An artificial neural network (ANN) simulation was utilized to determine the lapping parameters such as rotation speed, lapping duration and lapping pressure under a constant slurry supply for n-type crystalline Silicon (c-Si) wafers. Experiments were done with a Logitech PM5 lapping and polishing machine to obtain input data and target data for training, testing and validation of ANN. Lapping operation had five main parameters affecting surface quality: rotation speed, lapping duration, lapping pressure, flowrate of abrasive slurry and particle size in abrasive slurry. However, in this study slurry flowrate was assumed constant due the researches performed before. 218 lapping operations were performed with different values of the selected p...
The former, which is defined as modeling of machining processes, is essential to provide the basic m...
This paper presents an approach for the determination of the optimal cutting parameters (spindle spe...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
An artificial neural network (ANN) simulation was utilized to determine the lapping parameters such ...
An Artificial Neural Network (ANN) simulation was utilized to predict surface roughness values (R-a)...
To enhance energy absorption of photovoltaics, several etching experiments with various parameters w...
The thinning of the silicon wafers and the smoothening of the surface are carried out by grinding an...
The lapping process is one of the traditional finishing processes and generally it is conducted as m...
Surface roughness is one of the most important properties in any machining process and in micro mil...
This research aims to machine gold coated doped Silicon (Si) wafer using micro wire electro dischar...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
The quality of a machined finish plays a major role in the performance of milling operations, good s...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
poster abstractAbstract Turning is a material removal process, a subtractive form of machining whi...
This thesis deals with the prediction of grinding machinability when grind aluminium alloy using wat...
The former, which is defined as modeling of machining processes, is essential to provide the basic m...
This paper presents an approach for the determination of the optimal cutting parameters (spindle spe...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
An artificial neural network (ANN) simulation was utilized to determine the lapping parameters such ...
An Artificial Neural Network (ANN) simulation was utilized to predict surface roughness values (R-a)...
To enhance energy absorption of photovoltaics, several etching experiments with various parameters w...
The thinning of the silicon wafers and the smoothening of the surface are carried out by grinding an...
The lapping process is one of the traditional finishing processes and generally it is conducted as m...
Surface roughness is one of the most important properties in any machining process and in micro mil...
This research aims to machine gold coated doped Silicon (Si) wafer using micro wire electro dischar...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
The quality of a machined finish plays a major role in the performance of milling operations, good s...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
poster abstractAbstract Turning is a material removal process, a subtractive form of machining whi...
This thesis deals with the prediction of grinding machinability when grind aluminium alloy using wat...
The former, which is defined as modeling of machining processes, is essential to provide the basic m...
This paper presents an approach for the determination of the optimal cutting parameters (spindle spe...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...