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Abstract

Random Optimization Control Over Some Random Sample Dynamic Production and Advertising Plans

Hasanain Hamed Ahmed

Iraq

306-320 Vol: 12, Issue: 2, 2022
Receiving Date: 2022-04-20
Acceptance Date: 2022-06-02
Publication Date: 2022-06-05
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http://doi.org/10.37648/ijtbm.v12i02.015

Abstract

Through the study, we will deal with the production control system, improving it with the presence of: Disruption in supply - uncertainty in demand. There are two types of orders, discontinuous ordering and random ordering. In the case of demand disruption we find an increase in the indicators of the dynamic performance of the system (peak order price, production completion, inventory) with the duration of supply disruption, but we find increase and decrease sequentially with the start time of supply disruption.

Keywords: Random Optimization Control; Dynamic Production; Advertising Plans

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