Least inventory control of multi-storage systems with non-stochastic unknown inputs

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作者
Blanchini, F
Rinaldi, F
Ukovich, W
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TP [自动化技术、计算机技术];
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0812 ;
摘要
We consider multi-inventory production systems with control and state constraints dealing with unknown demand or supply levels. Unlike most contributions in the literature concerning this class of systems, we cope with uncertainties in an ''unknown-but-bounded'' fashion, in the sense that each unknown quantity may take any value in an assigned interval. For these situations, we perform a worst-case analysis. We show that a ''smallest worst-case inventory level'' exists, and it is associated to a steady state control strategy. Then we consider the problem of driving the inventory levels to their smallest worst-case values. For this problem, we first give necessary and sufficient conditions, then we show that convergence occurs in a finite number of steps, and we give an upper bound for such a number. This is a conference version of the paper [4] to which the reader is referred for proofs, details and references.
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页码:1017 / 1021
页数:5
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