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

Wear Prediction of Functionally Graded Composites Using Machine Learning

View through CrossRef
This study focuses on the production of functionally graded composites by utilizing magnesium matrix waste chips and cost-effective eggshell reinforcements through centrifugal casting. The wear behavior of the produced samples was thoroughly examined, considering a range of loads (5 N to 35 N), sliding speeds (0.5 m/s to 3.5 m/s), and sliding distances (500 m to 3500 m). The worn surfaces were carefully analyzed to gain insights into the underlying wear mechanisms. The results indicated successful eggshell particle integration in graded levels within the composite, enhancing hardness and wear resistance. In the outer zone, there was a 25.26% increase in hardness over the inner zone due to the particle gradient, with wear resistance improving by 19.8% compared to the inner zone. To predict the wear behavior, four distinct machine learning algorithms were employed, and their performance was compared using a limited dataset obtained from various test operations. The tree-based machine learning model surpassed the deep neural-based models in predicting the wear rate among the developed models. These models provide a fast and effective way to evaluate functionally graded magnesium composites reinforced with eggshell particles for specific applications, potentially decreasing the need for extensive additional tests. Notably, the LightGBM model exhibited the highest accuracy in predicting the testing set across the three zones. Finally, the study findings highlighted the viability of employing magnesium waste chips and eggshell particles in crafting functionally graded composites. This approach not only minimizes environmental impact through material repurposing but also offers a cost-effective means of utilizing these resources in creating functionally graded composites for automotive components that demand varying hardness and wear resistance properties across their surfaces, from outer to inner regions.
Title: Wear Prediction of Functionally Graded Composites Using Machine Learning
Description:
This study focuses on the production of functionally graded composites by utilizing magnesium matrix waste chips and cost-effective eggshell reinforcements through centrifugal casting.
The wear behavior of the produced samples was thoroughly examined, considering a range of loads (5 N to 35 N), sliding speeds (0.
5 m/s to 3.
5 m/s), and sliding distances (500 m to 3500 m).
The worn surfaces were carefully analyzed to gain insights into the underlying wear mechanisms.
The results indicated successful eggshell particle integration in graded levels within the composite, enhancing hardness and wear resistance.
In the outer zone, there was a 25.
26% increase in hardness over the inner zone due to the particle gradient, with wear resistance improving by 19.
8% compared to the inner zone.
To predict the wear behavior, four distinct machine learning algorithms were employed, and their performance was compared using a limited dataset obtained from various test operations.
The tree-based machine learning model surpassed the deep neural-based models in predicting the wear rate among the developed models.
These models provide a fast and effective way to evaluate functionally graded magnesium composites reinforced with eggshell particles for specific applications, potentially decreasing the need for extensive additional tests.
Notably, the LightGBM model exhibited the highest accuracy in predicting the testing set across the three zones.
Finally, the study findings highlighted the viability of employing magnesium waste chips and eggshell particles in crafting functionally graded composites.
This approach not only minimizes environmental impact through material repurposing but also offers a cost-effective means of utilizing these resources in creating functionally graded composites for automotive components that demand varying hardness and wear resistance properties across their surfaces, from outer to inner regions.

Related Results

Experimental analysis of epoxy-based functionally graded composite materials
Experimental analysis of epoxy-based functionally graded composite materials
Functionally graded materials (FGMs) are crucial in the mechanical and aerospace industries for improving material quality by combining distinct qualities to create composite subst...
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...
Nonlinear Vibration of a Functionally Graded Nanobeam Based on the Nonlocal Strain Gradient Theory considering Thickness Effect
Nonlinear Vibration of a Functionally Graded Nanobeam Based on the Nonlocal Strain Gradient Theory considering Thickness Effect
In this work, a nonlocal strain gradient beam model considering the thickness effect is developed to study the nonlinear vibration response of a functionally graded nanobeam. The g...
Study on the Theory and Method of Combined Casing Wear Resistance in Deep & Ultra-Deep Well Drilling
Study on the Theory and Method of Combined Casing Wear Resistance in Deep & Ultra-Deep Well Drilling
Abstract The high and steep structure of piedmont areas in Tarim oil field bring serious casing wear problem. Casing wear is one of the important reasons for the ...
Graded 1-Absorbing Prime Ideals over Non-Commutative Graded Rings
Graded 1-Absorbing Prime Ideals over Non-Commutative Graded Rings
In this article, we define and study graded 1-absorbing prime ideals and graded weakly 1-absorbing prime ideals in non-commutative graded rings as a new class of graded ideals that...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
Friction, Lubrication, and Wear Technology
Friction, Lubrication, and Wear Technology
Volume 18 addresses friction and wear from a systems perspective, while providing a detailed understanding of why it occurs and how to control it. It explains the basic theory of f...

Back to Top