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首页> 外文期刊>Journal of vibration and control: JVC >Stabilization of adaptive neural network controllers for nonlinear structural systems using a singular perturbation approach
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Stabilization of adaptive neural network controllers for nonlinear structural systems using a singular perturbation approach

机译:使用奇异摄动法稳定非线性结构系统的自适应神经网络控制器

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摘要

Generally, the biggest difficulty when designing a neural network controller that will be capable of rapidly and efficiently controlling complex and nonlinear systems is selection of the most appropriate initial values for the parameter vector. Overcoming the coupling effects of each degree-of-freedom is also difficult in multi-variable system control. In this study, an intelligent adaptive controller is proposed to handle these behaviors. First of all, an uncertain and nonlinear plant, for the tracking of a reference trajectory, is well approximated via radial basis function networks. Next, the adjustable parameters of the intelligent system are initialized using a genetic algorithm. Then, novel online parameter tuning algorithms are developed, based on the Lyapunov stability theory. A boundary-layer function is introduced into these updating laws to cover parameter and modeling errors, and to guarantee that the state errors converge to within a specified error bound. The non-square multi-variable system can be decoupled into several reduced-order isolated square multi-variable subsystems using a singular perturbation scheme for different types of time-scale stability analysis. Following this, a decoupled adaptive neural network controller is derived simultaneously to stabilize and control the system. Finally, an example, in the form of a numerical simulation, is provided to demonstrate the effectiveness of the control methodology, which is shown to rapidly and efficiently control nonlinear multi-variable systems.
机译:通常,设计能够快速有效地控制复杂和非线性系统的神经网络控制器时,最大的困难是为参数向量选择最合适的初始值。在多变量系统控制中,克服每个自由度的耦合效应也很困难。在这项研究中,提出了一种智能自适应控制器来处理这些行为。首先,通过径向基函数网络很好地近似了用于跟踪参考轨迹的不确定和非线性设备。接下来,使用遗传算法初始化智能系统的可调参数。然后,基于李雅普诺夫稳定性理论,开发了新颖的在线参数调整算法。这些更新定律中引入了边界层函数,以覆盖参数和建模误差,并确保状态误差收敛到指定的误差范围内。对于不同类型的时标稳定性分析,可以使用奇异摄动方案将非平方多变量系统解耦为几个降阶的隔离平方多变量子系统。此后,同时导出一个解耦的自适应神经网络控制器以稳定和控制系统。最后,以数值模拟的形式提供了一个示例,以演示控制方法的有效性,该方法可快速有效地控制非线性多变量系统。

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