An approach to modeling and testing memories is presented and illustrated using an n-word b y l-bit n l static content-addressable memory CAM array for cell input stuck-at faults. An input stuck-at fault model for a CAM is de ned, and a test of length 7n + 2 l + 5 with 100 fault coverage with respect to this fault model is constructed. This test also detects all the usual cell stuck-at and transition faults. Finally, some design-for-testability DFT modi cations facilitating a further reduction of this test's length are p r oposed.
Current memory testing methods rely on fault models that are inadequate to accurately represent potential defects that occur in modern, often specialized, memories. To remedy this, the authors present a formal framework for modeling and testing special-purpose memories. Their approach uses three models: the transistor circuit, the event-sequence model, and finite-state machines. The methodology is explained using the example of a content-addressable memory (CAM). The fault model they describe comprises input stuck-at, transistor, and bridging faults. The authors show that functional tests can reliably detect all input stuck-at faults, most transistor faults (including all stuck-open faults), and about 50% of bridging faults. The remaining faults are detectable by parametric tests. A test of length 7 + 2 + 9 that detects all the reliably testable faults in an-word by-bit CAM is presented. A CAM test by Giles & Hunter is evaluated with respect to the input stuck-at faults. It is shown that this test fails to detect certain faults; it can be modified to achieve full coverage at the cost of increased length.
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