IoT Based Wireless Communication System for Smart Irrigation and Rice Leaf Disease Prediction Using ResNeXt-50

Author:

Sangeetha S.1,Indumathi N.2,Grover Reena3,Singh Rakshit4,Mavi Renu5

Affiliation:

1. Department of Computer Science, Government Arts and Science College, Modakkurichi, Tamil Nadu 638104, India

2. Department of Computer Science and Engineering, Rajalakshmi Institute of Technology, Chennai 600010, Tamil Nadu, India

3. Department of Mathematics, Faculty of Engineering and Technology, SRM Institute of Science and Technology, NCR Campus, Delhi NCR Campus, Delhi Meerut Road, Modinagar, Ghaziabad, U.P., India

4. Department of Computer Science, GL Bajaj Institute of Technology and Management, Uttar Pradesh 201306, India

5. Department of Chemistry, Swami Vivekananda Subharti University, Uttar Pradesh 250005, India

Abstract

Agriculture not only plays a vital role in human survival but also contributes to the nation’s greater economic development. With the use of technologies like IoT, WSNs, remote sensing, camera surveillance, and many more, precision agriculture is the newest buzzword in the field of technology. Its primary goal is to lessen the labour of farmers while increasing the output of farms. Many machine learning techniques are designed to improve the productivity and quality of the crops, but the improper irrigation and disease prediction of the existing techniques leads to loss of productivity and quality. Hence, the IoT based wireless communication system is designed for smart irrigation and rice leaf prediction using ANN and ResNeXt-50 model. In this designed model, smart irrigation is controlled by collecting the temperature and moisture of the soil in the agricultural field by using the WSN. Likewise, a surveillance camera is placed in the agricultural field to capture the rice leaf to find the disease such as rice blast, leaf smut, brown spot and bacterial blight. These collected data are processed and classified for smart irrigation and rice leaf disease prediction. For evaluating the performance of both the ANN and ResNeXt-50 trained model, the performance metrics such as accuracy, sensitivity, specificity, precision, error etc. The performance metrics for the ANN and ResNeXt-50 model are 0.9427, 0.925, 0.903, 0.86, 0.0573 and 0.967, 0.935, 0.943, 0.939 and 0.033. Thus, the evaluation of the designed model results that the proposed approach is performing better compared to the current techniques.

Publisher

World Scientific Pub Co Pte Ltd

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