首页> 外文会议>IEEE International Symposium on Applied Computational Intelligence and Informatics >Selection of kinematic requirements for RFPT-based adaptive anaesthesia control
【24h】

Selection of kinematic requirements for RFPT-based adaptive anaesthesia control

机译:基于RFPT的适应性麻醉控制的运动需求选择

获取原文
获取外文期刊封面目录资料

摘要

The automatic control of the level of hypnosis is a significant part of anaesthesia during surgical operations. The prevalent patient models consist of a four variable set of ordinary differential equations with a driving term, the Propofol infusion rate. One of the directly observable quantities is the Bispectral Index that is related to one of the state variables by a nonlinear function with patient-dependent parameters that have quite significant interpatient variability and normally cannot be known in advance. Furthermore, this index can suffer abrupt variations during the surgical operations. This fact makes the application of classical control approaches difficult because they operate with state feedback gains and state observers. The significant model uncertainties need either robust or adaptive solutions. A novel alternative of the Lyapunov function based adaptive control design, i.e. the Robust Fixed Point Transformation (RFPT)-based adaptive control can solve such problems by replacing the complicated state space model with a simple affine function instead of the use of state observers. This method strictly separates the kinetic and dynamic aspects of the controlled motion so allows arbitrary kinetic prescription for the tracking error relaxation. Via numerical (???in silico???) simulations it is shown how the four investigated plausible kinetic options (namely the ???PD-type???, ???PID-type???, ???Error Metrics-based PD-type???, and ???Error Metrics-based PID-type??? prescribed tracking error relaxation) concern the quality of the control. It is found that two different options, the ???PD-type??? and the ???PID-type??? ones, have almost equally good results while the other ones seem to be less efficient.
机译:自动控制催眠水平是手术操作期间麻醉的重要组成部分。普遍的患者模型由四变量的四种变量常用方程组成,具有驱动术语,异丙酚输注速率。直接可观察量之一是双光谱指标,其与具有具有相当显着的内腔变异性的患者相关参数的非线性函数相关的BISPectral指标与具有相当显着的内部间变异性的,通常不能提前知道。此外,该指数可以在外科手术期间突然遭受变化。这一事实使得古典控制方法的应用困难,因为它们与国家反馈收益和国家观察者一起运作。显着的模型不确定性需要强大或自适应解决方案。一种新颖的基于Lyapunov功能的自适应控制设计的替代方法,即稳健的固定点变换(RFPT)基于自适应控制,可以通过用简单的仿射功能代替复杂的状态空间模型而不是使用状态观察者来解决这些问题。该方法严格分离受控运动的动力学和动态方面,因此允许跟踪误差放松的任意动力学处方。通过数值(???在Silico ???)模拟它显示了四种调查的合理性动力学选项(即pd-type ???,??? pid-type ???,???错误基于度量的PD-type ???,以及基于错误的PID类型???规定的跟踪误差放松)涉及控制质量。发现两个不同的选择,??? pd-type ???和??? pid-type ???那些,几乎同样好的结果,而另一个似乎效率较低。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号