Commentary - (2024) Volume 14, Issue 12
Cutting-Edge Developments in Materials Science and Nanotechnology
Fier Treich*
Department Bioengineering, University of United States, United States
*Correspondence:
Fier Treich,
Department Bioengineering, University of United States,
United States,
Email:
Received: 03-Dec-2024, Manuscript No. aasrfc-25-22578;
Editor assigned: 05-Dec-2024, Pre QC No. aasrfc-25-22578 (PQ);
Reviewed: 19-Dec-2024, QC No. aasrfc-25-22578 ;
Revised: 24-Dec-2024, Manuscript No. aasrfc-25-22578 (R);
Published:
31-Dec-2024, DOI: 10.36648/0976-8610.15.12.123
Description
The hybrid model is proposed for forecasting humidity in sheep
barns and is based on a machine learning model that combines
a light gradient boosting machine with grey wolf optimization
and support-vector regression. LightGBM was used to remove
influencing elements with a high commitment to stickiness, reducing
the complexity of the model. Required hyper parameters
in SVR were enhanced by employing the CGWO calculation
to avoid the local extremum problem. To ensure the healthful
development of the animals and increase the financial benefits
of sheep farming, it is crucial to precisely predict variations in
humidity in sheep barns. To overcome the shortcomings of conventional
approaches in creating precise mathematical models
of dynamic changes in humidity in sheep barns, we propose a
machine learning model that combines a light gradient boosting
machine with grey wolf optimization and support-vector
regression. In order to streamline the model, LightGBM was
utilised to extract influencing elements that had a substantial
impact on humidity. The local extremum problem was avoided
by using the CGWO algorithm to identify the ideal hyper parameter
combination and optimize the necessary hyper parameters
in SVR. The combined algorithm was used by an intensive
sheep breeding facility in Manas, Xinjiang, China, to predict the
humidity in real time for the following 10 minutes. It obtained
lowest values of 0.0662, 0.2284, 0.0521, and 0.0083, respectively,
for the mean absolute error, root mean square error,
mean squared error, and normalized root mean square error,
and a maximum value of 0.9973 for the R2 index. In rural inland
Northwest China (Xinjiang), where sheep farming for meat
is a significant industry, large-scale intensive sheep farming is
the main form of operation. The final simulation outcomes of
the proposed LightGBM-CGWO-SVR model were compared to
those of more sophisticated models, and the following conclusions
were made: Without accounting for ambient elements
that affect humidity, LightGBM was utilised to screen the sheep
barnâ??s environmental parameters. The 9 variables-air humidity,
CO2, PM2.5, PM10, light intensity, noise, TSP, NH3 concentration,
and H2 S concentration were then reduced to the three
most significant influencing variables-CO2, light intensity, and
air temperature and used for modelling. Remember that the
data were collected in February, when Xinjiang was bitterly
cold and wintery. This resulted in regular and irregular ventilation
of the sheep house. It wasnâ??t constantly well-ventilated. In
other words, ventilation had little impact on the majority of the
humidity values in this set. Naturally, the ventilation element
should not be disregarded while building a model for the summer
season, when the sheep barn would be often ventilated.
This significantly improved the modelâ??s precision and computational
effectiveness. This studyâ??s CGWO algorithm, obtained
by introducing chaotic operators, maintained the benefits of a
simple structure, few control parameters, and implementation
of the GWO algorithm while enhancing the traditional GWO
algorithmâ??s global search capability and resolving the issue of
randomness and empirically in the selection of SVR parameters.
In terms of prediction accuracy and generalizability.
Acknowledgement
None.
Conflict Of Interest
None.
Citation: Treich F (2024) Cutting-Edge Developments in Materials Science and Nanotechnology. Adv Appl Sci Res. 14:124.
Copyright: © 2024 Treich F. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.