受致动器饱和影响的离散时间神经网络数据驱动事件触发控制

Yanyan Ni;Zhen Wang;Xia Huang;Hao Shen
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引用次数: 0

摘要

本文研究了未知离散时间神经网络(dtnn)在执行器饱和和外部扰动下的数据驱动事件触发控制。提出研究问题的原因有两个:1)实际系统经常受到外界扰动的影响,获取准确的系统模型成本高;2)网络带宽和控制输入总是受到物理硬件的限制。为了解决上述问题,首先在设计的饱和事件触发控制器下建立基于模型的稳定条件,然后通过扩展s引理将基于模型的稳定条件转化为仅依赖摄动损坏数据的基于数据的稳定条件。主要成果有:1)通过收集扰动损坏的状态输入数据,给出了基于数据的DTNNs系统表示。然后,导出了基于数据的稳定性判据,设计了饱和事件触发控制器,但没有明确的系统模型;2)提出了一种既能最大限度估计吸引子(EoA),又能最大限度估计吸引域(DoA)的优化方法。最后,通过两个算例说明了该方法的有效性,并进行了定量分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Event-Triggered Control for Discrete-Time Neural Networks Subject to Actuator Saturation
In this article, the data-driven event-triggered control is addressed for unknown discrete-time neural networks (DTNNs) under actuator saturation and external perturbation. The research problem is raised due to the following two reasons: 1) a practical system is often affected by external perturbations and it is costly to acquire an accurate system model; 2) the network bandwidth and the control inputs are always constrained due to physical hardware. To handle the above issues, the methodology is to first establish a model-based stability condition under the designed saturated event-triggered controller and then to transform the model-based stability condition into a data-based stability condition relying only on the perturbation-corrupted data via the extended S-lemma. The key results are: 1) a data-based DTNNs system representation is presented by collecting perturbation-corrupted state-input data. Then, a data-based stability criterion is derived and the saturated event-triggered controller is designed without an explicit system model; 2) an optimization method is presented that can maximize the estimation of attractor (EoA) and minimize the estimated domain of attraction (DoA) simultaneously. Finally, the effectiveness of the proposed approach is illustrated and some quantitative analyses are offered by two numerical examples.
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CiteScore
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