Evaluation of Data-Driven Models in Human-Robot Load-Sharing

Vinh Nguyen, J. Marvel
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引用次数: 1

Abstract

Human-robot load-sharing is a potential application for human-robot collaborative systems in production environments. However, knowledge of the appropriate data-driven models for this application type is limited due to a lack of physical real-world data and validation metrics. This paper describes and demonstrates a load-sharing testbed for evaluating data-driven models in a human-robot load-sharing application. Specifically, the testbed consists of a single operator and single robot relocating a payload to a desired destination. In this work, the operator initially communicates to the robot using audio feedback to initiate and alter robotic motion commands. During the payload relocation, human, payload, and robot state data are recorded. The measurements are then used to train three data-driven models (neural network, naïve Bayes, and random forest). The data-driven models are then used to transmit movement commands to the robot during human-robot load-sharing without the use of audio feedback, thus improving robustness and eliminating audio signal processing time. Evaluation of the three data-driven models shows that the random forest model was demonstrated to be the most accurate model followed by naïve Bayes and then the neural network. Hence, the results of this study provide novel insight into the types of data-driven models that can be used in load-sharing applications in addition to development of a real-world testbed.
人机负载共享中数据驱动模型的评估
人机负载共享是人机协作系统在生产环境中的潜在应用。然而,由于缺乏实际的物理数据和验证度量,对这种应用程序类型的适当数据驱动模型的了解是有限的。本文描述并演示了一个用于评估人机负载共享应用中数据驱动模型的负载共享测试平台。具体来说,测试平台由单个操作员和单个机器人组成,将有效载荷重新定位到期望的目的地。在这项工作中,操作员最初使用音频反馈与机器人通信,以启动和改变机器人的运动命令。在有效载荷重新定位期间,记录人员、有效载荷和机器人状态数据。然后使用测量结果来训练三个数据驱动模型(神经网络、naïve贝叶斯和随机森林)。然后使用数据驱动模型在人机负载共享过程中向机器人传输运动命令,而不使用音频反馈,从而提高鲁棒性并消除音频信号处理时间。对三种数据驱动模型的评价表明,随机森林模型是最准确的模型,其次是naïve贝叶斯,最后是神经网络。因此,本研究的结果为数据驱动模型的类型提供了新的见解,除了开发真实世界的测试平台之外,这些模型还可以用于负载共享应用程序。
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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