Carbon fiber fabrics are important engineering materials. However, it is confusing to classify different carbon fiber fabrics, leading to risks in engineering processes. Here, a classification method for four types of carbon fiber fabrics is proposed using artificial neural networks (ANNs) and support vector machine (SVM) based on 229 experimental data groups. Sample width, breaking strength and breaking tenacity were set as independent variables. Quantified numbers for the four carbon fiber fabrics were set as dependent variables. Results show that a multilayer feed-forward neural network with 21 hidden nodes (MLFN-21) has the best performance for classification, with the lowest root mean square error (RMSE) in the testing set
To produce high quality and low cost carbon fiber-based composites, the optimization of the producti...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
Diversified choice of materials from natural fibre reinforced polymer composites with similar proper...
Predicting success before full scale manufacturing is the cornerstone of every high-tech industry. M...
Abstract: In this study, the effects of yarn parameters, on the bursting strength of the plain knitt...
270-277In this study, two types of cotton yarn neps, viz. seed coat and fibrous neps, have been clas...
2nd International Conference on Agents and Artificial Intelligence, ICAART 2010 -- 22 January 2010 t...
This article describes the development of a cotton classification algorithm based on a convolutional...
International audienceThe excellent feature set or feature combination of cotton foreign fibers is g...
Automatic systems can be used in many areas, such as the production stage in factories, country defe...
Abstract: For many industrial machine vision applications it is difficult to acquire good training ...
In the last years, great developments in technology have taken place in certain branches of testing ...
583-587Kohonen neural network has been used to classify cotton fibre characteristics, viz. 2.5% sp...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
To produce high quality and low cost carbon fiber-based composites, the optimization of the producti...
To produce high quality and low cost carbon fiber-based composites, the optimization of the producti...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
Diversified choice of materials from natural fibre reinforced polymer composites with similar proper...
Predicting success before full scale manufacturing is the cornerstone of every high-tech industry. M...
Abstract: In this study, the effects of yarn parameters, on the bursting strength of the plain knitt...
270-277In this study, two types of cotton yarn neps, viz. seed coat and fibrous neps, have been clas...
2nd International Conference on Agents and Artificial Intelligence, ICAART 2010 -- 22 January 2010 t...
This article describes the development of a cotton classification algorithm based on a convolutional...
International audienceThe excellent feature set or feature combination of cotton foreign fibers is g...
Automatic systems can be used in many areas, such as the production stage in factories, country defe...
Abstract: For many industrial machine vision applications it is difficult to acquire good training ...
In the last years, great developments in technology have taken place in certain branches of testing ...
583-587Kohonen neural network has been used to classify cotton fibre characteristics, viz. 2.5% sp...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
To produce high quality and low cost carbon fiber-based composites, the optimization of the producti...
To produce high quality and low cost carbon fiber-based composites, the optimization of the producti...
The purpose of the present study was to estimate dimensional measure properties of T-shirts made up ...
Diversified choice of materials from natural fibre reinforced polymer composites with similar proper...