首页> 外文会议>AHS International Annual Forum vol.1; 20070501-03; Virginia Beach,VA(US) >Toward a Real-Time Measurement-Based System for Estimation of Helicopter Engine Degradation Due to Compressor Erosion
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Toward a Real-Time Measurement-Based System for Estimation of Helicopter Engine Degradation Due to Compressor Erosion

机译:朝着基于实时测量的系统估算由于压缩机腐蚀造成的直升机发动机退化

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This paper presents a preliminary demonstration of an automated health assessment tool, capable of real-time on-board operation using existing engine control hardware. The tool allows operators to discern how rapidly individual turboshaft engines are degrading. As the compressor erodes, performance is lost, and with it the ability to generate power. Thus, such a tool would provide an instant assessment of the engine's fitness to perform a mission, and would help to pinpoint any abnormal wear or performance anomalies before they became serious, thereby decreasing uncertainty and enabling improved maintenance scheduling. The research described in the paper utilized test stand data from a T700-GE-401 turboshaft engine that underwent sand-ingestion testing to scale a model-based compressor efficiency degradation estimation algorithm. This algorithm was then applied to real-time Health Usage and Monitoring System (HUMS) data from a T700-GE-701C to track compressor efficiency on-line. The approach uses an optimal estimator called a Kalman filter. The filter is designed to estimate the compressor efficiency using only data from the engine's sensors as input.
机译:本文介绍了自动健康评估工具的初步演示,该工具能够使用现有的发动机控制硬件进行实时的车载操作。该工具使操作员能够辨别各个涡轮轴发动机的退化速度。随着压缩机的腐蚀,性能会丧失,并且随之产生动力的能力也会下降。因此,这样的工具将提供对发动机执行任务的适应性的即时评估,并且有助于在异常磨损或性能异常变得严重之前查明任何异常磨损或性能异常,从而减少不确定性并改善维护计划。本文中描述的研究利用了T700-GE-401涡轮轴发动机的试验台数据,该发动机经过吸沙测试以缩放基于模型的压缩机效率退化估计算法。然后将该算法应用于T700-GE-701C的实时健康使用和监控系统(HUMS)数据,以在线跟踪压缩机效率。该方法使用称为卡尔曼滤波器的最佳估计量。该过滤器设计为仅使用来自发动机传感器的数据作为输入来估算压缩机效率。

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