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首页> 外文期刊>Journal of Intelligent Manufacturing >An integrated multi-objective immune algorithm for optimizing the wire bonding process of integrated circuits
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An integrated multi-objective immune algorithm for optimizing the wire bonding process of integrated circuits

机译:一种集成多目标免疫算法,用于优化集成电路的引线键合工艺

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摘要

Optimization of the wire bonding process of an integrated circuit (IC) is a multi-objective optimization problem (MOOP). In this research, an integrated multi-objective immune algorithm (MOIA) that combines an artificial immune algorithm (IA) with an artificial neural network (ANN) and a generalized Pareto-based scale-independent fitness function (GPSIFF) is developed to find the optimal process parameters for the first bond of an IC wire bonding. The back-propagation ANN is used to establish the nonlinear multivariate relationships between the wire boning parameters and the multi-responses, and is applied to generate the multiple response values for each antibody generated by the IA. The GPSIFF is then used to evaluate the affinity for each antibody and to find the non-dominated solutions. The "Error Ratio" is then applied to measure the convergence of the integrated approach. The "Spread Metric" is used to measure the diversity of the proposed approach. Implementation results show that the integrated MOIA approach does generate the Pareto-optimal solutions for the decision maker, and the Pareto-optimal solutions have good convergence and diversity performance.
机译:集成电路(IC)的引线键合工艺的优化是一个多目标优化问题(MOOP)。在这项研究中,开发了一种集成多目标免疫算法(MOIA),该算法将人工免疫算法(IA)与人工神经网络(ANN)和广义的基于Pareto的尺度无关适应性函数(GPSIFF)相结合IC引线键合的第一键合的最佳工艺参数。反向传播ANN用于建立焊线参数和多重响应之间的非线性多元关系,并用于为IA生成的每种抗体生成多重响应值。然后将GPSIFF用于评估每种抗体的亲和力,并找到非优势溶液。然后,将“错误率”用于测量集成方法的收敛性。 “扩展指标”用于衡量所提出方法的多样性。实施结果表明,集成的MOIA方法确实为决策者生成了帕累托最优解,并且帕累托最优解具有良好的收敛性和多样性。

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