In this work, a data-driven modelling approach for
synchronous machines is proposed based on the use of long-
short term memory (LSTM) neural networks (NNs). Moreover,
a comparison between the conventional first-principles and the
proposed data-driven modelling approaches is made for the use
in nonlinear model predictive controllers. The first-principles
modelling is preceded by an illustration of the current and voltage
measurements synchronization on a real test bench, an inverter
nonlinearity compensation of a 2-level voltage source inverter
(VSI), and an angle delay correction to compensate for the
unavoidable delay that occurs due to the digital implementation
of the control algorithms. The obtained LSTM prediction model
is implemented and validated online on a 500 W synchronous
motor controlled by a deadbeat controller based on the first-
principles nonlinear model of the machine. The presented results
yield a good prediction accuracy, and motivate further research
on the use of data-driven modelling methods with predictive
controllers in the field of power electronics and electrical drives.
Index Terms—Predictive control, long-short term memory neu-
ral networks, synchronous machines, first-principles modelling,
data-driven modelling.
«
In this work, a data-driven modelling approach for
synchronous machines is proposed based on the use of long-
short term memory (LSTM) neural networks (NNs). Moreover,
a comparison between the conventional first-principles and the
proposed data-driven modelling approaches is made for the use
in nonlinear model predictive controllers. The first-principles
modelling is preceded by an illustration of the current and voltage
measurements synchronization on a real test bench, an inverter
nonl...
»