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首页> 外文期刊>Applied thermal engineering: Design, processes, equipment, economics >Real-time reconstruction of the time-dependent heat flux and temperature distribution in participating media by using the Kalman filtering technique
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Real-time reconstruction of the time-dependent heat flux and temperature distribution in participating media by using the Kalman filtering technique

机译:使用Kalman滤波技术实时重建参与媒体的时间依赖热通量和温度分布

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摘要

The Kalman filtering (KF) algorithm is introduced to solve the inverse coupled radiation-conduction heat transfer problem in the participating medium for the first time. The time-dependent surface heat flux and internal temperature distribution of the participating medium is reconstructed simultaneously from the (non-intrusive transient temperature) measurements made on the other surface. The governing energy equation and radiative transfer equation are calculated by using the finite volume method (FVM). Different forms of transient heat flux are employed to test the performance of the KF method. The influence of initial state, initial state error covariance, measurement noise, process noise, measurement noise covariance, process noise covariance, sampling step, refractive index, medium thickness, and absorption coefficient on the accuracy and stability are discussed thoroughly. All the retrieval results show that the surface heat flux and internal temperature distribution can be reconstructed simultaneously in real time. Compared with the hybrid algorithm of KF and recursive least-square estimator (RLSE), the KF algorithm can obtain better reconstruction results and a noticeable decrease of the sensitivity to measurement noise, initial temperature distribution, and absorption coefficient is observed from the retrieval results.
机译:引入卡尔曼滤波(KF)算法以首次解决参与介质中的逆耦合辐射传热问题。从另一表面上制作的(非侵入式瞬态温度)测量同时重建参与介质的时间依赖性表面热通量和内部温度分布。通过使用有限体积法(FVM)计算控制能量方程和辐射传递方程。采用不同形式的瞬态热通量来测试KF方法的性能。彻底讨论了初始状态,初始状态误差协方差,测量噪声,测量噪声,测量噪声协方差,过程噪声协方差,采样步骤,折射率,中厚度和吸收系数对精度和稳定性的折射率和稳定性的影响。所有检索结果表明,表面热通量和内部温度分布可以实时同时重建。与KF和递归最小方估计器(RLSE)的混合算法相比,KF算法可以获得更好的重建结果,并且从检索结果中观察到对测量噪声,初始温度分布和吸收系数的敏感性的显着降低。

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