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Adaptive Pressure Profile Method to Locate the Isolator Shock Train Leading Edge Given Limited Pressure Information

机译:自适应压力分布方法定位隔离器冲击列车前沿给定有限压力信息

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To maximize the performance of high-speed air-breathing engines, such as dual-mode scramjets, the streamwise location of the shock train leading edge (STLE) is ideally placed as far upstream in the isolator as possible while avoiding engine unstart. Thus, it is of interest to quantify and control the STLE location as the vehicle travels along its flight trajectory. The STLE location is typically quantified using wall static pressure measurements but there are often restrictions on the number and placement of transducers, thus reducing the accuracy and overall capability of STLE detection methods. In this work, the Adaptive Pressure Profile (APP) method is introduced to address such sparsity concerns. This method is data driven and does not heavily rely on prior information about the flow regime or engine model. Instead, the APP method uses real-time pressure measurements from a small number of transducers to adaptively learn the isolator pressure profile. This adaptively-learned profile is fit to the pressure data at each time instance to estimate STLE location. The APP method produces accurate estimates even when (1) the STLE location is not bounded by two or more transducers or (2) when the STLE location is between two transducers that are situated several duct heights apart. Data from two direct-connect isolator models are used to evaluate the accuracy of the APP method and demonstrate its robustness for different back-pressure scenarios and transducer configurations.
机译:为了最大限度地提高高速空气呼吸器发动机的性能,例如双模刻痕引擎,因此在避免发动机unstart的同时,冲击列车前缘(STLE)的流动位置非常放置在隔离器中的上游。因此,当车辆沿着其飞行轨迹行驶时,它有兴趣地量化和控制STLE位置。通常使用壁静压测量来量化STLE位置,但换能器的数量和放置通常有限制,从而降低了光谱检测方法的精度和整体能力。在这项工作中,引入了自适应压力曲线(APP)方法来解决此类稀疏性问题。该方法是数据驱动的,并且不会严重依赖于有关流动制度或发动机模型的先前信息。相反,应用方法使用少量换能器的实时压力测量来自适应地学习隔离器压力分布。该自适应学习的配置文件适用于每次实例的压力数据来估计STLE位置。即使(1)当STLE位置在位于分开的两个导管高度的两个换能器之间时,APP方法也会产生精确的估计。当STLE位置在两个换能器之间时,STLE位置不受两个或更多个换能器或(2)。来自两个直接连接隔离器模型的数据用于评估应用方法的准确性,并展示其对不同背压方案和传感器配置的鲁棒性。

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