作者
Muhammad Salman Latif, Rafaqat Kazmi, Nadia Khan, Rizwan Majeed, Sunnia Ikram, Malik Muhammad Ali-Shahid
发表日期
2022
期刊
KSII Transactions on Internet and Information Systems (TIIS)
卷号
16
期号
1
页码范围
133-152
出版商
Korean Society for Internet Information
简介
Rice is a fundamental staple food commodity all around the world. Globally, it is grown over 167 million hectares and occupies almost 1/5 th of total cultivated land under cereals. With a total production of 782 million metric tons in 2018. In Pakistan, it is the 2 nd largest crop being produced and 3 rd largest food commodity after sugarcane and rice. The stem borers a type of pest in rice and other crops, Scirpophaga incertulas or the yellow stem borer is very serious pest and a major cause of yield loss, more than 90% damage is recorded in Pakistan on rice crop. Yellow stem borer population of rice could be stimulated with various environmental factors which includes relative humidity, light, and environmental temperature. Focus of this study is to find the environmental factors changes ie, temperature, relative humidity and rainfall that can lead to cause outbreaks of yellow stem borers. this study helps to find out the hot spots of insect pest in rice field with a control of farmer's palm. Proposed system uses temperature, relative humidity, and rain sensor along with artificial neural network to predict yellow stem borer attack and generate warning to take necessary precautions. result shows 85.6% accuracy and accuracy gradually increased after repeating several training rounds. This system can be good IoT based solution for pest attack prediction which is cost effective and accurate.
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MS Latif, R Kazmi, N Khan, R Majeed, S Ikram… - KSII Transactions on Internet and Information Systems …, 2022