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Modeling and optimization of laser direct structuring process using artificial neural network and response surface methodology

机译:基于人工神经网络和响应面法的激光直接成型工艺建模与优化

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Laser direct structuring (LDS) is very important step in the MID process and it is a complex process due to different parameters, which influence on this process and its final product. Therefore, it is very important to use a reliable model to predict, analyze and control the performance of the (LDS) process and the quality of the final product. In this work we develop mathematical models by using Artificial Neural Network (ANN) and Response Surface Methodology (RSM) to study this process. The proposed models are used to study the effect of the LDS parameters on the groove dimensions (width and depth), lap dimensions (groove lap width and height) and finally the heat effective zone (interaction width), which are important to determine the line width/space in the MID products and the metallization profile after the metallization step. We also study the relationship between the LDS parameters and the surface roughness which is very important factor for the adhesion strength of MID structures. Moreover these models capable of finding a set of optimum LDS parameters that provide the required micro-channel dimensions with the best or the suitable surface roughness. A set of experimental tests are carried out to validate the developed ANN and the RSM models. It has been found that the predicted values for the proposal ANN and RSM models were closer to the experimental values, and the overall average absolute percentage errors were 4.02 % and 6.52%, respectively. Finally, it has been found that, the developed ANN model could be used to predict the response of the LDS process more accurately than RSM model.
机译:激光直接结构化(LDS)是MID过程中非常重要的一步,由于参数不同,这是一个复杂的过程,这会影响该过程及其最终产品。因此,使用可靠的模型来预测,分析和控制(LDS)工艺的性能以及最终产品的质量非常重要。在这项工作中,我们通过使用人工神经网络(ANN)和响应面方法(RSM)开发数学模型来研究此过程。所提出的模型用于研究LDS参数对凹槽尺寸(宽度和深度),搭接尺寸(凹槽搭接宽度和高度)以及最终的有效热区(相互作用宽度)的影响,这对于确定线是重要的在金属化步骤之后,MID产品的宽度/空间和金属化轮廓。我们还研究了LDS参数与表面粗糙度之间的关系,这对于MID结构的附着强度非常重要。此外,这些模型能够找到一组最佳的LDS参数,这些参数可提供所需的微通道尺寸以及最佳或合适的表面粗糙度。进行了一组实验测试,以验证开发的ANN和RSM模型。已经发现,建议的ANN和RSM模型的预测值更接近于实验值,总体平均绝对百分比误差分别为4.02%和6.52%。最后,已经发现,与RSM模型相比,开发的ANN模型可以更准确地预测LDS过程的响应。

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