Timmons W D, Chizeck H J, Katona P G
Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH 44106.
IEEE Trans Biomed Eng. 1991 Mar;38(3):273-9. doi: 10.1109/10.133209.
The automated control of physiological variables must often contend with an unknown and time-varying background (i.e., the output level corresponding to no input). To allow for simultaneous real-time identification of background as well as the parameters of an autoregressive moving average model with exogenous inputs (ARMAX model) during adaptive control, a "floating identifier" (FI) approach was developed which may be used with most recursive identification algorithms. This method separates input and output data into low- and high-frequency components. The high-frequency components are used to identify the ARMAX model parameters and the low-frequency components to identify background. This approach was evaluated in computer simulations and animal experiments comparing an adaptive controller coupled to the FI with the same controller coupled to two other standard least squares identifiers. In the animal experiments, sodium nitroprusside was used to control mean arterial pressure of anesthetized dogs in the presence of background changes. Results showed that with the FI, the controller performed satisfactorily, while with the other identifiers, it sometimes failed. It is concluded that the FI approach is useful when applying ARMAX-based adaptive controllers to systems in which a change in background is likely.
生理变量的自动控制常常要应对未知且随时间变化的背景(即对应无输入时的输出水平)。为了在自适应控制期间能够同时实时识别背景以及具有外部输入的自回归滑动平均模型(ARMAX模型)的参数,开发了一种“浮动标识符”(FI)方法,该方法可与大多数递归识别算法一起使用。此方法将输入和输出数据分离为低频和高频成分。高频成分用于识别ARMAX模型参数,低频成分用于识别背景。通过计算机模拟和动物实验对该方法进行了评估,将与FI耦合的自适应控制器与与其他两种标准最小二乘标识符耦合的相同控制器进行比较。在动物实验中,使用硝普钠在存在背景变化的情况下控制麻醉犬的平均动脉压。结果表明,使用FI时,控制器表现令人满意,而使用其他标识符时,有时会失败。得出的结论是,当将基于ARMAX的自适应控制器应用于可能存在背景变化的系统时,FI方法很有用。