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Application of A Fuzzy Learning Intervention Approach to A Glycolytic-Glycogenolytic Pathway Model

机译:模糊学习干预方法在糖酵解糖溶解途径模型中的应用

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In recent years, may researchers have been interested in modeling and developing therapeutic intervention strategies for biological systems. The objective of intervention strategies is to move an undesirable state of a diseased network towards a more desirable one. It is well known that biological phenomena are complex nonlinear processes that are impossible to perfectly represent using mathematical models, and hence it is of real importance to develop model-free nonlinear intervention strategies that are capable of effectively guiding the target variables to their desired values. Non-adaptive direct fuzzy controllers have been found to be very useful for such applications. However, due to the time-varying nature of biological systems, non-adaptive techniques often fail to maintain the desired closed-loop performance. Hence, there is a need for adaptive strategies that are capable not only of controlling but also maintaining the desired performance in the presence of plant uncertainties or parameter variations. This paper addresses the application problem of controlling a biological system representing the Glycolytic-Glycogenolytic system, where the simulation results show the efficacy of fuzzy controllers in controlling and maintaining the desired performance.
机译:近年来,五月研究人员一直对建模和发展生物系统的治疗干预策略感兴趣。干预策略的目标是将患病网络的不良状态转变为更可取的网络。众所周知,生物现象是复杂的非线性过程,这是不可能使用数学模型完全代表的复杂非线性过程,因此它具有能够有效地将目标变量有效引导到其所需值的无模型非线性干预策略是真实的。已发现非自适应直接模糊控制器对此类应用非常有用。然而,由于生物系统的时变性,非自适应技术通常不能保持所需的闭环性能。因此,需要一种适应性策略,其不仅能够控制,而且还能够在存在植物不确定性或参数变化的情况下保持所需的性能。本文解决了控制代表糖酵解糖溶解系统的生物系统的应用问题,其中模拟结果显示了模糊控制器在控制和维持所需性能方面的功效。

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