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Application of an optimized SA-ANN hybrid model for parametric modeling and optimization of LASOX cutting of mild steel

机译:优化的SA-ANN混合模型在低碳钢LASOX切削参数建模和优化中的应用

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摘要

Laser assisted oxygen cutting (LASOX) process is an efficient method for cutting thick mild steel plates compared to conventional laser cutting process. However, scanty information is available as to modeling of the process. The paper presents an optimized SA-ANN model of artificial neural network (ANN) and simulated annealing (SA) to predict and optimize cutting quality of LASOX cutting process of mild steel plates. Optimization of SA-ANN parameters is carried out first where the ANN architecture and initial temperature for SA are optimized. The optimized ANN architecture is further trained using single hidden layer back propagation neural network (BPNN) with Bayesian regularization (BR). The trained ANN is then used to evaluate the objective function during optimization with SA. Experimental dataset employed for the purpose consists of input cutting parameters comprising laser power, cutting speed, gas pressure and stand-off distance while the resulting cutting quality is represented by heat affected zone (HAZ) width, kerf width and surface roughness. Results indicate that the SA-ANN model can predict the optimized output with reasonably good accuracy (around 3%). The proposed approach can be extended for prediction and optimization of operational parameters with reasonable accuracy for any experimental dataset.
机译:与传统的激光切割工艺相比,激光辅助氧气切割(LASOX)工艺是一种切割厚软钢板的有效方法。但是,很少的信息可用于过程建模。本文提出了一种优化的人工神经网络的SA-ANN模型和模拟退火(SA)模型,以预测和优化软钢板LASOX切割工艺的切割质量。首先对SA-ANN参数进行优化,然后优化SA的ANN架构和初始温度。使用带有贝叶斯正则化(BR)的单隐藏层反向传播神经网络(BPNN)进一步训练了优化的ANN架构。然后,在使用SA进行优化的过程中,将训练有素的ANN用于评估目标函数。为此目的而使用的实验数据集包括输入的切割参数,包括激光功率,切割速度,气压和支座距离,而最终的切割质量由热影响区(HAZ)宽度,切缝宽度和表面粗糙度表示。结果表明,SA-ANN模型可以以相当好的准确性(大约3%)预测优化的输出。对于任何实验数据集,可以将所提出的方法扩展为以合理的精度预测和优化操作参数。

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