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An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups

Heavy metal concentrations that must be maintained in aquaponic environments for plant growth have been a source of concern for many decades, as they cannot be completely eliminated in a commercial set-up. Our goal was to create a low-cost real-time smart sensing and actuation system for controlling...

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Autores principales: Dhal, Sambandh Bhusan, Mahanta, Shikhadri, Gumero, Jonathan, O’Sullivan, Nick, Soetan, Morayo, Louis, Julia, Gadepally, Krishna Chaitanya, Mahanta, Snehadri, Lusher, John, Kalafatis, Stavros
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9824838/
https://www.ncbi.nlm.nih.gov/pubmed/36617048
http://dx.doi.org/10.3390/s23010451
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author Dhal, Sambandh Bhusan
Mahanta, Shikhadri
Gumero, Jonathan
O’Sullivan, Nick
Soetan, Morayo
Louis, Julia
Gadepally, Krishna Chaitanya
Mahanta, Snehadri
Lusher, John
Kalafatis, Stavros
author_facet Dhal, Sambandh Bhusan
Mahanta, Shikhadri
Gumero, Jonathan
O’Sullivan, Nick
Soetan, Morayo
Louis, Julia
Gadepally, Krishna Chaitanya
Mahanta, Snehadri
Lusher, John
Kalafatis, Stavros
author_sort Dhal, Sambandh Bhusan
collection PubMed
description Heavy metal concentrations that must be maintained in aquaponic environments for plant growth have been a source of concern for many decades, as they cannot be completely eliminated in a commercial set-up. Our goal was to create a low-cost real-time smart sensing and actuation system for controlling heavy metal concentrations in aquaponic solutions. Our solution entails sensing the nutrient concentrations in the hydroponic solution, specifically calcium, sulfate, and phosphate, and sending them to a Machine Learning (ML) model hosted on an Android application. The ML algorithm used in this case was a Linear Support Vector Machine (Linear-SVM) trained on top three nutrient predictors chosen after applying a pipeline of Feature Selection methods namely a pairwise correlation matrix, ExtraTreesClassifier and Xgboost classifier on a dataset recorded from three aquaponic farms from South-East Texas. The ML algorithm was then hosted on a cloud platform which would then output the maximum tolerable levels of iron, copper and zinc in real time using the concentration of phosphorus, calcium and sulfur as inputs and would be controlled using an array of dispensing and detecting equipments in a closed loop system.
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spelling pubmed-98248382023-01-08 An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups Dhal, Sambandh Bhusan Mahanta, Shikhadri Gumero, Jonathan O’Sullivan, Nick Soetan, Morayo Louis, Julia Gadepally, Krishna Chaitanya Mahanta, Snehadri Lusher, John Kalafatis, Stavros Sensors (Basel) Article Heavy metal concentrations that must be maintained in aquaponic environments for plant growth have been a source of concern for many decades, as they cannot be completely eliminated in a commercial set-up. Our goal was to create a low-cost real-time smart sensing and actuation system for controlling heavy metal concentrations in aquaponic solutions. Our solution entails sensing the nutrient concentrations in the hydroponic solution, specifically calcium, sulfate, and phosphate, and sending them to a Machine Learning (ML) model hosted on an Android application. The ML algorithm used in this case was a Linear Support Vector Machine (Linear-SVM) trained on top three nutrient predictors chosen after applying a pipeline of Feature Selection methods namely a pairwise correlation matrix, ExtraTreesClassifier and Xgboost classifier on a dataset recorded from three aquaponic farms from South-East Texas. The ML algorithm was then hosted on a cloud platform which would then output the maximum tolerable levels of iron, copper and zinc in real time using the concentration of phosphorus, calcium and sulfur as inputs and would be controlled using an array of dispensing and detecting equipments in a closed loop system. MDPI 2023-01-01 /pmc/articles/PMC9824838/ /pubmed/36617048 http://dx.doi.org/10.3390/s23010451 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Dhal, Sambandh Bhusan
Mahanta, Shikhadri
Gumero, Jonathan
O’Sullivan, Nick
Soetan, Morayo
Louis, Julia
Gadepally, Krishna Chaitanya
Mahanta, Snehadri
Lusher, John
Kalafatis, Stavros
An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title_full An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title_fullStr An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title_full_unstemmed An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title_short An IoT-Based Data-Driven Real-Time Monitoring System for Control of Heavy Metals to Ensure Optimal Lettuce Growth in Hydroponic Set-Ups
title_sort iot-based data-driven real-time monitoring system for control of heavy metals to ensure optimal lettuce growth in hydroponic set-ups
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9824838/
https://www.ncbi.nlm.nih.gov/pubmed/36617048
http://dx.doi.org/10.3390/s23010451
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