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A Learning Approach to Enhance Assurances for Real-Time Self-Adaptive Systems

机译:提高实时自适应系统保证的学习方法

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The assurance of real-time properties is prone to context variability. Providing such assurance at design time would require to check all the possible context and system variations or to predict which one will be actually used. Both cases are not viable in practice since there are too many possibilities to foresee. Moreover, the knowledge required to fully provide the assurance for self-adaptive systems is only available at runtime and therefore difficult to predict at early development stages. Despite all the efforts on assurances for self-adaptive systems at design or runtime, there is still a gap on verifying and validating real-time constraints accounting for context variability. To fill this gap, we propose a method to provide assurance of self-adaptive systems, at design-and runtime, with special focus on real-time constraints. We combine off-line requirements elicitation and model checking with on-line data collection and data mining to guarantee the system's goals, both functional and non-functional, with fine tuning of the adaptation policies towards the optimization of quality attributes. We experimentally evaluate our method on a simulated prototype of a Body Sensor Network system (BSN) implemented in OpenDaVINCI. The results of the validation are promising and show that our method is effective in providing evidence that support the provision of assurance.
机译:实时性能的保证易于上下文变异性。在设计时提供这种保证将需要检查所有可能的上下文和系统变化或预测将实际使用哪一个。在实践中,这两种情况都不可行,因为预见的可能性太多。此外,完全提供对自适应系统保证所需的知识仅在运行时可用,因此难以在早期发展阶段预测。尽管在设计或运行时对自适应系统保证的所有努力,但仍然存在验证和验证实时约束的差距,以获取上下文变异性。为了填补这一差距,我们提出了一种方法,可以在设计和运行时提供自适应系统的保证,并特别关注实时约束。我们将离线要求elicitation和模型检查与在线数据收集和数据挖掘相结合,以保证系统的目标,功能和非功能性,适应适应政策的优化优化质量属性。我们通过在Opendavinci实现的身体传感器网络系统(BSN)的模拟原型上进行实验评估我们的方法。验证的结果是有前途的,并表明我们的方法有效提供支持提供保证的证据。

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