Corpus ID: 14491970

PROCESS MONITORING OF ABRASIVE FLOW MACHINING USING A NEURAL NETWORK PREDICTIVE MODEL

@inproceedings{Lam1998PROCESSMO,
  title={PROCESS MONITORING OF ABRASIVE FLOW MACHINING USING A NEURAL NETWORK PREDICTIVE MODEL},
  author={Sarah S. Y. Lam},
  year={1998}
}
  • Sarah S. Y. Lam
  • Published 1998
  • Computer Science
  • This paper discusses the preliminary development of a neural network based process monitor and off-line controller for abrasive flow machining of automotive engine intake manifolds. The process is only observable indirectly, yet the time at which machining achieves the specified air flow rate must be estimated accurately. A neural network model is used to estimate when the process has achieved air flow specification so that machining can be terminated. This model uses surrogate process… CONTINUE READING
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