标题: | 学习曲线在TFT-LCD产业之应用研究 The Application of Learning Curve in TFT-LCD Industry |
作者: | 吴文智 Wen-Chih Wu 杨金福 Chin-Fu Yang 工业工程与管理学系 |
关键字: | 薄膜电晶体液晶显示器(TFT-LCD);不良率;学习曲线;制造成本;品质管制;TFT-LCD;defect rate;learning curve;manufacturing cost;quality control |
公开日期: | 2000 |
摘要: | 薄膜电晶体液晶显示器(TFT-LCD)是属于高精密技术与高材料成本的产业,所以,掌控制程不良率(或良率)的变动是相当重要的工作。但是目前TFT-LCD制造厂在生产数量规划、产品制造成本制订与品质管制等方面,依然采用一般固定不良率的方式,由于各制程之不良率变动会影响到整个生产数量规划、产品制造成本制订与品质管制等作业的合理性,因此,须将不良率的变化纳入考量,才能反应出实际的生产状况与生产成本。 经过初步分析TFT-LCD的制程资料发现,每批产品的不良率在生产初期都比较高,随着生产数量的增加有逐渐降低之趋势,类似传统的学习现象。因此,本研究欲将能显现产品实际之生产学习过程的“学习曲线”加入生产数量规划、产品制造成本制订与品质管制作业中,以修正目前不恰当的规划与管制方式,同时比较加入不良率学习效应前后之差异。 本研究构建多变数与单变数两种学习曲线,由最终的实证比较结果显示,单变数学习模式在刚开始生产的变异较多变数学习模式为大,往后生产期间内之单变数学习模式的应用成效较多变数学习模式普遍为好,探究其原因可能在于单变数学习模式考量了变数间的共线性。分析比较生产数量规划、产品制造成本制订与品质管制作业加入不良率学习模式前后之差异,结果发现这些作业在有考量学习效应的情况下,较未考量学习效应之状况减少许多不必要的投入量,且有助于订定符合实际生产情况的产品制造成本,以及运用修正后之管制图来对真实的生产状况进行品质管制。 上述之应用成效显示本研究所发展出来的学习模式,可提供TFT-LCD制造厂商未来在生产类似产品时,一项值得参考的预测工具。 TFT-LCD (Thin Film Transistor-Liquid Crystal Display) industry is high technology and high material cost. Relatively, controlling the change of defect rate (or yield rate) in TFT-LCD manufacturing process is very important. But today’s TFT-LCD manufacturer still use general fixed defect rate in planning output, formulating products’ manufacturing cost, quality control, and so forth. Any change of manufacturing process’s defect rate will affect the rationality of operations in planning output, formulating products’ manufacturing cost and quality control. So, we must take the defect rate’s change into account for reflecting the real productional condition and cost. Through the initiative analysis on data of TFT-LCD manufacturing process, finding out the defect rate of every batch of products is higher in the early production. And the defect rate will decline gradually with the growth of output. This is just like the traditional learning phenomenon. Therefore, for the purpose of correcting the irrelevant operations in production planning and control, this study would like attaching the “learning curve” that can show the real productional learning process on the operations of planning output, formulating products’ manufacturing cost and quality control. Furthermore, comparing the difference of taking or not defect rate’s learning effect into these operations. This study establishes two learning curves of multivariate and univariate. From the final comparing results, the variance of univariate learning curve is larger than multivariate in the early production. But in the after production duration the application of univariate learning curve is better than multivariate. The possible reason is that univariate learning curve considers the colinear between variables. After analyzing and comparing the difference of taking defect rate’s learning effect into output planning, formulating products’ manufacturing cost and quality control, we find that these operations considering learning effect can reduce more unnecessary input than disregarding learning effect. Additionally, these operations with learning effect are helpful for making products’ manufacturing cost that can match actual production condition. And using corrected control chart to control the quality of real production status. From the above application of learning curve proposed in this study, the results indicate that can provide TFT-LCD manufacturer a useful forecasting tool to produce similar products in the future. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#NT890031020 http://hdl.handle.net/11536/66499 |
显示于类别: | Thesis |