2020
DOI: 10.1109/tase.2020.2967093
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Improving Human-Robot Interaction Utilizing Learning and Intelligence: A Human Factors-Based Approach

Abstract: Several decades of development in the fields of robotics and automation has resulted in human-robot-interaction being commonplace, and the subject of intense study. These interactions are particularly prevalent in manufacturing, where human operators have been employed in a number of robotics and automation tasks. The presence of human operators continues to be a source of uncertainty in such systems, despite the study of human factors, in an attempt to better understand these variations in performance. Concur… Show more

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Cited by 14 publications
(4 citation statements)
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“…To test the control system, a 1 DOF testbed power assist robotic system is defined and several position and force control strategies for the system are set and compared, showing the best performance of the method in case of position control. The complex influence of several human factors on the operator performance is also identified by using a neural network based learning approach in the paper [110] by Oliff et al, where a framework that integrates intelligent control and data processing is developed to improve coexistence with human colleagues in the manufacturing context. In another article [111] by Shen et al, an innovative framework is developed to improve HRC by endowing the robot with the capability of understanding human personalities during face-to-face interaction.…”
Section: Ergonomics-oriented Control System Designmentioning
confidence: 99%
“…To test the control system, a 1 DOF testbed power assist robotic system is defined and several position and force control strategies for the system are set and compared, showing the best performance of the method in case of position control. The complex influence of several human factors on the operator performance is also identified by using a neural network based learning approach in the paper [110] by Oliff et al, where a framework that integrates intelligent control and data processing is developed to improve coexistence with human colleagues in the manufacturing context. In another article [111] by Shen et al, an innovative framework is developed to improve HRC by endowing the robot with the capability of understanding human personalities during face-to-face interaction.…”
Section: Ergonomics-oriented Control System Designmentioning
confidence: 99%
“…This has led to an interconnection between the virtual and the physical world, also known as twinning (Jones 2020). Digital twins and CPPS allow digital processing and planning with closely interconnected physical manipulation to create self-X capabilities, thus self-aware, selfconfigurable, self-optimizing, and self-predictive systems or artefacts (Oliff et al, 2020). The notion of self-X implies the adaptation and alignment of behaviour, state and positions of objects towards desired system output.…”
Section: Research Backgroundmentioning
confidence: 99%
“…Moreover, model-based approaches for programming the robot for task execution are time-consuming and of lowefficiency. Therefore, it is desirable to employ intelligent methodologies in robotics and automation tasks to enable the quick deployment of service robot to assist humans' daily life [5].…”
Section: Introductionmentioning
confidence: 99%