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How to learn from the resilience of Human-Machine Systems?

机译:如何从人机系统的弹性中学习?

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This paper proposes a functional architecture to learn from resilience. First, it defines the concept of resilience applied to Human-Machine System (HMS) in terms of safety management for perturbations and proposes some indicators to assess this resilience. Local and global indicators for evaluating human-machine resilience are used for several criteria. A multi-criteria resilience approach is then developed in order to monitor the evolution of local and global resilience. The resilience indicators are the possible inputs of a learning system that is capable of producing several outputs, such as predictions of the possible evolutions of the system's resilience and possible alternatives for human operators to control resilience. Our system has a feedback-feedforward architecture and is capable of learning from the resilience indicators. A practical example is explained in detail to illustrate the feasibility of such prediction.
机译:本文提出了一种从弹性中学习的功能架构。首先,它从对扰动的安全管理的角度定义了应用于人机系统(HMS)的弹性概念,并提出了一些评估该弹性的指标。用于评估人机复原力的本地和全局指标用于多个标准。然后开发了一种多准则弹性方法,以监控本地和全球弹性的演变。弹性指标是学习系统的可能输入,该学习系统能够产生多个输出,例如对系统弹性的可能演变的预测以及人类操作员控制弹性的可能替代方案。我们的系统具有反馈前馈体系结构,并且能够从弹性指标中学习。详细说明了一个实际示例,以说明这种预测的可行性。

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