融合RBF插值与CNN-LSTM的分层物理约束环形温度场重建方法
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A hierarchical physically constrained annular temperature field reconstruction method fusing RBF interpolation and CNN-LSTM
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    摘要:

    针对环形温度场存在的径向梯度异质性、环向周期性波动、局部温度反转等复杂分布特征,以及传统重建方法难以适配环形结构、重建结果物理合规性不足的问题,提出一种融合自适应径向基函数(Radial Basis Function, RBF)插值、卷积神经网络(Convolutional Neural Network, CNN)-长短时记忆(Long Short-Term Memory, LSTM)混合网络的分层物理约束的环形温度场重建方法。首先采用核参数随径向距离动态自适应的混合核RBF插值算法,完成稀疏测点数据的初步插值,构建初始温度场;再利用CNN-LSTM混合网络提取温度场空间局部特征与环向周期特征,实现初始温度场的残差修正;最后结合热传导物理规律,针对温度场不同区域的分布特性施加差异化分层物理约束,有效提升重建结果的物理合理性与可信度。多工况试验结果表明:本文方法在500、1 000、1 750 K典型工况下的重建误差均满足工程5%的误差阈值要求,温度场空间分辨力可达0.5 mm,优于2 mm的工程设计指标。消融实验验证了LSTM模块可有效保障温度场环向分布连续性,分层物理约束能够显著提升重建结果的物理可信度。该方法可为航空发动机环形温度场高精度重建、设备状态监测与性能优化提供可靠的技术支撑。

    Abstract:

    Aiming at the complex distribution characteristics of annular temperature fields, including radial gradient heterogeneity, circumferential periodic fluctuation, and local temperature inversion, as well as the deficiencies of traditional reconstruction methods in annular structure adaptability and physical consistency, this paper proposes an annular temperature field reconstruction method combining adaptive Radial Basis Function (RBF) interpolation, a Convolutional Neural Network (CNN)-Long Short-Term Memory (LSTM) hybrid network, and hierarchical physical constraints. Firstly, a hybrid-kernel RBF interpolation with radially adaptive kernel parameters is adopted to construct the initial temperature field through sparse measurement data. Then, the CNN-LSTM hybrid network is utilized to extract spatial local features and circumferential periodic features to correct the residual error of the initial temperature field. Finally, according to the heat conduction law, differentiated hierarchical physical constraints are applied to different regions of the temperature field to improve the physical rationality and credibility of the reconstruction results. Multi-condition experimental results show that the reconstruction errors of the proposed method under typical working conditions of 500 K, 1 000 K, and 1 750 K all meet the engineering error threshold of 5%. The spatial resolution reaches 0.5 mm, which is better than the engineering index of 2 mm. Ablation experiments verify that the LSTM module ensures the circumferential continuity of the temperature field, and the hierarchical physical constraints significantly enhance the physical credibility of the reconstruction results. The proposed method can provide a reliable technical support for high-precision annular temperature field reconstruction, condition monitoring, and performance optimization of aero-engines.

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李书缘, 赵俭.融合RBF插值与CNN-LSTM的分层物理约束环形温度场重建方法[J].计测技术,2026,46(3):109~120:
10.11823/j. issn.1674-5795.2026.03.12.

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  • 在线发布日期: 2026-07-02
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