Vehicle active suspension system design using strategies based on state estimation by Kalman filters
by
 
Shakir, A. A., author.

Title
Vehicle active suspension system design using strategies based on state estimation by Kalman filters

Author
Shakir, A. A., author.

ISBN
9780355894356

Personal Author
Shakir, A. A., author.

Physical Description
1 electronic resource (257 pages)

General Note
Source: Dissertation Abstracts International, Volume: 76-08C.

Abstract
The suspension system of a ground vehicle moving on or off road can be improved by so called "active control" using control strategies which require feedback of all or some of the system states. A stochastic state estimator, or "Kalman filter", can be used to estimate these states. Various Kalman filters suited to this problem are developed, and optimal control strategies suited to these Kalman filters are specified and assessed. It turns out that there are basic problems of unobservability and uncontrollability inherent in the behaviour of such suspension systems, and original solutions to these problems are suggested and explored. A laboratory equipment is designed and constructed to reveal the behaviour of hydraulic actuators in this context, and this is used to ensure that the strategies suggested are realistic. An Intel 8086 microprocessor based circuit in which a practical Kalman filter can be realized is designed. A considerable number of computer simulations are also used to test and assess the estimation and control strategies. All these represent original work by the author.

Local Note
School code: 0719

Subject Term
Automotive engineering.
 
Computer engineering.

Added Corporate Author
Cranfield University (United Kingdom). Department of Electronic Systems Design.

Electronic Access
http://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqm&rft_dat=xri:pqdiss:10832224


Shelf NumberItem BarcodeShelf LocationShelf LocationHolding Information
XX(683130.1)683130-1001Proquest E-Thesis CollectionProquest E-Thesis Collection