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Local self-optimizing control based on extremum seeking control

机译:基于极值寻求控制的地方自我优化控制

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Self-optimizing Control (SOC) aims to find controlled variables with which setpoint regulation of the resultant feedback control loops can yield near-optimal operation under a range of disturbances. However, standard local SOC methods, e.g. the null-space SOC, require an offline analysis with large amounts of steady-state data, which can be computationally cumbersome. In this paper, we propose a new SOC procedure enabled by extremum seeking control (ESC) which will largely simplify the offline analysis process of null-space or extended null-space SOC methods. First, ESC is used to determine the optimal manipulated variable values under the nominal condition for the system. Next, by dithering the plant with periodic disturbances, the dither-demodulation technique in ESC is used to estimate the Jacobian and Hessian needed for obtaining the optimal measurement combination; then the null-space and extended null-space methods can be carried out in a computationally efficient fashion, for the scenarios with noise-free and noisy measurements, respectively. The proposed procedure are compared with the standard null-space and extended null-space SOC methods using a Modelica-based dynamic simulation model of an air-source heat pump (ASHP) system. The results show that a similar performance can be achieved with much simpler process of data acquisition and processing.
机译:自我优化控制(SOC)旨在找到所得反馈控制环路的设定点调节的受控变量可以在一系列干扰下产生近乎最佳操作。但是,标准本地SOC方法,例如,空空间SOC,需要具有大量稳态数据的离线分析,这可以计算地繁琐。在本文中,我们提出了一个Extremum寻求控制(ESC)启用的新SOC程序,这将在很大程度上简化了空空间或扩展空空间SOC方法的离线分析过程。首先,ESC用于确定系统标称条件下的最佳操纵变量值。接下来,通过抖动具有周期性干扰的植物,ESC的抖动解调技术用于估计获得最佳测量组合所需的雅可比和Hessian;然后可以分别以计算上高效的方式执行空空间和扩展的空空间方法,用于分别具有无噪声和噪声测量的场景。使用基于ModelICA的动态仿真模型与空气源热泵(ASHP)系统的ModelICA的动态仿真模型进行比较了所提出的程序。结果表明,通过更简单的数据采集和处理过程可以实现类似的性能。

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