基于自适应b样条神经网络的非最小相位微型水电厂控制

I. Setiawan, A. Priyadi, M. Purnomo
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引用次数: 3

摘要

水电厂是一种具有初始逆响应特性的非最小相位模型的发电系统。对于大负荷调节范围,传统的非自适应控制技术,如PI和PID控制,会降低发电系统的性能。为了保证水电站在负荷剧烈变化时的稳定运行,需要一种具有自适应能力的控制器。另一方面,利用传统的自适应技术,如自整定调节器和模型参考自适应控制器,将发散到控制非最小相位模式的对象。本文介绍了基于b样条神经网络的自适应智能控制与前向控制器在微水电厂控制中的应用。基于其特点,该自适应控制技术可以直接实现,不需要任何预先的训练阶段。仿真研究表明,与传统的PI控制相比,该方案对负载变化的瞬态响应速度快,对严重干扰的响应也很稳定。
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Controlling of non-minimum phase micro hydro power plant based on adaptive B-Spline neural network
Hydro power plant is a power generation system that have non-minimum phase model showing initial inverse response characteristic. For span of broad electrical load regulation, conventional non adaptive control techniques, such as PI and PID control would degrade the performance of this power generation system. To ensure the stability of Hydro power plant for severe load variations, we need a kind of controller that has adaptive capability. On the other hand, the utilization of conventional adaptive techniques such as Self Tuning Regulator and Model Reference Adaptive Controller will be diverge to control plants showing non-minimum phase mode. In this paper, the implementation of adaptive intelligence control based on B-Spline neural network along with forward controller for controlling micro hydro power plant will be presented. Based on its characteristic, this adaptive control technique could be implemented directly without any prior training phase. From the simulation studies, the proposed scheme results fast transient response to load variations compared to traditional PI control and also very stable in responding to severe disturbance.
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