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Neural Network Adaptive Control for Discrete-Time Nonlinear Nonnegative Dynamical Systems

机译:用于离散时间非线性非线性动态系统的神经网络自适应控制

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Nonnegative and compartmental dynamical system models are derived from mass and energy balance considerations that involve dynamic states whose values are nonnegative. These models are widespread in engineering and life sciences and typically involve the exchange of nonnegative quantities between subsystems or compartments wherein each compartment is assumed to be kinetically homogeneous. In this paper, we develop a neural adaptive control framework for adaptive set-point regulation of discrete-time nonlinear uncertain nonnegative and compartmental systems. The proposed framework is Lyapunov-based and guarantees ultimate boundedness of the error signals corresponding to the physical system states and the neural network weighting gains. In addition, the neural adaptive controller guarantees that the physical system states remain in the nonnegative prthant of the state space for nonnegative initial conditions.
机译:非负离子和分区动态系统模型来自质量和能量平衡考虑因素,涉及具有价值是非负值的动态状态。这些模型在工程和生命科学中普及,并且通常涉及子系统或隔室之间的非负量交换,其中每个隔室被假定是动态均匀的。在本文中,我们开发了用于自由时间非线性不确定非负面和隔间系统的自适应设定点调节的神经自适应控制框架。所提出的框架是基于Lyapunov的,并保证与物理系统状态和神经网络加权增益对应的误差信号的最终界限。此外,神经自适应控制器保证物理系统状态保留在不上限初始条件的状态空间的非负面繁殖中。

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