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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Feedrate optimization based on hybrid forward-reverse mappings of artificial neural networks for five-axis milling
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Feedrate optimization based on hybrid forward-reverse mappings of artificial neural networks for five-axis milling

机译:基于人工神经网络混合正反向映射的五轴铣削进给率优化

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摘要

With recent advances in five-axis milling technology, feedrate optimization methods have shown significant effects in regard to enhancing milling productivity, especially when machining complex surface parts. The existing study is aimed at calculating the optimal feedrate values through modeling milling processes. However, due to the complexity of five-axis milling processes, optimization efficiency is the bottleneck of applying them in practice. This paper proposes a novel milling process optimization method based on hybrid forward-reverse mappings (HFRM) of artificial neural networks. The feedrate values are directly used as the outputs of network mappings. Three kinds of artificial neural networks are compared to determine the one with the highest accuracy and the best training efficiency. The study shows that with the collected datasets, the trained Levenberg-Marquardt back-propagation network (LMBPN) could predict feedrate values more precisely than other alternatives. Compared with previous methods, this HFRM-based optimization method is more adept in the area of parameter adjustment because as it has the advantages of high precision and much less calculation time. Combining other multiple milling constraints, an optimization system is developed for five-axis milling processes. The optimized results could be directly used to modify a cutter location (CL) file. A typical milling case was provided to verify the optimization performance of this method, which was found to be effective and reliable.
机译:随着五轴铣削技术的最新发展,进给率优化方法在提高铣削生产率方面已显示出显着效果,尤其是在加工复杂的表面零件时。现有研究旨在通过对铣削过程进行建模来计算最佳进给率值。但是,由于五轴铣削过程的复杂性,优化效率是在实践中应用它们的瓶颈。本文提出了一种基于人工神经网络的混合正反向映射的铣削工艺优化方法。进给率值直接用作网络映射的输出。比较了三种人工神经网络,以确定一种具有最高准确性和最佳训练效率的人工神经网络。研究表明,利用收集的数据集,经过训练的Levenberg-Marquardt反向传播网络(LMBPN)可以比其他方法更精确地预测进给率值。与以前的方法相比,这种基于HFRM的优化方法更擅长参数调整领域,因为它具有精度高和计算时间短的优点。结合其他多种铣削约束条件,为五轴铣削工艺开发了优化系统。优化结果可直接用于修改切刀位置(CL)文件。提供了一个典型的铣削案例以验证该方法的优化性能,发现该方法有效且可靠。

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