DocumentCode
840129
Title
Statistical Test Compaction Using Binary Decision Trees
Author
Biswas, Santosh ; Blanton, R.D.
Author_Institution
Carnegie Mellon University
Volume
23
Issue
6
fYear
2006
fDate
6/1/2006 12:00:00 AM
Firstpage
452
Lastpage
462
Abstract
Because of the significant cost of explicitly testing an integrated, heterogeneous device for all its specifications, there is a need for a test methodology that minimizes test cost while maintaining product quality and limiting yield loss. The authors are developing a decision-tree-based statistical-learning methodology to compact the complete specification-based test set of an integrated device by eliminating redundant tests. A test is deemed redundant if its output can be reliably predicted using other tests that are not eliminated. To ensure the required accuracy for commercial devices, the authors employ a number of modeling and data-massaging techniques to reduce prediction error. Test compaction results produced for a commercial MEMS accelerometer are promising in that they indicate it is possible to eliminate an expensive mechanical test.
Keywords
Accelerometers; Accuracy; Circuit testing; Compaction; Costs; Decision trees; Hypercubes; Neural networks; Semiconductor device measurement; Statistical learning; binary decision trees; go/no-go testing; heterogeneous devices; kept tests; redundant tests; statistical test compaction;
fLanguage
English
Journal_Title
Design & Test of Computers, IEEE
Publisher
ieee
ISSN
0740-7475
Type
jour
DOI
F3A13E95-77C9-45DC-BBAE-A7A56BB31BE1
Filename
4016452
Link To Document