Artificial Neuron-Based Model for a Hybrid Real-Time System: Induction Motor Case Study
Metadatos
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MDPI
Materia
Cyber-physical systems Neural networks Hybrid systems Automated machine learning Simulation Real-time embedded control systems
Fecha
2022-09-19Referencia bibliográfica
Capel, M.I. Artificial Neuron-Based Model for a Hybrid Real-Time System: Induction Motor Case Study. Mathematics 2022, 10, 3410. [https://doi.org/10.3390/math10183410]
Patrocinador
Junta de Andalucia B-TIC-42-UGR20; European Commission; Spanish Science Ministry (Ministerio de Ciencia e Innovacion) PID2020-112495RB-C21Resumen
Automatic Machine Learning (AML) methods are currently considered of great interest
for use in the development of cyber-physical systems. However, in practice, they present serious
application problems with respect to fitness computation, overfitting, lack of scalability, and the need
for an enormous amount of time for the computation of neural network hyperparameters. In this
work, we have experimentally investigated the impact of continuous updating and validation of
the hyperparameters, on the performance of a cyber-physical model, with four estimators based on
feedforward and narx ANNs, all with the gradient descent-based optimization technique. The main
objective is to demonstrate that the optimized values of the hyperparameters can be validated by
simulation with MATLAB/Simulink following a mixed approach based on interleaving the updates
of their values with a classical training of the ANNs without affecting their efficiency and automaticity
of the proposed method. For the two relevant variables of an Induction Motor (IM), two sets of
estimators have been trained from the input current and voltage data. In contrast, the training data
for the speed and output electromagnetic torque of the IM have been established with the help of a
new Simulink model developed entirely. The results have demonstrated the effectiveness of ANN
estimators obtained with the Deep Learning Toolbox (DLT) that we used to transform the trained
ANNs into blocks that can be directly used in cyber-physical models designed with Simulink.