Hybrid system identification using a mixture of NARX experts with LASSO-based feature selection
Contributo in Atti di convegno
Data di Pubblicazione:
2020
Abstract:
The availability of advanced hybrid system identifi-
cation techniques is fundamental to extract knowledge in form
of models from data streams. Starting from the current state
of the art, we propose an approach based on a specialized
architecture, conceived to address the peculiar integration of
nonlinear dynamics and finite state switching behavior of hy-
brid systems. Following the Mixtures of Experts concept, we
combine a set of Neural Network ARX (NNARX) models with
a Gated Recurrent Units network with softmax output. The
former are exploited to map specific nonlinear dynamical models
representing the behavior of the system in each discrete mode of
operation. The latter, operating as a neural switching machine,
infers the unobserved active mode and learns the state-transition
logic, conditioned on input-output data sequences. Besides, we
integrate a LASSO based input features and model selection
mechanism, aimed to extract the most informative lags over
the sequences for each NNARX and calibrate the modes to be
employed. The overall system is trained end-to-end. Experiments
have been performed on a benchmark hybrid automata with
nonlinear dynamics and transitions, showing the capability to
achieve improved performances than conventional architectures.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
System Identification; Hybrid systems; Mixture of Experts; Neural Network; Automatic feature selection; LASSO
Elenco autori:
Spinelli, Stefano; Portolani, Pietro; Vitali, Andrea; Brusaferri, Alessandro
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