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ESTIMATION OF MULTI-PARAMETER MODELS BY LEAST SQUARES AND ADAPTIVE FILTERS

机译:最小二乘和自适应滤波器估计多参数模型

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摘要

Parameter estimation is based upon a comparison of predicted deterministic model responses to data. The models are often numerical, e.g., finite volume, with intrinsic inaccuracies. In addition, the models typically assume a full knowledge of the physical processes. By using the concept of state variables and employing the Kalman filter approach it is possible to include undetermined effects in the model. This paper describes such an approach to the estimation of thermal conductivity in a transiently heated and cooled one dimensional system and shows that it leads to a resolution of questions about the time behavior of the residuals previously observed in an estimation based upon the least squares analysis.
机译:参数估计基于对数据的预测确定性模型响应的比较。这些模型通常是数值的,例如有限的体积,具有固有的误差。此外,这些模型通常假定对物理过程有全面的了解。通过使用状态变量的概念并采用卡尔曼滤波方法,可以在模型中包括不确定的影响。本文介绍了一种在瞬态加热和冷却的一维系统中估算热导率的方法,并表明它可以解决有关基于最小二乘分析的估算中先前观察到的残差的时间行为的问题。

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