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Optimal Yield Rate in ACF Cutting Process of TFT-LCD Module Using Orthogonal Particle Swarm Optimization

机译:使用正交粒子群优化的TFT-LCD模块ACF切割过程中的最优产量

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Anisotropic Conductive Film (ACF) is essential material in LCM (Liquid Crystal Module) process. It is used in bonding process to make the driving circuit conductive. Because the price of TFT-LCD is much lower than before in recent years, the ACF cost has relatively higher ratio in manufacture cost. The conventional long bar ACF cutting unit is changed to short bar ACF cutting unit in new bonding technology. However, the new type machine was not optimized in process and mechanical design. Therefore, the failure rate of new ACF cutting process is much higher than the one of the conventional process. This wastes the material and rework cost is considerably large. How to make the manufacturing cost down effectively and promote the product quality is the concern issue to maintain competition capability for the product. Therefore, the Orthogonal Particle Swarm Optimization is used to analyze the optimal design problem. The ACF cutting yield rate is selected to be objective function for optimization. The quality characteristic function is used in Orthogonal Particle Swarm Optimization. The plasma clean speed, ACF peeling speed and ACF cutter spring setting are selected to study the effect of the yield rate. Results show that the proposed method can provide good solution to improve the ACF cutting process for TFTLCD.
机译:各向异性导电膜(ACF)是LCM(液晶模块)过程中的必需材料。它用于粘合过程以使驱动电路导电。由于TFT-LCD的价格远远低于近年来的价格,因此ACF成本的制造成本比较较高。传统的长条ACF切割单元在新的粘合技术中改变为短条ACF切割单元。但是,新型机器在工艺和机械设计中未进行优化。因此,新的ACF切割过程的故障率远高于传统过程之一。这浪费了材料,返工成本相当大。如何有效地使制造成本降低,促进产品质量是维持产品竞争能力的关注问题。因此,正交粒子群优化用于分析最佳设计问题。选择ACF切割率率是有目标优化的目标函数。质量特征功能用于正交粒子群优化。选择等离子体清洁速度,ACF剥离速度和ACF切割弹簧设置,以研究产量率的效果。结果表明,该方法可以提供良好的解决方案来改善TFTLCD的ACF切割过程。

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