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An ensemble radius basis function network based on dynamic time warping for real-time monitoring of supersonic inlet flow patterns

机译:基于动态时间翘曲的集成半径基函数网络,用于超声入口流动模式的实时监控

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As the basis of protection control, supersonic inlet plays an important role in a supersonic air-breathing propulsion system, so it is of great significance to ensure the safe and stable operation by monitoring its flow patterns. From the perspective of machine learning, 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, which can be heavily dependent on the professional experience and time-consuming. This paper proposes a novel Dynamic Time Warping-Radius Basis Function (DTW-RBF) network to directly determine the flow patterns from the dynamic input signals. DTW-RBF network replaces the Euclidean distance in the static RBF kernels with the DTW distance, which exploits the elastic matching ability of DTW to align the input signals to the kernels. Then, the second-order Levenberg-Marquarelt (LM) optimization algorithm is used to allow the efficient training process of the proposed network. In order to determine the appropriate locations for sensor placement and enhance the robustness and reliability of monitoring flow patterns by a single sensor, an optimal subset of sensors is further selected for ensemble through multi-objective optimization and fuzzy decision. Experimental results demonstrate that the proposed DTW-RBF network works efficiently for TSC tasks on benchmark time series datasets, and has better comprehensive performance for monitoring supersonic inlet flow patterns in terms of classification accuracy and test time. The ensemble classifier further increases the classification accuracy with still meeting the real-time requirements. (C) 2021 Elsevier Masson SAS. All rights reserved.
机译:作为保护控制的基础,超音速入口在超音速空气呼吸推进系统中起重要作用,因此通过监测其流动模式,确保安全和稳定的操作具有重要意义。从机器学习的角度来看,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化特征作为评估操作状态的指示器,这可能严重依赖于专业经验和耗时。本文提出了一种新型动态时间翘曲半径基函数(DTW-RBF)网络,直接从动态输入信号确定流量模式。 DTW-RBF网络用DTW距离替换静态RBF内核中的欧几里德距离,该DTW距离利用DTW的弹性匹配能力将输入信号对齐到内核。然后,使用二阶Levenberg-Marquarelt(LM)优化算法来允许所提出的网络的有效培训过程。为了确定传感器放置的适当位置并通过单个传感器提高监测流动模式的鲁棒性和可靠性,通过多目标优化和模糊决定来进一步选择最佳的传感器子集。实验结果表明,所提出的DTW-RBF网络有效地用于基准时间序列数据集的TSC任务,并在分类准确度和测试时间方面具有更好的全面性能来监控超音速入口流动模式。集合分类器进一步提高了仍然满足实时要求的分类准确性。 (c)2021 Elsevier Masson SAS。版权所有。

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