Paper
19 May 2008 Results of new mask contamination inspection capability STARlight2+ 72nm pixel for qualifying memory masks in wafer fabs
Russell Dover, Jinggang Zhu, Norbert Schmidt, Michael Lang
Author Affiliations +
Abstract
As the industry embarks on sub 50nm half pitch design nodes, higher resolution and advanced inspection algorithm are needed to resolve shrinking features and find critical yield limited defects. In this paper, we evaluate the detection capability of STARlight2+ 72nm pixel on DRAM masks. The mask sets targeted for this evaluation were focused on critical layers. Although memory mask sets are dominated by multi-die layout, single die layout masks were also inspected because of their significance during research and development. Inspection results demonstrated the performance of STARlight2+ based on its sensitivity to contamination defects, inspectability, first time success rate and throughput. STARlight2+ has single die inspection capability, which is also needed in order to inspect scribe-lines and frame areas. The primary defects of interest are photo induced defects or contamination, causing mask degradation. Contamination continues to be the primary reason for mask returns at 193nm exposure across the industry. The objective of this paper is to demonstrate STARlight2+ 72nm capability to support memory wafer fab mask qualification requirements.
© (2008) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Russell Dover, Jinggang Zhu, Norbert Schmidt, and Michael Lang "Results of new mask contamination inspection capability STARlight2+ 72nm pixel for qualifying memory masks in wafer fabs", Proc. SPIE 7028, Photomask and Next-Generation Lithography Mask Technology XV, 70282N (19 May 2008); https://doi.org/10.1117/12.793093
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KEYWORDS
Inspection

Photomasks

Contamination

Semiconducting wafers

SRAF

Signal detection

Defect detection

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