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首页> 外文期刊>International Journal of Control >Recursive subspace identification subject to relatively slow time-varying load disturbance
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Recursive subspace identification subject to relatively slow time-varying load disturbance

机译:递归子空间识别受相对缓慢的时变负载干扰

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摘要

In this paper, a recursive subspace identification method is proposed to identify linear time-invariant systems subject to load disturbance with relatively slow dynamics. Using the linear superposition principle, the load disturbance response is decomposed from the deterministic-stochastic system response in the form of a time-varying parameter. To ensure unbiased estimation of the deterministic system matrices, a recursive least-squares (RLS) identification algorithm is established with a fixed forgetting factor, while another RLS algorithm with an adaptive forgetting factor is constructed based on the output prediction error to quickly track the time-varying parameter of load disturbance response. By introducing a deadbeat observer to represent the deterministic system response, two extended observer Markov parameter matrices are constructed for recursive estimation. Consequently, the deterministic matrices are retrieved from the identified system Markov parameter matrices. The convergence of the proposed method is analysed with a proof. Two illustrative examples are shown to demonstrate the effectiveness and merit of the proposed identification method.
机译:在本文中,提出了一种递归子空间识别方法来识别以相对慢的动态负载干扰的线性时间不变系统。使用线性叠加原理,负载扰动响应以时变参数的形式从确定性 - 随机系统响应分解。为了确保确定性系统矩阵的不偏估计,使用固定的遗忘因子建立递归最小二乘(RLS)识别算法,而基于输出预测误差来构建具有自适应遗忘因子的另一RLS算法以快速跟踪时间 - 负载扰动响应参数。通过引入旋转观测器来表示确定性系统响应,构造了两个扩展观察者马尔可夫参数矩阵以进行递归估计。因此,从识别的系统马尔可夫参数矩阵检索确定性矩阵。通过证明分析所提出的方法的收敛性。显示了两个说明性实施例来证明所提出的识别方法的有效性和优点。

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