Controller Design (Paperback)

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With advances in control theory and increasing capability of computers, more complicated mathematical models behind the controllers could be applied. On the other hand, a new difficulty appeared. Sophisticated controllers are more difficult to apply and commit. They are dependent on many tunable parameters, which have to be properly set up. Unfortunately, the meaning of these tuning parameters is mostly far from the user's understanding of the control task and his objective. In contrast to the case of PID controllers, only few articles about tuning of modern controllers are published. This work aims at development of the complete design algorithm for advanced controllers such as the LQG one and put them through to real applications. The system knowledge is incomplete. The Bayesian estimation delivers the parameters not as known numbers but as their probability density function. The tuning is performed for the whole class of possible models thus it takes into account the uncertainty.

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Product Description

With advances in control theory and increasing capability of computers, more complicated mathematical models behind the controllers could be applied. On the other hand, a new difficulty appeared. Sophisticated controllers are more difficult to apply and commit. They are dependent on many tunable parameters, which have to be properly set up. Unfortunately, the meaning of these tuning parameters is mostly far from the user's understanding of the control task and his objective. In contrast to the case of PID controllers, only few articles about tuning of modern controllers are published. This work aims at development of the complete design algorithm for advanced controllers such as the LQG one and put them through to real applications. The system knowledge is incomplete. The Bayesian estimation delivers the parameters not as known numbers but as their probability density function. The tuning is performed for the whole class of possible models thus it takes into account the uncertainty.

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Product Details

General

Imprint

Lap Lambert Academic Publishing

Country of origin

Germany

Release date

June 2010

Availability

Expected to ship within 10 - 15 working days

First published

June 2010

Authors

,

Dimensions

229 x 152 x 6mm (L x W x T)

Format

Paperback - Trade

Pages

96

ISBN-13

978-3-8383-4046-3

Barcode

9783838340463

Categories

LSN

3-8383-4046-9



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