首页> 外文学位 >Economic resource allocation in system simulation and control design.
【24h】

Economic resource allocation in system simulation and control design.

机译:系统仿真与控制设计中的经济资源分配。

获取原文
获取原文并翻译 | 示例

摘要

This dissertation studies the optimal simulation problem and the economic system design problem. First, the optimal simulation problem is formulated to find a reduced order model implemented with finite precision computations that gives the best simulation accuracy. Then the economic system design problem is set up to design/select components given the system performance requirements such that the total cost (in an economic sense) is minimized. Both problems are motivated by the system design philosophy. That is, enlarging the design space by introducing more freedoms to achieve a higher level optimal solution.; As the simulation accuracy depends on the simulation model order, realization, method of model reduction, as well as the wordlength of the computer, the simulation problem is studied as an integration of model reduction and its implementation. A variety of model reduction methods are investigated; then the q-Markov Covariance Equivalent Realization ( q-Markov COVER, also known as QMC) and model reduction via feedback control design are used for the integration. The q-Markov COVER approximates the original model by matching certain frequency and time response data, while model reduction via feedback control design minimizes the norm of the difference between the reduced order model and the original model.; To design simulations using data matching, we developed an algorithm which produces finite wordlength q-Markov COVERS that match a pre-specified set of input/output cross-correlation and output correlation data, when the model is installed in a computational environment with specified bits assigned to the fixed-point or floating point simulation. These results allow the design of digital simulations or controller realizations with no error within the specified set of cross-correlation and autocorrelation data. A data-based closed-loop simulation framework is proposed as an application of this simulation method.; To design simulations using norm minimization, it is shown that the parametrization of a lower-order simulation model with roundoff error consideration can be treated as a reduced order output feedback control design problem with measurement noise. The design conditions for the simulation model that can bound covariance errors, or deliver mixed H2/Hinfinity performance are expressed in terms of linear matrix inequalities (LMIs) and a coupling nonconvex constraint. A convexifying algorithm is applied to attain local optimality. (Abstract shortened by UMI.)
机译:本文研究了最优仿真问题和经济系统设计问题。首先,制定最佳仿真问题,以找到通过有限精度计算实现的降阶模型,该模型可提供最佳仿真精度。然后,根据系统的性能要求,设置经济的系统设计问题来设计/选择组件,以使总成本(从经济角度出发)最小化。这两个问题都是由系统设计原理引起的。也就是说,通过引入更多的自由度以实现更高级别的最佳解决方案来扩大设计空间。由于仿真精度取决于仿真模型的顺序,实现,模型简化的方法以及计算机的字长,因此将仿真问题作为模型简化及其实现的集成进行研究。研究了各种模型归约方法;然后将q-Markov协方差等效实现(q-Markov COVER,也称为QMC)和通过反馈控制设计的模型约简用于集成。 q-Markov COVER通过匹配某些频率和时间响应数据来逼近原始模型,而通过反馈控制设计进行的模型约简则使降阶模型与原始模型之间差异的范数最小。为了使用数据匹配来设计仿真,我们开发了一种算法,当将模型安装在具有指定位的计算环境中时,该算法将生成有限字长的q-Markov COVERS,以匹配一组预先指定的输入/输出互相关和输出相关数据分配给定点或浮点模拟。这些结果允许设计数字仿真或控制器实现,而在指定的互相关和自相关数据集中没有错误。提出了一种基于数据的闭环仿真框架作为该仿真方法的应用。为了使用范数最小化来设计仿真,结果表明,考虑了舍入误差的低阶仿真模型的参数化可以视为具有测量噪声的降阶输出反馈控制设计问题。可以约束协方差误差或提供混合的H2 / Hinfinity性能的仿真模型的设计条件以线性矩阵不等式(LMI)和耦合非凸约束表示。应用凸化算法来达到局部最优。 (摘要由UMI缩短。)

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