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Human Digital Twins: Two-Layer Machine Learning Architecture for Intelligent Human-Machine Collaboration

机译:人类数字双胞胎:两层机器学习架构,用于智能人机合作

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Systems around us, either commercial, industrial, or social, are rapidly becoming more complex, more digital, and smarter. There is also an increasing conviction that the effective management and control of various scenarios in such complex systems can only be achieved by enabling an intelligent collaboration between the involved humans and machines. A major question in this area is how to provide machines with access to human behavior to enable the desired intelligent and adaptive collaboration between them. Based on the industrial concept of digital twins, this study develops a new approach for representing humans in complex digital environments, namely, a human digital twin (HDT). The HDT is a smart machine that learns the behavior of a human in terms of his/her communication patterns with the smart machines he/she interacts with in a specific scenario. The learned patterns can be used by the HDT and other machines supporting a human to predict human-machine (H-M) interactions outcomes and deviations. Unlike current approaches, the HDT does not need to rely on the content of the H-M interactions to learn patterns and infer deviations, it just needs to register the statistical characteristics of the exchanged messages. Using HDT would enable an adaptive H-M collaboration with minimum interruptions and would provide insights into the dynamics and dependencies involved in H-M collaborations which can be used to increase the efficiency of such collaboration.
机译:我们周围的系统,商业,工业或社交,都迅速变得更加复杂,更为数字和更智能。在这种复杂系统中的各种情景的有效管理和控制越来越多的信念,只能通过在所涉及的人类和机器之间实现智能协作来实现。该领域的一个主要问题是如何提供具有人类行为的机器,以实现它们之间所需的智能和自适应协作。基于数字双胞胎的工业理念,本研究开发了一种在复杂的数字环境中代表人类的新方法,即人类数字双胞胎(HDT)。 HDT是一个智能机器,了解他/她的通信模式的人类的行为,他/她在特定场景中与他/她互动。学习的模式可以由支持人类的HDT和其他机器用于预测人机(H-M)相互作用结果和偏差。与当前方法不同,HDT不需要依赖于H-M交互的内容来学习模式和推断偏差,因此只需要注册交换消息的统计特征。使用HDT将使自适应H-M与最小中断的协作能够提供能够深入了解H-M协作中所涉及的动态和依赖关系,该协作可以用于提高这种协作的效率。

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