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首页> 外文期刊>Analytical Letters >Characterization of a Stable Adaptive Calibration Model Using Near-Infrared Spectroscopy and Partial Least Squares with a Kalman Filter
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Characterization of a Stable Adaptive Calibration Model Using Near-Infrared Spectroscopy and Partial Least Squares with a Kalman Filter

机译:使用近红外光谱和Kalman滤波器的偏最小二乘稳定自适应校准模型的表征

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The calibration model of near-infrared (NIR) spectra established using the Kalman filter-partial least square (partial least squares combined with a Kalman filter) method can be adapted to outdated equipment, environmental changes, external samples, and other applications. However, the variance of the measurement noise estimation for NIR spectrum measurements cannot be easily obtained using Kalman filter-partial least squares; therefore, the variance in the measurement noise is often assumed to be zero for the Kalman filter-partial least square calibration model, which affects the stability of the model. In this study, the measured input and output data were used effectively, and the gamma test method for estimating the measurement noise variance was used to improve the stability of the Kalman filter-partial least square calibration model. First, an accurate estimation of the measurement noise variance was obtained, and accurate modeling was then performed using Kalman filter-partial least squares. Finally, 600 abandoned drilling fluid samples were used to confirm the validity of the proposed method. The Kalman filter-partial least square and gamma test-Kalman filter-partial least square methods are compared. Testing of external samples 401-600 demonstrated that the stability of the Kalman filter-partial least square model decreased. The root mean square error of the prediction of the Kalman filter-partial least square model was 27.135, which was worse than that of the gamma test-Kalman filter-partial least square model (20.307). The validation results show that the proposed method has better stability in tracking the evolution of the NIR spectrometer's measurement state.
机译:使用Kalman滤波器局部最小二乘(与卡尔曼滤波器组合的部分最小二乘)建立的近红外(NIR)光谱的校准模型可以适用于过时的设备,环境变化,外部样品和其他应用。然而,使用Kalman滤波器部分最小二乘来容易获得NIR频谱测量的测量噪声估计的方差;因此,通常假设测量噪声的方差对于卡尔曼滤波器局部最小二乘校准模型来说是零,这会影响模型的稳定性。在该研究中,有效地使用了测量的输入和输出数据,使用用于估计测量噪声方差的伽马测试方法来提高卡尔曼滤波器局部最小二乘校准模型的稳定性。首先,获得测量噪声方差的精确估计,然后使用Kalman滤波器部分最小二乘来执行精确的建模。最后,使用600种废弃的钻井液样品来证实所提出的方法的有效性。比较卡尔曼滤波器部分最小二乘和伽马测试 - 卡尔曼滤波部分最小二乘法。外部样品401-600的测试证明了卡尔曼滤波器局部最小二乘模型的稳定性降低。 Kalman滤波器部分最小二乘模型预测的根均方误差为27.135,比伽马试验-Kalman滤波局部最小二乘模型更差(20.307)。验证结果表明,该方法在跟踪NIR光谱仪的测量状态的演变方面具有更好的稳定性。

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