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引用次数: 0
摘要
神经网络(NN)能够为非线性系统建模,而且精度越来越高。可解释人工智能的进一步发展或现有物理知识的整合促进了它们的接受度和透明度。因此,神经网络适合应用于实际系统,尤其是高度动态关系的建模。NN 的一个可能应用是基于机器人的加工过程的精度优化。由于其灵活性和相对较低的投资成本,工业机器人 (IR) 适用于大型部件的加工。然而,由于其设计特点,与传统机床相比,工业机器人在刚度方面存在不足。解决这些问题的方法之一是通过基于模型的控制来补偿顺应性。为此,可以使用 NN 来预测轴所需的驱动扭矩。与传统的分析动力学模型相比,无需对模型参数进行复杂的识别。此外,NN 还能将复杂的非线性影响因素(如摩擦)考虑在内。在这项工作中,将使用机器人操作系统对基于模型的集成电路进行实时控制。
Neural Network Control of Industrial Robots Using ROS
Neural networks (NNs) are able to model nonlinear systems with increasing accuracy. Further developments towards explainable artificial intelligence or the integration of already existing physical knowledge promote their acceptance and transparency. For these reasons, they are suitable for application in real systems, especially for modeling highly dynamic relationships. One possible application of NNs is the accuracy optimization of robot-based machining processes. Due to their flexibility and comparatively low investment costs, industrial robots (IR) are suitable for the machining of large components. However, due to their design characteristics, IRs show deficiencies with respect to their stiffness compared to traditional machine tools. One way to counteract these problems is to compensate for the compliance by means of model-based control. For this purpose, NNs can be used that predict the drive torques required in the axes. Compared to conventional analytical dynamics models, no complex identification of model parameters is necessary. In addition, NNs can take complex, nonlinear influences such as friction into account. In this work, NNs will be applied for a real-time model-based control of an IR using the Robot Operating System.