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Sensor,
IoT-based post-harvest shelf life determination of tomato (Lycopersicon
esculentum) through machine learning predictive analysis for intelligent
transport
J. Shankaraswamy1*
and T.S.L. Radhika2
1Department
of Fruit Science, College of Horticulture, Mojerla, Sri Konda
Laxman,Wanaparthy-509 382, India
2Department
of Mathematics, BITS Pilani, Hyderabad Campus, Hyderabad-500 078, India
Received: 15 April
2024 Revised: 22 May 2024 Accepted:
04 June 2024
*Corresponding Author Email : shankara.swamy@gmail.com
*ORCiD:
https://orcid.org/0000-0002-5623-6384
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Abstract
Aim:
The
current research explores the potential of machine learning predictive models
in optimizing the storage conditions of tomatoes. This is achieved through
Internet of Things (IoT) technology, sensors, cameras, and microprocessors
integrated into refrigerators along the supply chain.
Methodology:
Controlling
temperature and humidity inside the refrigerated container was accomplished
by implementing the Arduino microcontroller and supplementary hardware
components, including the ESP32 module relay, an advancement over the ESP8266
microcontroller. The Arduino Integrated Development Environment (IDE) was
used as software platform for this experimentation. Various parameters,
including humidity, oxygen, carbon-di-oxide, and shelf life, were recorded at
different temperatures and on different days. Subsequently, the collected
data was analyzed employing machine-learning models to determine the most
effective prediction model for these variables.
Results:
From
the results it has been revealed that apolynomial of degree 4 is the best-fit
regressor model for the data on humidity. Polynomials of degrees 2, 2, and 3
are the best models for the target variables oxygen, carbon-di-oxide, and
shelf life.
Interpretation:
During
analysis, This result suggests that different polynomial degrees are optimal
for modeling different variables in the dataset. Polynomials of degrees 2, 2,
and 3 are the best ML models for the target variables oxygen,
carbon-di-oxide, and shelf life, respectively,to enhance the effectiveness of
our predictive models.
Key
words: Io
T sensors, ML models, Quantile loss, Supply chain, Tomato
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