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Inline Part Average Testing (I-PAT) for Automotive Die Reliability

机译:汽车模具可靠性的在线部分平均测试(I-Pay)

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Semiconductor reliability in applications such as automotive is getting increased attention as design rules shrink to include 1 Xnm, semiconductor content per vehicle continues to grow, applications become more critical and reliability requirements tighten. Current automotive requirements stipulate less than one defective part per million (DPPM). Approaches to address reliability include improving design, manufacturing and test. Process control in manufacturing is critical for reliability and includes continuous improvement for reducing process tool defectivity, excursion monitoring of process tools and product lines, golden or best performing tool methods, measurement system analysis (MSA) methods and screening. Inline defectivity is known to have an impact on both yield and reliability, and defects can impact reliability in one of two ways. Killer defects located in areas that are untested can result in so called Zero-Kilometer failures. In other cases, the same types of defects that cause yield loss can also cause latent reliability failures - the difference being size, location and density. Latent reliability defects become activated after test and can include defect types such as partial bridges, partial opens, and embedded particles. Current reliability engineering relies on outlier detection rules like parametric part average testing (P-PAT), or geographic part average testing (G-PAT), both of which are derived from end-of-line screening data, which is based solely on electrical test data. Inline Part Average Testing (I-PAT?) is enabled by multi-channel high-speed LED scanning inspection technology and offers an opportunity to apply fab data to reliability engineering. Defect inspection results are analyzed with machine learning (ML) to weigh the defectivity and create a die-level defectivity metric allowing the statistical identification of die which are a high reliability risk. Two case studies are described. The first case is a feasibility study based on historical fab defectivity data and includes a sample of ~250,000 die, with eight inline defect inspections per wafer, including four front end of line (FEOL) and four back end of line (BEOL), on a high sensitivity broadband inspection system, Each defect is assigned a weight based on its impact to various "ground truth" indicators. The combined impact of all defects in a given die stacked across all inspections is aggregated into a die-level metric. Plotting the die-level I-PAT metrics for all the die as a Pareto chart allows outliers to be identified using accepted statistical methods. I-PAT metrics can then be correlated to electrical wafer sort (EWS) yield or fallout rate, specific wafer-sort bins, EWS parametric test performance and post burn-in electrical test. Of key importance is that wafer test was not used to train the I-PAT model, and therefore this method is an independent validation of latent reliability. The second case study focuses on production screening feasibility with multi-channel high-speed LED scanning, and addresses overkill, or the over inking of potentially good die based on inline defectivity, which is a critical challenge that must be overcome for production implementation. Using inspection enabled by high speed LED scanning technology, die screening is a critical component of a comprehensive automotive Zero Defect program. Applications include early detection of fab excursions, feedback for continuous improvement of inline defectivity, feedforward to optimize electrical test methods and screening of die containing possible latent reliability defects. The I-PAT methodology can be used to enhance standard end-of-line outlier detection rules such as P-PAT , which is based solely on parametric testing.
机译:当设计规则缩小到包括1 XNM时,汽车等应用中的半导体可靠性因设计规则而增加,每辆车的半导体内容仍然会增加,应用变得更加关键和可靠性要求。目前的汽车要求规定了每百万百万(DPPM)的缺陷部分。解决可靠性的方法包括改善设计,制造和测试。制造过程中的过程控制对于可靠性至关重要,包括持续改进,以降低过程工具缺陷,远足监测过程工具和产品线,金色或最佳性能方法,测量系统分析(MSA)方法和筛选。已知内联缺陷对产量和可靠性产生影响,并且缺陷可以以两种方式之一影响可靠性。位于未经测试的区域的杀手缺陷可能导致所谓的零公里故障。在其他情况下,导致屈服损失的相同类型的缺陷也可能导致潜在的可靠性失败 - 差异为尺寸,位置和密度。在测试之后潜在可靠性缺陷变得激活,并且可以包括诸如偏桥,部分打开和嵌入粒子的缺陷类型。电流可靠性工程依赖于参数分开平均测试(P-PAT)等的异常值检测规则,或地理部分平均测试(G-PAT),这两者都是从线终端筛选数据中得出的,该数据仅基于电气测试数据。通过多通道高速LED扫描检查技术启用内联部分平均测试(I-PAT?),并提供将Fab数据应用于可靠性工程的机会。通过机器学习(ML)分析缺陷检测结果,以衡量缺陷,并产生模具级缺陷度量,允许模具的统计识别,这是一种高可靠性风险。描述了两种情况研究。第一种情况是基于历史Fab缺陷数据的可行性研究,包括〜250,000°的样本,每个晶圆有八个内联缺陷检查,包括四个前端(Feol)和四个后端(BEOL),开启高灵敏度宽带检测系统,每个缺陷基于其对各种“地面真理”指标的影响。在所有检查中堆叠在所有检查中堆叠的给定管芯中的所有缺陷的组合的影响被聚集成模级度量。绘制所有骰子的模级I-Pat度量作为Pareto图表允许使用接受的统计方法识别异常值。然后可以与电气晶片排序(EWS)产量或外出速率,特定晶片排序箱,EWS参数测试性能和烧坏后电气测试的电气晶片排序或退出速率相关联。关键重要性是晶圆测试不用于培训I-PAT模型,因此这种方法是独立验证潜在可靠性。第二种案例研究侧重于生产筛选可行性,基于内联缺陷基于内联缺陷来解决溢流的溢出,或者对潜在的好管芯的过度墨水,这是必须克服生产实施的关键挑战。使用高速LED扫描技术实现的检测,模具筛选是全面的汽车零缺陷程序的关键组成部分。应用包括早期检测Fab偏移,反馈,用于连续改进内联缺陷,前馈优化电气测试方法和筛选含有可能的潜在可靠性缺陷的筛选。 I-PAT方法可用于增强标准的线端异常检测规则,如P-PAT,其仅基于参数测试。

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