Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm

Peru's diverse topographical regions offer optimal conditions for agriculture, but a lack of technology hinders efficiency, leading to food imports despite the country's potential. This paper aims to design an Internet of Things-based monitoring system where the specific objectives are foc...

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Main Authors: Ricardo Yauri, Luis Cuyubamba, Stefano Nuñez
Format: Article
Language:English
Published: Ital Publication 2025-04-01
Series:Emerging Science Journal
Subjects:
Online Access:https://ijournalse.org/index.php/ESJ/article/view/2835
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author Ricardo Yauri
Luis Cuyubamba
Stefano Nuñez
author_facet Ricardo Yauri
Luis Cuyubamba
Stefano Nuñez
author_sort Ricardo Yauri
collection DOAJ
description Peru's diverse topographical regions offer optimal conditions for agriculture, but a lack of technology hinders efficiency, leading to food imports despite the country's potential. This paper aims to design an Internet of Things-based monitoring system where the specific objectives are focused on building a solar-powered power stage and integrating machine learning algorithms to help determine crop health. The development methodology includes the evaluation of the use of sensors to measure environmental and soil temperature and humidity, precipitation and hydrogen potential to help identify the health status of crops using machine learning algorithms (decision trees) and transmit the information to a Blynk real-time visualization server. The system components include a device based on an ESP32 module operating in low-power mode, a solar power stage, a data management stage with Blynk with Wi-Fi communication. The results show that the IoT device was adapted for outdoor environments protected by an IP65 housing and can operate for approximately 12 days with a 3000 mAh battery. The main result is that the Random Forest model stands out for having a 98% accuracy when inferring the state of crop conditions. Future improvements can include more efficient solar cells to improve the system's charging conditions.   Doi: 10.28991/ESJ-2025-09-02-06 Full Text: PDF
format Article
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institution Kabale University
issn 2610-9182
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publishDate 2025-04-01
publisher Ital Publication
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series Emerging Science Journal
spelling doaj-art-eec15e693f4d4671aee1423c65e0ef2b2025-08-20T03:53:22ZengItal PublicationEmerging Science Journal2610-91822025-04-019260361410.28991/ESJ-2025-09-02-06803Crop Monitoring System Using IoT, Solar Energy and Decision Tree AlgorithmRicardo Yauri0Luis Cuyubamba1Stefano Nuñez21) Facultad de Ingeniería, Universidad Tecnológica del Perú, Lima, Perú. 2) Facultad de Ingeniería Facultad de Ingeniería Electrónica y Eléctrica, Universidad Nacional Mayor de San Marcos, Lima, Perú.Facultad de Ingeniería Facultad de Ingeniería Electrónica y Eléctrica, Universidad Nacional Mayor de San Marcos, Lima,Facultad de Ingeniería Facultad de Ingeniería Electrónica y Eléctrica, Universidad Nacional Mayor de San Marcos, Lima,Peru's diverse topographical regions offer optimal conditions for agriculture, but a lack of technology hinders efficiency, leading to food imports despite the country's potential. This paper aims to design an Internet of Things-based monitoring system where the specific objectives are focused on building a solar-powered power stage and integrating machine learning algorithms to help determine crop health. The development methodology includes the evaluation of the use of sensors to measure environmental and soil temperature and humidity, precipitation and hydrogen potential to help identify the health status of crops using machine learning algorithms (decision trees) and transmit the information to a Blynk real-time visualization server. The system components include a device based on an ESP32 module operating in low-power mode, a solar power stage, a data management stage with Blynk with Wi-Fi communication. The results show that the IoT device was adapted for outdoor environments protected by an IP65 housing and can operate for approximately 12 days with a 3000 mAh battery. The main result is that the Random Forest model stands out for having a 98% accuracy when inferring the state of crop conditions. Future improvements can include more efficient solar cells to improve the system's charging conditions.   Doi: 10.28991/ESJ-2025-09-02-06 Full Text: PDFhttps://ijournalse.org/index.php/ESJ/article/view/2835cropmonitoring systeminternet of thingssolar energydecision tree algorithm.
spellingShingle Ricardo Yauri
Luis Cuyubamba
Stefano Nuñez
Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
Emerging Science Journal
crop
monitoring system
internet of things
solar energy
decision tree algorithm.
title Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
title_full Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
title_fullStr Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
title_full_unstemmed Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
title_short Crop Monitoring System Using IoT, Solar Energy and Decision Tree Algorithm
title_sort crop monitoring system using iot solar energy and decision tree algorithm
topic crop
monitoring system
internet of things
solar energy
decision tree algorithm.
url https://ijournalse.org/index.php/ESJ/article/view/2835
work_keys_str_mv AT ricardoyauri cropmonitoringsystemusingiotsolarenergyanddecisiontreealgorithm
AT luiscuyubamba cropmonitoringsystemusingiotsolarenergyanddecisiontreealgorithm
AT stefanonunez cropmonitoringsystemusingiotsolarenergyanddecisiontreealgorithm