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Tom-Based Blind Identification of Nonlinear Volterra Systems

机译:基于Tom的非线性Volterra系统的盲辨识

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This paper extends blind single-input single-output (SISO) Volterra-system identification from the second-order statistics (SOSs) domain into the third-order statistics domain. For the full-sized Volterra system with finite order and memory, which is excited by unobservable independent identically distributed (i.i.d.) stationary random sequences, it is known that blind identifiability is not possible in the SOS domain. Although this conclusion is also true in the higher order statistics (HOSs) domain, it will be shown that under some sufficient conditions, a larger set of sparse Volterra systems can be identified blindly in third-order moment (TOM) domain than in the SOS counterpart. This is due to the fact that (n + 1)(3n + 2)/2 terms of different statistical quantities can be used in the third-order-statistics domain while only (n + 2) terms of statistical information are nonredundant for SOS-based blind identification, where n is the memory length of the system. The validity and usefulness of the approach are demonstrated in numerical simulations as well as experiments applied to blindly identify the primary path of active-noise-control (ANC) systems in a practical scenario.
机译:本文将盲单输入单输出(SISO)Volterra系统识别从二阶统计(SOS)域扩展到三阶统计域。对于具有有限顺序和记忆的完整大小的Volterra系统,该系统由不可观察的独立均匀分布(i.d.)平稳随机序列所激发,这是众所周知的,在SOS域中不可能实现盲目可识别性。尽管此结论在高阶统计(HOS)领域中也是正确的,但将表明,在某些足够的条件下,与SOS相比,在三阶矩(TOM)域中可以盲目识别更大的稀疏Volterra系统集对方。这是由于以下事实:在三阶统计域中可以使用不同统计量的(n + 1)(3n + 2)/ 2项,而对于SOS,只有(n + 2)个统计信息项是非冗余的基于盲的标识,其中n是系统的内存长度。该方法的有效性和实用性在数值模拟中以及在实际情况下用于盲目识别主动噪声控制(ANC)系统主要路径的实验中得到了证明。

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