Abstract :
In recent years, various methods for identification of nonlinear systems in closed loop using open-loop approaches have received considerable attention. However, these methods rely on differentially coprime factorizations of the nonlinear plants, which can be difficult to compute in practice. To address this issue, this paper presents various technical results leading up to explicit formulae for right coprime factorizations of neural state space models, i.e., nonlinear system models represented in state space using neural networks, which satisfy a Bezout identity.
Keywords :
closed loop systems; neurocontrollers; nonlinear systems; open loop systems; closed loop approaches; neural networks; neural state space models; nonlinear systems identification; open-loop approaches; right coprime factorization; Automatic control; Control system synthesis; Design automation; Intelligent systems; Multilayer perceptrons; Noise measurement; Nonlinear control systems; Nonlinear systems; Open loop systems; State-space methods;