| タイトル | Lessons Learned from using a Livingstone Model to Diagnose a Main Propulsion System |
| 本文(外部サイト) | http://hdl.handle.net/2060/20040045151 |
| 著者(英) | Bajwa, Anupa; Sweet, Adam |
| 著者所属(英) | QSS Group, Inc. |
| 発行日 | 2003-01-01 |
| 言語 | eng |
| 内容記述 | NASA researchers have demonstrated that qualitative, model-based reasoning can be used for fault detection in a Main Propulsion System (MPS), a complex, continuous system. At the heart of this diagnostic system is Livingstone, a discrete, propositional logic-based inference engine. Livingstone comprises a language for specifying a discrete model of the system and a set of algorithms that use the model to track the system's state. Livingstone uses the model to test assumptions about the state of a component - observations from the system are compared with values predicted by the model. The intent of this paper is to summarize some advantages of Livingstone seen through our modeling experience: for instance, flexibility in modeling, speed and maturity. We also describe some shortcomings we perceived in the implementation of Livingstone, such as modeling continuous dynamics and handling of transients. We list some upcoming enhancements to the next version of Livingstone that may resolve some of the current limitations. |
| NASA分類 | Documentation and Information Science |
| 権利 | No Copyright |
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