1-6 of 6
Keywords: feedforward neural nets
Close
Follow your search
Access your saved searches in your account

Would you like to receive an alert when new items match your search?
Close Modal
Sort by
Journal Articles
Article Type: Technical Briefs
J. Dyn. Sys., Meas., Control. March 2004, 126(1): 235–238.
Published Online: April 12, 2004
..., MEASUREMENT, AND CONTROL . Manuscript received by the ASME Dynamic Systems and Control Division    ; final revision, August 27, 2003; Associate Editor: S. Nain. 27 August 2003 12 04 2004 controllers feedforward neural nets piezoelectric actuators piezoceramics feedback tracking...
Journal Articles
Article Type: Technical Papers
J. Dyn. Sys., Meas., Control. September 2003, 125(3): 451–454.
Published Online: September 18, 2003
... 24 March 2003 18 09 2003 fault diagnosis stochastic systems stochastic processes autoregressive processes feedforward neural nets The natural starting point for fault detection is the model of the system. Many systems, such as aircraft, spacecraft, gas turbine engines...
Journal Articles
Article Type: Technical Papers
J. Dyn. Sys., Meas., Control. September 2002, 124(3): 364–374.
Published Online: July 23, 2002
..., AND CONTROL . Manuscript received by the Dynamic Systems and Control Division December 2000. Associate Editor: R. Langari. 01 December 2000 23 07 2002 adaptive filters Kalman filters filtering theory nonlinear equations nonlinear dynamical systems noise feedforward neural nets...
Journal Articles
Article Type: Technical Briefs
J. Dyn. Sys., Meas., Control. March 2001, 123(1): 141–144.
Published Online: June 30, 1999
... and Control Division June 31, 1999. Associate Editor: S. Fassois. 31 June 1999 internal combustion engines intelligent sensors fault diagnosis feedforward neural nets learning (artificial intelligence) real-time systems As a first and essential step to improve diesel engines...
Journal Articles
Article Type: Technical Papers
J. Dyn. Sys., Meas., Control. June 2000, 122(2): 269–275.
Published Online: May 25, 1999
... control control system synthesis feedforward neural nets multilayer perceptrons function approximation uncertain systems Sliding mode control has been used widely due to its robustness to system parameter uncertainties and external disturbances. The theory has been developed mainly...
Journal Articles
Article Type: Technical Papers
J. Dyn. Sys., Meas., Control. June 2000, 122(2): 336–342.
Published Online: December 2, 1998
... applications in rocket engines, fossil power plants, rotorcraft, and aircraft in the framework of both feedforward and feedback control. Life Extending Control Robust Control Structural Integrity Fatigue Crack Retardation fatigue cracks mechanical variables control feedforward neural nets...