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On control-specific derivation of affine Takagi-Sugeno models from physical models: Assessment criteria and modeling procedure

机译:来自物理模型的仿射Takagi-sugeno模型的特定于控制特定推导:评估标准和建模程序

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Models are commonly derived and their performance is assessed wrt. minimal prediction error on a closed data set. However, if no perfect model can be used, the degrees of freedom in modeling should be used to adjust the model to application-specific metrics. For model-based controller design, control-oriented performance metrics (e.g. performance wrt. to control-critical properties) are important, but not primarily prediction (i.e. prognosis- and simulation-oriented) ones. This motivates the derivation of control-specific models. The contribution introduces structured and quantitative measures on “model suitability for control” for the class of affine dynamic Takagi-Sugeno models. A method is suggested that derives control-specific dynamic models from a physical model given as a set of nonlinear differential equations. Within a case study, the proposed method demonstrates its significance: Using control-specific models improves control performance metrics such as set-point tracking quality, stability region and energy efficiency. Nonlinear dynamic modeling, Takagi-Sugeno systems, modeling for control
机译:模型通常导出,并且它们的性能是评估WRT的。闭合数据集上的最小预测误差。但是,如果没有使用完美的模型,则建模的自由度应用于将模型调整为特定于应用的指标。对于基于模型的控制器设计,面向控制的性能度量(例如性能WRT。控制关键属性)很重要,但不是主要预测(即预后和模拟导向)。这激励了控制特定模型的推导。贡献介绍了&#x201c的结构化和定量措施;控制&#x201d的模型适用性;对于仿射动态Takagi-sugeno模型的类别。建议一种方法,其从作为一组非线性微分方程给出的物理模型中导出特定于控制的动态模型。在一个案例研究中,所提出的方法证明了其意义:使用控制特定模型可以提高控制性能度量,例如设定点跟踪质量,稳定区域和能量效率。非线性动态建模,Takagi-Sugeno系统,控制造型

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