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Quantized system identification under a class of persistent excitations

机译:一类持续激励下的量化系统识别

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Identification of quantized system with output noises is studied. The main theoretical difficulty exists is that the parameter estimation and the quantization are related, which is ignored in most literatures on identification and filtering of quantization systems. For right this difficulty, the control of quantization systems cannot be studied. By analyzing the condition expectation of quantization with prior parameter estimations, the identification algorithm is constructed under a class of persistently excited inputs. It is proved to converge to the real parameter in mean of almost sure and mean square and have a convergence speed of 1/k (the same order under classical systems with accurate values of system outputs). More importantly, the optimal convergence speed is achieved by choosing the best quantization value. A simulation example is used to support the algorithm developed in this paper. Finally, concluding remarks are addressed and related future work is discussed.
机译:研究了带有输出噪声的量化系统的辨识。存在的主要理论困难是参数估计和量化相关,在有关量化系统识别和滤波的大多数文献中都忽略了这一点。对于这个困难,不能研究量化系统的控制。通过用先验参数估计来分析量化的条件期望,在一类持续激励输入下构造识别算法。它被证明以几乎确定和均方的均值收敛到实参,并且收敛速度为1 / k(在经典系统下,具有精确的系统输出值,收敛速度相同)。更重要的是,通过选择最佳量化值可以实现最佳收敛速度。仿真实例支持本文开发的算法。最后,讨论了结语,并讨论了相关的未来工作。

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