This paper presents a fuzzy logic artificial intelligence technique for predicting the machining performance of Al–Si–Cu–Fe die casting alloy treated with different additives including strontium, bismuth and antimony to improve surface roughness. The Pareto-ANOVA optimization method was used to obtain the optimum parameter conditions for the machining process. Experiments were carried out using oblique dry CNC turning. The machining parameters of cutting speed, feed rate and depth of cut were optimized according to surface roughness values. The results indicated that a cutting speed of 250 m/min, a feed rate of 0.05 mm/rev, and a depth of cut of 0.15 mm were the optimum CNC dry turning conditions. The results also indicate...
Due to the extensive use of highly automated machine tools in the industry, manufacturing requires r...
A few modern industrial materials are of serious concern to the home model engineer turning with a l...
. This study focuses on developing empirical prediction models using regression analysis and fuzzy l...
This paper presents a fuzzy logic artificial intelligence technique for predicting the machining per...
Nowadays every manufacturing and industrial industry has to focus on the manufacturing of quality pr...
The increase of consumer needs for quality metal cutting related products (more precise tolerances a...
The present paper investigates the application of traditional Taguchi method with fuzzy logic for mu...
This paper deals with measuring and modelling of the quality of the machined surface of the metal ma...
Metal matrix composites have been increasingly used as materials for components in automotive and ae...
Temper-grade aluminum alloy Al-6061-T6 is commonly used for many engineering purposes owing to its s...
Hard-facing or hard-surfacing process is used for enhancing the service life of various machine part...
AbstractSurface roughness is a quality index for machined surfaces. In this study an algorithm has b...
AbstractThe increase of consumer needs for quality metal cutting related products with more precise ...
AbstractThis paper describes the application of the fuzzy logic integrated with Taguchi method for m...
Nowadays, the demand for high product quality focuses extensive attention to the quality of machined...
Due to the extensive use of highly automated machine tools in the industry, manufacturing requires r...
A few modern industrial materials are of serious concern to the home model engineer turning with a l...
. This study focuses on developing empirical prediction models using regression analysis and fuzzy l...
This paper presents a fuzzy logic artificial intelligence technique for predicting the machining per...
Nowadays every manufacturing and industrial industry has to focus on the manufacturing of quality pr...
The increase of consumer needs for quality metal cutting related products (more precise tolerances a...
The present paper investigates the application of traditional Taguchi method with fuzzy logic for mu...
This paper deals with measuring and modelling of the quality of the machined surface of the metal ma...
Metal matrix composites have been increasingly used as materials for components in automotive and ae...
Temper-grade aluminum alloy Al-6061-T6 is commonly used for many engineering purposes owing to its s...
Hard-facing or hard-surfacing process is used for enhancing the service life of various machine part...
AbstractSurface roughness is a quality index for machined surfaces. In this study an algorithm has b...
AbstractThe increase of consumer needs for quality metal cutting related products with more precise ...
AbstractThis paper describes the application of the fuzzy logic integrated with Taguchi method for m...
Nowadays, the demand for high product quality focuses extensive attention to the quality of machined...
Due to the extensive use of highly automated machine tools in the industry, manufacturing requires r...
A few modern industrial materials are of serious concern to the home model engineer turning with a l...
. This study focuses on developing empirical prediction models using regression analysis and fuzzy l...