We study two systems which lead to a lattice when an integration path is specified in "aesthetic field theory". One of these cases involves nonsoliton type particles (magnitudes of maxima and minima oscillate in time). The other system is made up of soliton type particles. The two systems are intrin
A new approach to reaching mode of VSS using trajectory planning
✍ Scribed by Ricardo Julián Mantz; Hernán De Battista; Pablo Puleston
- Publisher
- Elsevier Science
- Year
- 2001
- Tongue
- English
- Weight
- 116 KB
- Volume
- 37
- Category
- Article
- ISSN
- 0005-1098
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✦ Synopsis
This work deals with dynamic behavior of variable structure systems operating in reaching mode. Concepts of trajectory planning of di!erentially #at systems are employed to reach the sliding surface in a point where the sliding mode can be established. An additional control surface is proposed to track the planned trajectory. Then, the system evolves robustly from the initial state to the steady state. Adjusting the control action, undesirable transient behaviors are avoided and the state-space region in which the system operates safely is increased.
📜 SIMILAR VOLUMES
By deÿning a new generalized error transformation as a complement to the conventional sliding variable, we derived a novel stable sliding mode control scheme on which the design of a new two-input, one-output fuzzy sliding mode controller is based. A signiÿcant advantage of this control scheme is it
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