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Automated CNC Programming by the Restricted Boltzmann Machine Algorithm

机译:用受限玻尔兹曼机器算法实现数控自动编程

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The computer numerical control (CNC) machine is efficiently used for the mass production of jobs with high accuracy and precision. The CNC machines perform the required machining operation according to the machining program developed by its user. In this paper, a machine learning algorithm namely restricted Boltzmann machines algorithm (RBM) and deep belief network (DBN) is used for the automatic development of machining codes for machining operation on a CNC machine. The DBN is known as unsupervised, layered greedy pre-training. The algorithm captures the information for the required machining operation to be performed and thereafter generate different options of machining program automatically on the basis of the machine intelligence. The MATLAB platform is used to implement the algorithm so as to determine the position and other parameters of machining operations and generate the machining codes automatically. It is observed that the RBM can be successfully used for the automatic development of CNC machining programs for real-time machining of jobs on the CNC machining centers. The automatically developed machining codes are tested on CNC simulator called CNC TRAIN.
机译:计算机数控(CNC)机床被有效地用于大规模生产高精度和高精度的工件。数控机床根据用户开发的加工程序执行所需的加工操作。本文提出了一种机器学习算法,即受限玻尔兹曼机器算法(RBM)和深度信念网络(DBN),用于自动开发数控机床加工操作的加工代码。DBN被称为无监督的分层贪婪预训练。该算法捕获所需加工操作的信息,然后根据机器智能自动生成不同的加工程序选项。利用MATLAB平台实现了该算法,从而自动确定加工操作的位置和其他参数,生成加工代码。据观察,RBM可以成功地用于自动开发CNC加工程序,以便在CNC加工中心上实时加工工件。自动开发的加工代码在名为CNC TRAIN的CNC模拟器上进行测试。

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