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Real-time diagnostics for Space Shuttle Auxiliary Power System (APU)

机译:航天飞机辅助电力系统的实时诊断(APU)

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The lack of visibility into high rate (100 Hz) Improved Auxiliary Power Unit (IAPU) Shuttle data can potentially cause unnecessary launch delays. Current Shuttle day of launch procedures require strip chart identification of IAPU performance issues just prior to liftoff and during on-orbit operations. The current methods are outdated, require a high level of operator attention, and don't support continuous on-line analysis of the data. Depending on fatigue and training level, an operator might miss a significant feature or misinterpret a signature reading. The issue of how to accurately detect and predict space component performance in a streamlined operations environment through automated diagnostics is one of many issues that face the Shuttle Program and the designers of the next generation launch vehicles. A technical approach to automated diagnostics is to develop fast, efficient signature recognition and event detection algorithms that can automate the capture of anomalies, off-nominal, and nominal events and free up the operator to concentrate on the verification and resolution of the event. A generic neural network-based monitoring and analysis prototype system has been developed by the authors and demonstrated for the Shuttle IAPU application. This prototype has run in parallel during IAPU prelaunch operations since STS-66 (late 1994) in the Kennedy Space Center Launch Control Center. The major features of the system include high-speed event detection, neural network analysis, event correlation, interprocess communication, and full-rate graphical displays. The Shuttle IAPU demonstrations are paving the way for incorporation into the Shuttle countdown procedures and the technologies developed will also be utilized by Rockwell's Reusable Launch Vehicle Design team. Accordingly, the overall architecture has been designed for growth using COTS tools and industry standards.
机译:缺乏对高速速率(100 Hz)改进的辅助电源单元(IAPU)班车数据的可视性可能会导致不必要的发射延迟。当前的发射程序日期,需要在升降机上和在轨道操作期间的情况下立即识别IAPU性能问题。目前的方法已经过时,需要高水平的操作员注意,并且不支持连续的数据在线分析。根据疲劳和培训水平,运营商可能会错过重要的特征或误解签名阅读。如何通过自动诊断准确地检测和预测空间分量性能的空间分量性能,是面对班车程序和下一代发射车辆的设计者的许多问题之一。自动诊断的技术方法是开发快速,高效的签名识别和事件检测算法,可以自动捕获异常,非名义和标称事件,并释放操作员专注于验证事件的验证和解决。作者开发了一种通用的基于神经网络的监控和分析原型系统,并为Shuttle IAPU应用程序进行了演示。由于STS-66(1994年底)在肯尼迪航天中心发射控制中心以来,该原型在IAPU Prelaunch作业中运行并行。该系统的主要特点包括高速事件检测,神经网络分析,事件相关,进程性通信和全速率图形显示。 Shuttle IAPU示范正在铺平为班车倒计时程序铺平道路,并且还将通过Rockwell可重复使用的发射车设计团队使用技术。因此,整体架构专为使用CITS工具和行业标准而增长。

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