RBF neural network control for linear motor-direct drive actuator based on an extended state observer (Q2398539)
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| Language | Label | Description | Also known as |
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| English | RBF neural network control for linear motor-direct drive actuator based on an extended state observer |
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RBF neural network control for linear motor-direct drive actuator based on an extended state observer (English)
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16 August 2017
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Summary: Hydraulic power and other kinds of disturbance in a Linear Motor-Direct Drive Actuator (LM-DDA) have a great impact on the performance of the system. A mathematical model of the LM-DDA system is established and a double-loop control system is presented. An Extended State Observer (ESO) with switched gain is utilized to estimate the influence of the hydraulic power and other load disturbances. Meanwhile, Radial Basis Function (RBF) neural network is utilized to optimize the parameters in this intelligent controller. The results of the dynamic tests demonstrate the performance with rapid response and improved accuracy could be attained by the proposed control scheme.
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RBF neural network control
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linear motor-direct drive actuator
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extended state observer
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