面向协作人工智能的风险建模

Matteo Camilli, M. Felderer, Andrea Giusti, D. Matt, A. Perini, B. Russo, A. Susi
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引用次数: 4

摘要

协作式人工智能系统旨在与人类在共享空间协同工作,以实现共同目标。由于接触可能伤害人类,这种设置施加了潜在的危险环境。因此,构建这样的系统,并强有力地保证符合需求领域特定的标准和法规是非常重要的。当这些系统依赖于机器学习组件而不是自上而下的基于规则的AI时,与实现这一目标相关的挑战变得更加严峻。在本文中,我们介绍了一种针对协作人工智能系统的风险建模方法。风险模型包括目标、风险事件和可能使人类暴露于危险的领域特定指标。然后利用风险模型来驱动保证方法,这些方法通过从运行时证据中提取的见解反过来提供风险模型。我们设想的方法是通过工业4.0领域的一个运行示例来描述的,其中一个具有视觉感知组件的机械臂,通过机器学习实现,与人类操作员合作完成与生产相关的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Risk Modeling for Collaborative AI
Collaborative AI systems aim at working together with humans in a shared space to achieve a common goal. This setting imposes potentially hazardous circumstances due to contacts that could harm human beings. Thus, building such systems with strong assurances of compliance with requirements domain specific standards and regulations is of greatest importance. Challenges associated with the achievement of this goal become even more severe when such systems rely on machine learning components rather than such as top-down rule-based AI. In this paper, we introduce a risk modeling approach tailored to Collaborative AI systems. The risk model includes goals, risk events and domain specific indicators that potentially expose humans to hazards. The risk model is then leveraged to drive assurance methods that feed in turn the risk model through insights extracted from run-time evidence. Our envisioned approach is described by means of a running example in the domain of Industry 4.0, where a robotic arm endowed with a visual perception component, implemented with machine learning, collaborates with a human operator for a production-relevant task.
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