The advantage to "one test at a time" fault diagnosis is its ability to implicate the components of complicated defect behaviors. The disadvantage is the large size and opacity of the diagnostic answer. In this paper, we address the problems of per-test fault diagnosis by improving the candidate matching, introducing scoring and ranking techniques, and by developing a method to translate the results into common defect scenarios. Our experimental results on simulated and introduced defects indicate that not only are the results improved on complex behaviors, but by considering passing test results we improve a common case where per-test algorithms can perform significantly worse than traditional diagnosis algorithms. Finally, our m...
Abstract—In this paper, we propose two fault-diagnosis meth-ods for improving multiple-fault diagnos...
We give an algorithm to model any given multiple stuck-at fault as a single stuck-at fault. The proc...
We propose a combination of AI techniques to improve softwaretesting. When a test fails, a model-bas...
In this thesis, optimal and near-optimal algorithms are developed for various classes of single faul...
The need for testing-for-diagnosis strategies has been identified for a long time, but the explicit ...
selection : 9\%International audienceThe need for testing-for-diagnosis strategies has been identifi...
When multiple defects (also called diseases or faults) are present, there is a possibility of intera...
This paper describes two methods for integrating model-based diagnosis (MBD) and explanation-based l...
Abstract — Fault diagnosis plays an important role in physical failure analysis and yield learning p...
In this thesis, we develop effective techniques for system fault modeling and multiple fault diagnos...
Physical defects cause behaviors unmodeled by even the best fault simulators, which complicates pred...
[[abstract]]Consider a protocol specification S and a faulty implementation I. The objective of diag...
Fault diagnosis is the task of identifying a faulty component in a complex system using data collect...
It has often been noted that today's human operators of complex industrial systems must occasio...
Abstract. Most algorithms for computing diagnoses within a model-based diagnosis framework are deter...
Abstract—In this paper, we propose two fault-diagnosis meth-ods for improving multiple-fault diagnos...
We give an algorithm to model any given multiple stuck-at fault as a single stuck-at fault. The proc...
We propose a combination of AI techniques to improve softwaretesting. When a test fails, a model-bas...
In this thesis, optimal and near-optimal algorithms are developed for various classes of single faul...
The need for testing-for-diagnosis strategies has been identified for a long time, but the explicit ...
selection : 9\%International audienceThe need for testing-for-diagnosis strategies has been identifi...
When multiple defects (also called diseases or faults) are present, there is a possibility of intera...
This paper describes two methods for integrating model-based diagnosis (MBD) and explanation-based l...
Abstract — Fault diagnosis plays an important role in physical failure analysis and yield learning p...
In this thesis, we develop effective techniques for system fault modeling and multiple fault diagnos...
Physical defects cause behaviors unmodeled by even the best fault simulators, which complicates pred...
[[abstract]]Consider a protocol specification S and a faulty implementation I. The objective of diag...
Fault diagnosis is the task of identifying a faulty component in a complex system using data collect...
It has often been noted that today's human operators of complex industrial systems must occasio...
Abstract. Most algorithms for computing diagnoses within a model-based diagnosis framework are deter...
Abstract—In this paper, we propose two fault-diagnosis meth-ods for improving multiple-fault diagnos...
We give an algorithm to model any given multiple stuck-at fault as a single stuck-at fault. The proc...
We propose a combination of AI techniques to improve softwaretesting. When a test fails, a model-bas...