Intelligent Agent-Based Stimulation for Testing Robotic Software in Human-Robot Interactions

MORSE '16 Pub Date : 2016-04-19 DOI:10.1145/3022099.3022101
Dejanira Araiza-Illan, A. Pipe, K. Eder
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引用次数: 27

Abstract

The challenges of robotic software testing extend beyond conventional software testing. Valid, realistic and interesting tests need to be generated for multiple programs and hardware running concurrently, deployed into dynamic environments with people. We investigate the use of Belief-Desire-Intention (BDI) agents as models for test generation, in the domain of human-robot interaction (HRI) in simulations. These models provide rational agency, causality, and a reasoning mechanism for planning, which emulate both intelligent and adaptive robots, as well as smart testing environments directed by humans. We introduce reinforcement learning (RL) to automate the exploration of the BDI models using a reward function based on coverage feedback. Our approach is evaluated using a collaborative manufacture example, where the robotic software under test is stimulated indirectly via a simulated human co-worker. We conclude that BDI agents provide intuitive models for test generation in the HRI domain. Our results demonstrate that RL can fully automate BDI model exploration, leading to very effective coverage-directed test generation.
基于智能agent的人机交互机器人软件测试方法
机器人软件测试的挑战超出了传统的软件测试。需要为并发运行的多个程序和硬件生成有效、现实和有趣的测试,并将其部署到与人一起的动态环境中。我们研究了在人机交互(HRI)模拟领域中,信念-欲望-意图(BDI)代理作为测试生成模型的使用。这些模型为规划提供了理性的代理、因果关系和推理机制,模拟了智能和自适应机器人,以及由人类指导的智能测试环境。我们引入了强化学习(RL),使用基于覆盖反馈的奖励函数来自动探索BDI模型。我们的方法是通过一个协作制造的例子来评估的,在这个例子中,被测试的机器人软件是通过模拟的人类同事间接刺激的。我们得出结论,BDI代理为HRI领域的测试生成提供了直观的模型。我们的结果表明RL可以完全自动化BDI模型探索,导致非常有效的覆盖导向测试生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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