SEFLApr 20, 2019

Magnifier: A Compositional Analysis Approach for Autonomous Traffic Control

arXiv:1905.06732v3
Originality Synthesis-oriented
AI Analysis

This work addresses runtime verification limitations for autonomous traffic control, but it is incremental as it builds on existing compositional and model-based techniques.

The paper tackles the challenge of runtime verification for autonomous traffic control systems by proposing Magnifier, an iterative and compositional approach that focuses on components affected by changes, resulting in improved verification time and memory consumption compared to non-compositional methods.

Autonomous traffic control systems are large-scale systems with critical goals. Due to the dynamic nature of the surrounding world of these systems, assuring the satisfaction of their properties at runtime and in the presence of a change is important. A prominent approach to assure the correct behavior of these systems is verification at runtime, which has strict time and memory limitations. To tackle these limitations, we propose Magnifier, an iterative, incremental, and compositional verification approach that operates on a component-based model. The Magnifier idea is zooming on the component affected by a change, verifying the correctness of properties of interest of the system after adapting the component to the change, and then zooming out and tracing the change if it propagates. If the change propagates, all components affected by the change are adapted and are composed to form a new component. Magnifier repeats the same process for the new component. This iterative process terminates whenever the propagation of the change stops. In Magnifier, we use the Coordinated Adaptive Actor model (CoodAA) of traffic control systems. We present a formal semantics for CoodAA as a network of Timed Input-Output Automata (TIOAs). The change does not propagate if TIOAs of the adapted component and its environment are compatible. We implement our approach in Ptolemy II. The results of our experiments indicate that the proposed approach improves the verification time and the memory consumption compared to a non-compositional approach.

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