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Trajectory smoothing method using reinforcement learning for computer numerical control machine tools

机译:基于强化学习的计算机数控机床轨迹平滑方法

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摘要

Tool-path codes output by computer-aided manufacturing software for high-speed machining are composed of discontinuous G01 line segments. The discontinuity of these tool movements causes computer numerical control (CNC) inefficiency. To achieve high-speed continuous motion, corner smoothing algorithms based on pre-planning methods are widely used. However, it is difficult to optimize smoothing trajectories in real-time systems. To obtain smooth trajectories efficiently, this paper proposes a neural network-based direct trajectory smoothing method. An intelligent neural network agent outputs servo commands directly based on the current tool path and running state in every cycle. To achieve direct control, motion feature and reward models were built, and reinforcement learning was used to train the neural network parameters without additional experimental data. The proposed method provides higher cutting efficiency than the local and global smoothing algorithms. Given its simple structure and low computational demands, it can easily be applied to real-time CNC systems.
机译:计算机辅助制造软件输出的用于高速加工的刀具路径代码由不连续的G01线段组成。这些工具运动的不连续性导致计算机数控(CNC)效率低下。为了实现高速连续运动,广泛使用了基于预规划方法的拐角平滑算法。但是,很难在实时系统中优化平滑轨迹。为了有效地获得平滑轨迹,本文提出了一种基于神经网络的直接轨迹平滑方法。一个智能的神经网络代理会直接基于每个循环中的当前刀具路径和运行状态直接输出伺服命令。为了实现直接控制,建立了运动特征和奖励模型,并使用强化学习来训练神经网络参数,而没有其他实验数据。与局部和全局平滑算法相比,该方法提供了更高的切割效率。鉴于其简单的结构和较低的计算需求,它可以轻松地应用于实时CNC系统。

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