Multi-sensor data fusion reconstruction method for vibration dynamic responses of aerospace structures

Yumei Ye, Cheng Chen, Jinchao Ma, Zhangyong Yu
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Abstract

The dynamic responses of key locations are important inputs for the life and reliability assessment of spacecraft structures. Due to the limited sensing resources, most critical responses are difficult to measure directly. A structural dynamic response reconstruction method is necessary. The responses of target locations can be reconstructed based on the empirical mode decomposition (EMD) of measured signals and the modal superposition. However, the structural modal information contained in the measured signal of a single sensor is limited, affecting the reconstruction accuracy. In this paper, a response reconstruction method based on multi-sensor data fusion is proposed. It is applied to a main load-bearing structure of a spacecraft and its typical components to verify its strain response reconstruction effect under random vibration loads. The experimental results show that multi-sensor data fusion improves the strain reconstruction accuracy. The maximum reduction in reconstruction error is from 8.7% to 1.3%. The reconstruction accuracy is further improved with the increase in the number of sensors. The optimal weighted fusion strategy for this problem is the weights defined by the Euclidean distance (EUC) or the dynamic time warping distance (DTW). The fusion results show a better performance with the increase in the power of the defined distance. The proposed multi-sensor fusion method improves the reconstruction accuracy via supplementing structural information to each other and eliminating the instability of single measured signals. More accurate dynamic responses via reconstruction reduce the large input uncertainty in life prediction and lay the foundation for building structural digital twins and managing structural health more effectively.
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航空航天结构振动动态响应的多传感器数据融合重构方法
关键位置的动态响应是航天器结构寿命和可靠性评估的重要输入。由于传感资源有限,大多数关键响应难以直接测量。因此需要一种结构动态响应重建方法。目标位置的响应可以根据测量信号的经验模态分解(EMD)和模态叠加进行重建。然而,单个传感器测量信号中包含的结构模态信息有限,影响了重建精度。本文提出了一种基于多传感器数据融合的响应重建方法。将该方法应用于航天器的主承重结构及其典型组件,以验证其在随机振动载荷下的应变响应重建效果。实验结果表明,多传感器数据融合提高了应变重建精度。重建误差从 8.7% 降至 1.3%。随着传感器数量的增加,重建精度进一步提高。该问题的最佳加权融合策略是由欧氏距离(EUC)或动态时间扭曲距离(DTW)定义的权重。融合结果表明,随着定义距离权重的增加,融合效果会更好。所提出的多传感器融合方法通过相互补充结构信息,消除了单一测量信号的不稳定性,从而提高了重建精度。通过重构获得更准确的动态响应,减少了寿命预测中的大量输入不确定性,为构建结构数字孪生和更有效地管理结构健康奠定了基础。
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