SEApr 2, 2014

Adaptability Checking in Multi-Level Complex Systems

arXiv:1404.0698v13 citations
Originality Incremental advance
AI Analysis

This work addresses verification challenges for adaptive systems in domains like autonomous vehicles, but it is incremental as it builds on existing model checking frameworks.

The authors tackled the problem of verifying adaptability in hierarchical multi-level systems by introducing weak and strong adaptability notions, showing that adaptability checking can be reduced to CTL model checking, and applied this to autonomous transport vehicle motion control.

A hierarchical model for multi-level adaptive systems is built on two basic levels: a lower behavioural level B accounting for the actual behaviour of the system and an upper structural level S describing the adaptation dynamics of the system. The behavioural level is modelled as a state machine and the structural level as a higher-order system whose states have associated logical formulas (constraints) over observables of the behavioural level. S is used to capture the global and stable features of B, by a defining set of allowed behaviours. The adaptation semantics is such that the upper S level imposes constraints on the lower B level, which has to adapt whenever it no longer can satisfy them. In this context, we introduce weak and strong adaptabil- ity, i.e. the ability of a system to adapt for some evolution paths or for all possible evolutions, respectively. We provide a relational characterisation for these two notions and we show that adaptability checking, i.e. deciding if a system is weak or strong adaptable, can be reduced to a CTL model checking problem. We apply the model and the theoretical results to the case study of motion control of autonomous transport vehicles.

Foundations

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