Using Adaptive Models for Systems Description

نویسندگان

  • Jorge Rady de Almeida Júnior
  • João José Neto
چکیده

Synchronized Statecharts [1] have shown to be adequate devices for expressing most features of real-time and reactive systems. The emphasis is in the explicit statement of orthogonal aspects, such as internal behavior, communication interfaces and synchronization issues of the system being modeled. This paper explores Adaptive Statecharts, which improves Synchronized Statecharts by including adaptive features used to describe dynamic aspects of the behavior of the target system. The presence of adaptive features in a formal model makes it suitable for the specification of systems whose reactions to external events may change dynamically. So the conceptual difference between adaptive and non-adaptive devices is that the former allows describing in a more natural way those systems capable of modifying their own behavior in response to external stimul

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تاریخ انتشار 1999