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JIRS
2008

Model-based Predictive Control of Hybrid Systems: A Probabilistic Neural-network Approach to Real-time Control

13 years 4 months ago
Model-based Predictive Control of Hybrid Systems: A Probabilistic Neural-network Approach to Real-time Control
Abstract This paper proposes an approach for reducing the computational complexity of a model-predictive-control strategy for discrete-time hybrid systems with discrete inputs only. Existing solutions are based on dynamic programming and multi-parametric programming approaches, while the one proposed in this paper is based on a modified version of performance-driven reachability analyses. The m abstracts the behaviour of the hybrid system by building a 'tree of evolution'. The nodes of the tree represent the reachable states of a process, and the branches correspond to input combinations leading to designated states. A costfunction value is associated with each node and based on this value the exploration of the tree is driven. For any initial state, an input sequence is thus obtained, driving the system optimally over a finite horizon. According to the model predictive strategy, only the first input is actually applied to the system. The number of possible discrete input com...
Bostjan Potocnik, Gasper Music, Igor Skrjanc, Boru
Added 13 Dec 2010
Updated 13 Dec 2010
Type Journal
Year 2008
Where JIRS
Authors Bostjan Potocnik, Gasper Music, Igor Skrjanc, Borut Zupancic
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