Title :
Moving-window spectral neural-network feedforward process control
Author :
Ridley, Dennis ; Llaugel, Felipe
Author_Institution :
Supercomput. Comput. Res. Inst., Florida State Univ., Tallahassee, FL, USA
fDate :
8/1/2000 12:00:00 AM
Abstract :
Unlike reactive feedback control, feedforward control is a proactive method by which information about a measurable disturbance is fed, ahead of time, to the manipulated inputs of a process, the output of which is to be controlled, so as to counteract the effect of the disturbance. Discretized observations on the process variable are indexed to form a time series. A time-series model is fitted to the series. The ultrahigh signal-to-noise ratio fitted values are examined by a neural network, for patterns which detect when the future process is expected to become out of control. The neural-network diagnosis forms the basis for corrective action, prior to the process becoming out of control. In principle, this goes beyond SPC to achieve a process which is never actually out of control
Keywords :
feedforward; neurocontrollers; quality control; statistical process control; time series; SPC; corrective action; discretized observations; neural-network diagnosis; neural-network feedforward process control; out of control process; proactive method; quality control; statistical process control; time-series model; ultrahigh signal-to-noise ratio; Control systems; Costs; Error correction; Feedback control; Neural networks; Process control; Productivity; Quality management; Signal to noise ratio; Time measurement;
Journal_Title :
Engineering Management, IEEE Transactions on