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Optimization of multi-pass turning of slender bar using artificial neural networks and genetic algorithm

机译:基于人工神经网络和遗传算法的细长杆多道次车削优化

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Optimization of cutting parameters is very important issues in manufacturing engineering. For slender bar turning operations, drum-shaped error is one of the most important product quality characteristics. In this work, an artificial neural network model was developed firstly to describe the relationship between cutting parameters and drum-shaped error in slender bar turning process. Based on the obtained model, cutting parameter was optimized to satisfy the specified drum-shaped error and economics criterion in multi-pass turning of slender bar. Due to the high complexity of the machining optimization problem, genetic algorithm was employed to resolve this problem. Experimental results show that the proposed optimization method is both effective and efficient for slender bar turning operations.
机译:切削参数的优化是制造工程中非常重要的问题。对于细长的棒料车削操作,鼓形误差是最重要的产品质量特征之一。在这项工作中,首先建立了一个人工神经网络模型来描述细长棒车削过程中切削参数与鼓形误差之间的关系。根据获得的模型,优化切削参数以满足细长棒多道次车削中指定的鼓形误差和经济标准。由于加工优化问题的复杂性很高,因此采用遗传算法解决了该问题。实验结果表明,所提出的优化方法对细长棒车削加工既有效又有效。

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