Socialization of Industrial Robots: An Innovative Solution to improve Productivity

M. Jamshidi, A. Lalbakhsh, N. Alibeigi, M. Soheyli, Bahareh Oryani, Nahid Rabbani
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引用次数: 16

Abstract

Recently, interacting between humans and machines has been considered as an important factor to develop industries. In this paper, a novel intelligent approach to improve productivity in industrial environments involving both workers and industrial robots is presented. The introduced approach contains an integrated combination of Adaptive Neuro-Fuzzy Inference System (ANFIS) and the inverse kinematics method named the Socialization of Industrial Robots (SIR). In this approach, staffs can control and justify robots based on environment conditions and their technical experiences. To evaluate and test the proposed method, a famous six-degree of freedom robotic manipulator called the Stanford University Arm is modeled and simulated in MATLAB. The results of simulation have demonstrated that the proposed approach can be counted as a practicable method to develop industrial systems.
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工业机器人社会化:提高生产率的创新解决方案
最近,人与机器之间的互动被认为是发展工业的一个重要因素。本文提出了一种新的智能方法来提高工业环境中工人和工业机器人的生产率。该方法将自适应神经模糊推理系统(ANFIS)与逆运动学方法相结合,称为工业机器人社会化方法(SIR)。在这种方法中,工作人员可以根据环境条件和他们的技术经验来控制和证明机器人。为了评估和验证所提出的方法,在MATLAB中对著名的六自由度机械臂斯坦福大学臂进行了建模和仿真。仿真结果表明,该方法是一种可行的工业系统开发方法。
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