The paper presents neural networks as performance improvement models in intelligent computer aided process planning systems (CAPP systems). For construction of these models three types of neural networks were used: linear network, multi-layer network with error backpropagation, and the Radial Basis Function network (RBF). The models were compared. Due to the comparison, we can say which type of neural network is the best for selection of tools for manufacturing operations. Tool selection for manufacturing operation is a classification problem. Hence, neural networks were built as classification models, meant to improve tool selection for manufacturing. The study was done for selected manufacturing operations: turning, milling and grinding. ...
The potential of neural networks is examined, and the effect of parallel processing on the solution ...
Summarization: This paper presents a neural network approach in determining the appropriate manufact...
In this paper we develop a metamodel of the relationships between key inputs and performance measure...
Computer-aided process planning systems are used to assist human planners in producing better proces...
The Computer Aided Process Planning (CAPP) systems are recently developed in manufacturing engineeri...
Abstract: CAPP system plays a key role to integrate design and manufacturing or assembly systems pro...
One of the important activities in computer integrated manufacturing (CIM) is computer aided process...
This investigation demonstrates that neural networks can perform some of the tasks in controlling co...
In the search for productivity increase, industry has invested on the development of intelligent, fl...
In recent years, collaborative research between academia and industry has intensified in finding a s...
Process behaviour in the aluminium smelting industry is typically highly dynamic and unstable and in...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
The Computer Aided Process Planning (CAPP) systems are recently developed in manufacturing engineeri...
Summary form only given. An examination is made of the potential of neural networks and the impact o...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The potential of neural networks is examined, and the effect of parallel processing on the solution ...
Summarization: This paper presents a neural network approach in determining the appropriate manufact...
In this paper we develop a metamodel of the relationships between key inputs and performance measure...
Computer-aided process planning systems are used to assist human planners in producing better proces...
The Computer Aided Process Planning (CAPP) systems are recently developed in manufacturing engineeri...
Abstract: CAPP system plays a key role to integrate design and manufacturing or assembly systems pro...
One of the important activities in computer integrated manufacturing (CIM) is computer aided process...
This investigation demonstrates that neural networks can perform some of the tasks in controlling co...
In the search for productivity increase, industry has invested on the development of intelligent, fl...
In recent years, collaborative research between academia and industry has intensified in finding a s...
Process behaviour in the aluminium smelting industry is typically highly dynamic and unstable and in...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
The Computer Aided Process Planning (CAPP) systems are recently developed in manufacturing engineeri...
Summary form only given. An examination is made of the potential of neural networks and the impact o...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The potential of neural networks is examined, and the effect of parallel processing on the solution ...
Summarization: This paper presents a neural network approach in determining the appropriate manufact...
In this paper we develop a metamodel of the relationships between key inputs and performance measure...