Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

IoT Enabled Mushroom Farm Automation with Machine Learning

View through CrossRef
Mushroom farming has gained prominence due to its significant contribution to the global market. One major challenge for mushroom cultivation is maintaining optimal environmental conditions, specifically temperature and humidity. Traditional farming methods, prevalent in many parts of the world, lack precise control over these parameters, often leading to poor yield. This paper presents an innovative approach combining the Internet of Things (IoT) and Machine Learning (ML) for mushroom farm automation. The proposed system employs the ESP8266 microcontroller with specific agricultural sensors for smart monitoring. To regulate the farm's environmental conditions, ML algorithms predict mushroom farm weather states: mild, normal, and hot. The ensemble ML model, comprising five classifiers – Decision Tree, Logistic Regression, K-nearest neighbor, Support Vector Machine, and Random Forest – delivers a commendable accuracy of 100% when combining predictions, surpassing the performance of individual classifiers. This integrated IoT and ML approach promises to revolutionize real-time automation and cultivation practices in the mushroom industry.
Title: IoT Enabled Mushroom Farm Automation with Machine Learning
Description:
Mushroom farming has gained prominence due to its significant contribution to the global market.
One major challenge for mushroom cultivation is maintaining optimal environmental conditions, specifically temperature and humidity.
Traditional farming methods, prevalent in many parts of the world, lack precise control over these parameters, often leading to poor yield.
This paper presents an innovative approach combining the Internet of Things (IoT) and Machine Learning (ML) for mushroom farm automation.
The proposed system employs the ESP8266 microcontroller with specific agricultural sensors for smart monitoring.
To regulate the farm's environmental conditions, ML algorithms predict mushroom farm weather states: mild, normal, and hot.
The ensemble ML model, comprising five classifiers – Decision Tree, Logistic Regression, K-nearest neighbor, Support Vector Machine, and Random Forest – delivers a commendable accuracy of 100% when combining predictions, surpassing the performance of individual classifiers.
This integrated IoT and ML approach promises to revolutionize real-time automation and cultivation practices in the mushroom industry.

Related Results

A STUDY ON THE IMPACT OF MARKETING AUTOMATION ADOPTION
A STUDY ON THE IMPACT OF MARKETING AUTOMATION ADOPTION
Marketing automation adoption refers to the process of implementing and using marketing automation technology to streamline, automate, and measure marketing tasks and workflows. It...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Network Automation
Network Automation
Purpose: The article "Network Automation in the Contemporary Economy" explores the concepts and methods of effective network management. The application stack, Jinja template engin...
Applications of Ontology in the Internet of Things: A Systematic Analysis
Applications of Ontology in the Internet of Things: A Systematic Analysis
Ontology has been increasingly implemented to facilitate the Internet of Things (IoT) activities, such as tracking and information discovery, storage, information exchange, and obj...
Impact of Cultivation Substrate and Microbial Community on Improving Mushroom Productivity: A Review
Impact of Cultivation Substrate and Microbial Community on Improving Mushroom Productivity: A Review
Lignocellulosic materials commonly serve as base substrates for mushroom production. Cellulose, hemicellulose, and lignin are the major components of lignocellulose materials. The ...
Understanding mushroom farm environment using TinyML-based monitoring devices
Understanding mushroom farm environment using TinyML-based monitoring devices
Abstract The optimization of environmental conditions in mushroom cultivation is pivotal for maximizing yield and quality. A Smart Environmental Monitoring System fo...
Comparative neuroanatomy suggests repeated reduction of neuroarchitectural complexity in Annelida
Comparative neuroanatomy suggests repeated reduction of neuroarchitectural complexity in Annelida
AbstractBackgroundPaired mushroom bodies, an unpaired central complex, and bilaterally arranged clusters of olfactory glomeruli are among the most distinctive components of arthrop...
Pengaruh Substitusi Jamur Tiram (Pleurotus ostreatus) dan Tepung Terigu Terhadap Mutu Kimia Nugget
Pengaruh Substitusi Jamur Tiram (Pleurotus ostreatus) dan Tepung Terigu Terhadap Mutu Kimia Nugget
Nugget is a processed meat product made from ground meat that is molded in a rectangular shape and coated with seasoned flour. Nugget just like processed meat generally has a weakn...

Back to Top