1 research outputs found
Test Generation Based on CLP
Functional ATPGs based on simulation are fast,
but generally, they are unable to cover corner cases, and
they cannot prove untestability. On the contrary, functional
ATPGs exploiting formal methods, being exhaustive,
cover corner cases, but they tend to suffer of the state
explosion problem when adopted for verifying large designs.
In this context, we have defined a functional ATPG
that relies on the joint use of pseudo-deterministic simulation
and Constraint Logic Programming (CLP), to
generate high-quality test sequences for solving complex
problems. Thus, the advantages of both simulation-based
and static-based verification techniques are preserved, while
their respective drawbacks are limited. In particular, CLP,
a form of constraint programming in which logic programming
is extended to include concepts from constraint satisfaction,
is well-suited to be jointly used with simulation. In
fact, information learned during design exploration by simulation
can be effectively exploited for guiding the search of
a CLP solver towards DUV areas not covered yet. The test
generation procedure relies on constraint logic programming
(CLP) techniques in different phases of the test generation
procedure.
The ATPG framework is composed of three functional
ATPG engines working on three different models of the
same DUV: the hardware description language (HDL)
model of the DUV, a set of concurrent EFSMs extracted
from the HDL description, and a set of logic constraints
modeling the EFSMs. The EFSM paradigm has been selected
since it allows a compact representation of the DUV
state space that limits the state explosion problem typical
of more traditional FSMs. The first engine is randombased,
the second is transition-oriented, while the last is
fault-oriented.
The test generation is guided by means of transition coverage and fault coverage. In particular, 100% transition
coverage is desired as a necessary condition for fault
detection, while the bit coverage functional fault model
is used to evaluate the effectiveness of the generated test
patterns by measuring the related fault coverage.
A random engine is first used to explore the DUV state
space by performing a simulation-based random walk. This
allows us to quickly fire easy-to-traverse (ETT) transitions
and, consequently, to quickly cover easy-to-detect (ETD)
faults. However, the majority of hard-to-traverse (HTT)
transitions remain, generally, uncovered.
Thus, a transition-oriented engine is applied to
cover the remaining HTT transitions by exploiting a
learning/backjumping-based strategy.
The ATPG works on a special kind of EFSM, called
SSEFSM, whose transitions present the most uniformly
distributed probability of being activated and can be effectively
integrated to CLP, since it allows the ATPG to invoke
the constraint solver when moving between EFSM states.
A constraint logic programming-based (CLP) strategy is
adopted to deterministically generate test vectors that satisfy
the guard of the EFSM transitions selected to be traversed. Given a transition of the SSEFSM, the solver
is required to generate opportune values for PIs that enable
the SSEFSM to move across such a transition.
Moreover, backjumping, also known as nonchronological
backtracking, is a special kind of backtracking
strategy which rollbacks from an unsuccessful
situation directly to the cause of the failure. Thus,
the transition-oriented engine deterministically backjumps
to the source of failure when a transition, whose guard
depends on previously set registers, cannot be traversed.
Next it modifies the EFSM configuration to satisfy the
condition on registers and successfully comes back to the
target state to activate the transition.
The transition-oriented engine generally allows us to
achieve 100% transition coverage. However, 100% transition
coverage does not guarantee to explore all DUV corner
cases, thus some hard-to-detect (HTD) faults can escape
detection preventing the achievement of 100% fault coverage.
Therefore, the CLP-based fault-oriented engine is finally
applied to focus on the remaining HTD faults.
The CLP solver is used to deterministically search for
sequences that propagate the HTD faults observed, but not
detected, by the random and the transition-oriented engine.
The fault-oriented engine needs a CLP-based representation
of the DUV, and some searching functions to generate
test sequences. The CLP-based representation is automatically
derived from the S2EFSM models according to the
defined rules, which follow the syntax of the ECLiPSe CLP
solver. This is not a trivial task, since modeling the
evolution in time of an EFSM by using logic constraints
is really different with respect to model the same behavior
by means of a traditional HW description language. At
first, the concept of time steps is introduced, required to
model the SSEFSM evolution through the time via CLP.
Then, this study deals with modeling of logical variables
and constraints to represent enabling functions and update
functions of the SSEFSM.
Formal tools that exhaustively search for a solution frequently
run out of resources when the state space to be analyzed
is too large. The same happens for the CLP solver,
when it is asked to find a propagation sequence on large sequential
designs. Therefore we have defined a set of strategies
that allow to prune the search space and to manage the
complexity problem for the solver