Neural network feedback controller for inertial platform
Yan Anisimov, Alexandr Lysov, Dmitry Katsai

TL;DR
This paper presents a neural network-based feedback controller for inertial platforms, focusing on designing an observer for gyro stabilizers and optimizing neural network architecture for improved control performance.
Contribution
It introduces a novel method for synthesizing neural network controllers tailored for gyro stabilizers, including optimal architecture selection and training procedures.
Findings
Optimal neural network configuration for gyro stabilizer control identified.
Enhanced learning process using system dynamics information.
Effective neural network observer implementation demonstrated.
Abstract
The paper describes an algorithm for the synthesis of neural networks to control gyro stabilizer. The neural network performs the role of observer for state vector. The role of an observer in a feedback of gyro stabilizer is illustrated. Paper detail a problem specific features stage of classics algorithm: choosing of network architecture, learning of neural network and verification of result feedback control. In the article presented optimal configuration of the neural network like a memory depth, the number of layers and neuron in these layers and activation functions in layers. Using the information of dynamic system for improving learning of neural network is provided. A scheme creation of an optimal training sample is provided.
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Taxonomy
TopicsIndustrial Technology and Control Systems · Advanced Data Processing Techniques
