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The profound impact of negative power law noise on statistical estimation

机译:负幂律噪声对统计估计的深刻影响

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This paper investigates the profound impact of negative power law (neg-p) noise-that is, noise with a power spectral density Lp(f) ¿ | f |p for p < 0 - on the ability of practical implementations of statistical estimation or fitting techniques, such as a least squares fit (LSQF) or a Kalman filter, to generate valid results. It demonstrates that such neg-p noise behaves more like systematic error than conventional noise, because neg-p noise is highly correlated, non-stationary, non-mean ergodic, and has an infinite correlation time ¿c. It is further demonstrated that stationary but correlated noise will also cause invalid estimation behavior when the condition T ¿ ¿c is not met, where T is the data collection interval for estimation. Thus, it is shown that neg-p noise, with its infinite ¿c, can generate anomalous estimation results for all values of T, except in certain circumstances. A covariant theory is developed explaining much of this anomalous estimation behavior. However, simulations of the estimation behavior of neg-p noise demonstrate that the subject cannot be fully understood in terms of covariant theory or mean ergodicity. It is finally conjectured that one must investigate the variance ergodicity properties of neg-p noise through the use of 4th order correlation theory to fully explain such simulated behavior.
机译:本文研究了负功率定律(neg-p)噪声(即具有功率谱密度Lp(f)的噪声)的深远影响。 f | p for p <0-统计估计或拟合技术(例如最小二乘拟合(LSQF)或卡尔曼滤波器)的实际实现产生有效结果的能力。它表明,这种neg-p噪声的行为比常规噪声更像系统误差,因为neg-p噪声是高度相关的,非平稳的,非平均遍历的,并且具有无限的相关时间c。进一步证明,当不满足条件T c时,平稳但相关的噪声也会导致无效的估计行为,其中T是用于估计的数据收集间隔。因此,表明,除某些情况外,负p噪声及其无限大的c可以生成所有T值的异常估计结果。建立了协变理论来解释这种异常估计行为。但是,对nep噪声估计行为的仿真表明,根据协变理论或平均遍历性无法完全理解该主题。最终推测,必须通过使用四阶相关理论来充分解释这种模拟行为,来研究neg-p噪声的方差遍历性。

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