Combined Use of Simulation and Ai/machine Learning Techniques in Designing Manufacturing Processes and Systems
نویسندگان
چکیده
. In the paper different architectures with partly self-developed simulation packages are described illustrating the benefits of combining simulation and machine learning (ML) techniques in manufacturing. From the artificial intelligence (AI) and ML side, artificial neural networks, heuristic search, simulated annealing, and agent-based techniques are put into action. The applicability of the proposed solutions is illustrated by the results of experimental runs.
منابع مشابه
Ai and Ml Techniques Combined with Simulation for Designing and Controlling Manufacturing Processes and Systems
In the paper different architectures with partly self-developed simulation packages are described illustrating the benefits of combining simulation and machine learning (ML) techniques in manufacturingintelligence (AI) and ML side, artificial neural networks, heuristic search, simulated annealing, and agent-based techniques are put into action. The applicability of the proposed solutions is ill...
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