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Synthetic Biology-Inspired Robust-Perfect-Adaptation-Achieving Control Systems: Model Reduction and Stability Analysis

机译:合成生物启发鲁棒 - 完美适应达到控制系统:模型减少和稳定性分析

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In addition to perfectly steering the output concentration of a process network to an exogenous set-point, a desired synthetically implemented biological controller should be able to robustly maintain this regulated output in the face of the extrinsic disturbances and inherent uncertainties due to an ever-varying environment besides the imprecise modeling. Such an ability, which is called robust perfect adaptation (RPA), can be achieved by integral feedback control (IFC). Answering how IFC is (biochemically) constructible in generally unknown synthetic networks has been a research focus in the community. One of these answers, which has been well investigated previously, is to utilize a simple (Hill-type) integral negative feedback controller. Another effective solution, which has made significant progress, is the increasingly being used antithetic integral feedback controller. In this article, by applying these two RPA-achieving controllers in control of an uncertain process network with an arbitrary number of species, the behavior of the resulting closed-loop systems, in which the effect of molecular dilution is also considered, is analyzed. Through this analysis, by assuming that the stability is preserved, it is shown that the latter controller can be approximately reduced to the former (simpler) one by individually increasing one of its parameters (the annihilation rate). Furthermore, to address the stability assumption, exact parametric conditions are derived to guarantee the stability of the control systems. These findings can lead us to gain a deeper insight into and to simplify the robust design, performance analysis, and implementation of such living circuits. Simulation results accompany this article's analytical elaborations.
机译:除了完全将过程网络的输出浓度完全转向到外源特点之外,还可以在外在的障碍和固有的不确定性面前强大地维持这种受管制的输出来鲁棒地维持这种受管制的输出外部环境除了不精确的建模。可以通过积分反馈控制(IFC)来实现称为强大的完美适应(RPA)的这种能力。回答如何(生物化学)(生物化学),通常是未知的合成网络,这是社区的研究重点。以前研究的这些答案之一是利用简单(Hill-Type)积分负反馈控制器。另一种有效的解决方案,这项取得了重大进展,是越来越多地使用的抗静性积分反馈控制器。在本文中,通过将这两个RPA实现控制器应用于具有任意数量的物种的不确定过程网络,分析了所得闭环系统的行为,其中还考虑了分子稀释的效果。通过这种分析,假设稳定性被保留,所以通过单独增加其参数(湮灭速率),可以通过单独增加后一种控制器近似减小到前者(更简单)。此外,为了解决稳定的假设,导出精确的参数条件以保证控制系统的稳定性。这些调查结果可以引导我们深入了解并简化了这种生活电路的强大设计,性能分析和实施。仿真结果伴随着本文的分析阐述。

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