Today's manufacturing methods are caught between the growing need for quality, high process safety, minimal manufacturing costs, and short manufacturing times. In order to meet these demands, process setting parameters have to be chosen in the best possible way, according to demand on quality. For such optimization it is necessary to represent the processes in a model. Due to the enormous complexity of many processes and the high number of influencing parameters, however, conventional approaches to modelling and optimization are no longer sufficient. In this article it is shown how, by means of applying neural networks for process modelling, even these highly complex interdependencies can be learned. That way both process and quality parameters can be assessed before or during processing. By connecting them with corresponding cost models, it is possible to optimize processes with the help of evolutionary algorithms. Using examples of different manufacturing processes, the possi bilities for process modelling and optimization with neural networks and evolutionary algorithms are demonstrated.
[1]
Erwin Pesch,et al.
Learning in automated manufacturing
,
1994
.
[2]
Erwin Pesch,et al.
Learning in Automated Manufacturing: A Local Search Approach
,
1994
.
[3]
László Monostori,et al.
A Step towards Intelligent Manufacturing: Modelling and Monitoring of Manufacturing Processes through Artificial Neural Networks
,
1993
.
[4]
Ming-Kuen Chen,et al.
Neural network modelling and multiobjective optimization of creep feed grinding of superalloys
,
1992
.
[5]
Ichiro Inasaki,et al.
A Neural Network Approach to the Decision-Making Process for Grinding Operations
,
1992
.
[6]
Jörg Schulte.
Werkstattsteuerung mit genetischen Algorithmen und simulativer Bewertung
,
1995
.
[7]
Vikram Cariapa,et al.
Application of neural networks for compliant tool polishing operations
,
1991
.