4.4 Article

AgriWealth: IoT based farming system

期刊

MICROPROCESSORS AND MICROSYSTEMS
卷 89, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.micpro.2022.104447

关键词

Agriwealth (AW); Internet of things(IoT); Embedded systems; Machine learning(ML); Smart Farming System (SFS); Android Application; Firebase

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The agricultural sector in India plays a significant role in the country's economy, but its potential for further growth is limited due to lack of infrastructure and resources. This paper proposes the use of a sensor-based irrigation model integrated with an Android application to monitor and control farms in real-time. The application also predicts suitable crops based on weather parameters and provides a classified portal for farmers and customers. The prototype has shown a significant reduction in water usage in fields and a high test accuracy for the selected Machine Learning algorithm.
The agricultural sector in India accounts for a significant part of the country's GDP and is the primary income source for many farmers in rural areas. While it creates employment opportunities and offers food security for the entire nation, the lack of infrastructure and resources might be limiting its potential to thrive further. One of the aspects addressed in this paper is low yield production. With the aid of a sensor-based irrigation model, data is collected and analyzed in the cloud to enable real-time monitoring. It is then integrated with an Android application for displaying results in an user-friendly interface. Through the application, farmers can control the farm manually, or with a timer in minutes. The Machine Learning model predicts the suitable crops, in accordance with varying weather parameters. The application has a classified portal for farmers and customers to buy/ sell directly, eliminating any involvement of mediators. One of the novelties in this research includes monitoring/controlling farm equipment and predicting field crops from a locally installed LCD display and keypad present in farmer's respective homes. The proposed work aims to create an energy-efficient, user-friendly framework for the agricultural workforce, yielding better crop production, improving farmers' living standards, and contributing effectively to the nation's economic growth. The prototype shows a reduction of water usage in fields by more than 60%. In order to incorporate the model with the best behavior in Android Application, different Machine Learning algorithms have been studied, among which Random Forest has been selected with a test accuracy of 91.59%.

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