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Modeling of a Liquid Epoxy Molding Process Using a Particle Swarm Optimization-Based Fuzzy Regression Approach

机译:基于粒子群优化的模糊回归方法的液态环氧成型工艺建模

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Modeling of manufacturing processes is important because it enables manufacturers to understand the process behavior and determine the optimum operating conditions of the process for a high yield, low cost and robust operation. However, existing techniques in modeling manufacturing processes cannot address the whole common issues in developing models for manufacturing processes: a) manufacturing processes are usually nonlinear in nature; b) a small amount of experimental data is only available for developing manufacturing process models; c) outliers often exist in experimental data; d) explicit models in a polynomial form are often preferred by manufacturing process engineers; and e) models with satisfactory prediction accuracy are required. In this paper, a modeling algorithm, namely, the particle swarm optimization-based fuzzy regression (PSO-FR) approach, is proposed to generate fuzzy nonlinear regression models, which seek to address all of the common issues in developing models for manufacturing processes. The PSO-FR first employs the operations of particle swarm optimization to generate the structures of the process models in nonlinear polynomial form, and then it employs a fuzzy coefficient generator to identify outliers in the original experimental data. Fuzzy coefficients of the process models are determined by the fuzzy coefficient generator in which the experimental data excluding the outliers is used. The effectiveness of the PSO-FR approach is evaluated by modeling the manufacturing process liquid epoxy molding process which is a commonly used technology for microchip encapsulation in electronic packaging. Results were compared with those based on the commonly used modeling methods. It was found that PSO-FR can achieve better goodness-of-fitness than other methods. Also, the prediction accuracy of the model developed based on the PSO-FR is better than the other methods.
机译:制造过程的建模很重要,因为它使制造商能够了解过程行为并确定过程的最佳操作条件,以实现高产量,低成本和稳健的操作。但是,制造过程建模中的现有技术无法解决开发制造过程模型中的所有常见问题:a)制造过程通常是非线性的; b)少量实验数据仅可用于开发制造过程模型; c)实验数据中经常存在异常值; d)制造工艺工程师通常倾向于采用多项式形式的显式模型; e)需要具有令人满意的预测精度的模型。本文提出了一种建模算法,即基于粒子群优化的模糊回归(PSO-FR)方法,以生成模糊非线性回归模型,以解决开发制造过程模型时遇到的所有常见问题。 PSO-FR首先使用粒子群优化操作生成非线性多项式形式的过程模型结构,然后使用模糊系数生成器识别原始实验数据中的离群值。过程模型的模糊系数由模糊系数生成器确定,其中使用了排除异常值的实验数据。 PSO-FR方法的有效性是通过对制造工艺液体环氧树脂成型工艺进行建模来评估的,该工艺是电子封装中微芯片封装的常用技术。将结果与基于常用建模方法的结果进行比较。发现PSO-FR比其他方法具有更好的拟合优度。而且,基于PSO-FR开发的模型的预测准确性优于其他方法。

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