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Order statistics and probabilistic robust control

✍ Scribed by Xinjia Chen; Kemin Zhou


Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
137 KB
Volume
35
Category
Article
ISSN
0167-6911

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✦ Synopsis


Order statistics theory is applied in this paper to probabilistic robust control theory to compute the minimum sample size needed to come up with a reliable estimate of an uncertain quantity under continuity assumption of the related probability distribution. Also, the concept of distribution-free tolerance intervals is applied to estimate the range of an uncertain quantity and extract the information about its distribution. To overcome the limitations imposed by the continuity assumption in the existing order statistics theory, we have derived a cumulative distribution function of the order statistics without the continuity assumption and developed an inequality showing that this distribution has an upper bound which equals to the corresponding distribution when the continuity assumption is satisΓΏed. By applying this inequality, we investigate the minimum computational e ort needed to come up with an reliable estimate for the upper bound (or lower bound) and the range of a quantity. We also give conditions, which are much weaker than the absolute continuity assumption, for the existence of such minimum sample size. Furthermore, the issue of making tradeo between performance level and risk is addressed and a guideline for making this kind of tradeo is established. This guideline can be applied in general without continuity assumption.


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