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A NEW DIRECT ADAPTIVE REGULATOR WITH ROBUSTNESS ANALYSIS OF SYSTEMS IN BRUNOVSKY FORM

机译:具有布鲁诺夫斯基形式系统鲁棒性分析的新型直接自适应调节器

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摘要

The direct adaptive regulation of unknown nonlinear dynamical systems in Brunovsky form with modeling error effects, is considered in this paper. Since the plant is considered unknown, we propose its approximation by a special form of a Brunovsky type neuro-fuzzy dynamical system (NFDS) assuming also the existence of disturbance expressed as modeling error terms depending on both input and system states plus a not-necessarily-known constant value. The development is combined with a sensitivity analysis of the closed loop and provides a comprehensive and rigorous analysis of the stability properties. The existence and boundness of the control signal is always assured by introducing a novel method of parameter hopping and incorporating it in weight updating laws. Simulations illustrate the potency of the method and its applicability is tested on well known benchmarks, as well as in a bioreactor application. It is shown that the proposed approach is superior to the case of simple recurrent high order neural networks (HONN's).
机译:本文考虑了具有建模误差效应的布鲁诺夫斯基形式的未知非线性动力学系统的直接自适应调节。由于该植物被认为是未知植物,因此我们建议使用一种特殊形式的Brunovsky型神经模糊动力学系统(NFDS)对其进行近似,假设还存在表示为建模误差项的扰动,该误差取决于输入和系统状态以及不必要的情况-已知常数。该开发与闭环敏感性分析相结合,可对稳定性能进行全面而严格的分析。通过引入参数跳变的新方法并将其合并到权重更新定律中,始终可以确保控制信号的存在和有界。仿真说明了该方法的有效性,并在众所周知的基准以及生物反应器应用中测试了该方法的适用性。结果表明,所提出的方法优于简单的递归高阶神经网络(HONN's)。

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