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An information approach to regularization parameter selection for the solution of ill-posed inverse problems under model misspecification.

机译:解决模型错误指定情况下不适定反问题的正则化参数选择信息方法。

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摘要

Engineering problems are often ill-posed, i.e. cannot be solved by conventional data-driven methods such as parametric linear and nonlinear regression or neural networks. A method of regularization that is used for the solution of ill-posed problems requires an a priori choice of the regularization parameter. Several regularization parameter selection methods have been proposed in the literature, yet, none is resistant to model misspecification. Since almost all models are incorrectly or approximately specified, misspecification resistance is a valuable option for engineering applications.; Each data-driven method is based on a statistical procedure which can perform well on one data set and can fail on other. Therefore, another useful feature of a data-driven method is robustness. This dissertation proposes a methodology of developing misspecification-resistant and robust regularization parameter selection methods through the use of the information complexity approach.; The original contribution of the dissertation to the field of ill-posed inverse problems in engineering is a new robust regularization parameter selection method. This method is misspecification-resistant, i.e. it works consistently when the model is misspecified. The method also improves upon the information-based regularization parameter selection methods by correcting inadequate penalization of estimation inaccuracy through the use of the information complexity framework. Such an improvement makes the proposed regularization parameter selection method robust and reduces the risk of obtaining grossly underregularized solutions.; A method of misspecification detection is proposed based on the discrepancy between the proposed regularization parameter selection method and its correctly specified version. A detected misspecification indicates that the model may be inadequate for the particular problem and should be revised.; The superior performance of the proposed regularization parameter selection method is demonstrated by practical examples. Data for the examples are from Carolina Power & Light's Crystal River Nuclear Power Plant and a TVA fossil power plant. The results of applying the proposed regularization parameter selection method to the data demonstrate that the method is robust, i.e. does not produce grossly underregularized solutions, and performs well when the model is misspecified. This enables one to implement the proposed regularization parameter selection method in autonomous diagnostic and monitoring systems.
机译:工程问题通常是不适当的,即无法通过常规的数据驱动方法来解决,例如参数线性和非线性回归或神经网络。用于解决不适定问题的正则化方法需要先验选择正则化参数。文献中已经提出了几种正则化参数选择方法,但是没有一种方法能够抵抗模型错误指定。由于几乎所有模型均不正确或近似指定,因此抗误规格性对于工程应用是一个有价值的选择。每种数据驱动的方法都基于一种统计过程,该过程可以对一个数据集执行良好,而对另一个数据集执行失败。因此,数据驱动方法的另一个有用特性是鲁棒性。本文提出了一种利用信息复杂度方法开发抗误码性强的正则化参数选择方法的方法。论文对工程中不适定反问题领域的原始贡献是一种新的鲁棒正则化参数选择方法。此方法具有抗误规范性,即,当模型指定不正确时,它始终有效。该方法还通过使用信息复杂性框架纠正估计误差的不适当惩罚来改进基于信息的正则化参数选择方法。这样的改进使所提出的正则化参数选择方法变得健壮,并降低了获得严重不足的正则化解的风险。基于提出的正则化参数选择方法与其正确指定的版本之间的差异,提出了一种错误指定检测方法。检测到的规格失准表明该模型可能不足以解决特定问题,应进行修改。通过实例验证了所提出的正则化参数选择方法的优越性能。这些示例的数据来自卡罗来纳州电力与照明公司的水晶河核电站和TVA化石电厂。将所提出的正则化参数选择方法应用于数据的结果表明,该方法是鲁棒的,即不会产生严重的正则化解,并且在模型指定不正确时性能良好。这使人们能够在自治的诊断和监视系统中实施所提出的正则化参数选择方法。

著录项

  • 作者单位

    The University of Tennessee.;

  • 授予单位 The University of Tennessee.;
  • 学科 Engineering Nuclear.; Engineering System Science.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子能技术;系统科学;
  • 关键词

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