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

Experimental Study and Neural Network Model to Predict Formability of Magnesium Alloy AZ31B

View through CrossRef
Magnesium alloy is an emerging smart metal used in various industries like automotive and aerospace industry, due to their lightweight and excellent strength-to-weight ratio. Formability, a critical factor in manufacturing processes, determines the alloy’s ability to undergo deformation without fracture or defects. Fuel economy and environmental conservatives are the key desirable factors in selection of magnesium alloy sheets. Magnesium alloy sheets have low formability at room temperature due to their hexagonal closed-packed microstructures. As the magnesium’s formability at room temperature is considerably low, stretch forming tests are conducted at moderate temperatures. For this purpose, commercially available AZ31B magnesium alloy sheet of 1.1mm thickness has been used and tested at room temperature, 25 degree to within medium temperatures range and at a higher strain rate of 0.01/s. The main objective of an experimental study to predict the formability of magnesium alloy sheets is to gather data through controlled tests and measurements. This data and Forming Limit Diagram (FLD) can be used to analyse the formability of material, it defines failure criteria. On the other hand, using a neural network to predict formability involves training the network on the collected experimental data. Once trained, the neural network can predict the formability of new magnesium alloy sheets based on their characteristics, offering a faster and potentially more accurate prediction method compared to traditional models. This work explores into the realm of regression modelling utilizing neural networks, a powerful subset of machine learning techniques. It begins with a discussion on the setup of machine learning models, emphasizing the crucial steps involved in data preprocessing, model selection, and evaluation.
Title: Experimental Study and Neural Network Model to Predict Formability of Magnesium Alloy AZ31B
Description:
Magnesium alloy is an emerging smart metal used in various industries like automotive and aerospace industry, due to their lightweight and excellent strength-to-weight ratio.
Formability, a critical factor in manufacturing processes, determines the alloy’s ability to undergo deformation without fracture or defects.
Fuel economy and environmental conservatives are the key desirable factors in selection of magnesium alloy sheets.
Magnesium alloy sheets have low formability at room temperature due to their hexagonal closed-packed microstructures.
As the magnesium’s formability at room temperature is considerably low, stretch forming tests are conducted at moderate temperatures.
For this purpose, commercially available AZ31B magnesium alloy sheet of 1.
1mm thickness has been used and tested at room temperature, 25 degree to within medium temperatures range and at a higher strain rate of 0.
01/s.
The main objective of an experimental study to predict the formability of magnesium alloy sheets is to gather data through controlled tests and measurements.
This data and Forming Limit Diagram (FLD) can be used to analyse the formability of material, it defines failure criteria.
On the other hand, using a neural network to predict formability involves training the network on the collected experimental data.
Once trained, the neural network can predict the formability of new magnesium alloy sheets based on their characteristics, offering a faster and potentially more accurate prediction method compared to traditional models.
This work explores into the realm of regression modelling utilizing neural networks, a powerful subset of machine learning techniques.
It begins with a discussion on the setup of machine learning models, emphasizing the crucial steps involved in data preprocessing, model selection, and evaluation.

Related Results

Formability Studies on Magnesium Based AZ31B Alloy Sheet in LS Dyna Program Code
Formability Studies on Magnesium Based AZ31B Alloy Sheet in LS Dyna Program Code
Magnesium alloys has potential applications in aerospace and automotive industries as they are having good formability. Material properties like yield strength, ductility, have dir...
Experimental study and machine learning model to predict formability of magnesium alloy sheet
Experimental study and machine learning model to predict formability of magnesium alloy sheet
Background: Magnesium alloy is not only light in weight but also possesses moderate strength. Magnesium AZ31-H24 alloy sheet has many applications in the automotive and aerospace i...
Inelastic strain recovery of magnesium alloys and a new elastic modulus model
Inelastic strain recovery of magnesium alloys and a new elastic modulus model
Abstract Cyclic loading-unloading uniaxial tension experiments were performed for AZ31B magnesium sheets. The inelastic strain recovery behavior of the AZ31B sheets ...
Constitutive Modeling for Cyclic Behavior of AZ31B Magnesium Alloy and its Application
Constitutive Modeling for Cyclic Behavior of AZ31B Magnesium Alloy and its Application
Fatigue testing was conducted on AZ31B-H24 magnesium alloy in strain-control condition. An unusual asymmetric shape of the hysteresis loop was the key feature of the cyclic behavio...
Ratio Optimization of Magnesium Oxychloride Cement and Improvement of Its Water Resistance Based on Response Surface Methodology
Ratio Optimization of Magnesium Oxychloride Cement and Improvement of Its Water Resistance Based on Response Surface Methodology
Magnesium oxychloride has excellent early strength, lightweight and environmentally friendly properties, and excellent application value. However, insufficient water resistance aff...
Magnesium Phosphorus Oxynitride with High Mg2+ Ionic Conductivity as a Novel Thin-film Magnesium Electrolyte
Magnesium Phosphorus Oxynitride with High Mg2+ Ionic Conductivity as a Novel Thin-film Magnesium Electrolyte
Rechargeable magnesium ion batteries (MIBs) have attracted much attention as a possible replacement of Li-ion batteries, because of the natural abundance of magnesium and the high ...
Estimation of serum levels of magnesium in antenatal women in a tertiary health centre
Estimation of serum levels of magnesium in antenatal women in a tertiary health centre
Magnesium is an important macrominerals required for various functions in our body and also as a cofactor for several enzymes. Magnesium deficiency in pregnancy due to decreased in...

Back to Top