. Agriculture plays a vital role in the Indian economy. India has over 16% GDP based on agriculture. The production of various crops cultivated in India has its own role in the economy as importation and exportation is also important for India’s GDP. As we are progressing through this time, so called ‘progress’; is affecting the Indian crop cultivation rate. The land has been utilized for industrialization and urbanization therefore reducing the land used for cultivation. The Increase in population is also becoming a problem with a smaller number of resources, there can be various resources but the most important of all is food. As per human basic needs include Food, Clothes and House, crop cultivation should be increased in an efficient and effective way. The land should be cultivated as per the soil capacity in whole amount or percentage; to find if soil’s capacity of producing specific type of crop, which can be predicted using various parameters such as soil Nitrogen, Phosphorus and Potassium level present in the soil, and various outside parameters like temperature and humidity. The soil changes its property to 10 km around the globe.

Keywords- Temperature, Humidity, Nitrogen, Phosphorus, Potassium, prediction.

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Citation:

How to cite this article: Girija Snatosh Kangutkar, Gauri Kangutkar, Omkar More, Tejas Padte, and S.C. Munghate, IoT based Crop Yield Prediction System using Arduino. International Journal of Analog Integrated Circuits. 2024; 10(02): 1-10p.

How to cite this URL: Girija Snatosh Kangutkar, Gauri Kangutkar, Omkar More, Tejas Padte, and S.C. Munghate, IoT based Crop Yield Prediction System using Arduino. International Journal of Analog Integrated Circuits. 2024; 10(02): 1-10p. Available from:https://journalspub.com/publication/iot-based-crop-yield-prediction-system-using-arduino/

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