Parris Hawkins
Applied Materials
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Featured researches published by Parris Hawkins.
advanced semiconductor manufacturing conference | 2014
James Moyne; Manjunath Yedatore; Jimmy Iskandar; Parris Hawkins; John Scoville
Matching tools running identical processes is particularly critical for users migrating to more advanced nodes. Sustaining a fleet of tools to a matched state can reduce yield losses and yield variability, allow for greater routing flexibility in the fab, identify and control process inefficiencies, and reduce time for root cause analysis of yield issues. The matching process is multi-dimensional, covering hardware, software, tool sensors, process, metrology, maintenance and end of line electrical test and yield. The current state-of-the-art of chamber matching during production is chamber variance detection and reporting. A solution that provides a true active matching capability has been developed as part of a multi-dimensional chamber matching approach. It leverages a number of Advanced Process Control (APC) techniques collectively. Specifically Equipment Health Monitoring (EHM) is used for health monitoring during processing and for fingerprinting during maintenance recovery, Predictive Maintenance (PdM) is used to predict a consistent downtime state, and Virtual Metrology (VM) along with Run-to-Run (R2R) control is used to expedite maintenance recovery.
advanced semiconductor manufacturing conference | 2012
James Moyne; Nicholas A. Ward; Parris Hawkins
Predictive Maintenance (PdM) systems use process and equipment state information to predict when a tool or a particular component in a tool might need maintenance. PdM systems can be realized cost-effectively by leveraging Advanced Process Control (APC) technologies and infrastructure. APC data collection infrastructure can provide the state information necessary for prediction. APC fault detection systems contain necessary algorithms to identify features important to prediction, including tool health. In leveraging APC systems in a reusable and reconfigurable way, cost-effective PdM systems can be realized as part of existing fab infrastructure, leading to lower unscheduled downtimes, reduced mean-time-to-repair, reduced scrap, and increased life of components and consumables.
advanced semiconductor manufacturing conference | 2015
Jimmy Iskandar; James Moyne; Kommisetti Subrahmanyam; Parris Hawkins; Mike Armacost
Over the past two years the Predictive Maintenance (PdM) capability in semiconductor manufacturing has migrated from Proof-of-Concept (PoC) and univariate Fault Detection (FD) extrapolation mechanisms to fab-wide solutions that are (1) robust to typical process and equipment disturbances, (2) extensible so as to provide solution approaches that are portable across instances of a tool type and across tool types, and (3) maintainable so as to provide solutions that are useful for long periods of time. A number of advancements have facilitated this advancement including solutions for porting modeling components across process and equipment types, mechanisms for incorporating process and equipment knowledge into models, mechanisms for determining model context (e.g., recipe) dependency, methods for model optimization to fab financials, and methods for rejecting run-time disturbances in PdM modeling. As a result of these and other innovations, the landscape of PdM in semiconductor manufacturing has rapidly advanced to the point that, from a technical perspective, solutions are now available for fab-wide PdM realization.
advanced semiconductor manufacturing conference | 2013
James Moyne; Jimmy Iskandar; Parris Hawkins; Avi Furest; Bryan Pollard; Toysha Walker; David R. Stark
Predictive maintenance (PdM) is cited by the ITRS as a critical technology to incorporate into production over the next five years to reduce unscheduled downtime and cycle time, maintain high quality, and reduce cost. Equipment Health monitoring (EHM) is a companion to PdM that provides a tracking indication of equipment health. The industry needs to deploy and assess PdM and EHM capabilities to determine best practices for the industry and the potential for cost reduction through deployment of these technologies. Applied Materials is working with both Micron Technology and Intel Corporation on EHM and PdM development and assessment projects, partially funded by ISMI. As a result of these projects a portable EHM solution has been designed and demonstrated that can be deployed “out-of-the-box” to track equipment health, but also updated as more information is ascertained on specific smart health indicators. Also, preliminary PdM results in both projects reveals an ability to predict key downtime event including particle monitor, throttle valve and liquid flow failures. Results were achieved on both CVD and etch tool types.
advanced semiconductor manufacturing conference | 2010
Parris Hawkins; Andreas Neuber; Krishna Vepa
Applied Materials is working with customers to assess new ways to identify opportunities to reduce resources usage (energy, process chemicals/gasses) by existing semiconductor process tools. Through six customer pilot projects we have identified potential average savings of
Archive | 2002
John F. Arackaparambil; Tom Chi; Billy Chow; Patrick M. D'Souza; Parris Hawkins; Charles Huang; Jett Jensen; Badri N. Krishnamurthy; Pradeep M. Sunnyvale Kulkarni; Prakash M. Kulkarni; Wen Fong Lin; Shantha Mohan; Bishnu Nandy; Huey-Shin Yuan
22.5K per year, for the CMP and CVD process tool examined, by using a consultative service approach to business and financial analysis that pinpoints opportunities for process resource reduction without diverting critical engineering personnel from their core responsibilities.
Archive | 2008
Robert Z. Bachrach; Yong-Kee Chae; Soo Young Choi; Nicholas de Vries; Yacov Elgar; Eric A. Englhardt; Michel Frei; Parris Hawkins; Choi Ho; James Craig Hunter; Penchala N. Kankanala; Liwei Li; Wing Hoo Lo; Danny Cam Toan Lu; Fang Mei; Stephen P. Murphy; Srujal Patel; Matthew J. B. Saunders; Asaf Schlezinger; Shuran Sheng; Tzay-Fa Su; Jeffrey S. Sullivan; David Tanner; Teresa Trowbridge; Brice Walker; John M. White; Tae K. Won
Archive | 2008
Robert Z. Bachrach; Yong-Kee Chae; Soo Young Choi; Nicholas de Vries; Yacov Elgar; Eric A. Englhardt; Michel Frei; Parris Hawkins; Choi Ho; James Craig Hunter; Penchala N. Kankanala; Liwei Li; Wing Hoo Lo; Danny Cam Toan Lu; Fang Mei; Stephen P. Murphy; Srujal Patel; Matthew J. B. Saunders; Asaf Schlezinger; Shuran Sheng; Tzay-Fa Su; Jeffrey S. Sullivan; David Tanner; Teresa Trowbridge; Brice Walker; John M. White; Tae K. Won
Archive | 2015
Jimmy Iskandar; James Moyne; Kommisetti Subrahmanyam; Parris Hawkins; Mike Armacost
Archive | 2016
Subrahmanyam Venkata Rama Kommisetti; Haw Jyue Luo; Jimmy Iskandar; Hsincheng Lai; Parris Hawkins