Affiliation:
1. School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, China
2. School of Information Engineering, Jingdezhen University, Jingdezhen 333032, China
Abstract
Considering a class of complex nonlinear systems whose dynamics are mostly governed by statistical regulations, the pattern-moving theory was developed to characterise such systems and successfully estimate the outputs or states. However, since the pattern class variable is not computable directly, this study establishes a clustered generalized cell mapping (C-GCM) to reveal system characteristics. C-GCM is a two-stage approach consisting of a pattern-moving-based description and analysis method. First, a density algorithm, named density-based spatial clustering of applications with noise (DBSCAN), is designed to obtain cell space Ω and the corresponding classification guidelines; this algorithm is initiated after the initial pre-image cells, and the total number of entity cells amounts to Ns. Then, the GCM provides several image cells based on a cell mapping function that refers to the multivariate ARMAX model. The global dynamic analysis employing both searching and storing algorithms depend on the attractor, domain of attraction, and periodic cell groups. At last, simulation results of two examples emphasise the practicality as well as efficacy of the technique suggested. The chief aim of this study was to offer a new perspective for a class of complex systems that could inspire research into nonmechanistic principles modelling and application to nonlinear systems.
Funder
Natural Science Foundation Project of Guizhou Province
Science and Technology Project of Jiangxi Provincial Department of Education
Reference32 articles.
1. Pattern recognition approach to intelligent automation for complex industrial processes;Qu;J. Univ. Sci. Technol. Beijing,1998
2. Pattern recognition receptors and control of adaptive immunity;Palm;Immunol. Rev.,2009
3. Xin, L., and Li-zhen, Z. (2011, January 9–11). Intelligent controller based on Pattern Recognition. Proceedings of the 2011 International Conference on Electronics, Communications and Control (ICECC), IEEE, Ningbo, China.
4. Data-driven operational-pattern optimization for copper flash smelting process;Gui;Acta Autom. Sin.,2009
5. Zhu, Q., Onori, S., and Prucka, R. (2015, January 1–3). Pattern recognition technique based active set QP strategy applied to MPC for a driving cycle test. Proceedings of the 2015 American Control Conference (ACC), IEEE, Chicago, IL, USA.