Multi-Parameter Sensor Based Automation Farming

IOT innovation is used in the development of the Smart Farming Tracking the System. An Arduino Uno, a temperature humidity sensor, soil moisture sensor, water level sensor, water pumps, and DC motors strength this system. If the smart farming tracking system turns on, the sensors find the field’s wa...

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Main Authors: D Naveen Raju, J Jeno Jasmine, A Thilagavathy, G Rambalaji, K Sooraj, S Praveenraj, D Sri Prasanna kumar, A Manjunathan
Format: Article
Language:English
Published: EDP Sciences 2023-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/36/e3sconf_iconnect2023_04016.pdf
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author D Naveen Raju
J Jeno Jasmine
A Thilagavathy
G Rambalaji
K Sooraj
S Praveenraj
D Sri Prasanna kumar
A Manjunathan
author_facet D Naveen Raju
J Jeno Jasmine
A Thilagavathy
G Rambalaji
K Sooraj
S Praveenraj
D Sri Prasanna kumar
A Manjunathan
author_sort D Naveen Raju
collection DOAJ
description IOT innovation is used in the development of the Smart Farming Tracking the System. An Arduino Uno, a temperature humidity sensor, soil moisture sensor, water level sensor, water pumps, and DC motors strength this system. If the smart farming tracking system turns on, the sensors find the field’s water level and the soil’s moisture level. If the irrigation water stage falls below the level defined for a specific crop grown in the growing area, the irrigation system is going to start to pump water. The IOT warns concerning current level of water, soil moisture stage, and motor beginning will be shown on the LCD panel of the section. We are able to use the pumps by hand via a webpage. The farmers are additionally getting this data via mobile phone. By hitting a system- provided link, the individual using it may firmly prevent the water’s flow within the field. While carried out, the system will assist landowners to preserve suitable soil water and moisture levels, thus boosting yields with little work. The goal of this article is to identify grow illnesses and reduce losses in money. For picture appeal, we suggested an entirely based on deep learning method. We put the three most common Neural Network Designs to the test: Faster Region-based entirely judgment (SVM)Support Vector Machine Region-based entirely (RF) Random Forest method. The method suggested in the research can correctly detect many types of disease and is capable of dealing in complicated situations. In addition, the method may be expanded to recommend fertilizer according to extent evaluation as well as measurement. artificial intelligence (AI) entirely Machine Learning Response to this the combination the issue is a supervised categorization judgment.
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spelling doaj.art-705ff3c4c561406990af196cc832149d2023-07-21T09:28:35ZengEDP SciencesE3S Web of Conferences2267-12422023-01-013990401610.1051/e3sconf/202339904016e3sconf_iconnect2023_04016Multi-Parameter Sensor Based Automation FarmingD Naveen Raju0J Jeno Jasmine1A Thilagavathy2G Rambalaji3K Sooraj4S Praveenraj5D Sri Prasanna kumar6A Manjunathan7Department of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Computer Science and Engineering, RMK Engineering CollegeDepartment of Electronics and Communication Engineering, K.Ramakrishnan College of TechnologyIOT innovation is used in the development of the Smart Farming Tracking the System. An Arduino Uno, a temperature humidity sensor, soil moisture sensor, water level sensor, water pumps, and DC motors strength this system. If the smart farming tracking system turns on, the sensors find the field’s water level and the soil’s moisture level. If the irrigation water stage falls below the level defined for a specific crop grown in the growing area, the irrigation system is going to start to pump water. The IOT warns concerning current level of water, soil moisture stage, and motor beginning will be shown on the LCD panel of the section. We are able to use the pumps by hand via a webpage. The farmers are additionally getting this data via mobile phone. By hitting a system- provided link, the individual using it may firmly prevent the water’s flow within the field. While carried out, the system will assist landowners to preserve suitable soil water and moisture levels, thus boosting yields with little work. The goal of this article is to identify grow illnesses and reduce losses in money. For picture appeal, we suggested an entirely based on deep learning method. We put the three most common Neural Network Designs to the test: Faster Region-based entirely judgment (SVM)Support Vector Machine Region-based entirely (RF) Random Forest method. The method suggested in the research can correctly detect many types of disease and is capable of dealing in complicated situations. In addition, the method may be expanded to recommend fertilizer according to extent evaluation as well as measurement. artificial intelligence (AI) entirely Machine Learning Response to this the combination the issue is a supervised categorization judgment.https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/36/e3sconf_iconnect2023_04016.pdf
spellingShingle D Naveen Raju
J Jeno Jasmine
A Thilagavathy
G Rambalaji
K Sooraj
S Praveenraj
D Sri Prasanna kumar
A Manjunathan
Multi-Parameter Sensor Based Automation Farming
E3S Web of Conferences
title Multi-Parameter Sensor Based Automation Farming
title_full Multi-Parameter Sensor Based Automation Farming
title_fullStr Multi-Parameter Sensor Based Automation Farming
title_full_unstemmed Multi-Parameter Sensor Based Automation Farming
title_short Multi-Parameter Sensor Based Automation Farming
title_sort multi parameter sensor based automation farming
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/36/e3sconf_iconnect2023_04016.pdf
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