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Autori principali: Santos, Marcela Gonçalves dos, Hallé, Sylvain, Petrillo, Fábio
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.14432
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author Santos, Marcela Gonçalves dos
Hallé, Sylvain
Petrillo, Fábio
author_facet Santos, Marcela Gonçalves dos
Hallé, Sylvain
Petrillo, Fábio
contents Industrial robotic systems (IRS) are increasingly deployed in diverse environments, where failures can result in severe accidents and costly downtime. Ensuring the reliability of the software controlling these systems is therefore critical. Mutation testing, a technique widely used in software engineering, evaluates the effectiveness of test suites by introducing small faults, or mutants, into the code. However, traditional mutation operators are poorly suited to robotic programs, which involve message-based commands and interactions with the physical world. This paper explores the adaptation of mutation testing to IRS by defining domain-specific mutation operators that capture the semantics of robot actions and sensor readings. We propose a methodology for generating meaningful mutants at the level of high-level read and write operations, including movement, gripper actions, and sensor noise injection. An empirical study on a pick-and-place scenario demonstrates that our approach produces more informative mutants and reduces the number of invalid or equivalent cases compared to conventional operators. Results highlight the potential of mutation testing to enhance test suite quality and contribute to safer, more reliable industrial robotic systems.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14432
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mutation Testing for Industrial Robotic Systems
Santos, Marcela Gonçalves dos
Hallé, Sylvain
Petrillo, Fábio
Robotics
Industrial robotic systems (IRS) are increasingly deployed in diverse environments, where failures can result in severe accidents and costly downtime. Ensuring the reliability of the software controlling these systems is therefore critical. Mutation testing, a technique widely used in software engineering, evaluates the effectiveness of test suites by introducing small faults, or mutants, into the code. However, traditional mutation operators are poorly suited to robotic programs, which involve message-based commands and interactions with the physical world. This paper explores the adaptation of mutation testing to IRS by defining domain-specific mutation operators that capture the semantics of robot actions and sensor readings. We propose a methodology for generating meaningful mutants at the level of high-level read and write operations, including movement, gripper actions, and sensor noise injection. An empirical study on a pick-and-place scenario demonstrates that our approach produces more informative mutants and reduces the number of invalid or equivalent cases compared to conventional operators. Results highlight the potential of mutation testing to enhance test suite quality and contribute to safer, more reliable industrial robotic systems.
title Mutation Testing for Industrial Robotic Systems
topic Robotics
url https://arxiv.org/abs/2511.14432