Shao Xingling, Shi Yi
IEEE Trans Cybern. 2022 Nov;52(11):12351-12363. doi: 10.1109/TCYB.2021.3070137. Epub 2022 Oct 17.
In this article, a neural-network-based constrained output-feedback control is considered for microelectromechanical system (MEMS) gyroscopes subject to scarce transmission bandwidth and lumped disturbances resulting from model uncertainties, dynamic coupling, and environmental disturbances. First, a hybrid quantizer capable of achieving an adjustable communication rate and quantization density is proposed to convert continuous control signals into discrete values, allowing for reduced chattering behavior even when control actions vary within large regions and enhanced tracking accuracy can be ensured. Subsequently, by applying two types of nonlinear mapping, all state variables of MEMS gyroscopes are restrained within the predefined time-varying asymmetric functions without imposing stringent feasibility conditions on virtual control laws. Furthermore, an echo-state network-based minimal learning parameter neural observer is developed to simultaneously recover the unmeasurable velocity-state variables, matched as well as unmatched disturbances in constrained MEMS gyroscopes dynamics, enabling an output-feedback control solution with a decreased online learning complexity. It is shown via the Lyapunov stability and nonsmooth analysis that all signals in the closed-loop system remain ultimately uniformly bounded even with discontinuous control actions. Comparison simulations are produced to certify the effectiveness of the presented controller.
在本文中,针对受传输带宽不足以及由模型不确定性、动态耦合和环境干扰引起的集中干扰影响的微机电系统(MEMS)陀螺仪,考虑了基于神经网络的约束输出反馈控制。首先,提出了一种能够实现可调通信速率和量化密度的混合量化器,用于将连续控制信号转换为离散值,即使控制动作在大范围内变化,也能减少抖振行为,并确保提高跟踪精度。随后,通过应用两种类型的非线性映射,MEMS陀螺仪的所有状态变量被限制在预定义的时变不对称函数内,而无需对虚拟控制律施加严格的可行性条件。此外,开发了一种基于回声状态网络的最小学习参数神经观测器,用于同时恢复受约束MEMS陀螺仪动力学中不可测量的速度状态变量、匹配和不匹配干扰,从而实现具有降低在线学习复杂度的输出反馈控制解决方案。通过李雅普诺夫稳定性和非光滑分析表明,即使控制动作不连续,闭环系统中的所有信号最终仍保持一致有界。进行了对比仿真以验证所提出控制器的有效性。