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A novel neural network based on dynamic time warping and Kalman filter for real-time monitoring of supersonic inlet flow patterns

机译:基于动态时间翘曲和卡尔曼滤波器的新型神经网络,用于超声入口流动模式的实时监控

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A supersonic inlet is one of the key components in a supersonic air-breathing propulsion system and is the basis for protection control. The overall system performance can be greatly influenced by its flow patterns, so it plays a crucial part and is necessary to develop methods for monitoring its flow patterns to ensure stable and safe operation. This issue can be viewed as a time series classification (TSC) task. Traditionally, several manually-engineered features are extracted as the indicators to evaluate the operation status, but this process can be heavily dependent on the professional experience. In this paper, a novel neural network called DTW-SLFN-KF is proposed, which integrates Dynamic Time Warping (DTW) and Kalman Filter (KF) into a single-hidden-layer neural network (SLFN) architecture to directly determine flow patterns from the dynamic sensor signals. The proposed network first adopts a DTW layer as the feature extractor to automatically extract robust features, and exploits the flexible alignment ability of DTW to keep the temporal continuity and deal with the temporal distortions. Then, these features are fed into an SLFN for classification. After that, to make full use of the extracted features and improve the classification performance of SLFN when the network structure is fixed, KF is applied as a linear post-processing technique to get the predicted output of SLFN closer to the true output. Experimental results demonstrate that the proposed DTW-SLFN-KF network has better comprehensive performance for monitoring the flow patterns of supersonic inlet in terms of monitoring accuracy and real-time performance when compared with other competitive methods.
机译:超音速入口是超音速空气呼吸推进系统中的关键部件之一,是保护控制的基础。整体系统性能可能受到其流动模式的大大影响,因此它起到了重要部分,并且是开发用于监控其流动模式的方法,以确保稳定安全的操作。可以将此问题视为时间序列分类(TSC)任务。传统上,提取了几种手动工程特征作为指标以评估操作状态,但此过程可能严重依赖于专业体验。本文提出了一种名为DTW-SLFN-KF的新型神经网络,其将动态时间翘曲(DTW)和卡尔曼滤波器(KF)集成到单个隐藏层神经网络(SLFN)架构中,以直接确定流量模式动态传感器信号。所提出的网络首先采用DTW层作为特征提取器自动提取鲁棒特征,并利用DTW的灵活对准能力,以保持时间连续性和处理时间扭曲。然后,这些特征被馈送到SLFN以进行分类。之后,为了充分利用提取的特征并提高SLFN的分类性能,当网络结构固定时,KF被应用为线性后处理技术,以使PLFN的预测输出更接近真正的输出。实验结果表明,在与其他竞争方法相比时,所提出的DTW-SLFN-KF网络在监测准确性和实时性能方面具有更好的全面性能。

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