Model-based Test Generation for Robotic Software: Automata versus Belief-Desire-Intention Agents
September 16, 2016 Β· Declared Dead Β· π arXiv.org
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Authors
Dejanira Araiza-Illan, Anthony G. Pipe, Kerstin Eder
arXiv ID
1609.08439
Category
cs.AI: Artificial Intelligence
Citations
4
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Robotic code needs to be verified to ensure its safety and functional correctness, especially when the robot is interacting with people. Testing real code in simulation is a viable option. However, generating tests that cover rare scenarios, as well as exercising most of the code, is a challenge amplified by the complexity of the interactions between the environment and the software. Model-based test generation methods can automate otherwise manual processes and facilitate reaching rare scenarios during testing. In this paper, we compare using Belief-Desire-Intention (BDI) agents as models for test generation with more conventional automata-based techniques that exploit model checking, in terms of practicality, performance, transferability to different scenarios, and exploration (`coverage'), through two case studies: a cooperative manufacturing task, and a home care scenario. The results highlight the advantages of using BDI agents for test generation. BDI agents naturally emulate the agency present in Human-Robot Interactions (HRIs), and are thus more expressive than automata. The performance of the BDI-based test generation is at least as high, and the achieved coverage is higher or equivalent, compared to test generation based on model checking automata.
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