Neural-network-based near-time-optimal position control method for DC motor servosystems

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Neural-network-based near-time-optimal position control method for DC motor servosystems

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The paper considers the development and implementation of a near-time-optimal neural-network-based position control method for DC motor servosystems. To bypass the difficulties caused by system constraints and modelling uncertainties, the paper uses classification neural networks to learn the time-optimal control law from experimentally generated near-time-optimal trajectories. In addition, by using regression neural networks to learn the relationship between control object displacement and the armature voltage pulse-width, a variable-pulsewidth control strategy is developed to achieve accurate positioning. Experimental results are given to demonstrate the effectiveness of the proposed approach.

Inspec keywords: neurocontrollers; DC motors; time optimal control; learning (artificial intelligence); machine control; servomechanisms; position control; statistical analysis; pattern classification

Other keywords: variable-pulsewidth control strategy; regression neural networks; DC motor servosystems; armature voltage pulse-width; control object displacement; accurate positioning; classification neural networks; neural-network-based near-time-optimal position control

Subjects: Other topics in statistics; Control of electric power systems; Neural computing techniques; d.c. machines; Pattern recognition; Spatial variables control; Neurocontrol; Optimal control; Other topics in statistics

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