IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process

Soaring demand for sustainable agriculture critically requires the timely and precise monitoring of soil moisture to optimize irrigation applications and save scarce water resources. While conventional soil moisture sensing methods such as gravimetric analysis and neutron probes are accurate, they p...

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Main Authors: Ukani Neema Amish, Khera Shelej, Chakole Saurabh S.
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:EPJ Web of Conferences
Online Access:https://www.epj-conferences.org/articles/epjconf/pdf/2025/13/epjconf_icetsf2025_01074.pdf
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author Ukani Neema Amish
Khera Shelej
Chakole Saurabh S.
author_facet Ukani Neema Amish
Khera Shelej
Chakole Saurabh S.
author_sort Ukani Neema Amish
collection DOAJ
description Soaring demand for sustainable agriculture critically requires the timely and precise monitoring of soil moisture to optimize irrigation applications and save scarce water resources. While conventional soil moisture sensing methods such as gravimetric analysis and neutron probes are accurate, they possess severe limitations including high cost, labor intensity, and unsuitability for large-scale field deployment. Also, the existing electronic sensors do not possess the desired sensitivity, reliability, and scalability needed for modern precision agriculture processes. To address these problems, a novel low-cost, IoT-enabled soil moisture sensing system based on GO and rGO capacitive sensors is presented. Nanomaterials were selected on account of superior electrical conductivity, large surface area, and tunable functional groups that allow for larger sensitivity changes in moisture variations. The sensors were fabricated using drop-casting techniques at three different concentrations (0.1 mg/ml, 1 mg/ml, 10 mg/ml) on interdigitated electrode arrays which were experimentally validated over a range of gravimetric water contents (1-17%). The sensing system featured a custom capacitance-to-frequency conversion circuit and ESP8266-based wireless data transmission module for real-time cloud integration via MATLAB ThingSpeak. Machine learning techniques were integrated for classifying soil moisture levels. Principal Component Analysis (PCA) was employed for dimensionality reduction and was able to capture more than 92% and 95% of data variance for the GO and rGO sensors, respectively. Afterward, the k-means clustering method, supported by the elbow method, enabled our correct classification into dry, moderate, and wet moisture levels with silhouette scores of 0.88 (GO) and 0.91 (rGO) Sets. This work demonstrates a strong, scalable, and data-centric sensing solution which potentially provides intelligent irrigation management in the precision agriculture process in real-time scenarios.
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spelling doaj-art-0b2b94c1383a43698d60f4e7817dbfe52025-08-20T03:22:11ZengEDP SciencesEPJ Web of Conferences2100-014X2025-01-013280107410.1051/epjconf/202532801074epjconf_icetsf2025_01074IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring ProcessUkani Neema Amish0Khera Shelej1Chakole Saurabh S.2Ph. D. Scholar, Lovely Professional UniversitySEEE, Lovely Professional UniversityPh. D. Scholar, Lovely Professional UniversitySoaring demand for sustainable agriculture critically requires the timely and precise monitoring of soil moisture to optimize irrigation applications and save scarce water resources. While conventional soil moisture sensing methods such as gravimetric analysis and neutron probes are accurate, they possess severe limitations including high cost, labor intensity, and unsuitability for large-scale field deployment. Also, the existing electronic sensors do not possess the desired sensitivity, reliability, and scalability needed for modern precision agriculture processes. To address these problems, a novel low-cost, IoT-enabled soil moisture sensing system based on GO and rGO capacitive sensors is presented. Nanomaterials were selected on account of superior electrical conductivity, large surface area, and tunable functional groups that allow for larger sensitivity changes in moisture variations. The sensors were fabricated using drop-casting techniques at three different concentrations (0.1 mg/ml, 1 mg/ml, 10 mg/ml) on interdigitated electrode arrays which were experimentally validated over a range of gravimetric water contents (1-17%). The sensing system featured a custom capacitance-to-frequency conversion circuit and ESP8266-based wireless data transmission module for real-time cloud integration via MATLAB ThingSpeak. Machine learning techniques were integrated for classifying soil moisture levels. Principal Component Analysis (PCA) was employed for dimensionality reduction and was able to capture more than 92% and 95% of data variance for the GO and rGO sensors, respectively. Afterward, the k-means clustering method, supported by the elbow method, enabled our correct classification into dry, moderate, and wet moisture levels with silhouette scores of 0.88 (GO) and 0.91 (rGO) Sets. This work demonstrates a strong, scalable, and data-centric sensing solution which potentially provides intelligent irrigation management in the precision agriculture process in real-time scenarios.https://www.epj-conferences.org/articles/epjconf/pdf/2025/13/epjconf_icetsf2025_01074.pdf
spellingShingle Ukani Neema Amish
Khera Shelej
Chakole Saurabh S.
IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
EPJ Web of Conferences
title IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
title_full IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
title_fullStr IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
title_full_unstemmed IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
title_short IoT Integrated Graphene Derivative-Based Capacitive Sensors with Machine Learning Classification for Precision Soil Moisture Monitoring Process
title_sort iot integrated graphene derivative based capacitive sensors with machine learning classification for precision soil moisture monitoring process
url https://www.epj-conferences.org/articles/epjconf/pdf/2025/13/epjconf_icetsf2025_01074.pdf
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