In testing of programmable controllers, manual selection of test cases is still the most common method in practice.
This is however tailor-made, time consuming and error-prone.
Traditional model-based methods can hardly handle industrial scale systems which usually possess a significant number of states, and signals of sensors and actuators.
In this paper, we propose a model-based testing framework that utilizes simplified plant features to reduce the number of test cases, and at the same time also guarantees a full coverage of nominal behavior of system under test.
The proposed framework has been illustrated on a case study.
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In testing of programmable controllers, manual selection of test cases is still the most common method in practice.
This is however tailor-made, time consuming and error-prone.
Traditional model-based methods can hardly handle industrial scale systems which usually possess a significant number of states, and signals of sensors and actuators.
In this paper, we propose a model-based testing framework that utilizes simplified plant features to reduce the number of test cases, and at the same tim...
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