Structure Adaptation Of Models Describing Scheduling Processes In Complex Technical-Organizational System (CTOS)

In this paper, a dynamical multiple criteria model of integrated adaptive planning and scheduling for complex technical – organizational system (CTOS) is presented. Various types of CTOS are used nowadays, for example: virtual enterprises, supply chains, telecommunication systems, etc. Hereafter, we mostly interpret CTOS as the systems of the above-mentioned types. The above-mentioned CTOS peculiarities do not let produce an adequate description of control processes in existing and designed CTOS on a basis of singleclass models. That is why the concept of integrated modeling and simulation that was proposed by the authors can be useful here. Possible directions of its realization were considered in their papers and books (Okhtilev et al.,2006, Ivanov et al., 2010). Here we consider two general actual problems of the CTOS structure-dynamics investigation: the problem of selection of optimal CTOS structure-dynamics control programs at different states of the environment; the problem of structural adaptation of models describing CTOS structure-dynamics control programs.

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