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引用次数: 2

摘要

摘要提出了一种新的正弦信号自适应识别框架,用于估计所有未知参数(即偏移量、幅度、频率和相位)。所提出的识别独立于任何观察者/预测器设计,因此可以以简化的方式实现。通过对输出测量值进行滤波运算,得到适当的参数误差信息,从而驱动自适应律。证明了参数估计的全局指数收敛性。将该思想进一步推广到多正弦信号,并通过仿真验证了其有效性。
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Adaptive Parameter Identification of Sinusoidal Signals
Abstract A novel adaptive identification framework is proposed for sinusoidal signals to estimate all unknown parameters (i.e. offset, amplitude, frequency and phase). The proposed identification is independent of any observer/predictor design and thus can be implemented in a simplified manner. The adaptive laws are driven by appropriate parameter error information derived by applying filter operations on the output measurements. Globally exponential convergence of the parameter estimation is proved. The proposed idea is further extended for multi-sinusoid signals and verified in terms of simulations.
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