A data analysis method based on artificial neural networks aiming to support cause-and-effect analysis in design exploration studies is presented. The method clusters and aggregates the effects of multiple design variables based on the structural hierarchy of the evaluated system. The proposed method is exemplified in a case study showing that the predictive capability of the created, clustered, a dataset is comparable to the original, unmodified, one. The proposed method is evaluated using coefficient-of-determination, root mean square error, average relative error, and mean square error. Data analysis approach with artificial neural networks is believed to significantly improve the comprehensibility of the evaluated cause-and-effect relat...
Over the last few years, connectionism or neural networks (NN) have successfully been applied to a w...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The paper illustrates the design and implementation process of a neural network to identify characte...
A data analysis method based on artificial neural networks aiming to support cause-and-effect analys...
A data analysis method aiming to support cause and effect analysis in design exploration studies is ...
Modern product development is a complex chain of events and decisions. The ongoing digital transform...
User performance is highly correlated with design variables of a system. Such association can be des...
International audienceArtificial Neural Networks is a calculation method that builds several process...
This study aims to incorporate Artificial Neural Networks into a Marketing Decision Support System (...
Kumru, Mesut (Dogus Author) -- Conference full title: 2011 International Symposium on Innovations in...
Automotive is one of the major manufacturing industries in Australia that requires extensive reliabi...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
[[abstract]]©1998 Wiley - An experimental design scheme proposed for process and product development...
International audienceIn visual inspection for aesthetics features we can use sensory analysis proce...
The authors extend and develop an artificial neural network decision support system and demonstrate ...
Over the last few years, connectionism or neural networks (NN) have successfully been applied to a w...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The paper illustrates the design and implementation process of a neural network to identify characte...
A data analysis method based on artificial neural networks aiming to support cause-and-effect analys...
A data analysis method aiming to support cause and effect analysis in design exploration studies is ...
Modern product development is a complex chain of events and decisions. The ongoing digital transform...
User performance is highly correlated with design variables of a system. Such association can be des...
International audienceArtificial Neural Networks is a calculation method that builds several process...
This study aims to incorporate Artificial Neural Networks into a Marketing Decision Support System (...
Kumru, Mesut (Dogus Author) -- Conference full title: 2011 International Symposium on Innovations in...
Automotive is one of the major manufacturing industries in Australia that requires extensive reliabi...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
[[abstract]]©1998 Wiley - An experimental design scheme proposed for process and product development...
International audienceIn visual inspection for aesthetics features we can use sensory analysis proce...
The authors extend and develop an artificial neural network decision support system and demonstrate ...
Over the last few years, connectionism or neural networks (NN) have successfully been applied to a w...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The paper illustrates the design and implementation process of a neural network to identify characte...