Electrical test prediction using hybrid metrology and machine learning

  • Mary Breton
  • , Robin Chao
  • , Gangadhara Raja Muthinti
  • , Abraham A. De La Peña
  • , Jacques Simon
  • , Aron J. Cepler
  • , Matthew Sendelbach
  • , John Gaudiello
  • , Tang Hao
  • , Susan Emans
  • , Michael Shifrin
  • , Yoav Etzioni
  • , Ronen Urenski
  • , Wei Ti Lee

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

19 Scopus citations

Abstract

Electrical test measurement in the back-end of line (BEOL) is crucial for wafer and die sorting as well as comparing intended process splits. Any in-line, nondestructive technique in the process flow to accurately predict these measurements can significantly improve mean-time-to-detect (MTTD) of defects and improve cycle times for yield and process learning. Measuring after BEOL metallization is commonly done for process control and learning, particularly with scatterometry (also called OCD (Optical Critical Dimension)), which can solve for multiple profile parameters such as metal line height or sidewall angle and does so within patterned regions. This gives scatterometry an advantage over inline microscopy-based techniques, which provide top-down information, since such techniques can be insensitive to sidewall variations hidden under the metal fill of the trench. But when faced with correlation to electrical test measurements that are specific to the BEOL processing, both techniques face the additional challenge of sampling. Microscopy-based techniques are sampling-limited by their small probe size, while scatterometry is traditionally limited (for microprocessors) to scribe targets that mimic device ground rules but are not necessarily designed to be electrically testable. A solution to this sampling challenge lies in a fast reference-based machine learning capability that allows for OCD measurement directly of the electrically-testable structures, even when they are not OCD-compatible. By incorporating such direct OCD measurements, correlation to, and therefore prediction of, resistance of BEOL electrical test structures is significantly improved. Improvements in prediction capability for multiple types of in-die electrically-testable device structures is demonstrated. To further improve the quality of the prediction of the electrical resistance measurements, hybrid metrology using the OCD measurements as well as X-ray metrology (XRF) is used. Hybrid metrology is the practice of combining information from multiple sources in order to enable or improve the measurement of one or more critical parameters. Here, the XRF measurements are used to detect subtle changes in barrier layer composition and thickness that can have second-order effects on the electrical resistance of the test structures. By accounting for such effects with the aid of the X-ray-based measurements, further improvement in the OCD correlation to electrical test measurements is achieved. Using both types of solution incorporation of fast reference-based machine learning on nonOCD-compatible test structures, and hybrid metrology combining OCD with XRF technology improvement in BEOL cycle time learning could be accomplished through improved prediction capability.

Original languageEnglish
Title of host publicationMetrology, Inspection, and Process Control for Microlithography XXXI
EditorsVladimir A. Ukraintsev, Martha I. Sanchez
PublisherSPIE
ISBN (Electronic)9781510607415
DOIs
StatePublished - 1 Jan 2017
Externally publishedYes
Event31st Conference on Metrology, Inspection, and Process Control for Microlithography 2017 - San Jose, United States
Duration: 27 Feb 20172 Mar 2017

Publication series

NameProceedings of SPIE - The International Society for Optical Engineering
Volume10145
ISSN (Print)0277-786X
ISSN (Electronic)1996-756X

Conference

Conference31st Conference on Metrology, Inspection, and Process Control for Microlithography 2017
Country/TerritoryUnited States
CitySan Jose
Period27/02/172/03/17

Keywords

  • Electrical test
  • Hybrid metrology
  • Machine learning
  • OCD
  • Prediction
  • Resistance
  • Scatterometry
  • XRF

ASJC Scopus subject areas

  • Electronic, Optical and Magnetic Materials
  • Condensed Matter Physics
  • Computer Science Applications
  • Applied Mathematics
  • Electrical and Electronic Engineering

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