首页> 外文会议>IFAC World Congress >Model-Based Optimal Experiment Design for Nonlinear Parameter Estimation Using Exact Confidence Regions
【24h】

Model-Based Optimal Experiment Design for Nonlinear Parameter Estimation Using Exact Confidence Regions

机译:基于模型的非线性参数估计使用精确置信区的最优实验设计

获取原文
获取外文期刊封面目录资料

摘要

Optimal experiment design is usually performed as a search over a finitely-parameterized shape that (over-) approximates the confidence region of parameters of a model. In general, there exists no such shape to exactly enclose the confidence region of a nonlinear parameter estimation problem. Due to this fact, the design-of-experiment techniques are not well established for this problem and approximate designs are conducted. In this contribution, assuming Gaussian (normally distributed) noise, we propose and study (a) two schemes to over-approximate the confidence region of parameters using an ellipsoid and an orthotope and (b) a framework for optimal experiment design. We formulate the over-approximation of the confidence region as an optimization problem. The optimal experiment design is then proposed as a bi-level optimization problem. In line with the existing optimal experiment design methodology for a linear parameter estimation problem, we also propose several design criteria that optimize some measure of the over-approximated confidence region for the nonlinear case. The proposed bi-level optimization problem is solved (i) as a nonlinear programming problem using the necessary conditions for optimality or (ii) as a nested problem with globally optimized inner-level problem. We illustrate the proposed schemes on a benchmark test case.
机译:最佳实验设计通常作为优于参数化形状的搜索来执行(过度)近似于模型参数的置信区。通常,没有恰好括在非线性参数估计问题的置信区的形状。由于这一事实,对于该问题而不是很好地建立了实验技术,并且进行了近似设计。在这一贡献中,假设高斯(通常分布)噪声,我们提出并研究了(a)使用椭球和原子素和(b)用于最佳实验设计的框架来过度接近参数的置信区的两种方案。我们制定置信区的过度逼近作为优化问题。然后提出了最佳实验设计作为双层优化问题。根据用于线性参数估计问题的现有最优实验设计方法,我们还提出了几种设计标准,可优化非线性情况的过度近似置信区域的一些测量。所提出的双层优化问题(i)作为非线性编程问题,使用必要条件,以获得最优状态或(ii)作为全局优化内层问题的嵌套问题。我们说明了基准测试用例的提议方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号