SEMay 5, 2015

Using Models at Runtime to Address Assurance for Self-Adaptive Systems

arXiv:1505.00903v1140 citations
Originality Synthesis-oriented
AI Analysis

This work tackles the problem of guaranteeing system correctness during runtime adaptations for developers and engineers of self-adaptive software systems, but it is incremental as it reviews and characterizes existing state-of-the-art techniques.

The chapter explores using models at runtime (M@RT) to ensure self-adaptive software systems meet requirements during runtime adaptations, addressing assurance challenges by defining information capture and outlining research challenges and methods.

A self-adaptive software system modifies its behavior at runtime in response to changes within the system or in its execution environment. The fulfillment of the system requirements needs to be guaranteed even in the presence of adverse conditions and adaptations. Thus, a key challenge for self-adaptive software systems is assurance. Traditionally, confidence in the correctness of a system is gained through a variety of activities and processes performed at development time, such as design analysis and testing. In the presence of selfadaptation, however, some of the assurance tasks may need to be performed at runtime. This need calls for the development of techniques that enable continuous assurance throughout the software life cycle. Fundamental to the development of runtime assurance techniques is research into the use of models at runtime (M@RT). This chapter explores the state of the art for usingM@RT to address the assurance of self-adaptive software systems. It defines what information can be captured by M@RT, specifically for the purpose of assurance, and puts this definition into the context of existing work. We then outline key research challenges for assurance at runtime and characterize assurance methods. The chapter concludes with an exploration of selected application areas where M@RT could provide significant benefits beyond existing assurance techniques for adaptive systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes