Publication | Closed Access
Falsification of Hybrid Systems Using Adaptive Probabilistic Search
23
Citations
14
References
2021
Year
Artificial IntelligenceEngineeringMachine LearningModel TuningVerificationFormal VerificationInput SignalStochastic Hybrid SystemHyperparameter EstimationData ScienceSystems EngineeringRobot LearningTree SearchComputer EngineeringComputer ScienceModel OptimizationStochastic OptimizationAutomated ReasoningParameter TuningProbabilistic VerificationFormal MethodsHybrid SystemsHybrid Intelligent System
We present and analyse an algorithm that quickly finds falsifying inputs for hybrid systems. Our method is based on a probabilistically directed tree search, whose distribution adapts to consider an increasingly fine-grained discretization of the input space. In experiments with standard benchmarks, our algorithm shows comparable or better performance to existing techniques, yet it does not build an explicit model of a system. Instead, at each decision point within a single trial, it makes an uninformed probabilistic choice between simple strategies to extend the input signal by means of exploration or exploitation. Key to our approach is the way input signal space is decomposed into levels, such that coarse segments are more probable than fine segments. We perform experiments to demonstrate how and why our approach works, finding that a fully randomized exploration strategy performs as well as our original algorithm that exploits robustness. We propose this strategy as a new baseline for falsification and conclude that more discriminative benchmarks are required.
| Year | Citations | |
|---|---|---|
Page 1
Page 1