Study on the Method of Military Software Fault Diagnosis Based on Hybrid Reasoning Strategy

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Abstract:

This paper focuses on the faults of military software system based on component. The faults are caused by external reasons during the using process of the software system. The method for faults diagnosis is based on the theory of expert system. The study finds that, there exist redundant questions during the reasoning process due to the uncertain factors and technical limitations of diagnosis system users. In order to improve the efficiency and reliability of military software fault diagnosis, a hybrid reasoning strategy was proposed. The strategy is based on the serial combination of uncertainty reasoning and interactive reasoning. Experimental result shows that the method based on the hybrid strategy for military software faults diagnosis is more accurate and flexible compared with the traditional reasoning method. The method also has improved the assurance work of military software system.

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1632-1638

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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