Institute for Biomedical Research into Human Movement and Health, Manchester Metropolitan University, Manchester, UK.
J R Soc Interface. 2012 Sep 7;9(74):2070-84. doi: 10.1098/rsif.2012.0142. Epub 2012 Apr 4.
Regulation by negative feedback is fundamental to engineering and biological processes. Biological regulation is usually explained using continuous feedback models from both classical and modern control theory. An alternative control paradigm, intermittent control, has also been suggested as a model for biological control systems, particularly those involving the central nervous system. However, at present, there is no identification method explicitly formulated to distinguish intermittent from continuous control; here, we present such a method. The identification experiment uses a special paired-step set-point sequence. The corresponding data analysis use a conventional ARMA model to relate a theoretically derived equivalent set-point to control signal; the novelty lies in sequentially and iteratively adjusting the timing of the steps of this equivalent set-point to optimize the linear time-invariant fit. The method was verified using realistic simulation data and was found to robustly distinguish not only between continuous and intermittent control but also between event-driven intermittent and clock-driven intermittent control. When applied to human pursuit tracking, event-driven intermittent control was identified, with an intermittent interval of 260-310 ms (n = 6, p < 0.05). This new identification method is applicable for machine and biological applications.
负反馈调节是工程和生物过程的基础。生物调节通常使用来自经典和现代控制理论的连续反馈模型来解释。间歇控制作为生物控制系统的模型也已被提出,特别是涉及中枢神经系统的系统。然而,目前还没有明确制定的识别方法来区分间歇控制和连续控制;在这里,我们提出了这样一种方法。识别实验使用特殊的成对阶跃设定点序列。相应的数据分析使用传统的 ARMA 模型将理论上推导出的等效设定点与控制信号相关联;新颖之处在于顺序和迭代地调整这个等效设定点的步骤的时间,以优化线性时不变拟合。该方法使用现实的模拟数据进行了验证,发现它不仅能够可靠地区分连续控制和间歇控制,还能够区分事件驱动的间歇控制和时钟驱动的间歇控制。当应用于人类追踪任务时,识别出了事件驱动的间歇控制,其间歇间隔为 260-310ms(n=6,p<0.05)。这种新的识别方法可适用于机器和生物应用。