TestabilityL t 7Lecture 7: Fault Simulation
Shaahin HessabiShaahin HessabiDepartment of Computer Engineering
Sharif University of TechnologyAdapted from the presentation prepared by book authors
Slide 1 of 31Sharif University of Technology Lecture 6: Fault Simulation
O tliOutline
Problem and motivationFault simulation algorithms
SerialParallelParallelDeductiveConcurrent
Random Fault SamplingSummary
Slide 2 of 31Sharif University of Technology Lecture 6: Fault Simulation
Problem and MotivationFault simulation Problem:
Given:A circuitA sequence of test vectorsA fault modelA fault model
Determine:Fault coverage: fraction (or percentage) of modeled faults detected by test vectorsSet of undetected faults (for test generation)
MotivationDetermine test quality and in turn, product qualityFind undetected fault targets to improve testsConstruct fault dictionary for diagnosisConstruct fault dictionary for diagnosis
– Use a fault simulator to compute & store the response for every fault– If the output response of the circuit under test matches any of the
response in the fault dictionary the fault location is identified
Slide 3 of 31Sharif University of Technology Lecture 6: Fault Simulation
response in the fault dictionary, the fault location is identified
Yield and Defect LevelLet:
Y (yield): probability that a manufactured circuit is defect-freeY (yield): probability that a manufactured circuit is defect freeDL (defect level): probability of shipping a defective productd (defect coverage): the defect coverage of the test used to check for manufacturing defectsmanufacturing defects
D = 1 Y1-d
Defec
DL = 1- Y1 d
approximate defect coverage with fault coverage
ct Level
with fault coverage
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Defect Coverage %
High Fault Coverage: Why?g g y
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Fault Coverage vs. Defect Coverage
High fault coverage (measured for SSFs) is:g g ( )necessarybut not sufficient
for high defect coverage.Also need:
Parametric testingDelay-fault testingBridging fault testingBridging-fault testingTechnology-specific-fault testing (e.g., CMOS stuck-open faults)
Slide 6 of 31Sharif University of Technology Lecture 6: Fault Simulation
Fault simulator in a VLSI Design gProcess
Verified designnetlist
Verificationinput stimuli
Fault simulator Test vectors
Modeledfault list
Testcompactor
Remove tested faults
Deletevectors
TestFault Lowgeneratorcoverage
? Add vectors
Adequate
Slide 7 of 31Sharif University of Technology Lecture 6: Fault Simulation
q
Stop
Fault Simulation Scenarioau t S u at o Sce a oCircuit model: mixed-level
Mostly logic with some switch level for high impedance (Z) andMostly logic with some switch-level for high-impedance (Z) and bidirectional signalsHigh-level models (memory, etc.) with pin faults
Signal states: logicTwo (0, 1) or three (0, 1, X) states for purely Boolean logic circuitsFour states (0, 1, X, Z) for sequential MOS circuits
Timing:Zero-delay for combinational and synchronous circuitsMostly unit-delay for circuits with feedback
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Fault Simulation Scenario (cont’d)Fault Simulation Scenario (cont d)Faults:
Mostly single stuck-at faultsSometimes stuck-open, transition, and path-delay faults; analog i it f lt i l t t t icircuit fault simulators are not yet in common use
Equivalence fault collapsing of single stuck-at faultsFault-dropping: a fault once detected is dropped from considerationFault dropping: a fault once detected is dropped from consideration as more vectors are simulated; fault-dropping may be suppressed for diagnosisF lt li d l f f lt i i l t d h thFault sampling: a random sample of faults is simulated when the circuit is large
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F lt Si l ti Al ithFault Simulation Algorithms
SerialP ll lParallelDeductiveC tConcurrent
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Serial AlgorithmAlgorithm: Simulate fault-free circuit and save responses. Repeat following steps for each fault in the fault list:Repeat following steps for each fault in the fault list:
Modify netlist by injecting one faultSimulate modified netlist, vector by vector, comparing responses y p g pwith saved responsesIf response differs, report fault detection and suspend simulation of remaining vectorsremaining vectors
Advantages:Easy to implement; needs only a true-value simulator less memoryEasy to implement; needs only a true value simulator, less memoryMost faults, including analog faults, can be simulated
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Serial Algorithm (Cont.)
Disadvantage: Much repeated computation; CPU time g p pprohibitive for VLSI circuitsAlternative: Simulate many faults together
Test vectors Fault-free circuit Comparator f1 detected?
Circuit with fault f1
Comparator f2 detected?
Circuit with fault f2
Circuit with fault fn
Comparator fn detected?
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Parallel Fault SimulationCompiled-code method; best with two-states (0,1)Exploits inherent bit-parallelism of logic operations on computer wordsStorage: one word per line for two-state simulation; i.e., fixed low memory requirementM lti i l ti E h i l t 1Multi-pass simulation: Each pass simulates w -1 new faults, where w is the machine word lengthSpeed up over serial method w 1Speed up over serial method ~ w -1Not suitable for circuits with timing-critical and non-Boolean logicBoolean logic
Slide 13 of 31Sharif University of Technology Lecture 6: Fault Simulation
Parallel Fault Simulation ExampleParallel Fault Simulation ExampleBit 0: fault-free circuit
Bit 1: circuit with c s-a-0Bit 2: circuit with f s-a-1
a1 1 1
1 0 1c s-a-0 detected
bc
eg
1 1 1 1 0 11 0 1
s-a-0
d f
g0 0 0
s-a-1 0 0 1d f s a 1 0 0 1
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Parallel Fault Simulation- Multiple Values
Three signal values : { 0 1 u } A A1 A0Three signal values : { 0, 1, u }Two bits per signal encoding:
A A1 A0
0 0 0
1 1 1
U 1 0
Slide 15 of 31Sharif University of Technology Lecture 6: Fault Simulation
Deductive Fault SimulationDeductive Fault SimulationOne-pass simulationpEach line k contains a list Lk of faults detectable on k; i.e., fault F in list Lk ⇔ F causes signal k be sensitizedk
Following true-value simulation of each vector, fault lists of all gate output lines are updated using set-theoretic rules, signal values, and gate input fault listsPO fault lists provide detection dataLimitations:
Set-theoretic rules difficult to derive for non-Boolean gatesG t d l diffi lt tGate delays are difficult to use
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Deductive Fault Simulation (cont’d)AND gate
Any fault causes an error at A or B (change A or B from 1 to 0) will cause Z to be erroneously 0.
LZ = LA ∪ LB ∪ {Z s-a-0}Z A B { }
Any fault that causes A to be 1 without changing B, will cause Z to be in error ; i e Z 1will cause Z to be in error ; i.e, Z = 1
LZ = (LA ∩ L’B) ∪ {Z s-a-1} = (LA − LB) ∪ {Z s-a-1}
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Deductive Fault Simulation (cont’d)Gate Z:
I f iI: set of inputsc: controlling valuei: inversioni: inversionS: set of inputs with values c
The fault list of Z:
If no input has value c, any fault effect on any input propagates to the output.pIf some inputs have value c, only a fault effect that affects all the inputs at c without affecting any of the inputs at c propagates to the output.
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Deductive Fault Simulation (Example)( p )
Notation: Lk is fault list for line kkn is s-a-n fault on line k
a 1 {a0} Le = La U Lc U {e0}
= {a0 , b0 , c0 , e0}
b c
e
g
1 11
{b0 , c0}
{b0}
d f
g
0
{b0 , d0}Lg = (Le Lf ) U {g0}
{ }
U
{b0 , d0} = {a0 , c0 , e0 , g0}{b0 , d0 , f1}
Faults detected bythe input vector
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the input vector
Concurrent Fault SimulationEvent-driven simulation of fault-free circuit and only those parts of the faulty circuit that differ in signal states from theparts of the faulty circuit that differ in signal states from the fault-free circuit.A list per gate containing copies of the gate from all faultyA list per gate containing copies of the gate from all faulty circuits in which this gate differs. List element contains fault ID, gate input and output values and internal states, if any., g p p , yAll events of fault-free and all faulty circuits are implicitly simulated.Faults can be simulated in any modeling style or detail supported in true-value simulation (offers most flexibility.)Faster than other methods, but uses most memory.
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Concurrent Fault Simulation (Cont’d)
An element contains:Fault indexF lt t tFault state
• Input values• Output values• Output values
Event-driven: events include value changes in both fault-free and faulty circuits.y
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Concurrent Fault Simulation ExampleConcurrent Fault Simulation Examplea0 b0 c0 e0
1
0
10
1
00
1
00
1
10
a0 b0 c0 e0
a
b c e
1
11
1
1
11
1c
d f
g 0
1
01
1 0
0a0 b0 c0 e0d f
0
00
0
11
0
00
0
00
0 0 0 0
1
00
1
11
1
11
0 1 0 1 1 1
b0 d0d0 g0 f1
f1
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0 1 1 1
Concurrent Fault Simulation -Convergence
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Concurrent Fault Simulation -Divergence
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Comparing Fault Simulating Methods
Criteria: ability to handle :(A) Multiple signal values(B) Different levels of abstraction(C) Accurate timing(C) Accurate timing
Rank order by criteria
Parallel Deductive Concurrent
(A) 2 3 1(A) 2 3 1
(B) 2 2 1
(C) 2 2 1(C) 2 2 1
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Disadvantages of Deductive &gConcurrent Algorithms
Large memory to record the status of all machinesDynamic memory, (linked lists)y y, ( )
Evaluation overhead on the linked listsPerformance overhead in memory managementy g
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Fault Samplingp g
A randomly selected subset (sample) of faults is simulated.y ( p )Measured coverage in the sample is used to estimate fault coverage in the entire circuit.Advantage: Saving in computing resources (CPU time and memory.)Disadvantage: Limited data on undetected faults.
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Motivation for Samplingp g
Complexity of fault simulation depends on:Number of gatesNumber of faultsNumber of faultsNumber of vectors
Complexity of fault simulation with fault sampling dependsComplexity of fault simulation with fault sampling depends on:
Number of gatesNumber of vectors
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Random Sampling Modelp g
Detected Undetected
All faults with
fault fault
a fixed butunknowncoverage
Random
pickingcoverage
Np = total number of faults
(population size)
Ns = sample size
N << N(population size)
C = fault coverage (unknown)
Ns << Np
c = sample coverage(a random variable)( )
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Probability Density of Sample CCoverage, c
(x--C )2(x C )-- ------------
1 2σ 2
p (x ) = Prob(x < c < x +dx ) = -------------- ep (x ) Prob(x < c < x dx ) eσ (2 π) 1/2
cf: page 122 of the text
)
C (1 - C)Variance, σ 2 = ------------
N Sampling
p (
x) Ns
Mean = C
Samplingerror
σ σ
C C +3σC -3σ 1.0xx
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Sample coverage
Sampling Error Boundsp gVariance of C:
C (1 - C ) | x C | = 3 [ ] 1/2Sampling error: | x - C | = 3 [ -------------- ]
NsSolving the quadratic equation for C, we get the 3-sigma (99.7% confidence) estimate:
Sampling error:
confidence) estimate:4.5
C 3σ = x ± ------- [1 + 0.44 Ns x (1 - x )]1/23σ s
Ns
Where Ns is sample size, x is the measured fault coverage in the sample.f f f %Example: A circuit with 39,096 faults has an actual fault coverage of 87.1%.
The measured coverage in a random sample of 1,000 faults is 88.7%. The above formula gives an estimate of 88.7% ± 3%. CPU time for sample
Slide 31 of 31Sharif University of Technology Lecture 6: Fault Simulation
simulation was about 10% of that for all faults.