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Autre Publication Scientifique Année : 2014

Decentralised Evaluation of Temporal Patterns over Component-based Systems at Runtime

Résumé

Self-adaptation allows systems to modify their structure and/or their behaviour depending on the environment and the system itself. Since reconfigurations must not happen at any but in suitable circumstances, guiding and controlling dynamic reconfigurations at runtime is an important issue. This paper contributes to two essential topics of the self-adaptation---a runtime temporal properties evaluation, and a decentralization of control loopsSelf-adaptation allows systems to modify their structure and/or their behaviour depending on the environment and the system itself. Since reconfigurations must not happen at any but in suitable circumstances, guiding and controlling dynamic reconfigurations at runtime is an important issue. This paper contributes to two essential topics of the self-adaptation - a runtime temporal properties evaluation, and a decentralization of control loops. It extends the work on the adaptation of component-based systems at runtime via policies with temporal patterns by providing a) a specific progressive semantics of temporal patterns and b) a decentralised method which is suitable to deal with temporal patterns of component-based systems at runtime.
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Dates et versions

hal-01044639 , version 1 (23-07-2014)
hal-01044639 , version 2 (31-07-2014)
hal-01044639 , version 3 (06-08-2014)
hal-01044639 , version 4 (18-09-2014)

Identifiants

  • HAL Id : hal-01044639 , version 1

Citer

Olga Kouchnarenko, Jean-Francois Weber. Decentralised Evaluation of Temporal Patterns over Component-based Systems at Runtime. 2014. ⟨hal-01044639v1⟩
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