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Multi-parameter algorithm to enhance real-time space shuttle main propulsion system fault detection

机译:多参数算法,增强实时航天飞机主要推进系统故障检测

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Real-time algorithms which provide the earliest possible indication of off-nominal Space Shuttle Main Engine (SSME) conditions could improve shuttle safety and reliability by providing more time for corrective action. Multi-parameter fault detection techniques have been targeted because they do not rely on a single parameter for fault information and thereby improve confidence in the detection. Furthermore, no assumptions regarding failure modes are required, permitting the detection of previously unencountered or unanticipated failures. The Clustering Algorithm, a multi-parameter fault detection approach that was originally trained and validated on SSME ground test firing data, was slightly modified and applied to SSME historical flight data; the application is documented in this report. Preliminary studies were conducted to assess the impact of different engines, different missions and different thrust profiles on the performance of the Clustering Algorithm. The algorithm successfully predicted sixteen performance parameters during mainstage operation of the engine when applied to nominal data sets and provided indications of off-nominal behavior when applied to data from an engine which had experienced an offset in one of the control parameters. The information from the Clustering Algorithm is intended to enhance the diagnostic information available to the NASA Johnson Space Center control room engineers during flight.
机译:实时算法,其提供的非标称航天飞机主发动机(SSME)条件下可以通过纠正措施提供了更多的时间,进而提高梭安全性和可靠性尽早指示。多参数故障检测技术已被定位,因为它们不依赖于故障信息的单个参数,从而提高对检测的置信度。此外,不需要对故障模式的假设,允许检测以前未被识别或意外的故障。聚类算法,在SSME地面测试射击数据上训练和验证的多参数故障检测方法,略微修改并应用于SSME历史航班数据;该申请记录在本报告中。进行了初步研究以评估不同发动机,不同任务和不同推力概况对聚类算法性能的影响。当应用于名义数据集时,该算法在发动机的凸起操作期间成功预测了十六个性能参数,并且在从在一个控制参数中的偏移中施加偏移的引擎应用于从发动机施加到数据时的非称义行为的指示。来自聚类算法的信息旨在在飞行期间增强NASA Johnson Space Center控制室工程师可用的诊断信息。

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