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Adaptive stochastic resonance (Adaptive signal processing).

机译:自适应随机共振(自适应信号处理)。

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摘要

This dissertation introduces and explores the new property of adaptive stochastic resonance (ASR). Stochastic resonance (SR) occurs when noise enhances an external forcing signal in a nonlinear dynamical system. ASR uses statistical learning techniques that learn the optimal level of noise to add to a nonlinear system in the sense that this level of noise will maximize the system's signal-to-noise ratio or that it will improve or extremize other measures of how well the system performs. This dissertation studies how adaptive systems can achieve ASR based on only samples from the process or based on these samples and minimal estimates of the system dynamics.; The fundamental result of this research is that stochastic gradient learning can achieve ASR. A statistical learning system can learn the SR effect if it performs a stochastic gradient ascent on a system performance measure such as the system's spectral signal-to-noise ratio. But the gradient becomes so impulsive near optimality that it can destabilize the learning process. A Cauchy noise suppressor solves this problem and lets the stochastic-gradient learning laws train on noisy input-output samples to achieve stochastic resonance.; This research led to new stochastic learning laws for different types of systems and signals and for different types of performance measures. Stochastic gradient ascent on the signal-to-noise ratio led to ASR for narrowband signals. But broadband forcing signals required a correlation performance measure and often required some estimate of the Jacobian structure of the dynamical system.; We discovered stochastic resonance in nonlinear systems with impulsive noise that has infinite variance. An exponential law relates the SR effect or the optimal noise dispersion to the impulsiveness. We also showed that "smart" or black-box function approximators such as adaptive fuzzy systems can learn to induce the SR effect in many nonlinear systems. We developed new fuzzy learning laws for systems that take as input both numerical vectors and entire fuzzy sets. The appendices present these fuzzy results and apply them to the multimedia problem of teaching an intelligent agent to learn a user's preferences and to search databases on the user's behalf.; This research revealed many problems with ASR. The adaptive system required a large number of input-output samples or it required at least some knowledge of the system dynamics and signals. We found no theorems to guarantee that the stochastic learning algorithms converge. This reflects a fundamental problem of research in SR and ASR. Even simple system nonlinearity can complicate or preclude a closed-form analysis and do so even if we have exact knowledge of the nonlinear signal systems. Future research may lead to new learning laws or to new ways to approximate the dynamics of nonlinear systems that stochastically resonate. This will help answer the key question that underlies ASR: Which noisy dynamical systems show what SR effects for which forcing signals and for which performance measures?
机译:本文介绍并探索了自适应随机共振的新特性。当噪声增强非线性动力系统中的外部强迫信号时,就会发生随机共振(SR)。 ASR使用统计学习技术来学习最佳噪声水平,以从某种意义上说,该噪声水平将使系统的信噪比最大化,或者将改善或消除对系统性能的其他衡量,从而将其添加到非线性系统中施行。本文研究自适应系统如何仅基于过程中的样本或基于这些样本以及系统动力学的最小估计来实现ASR。这项研究的基本结果是随机梯度学习可以实现ASR。如果统计学习系统对系统性能指标(例如系统的频谱信噪比)执行随机梯度上升,则可以学习SR效果。但是,梯度变得接近理想状态时具有冲动性,以至于可能破坏学习过程的稳定性。柯西噪声抑制器解决了这个问题,并让随机梯度学习法则在嘈杂的输入输出样本上进行训练,以实现随机共振。这项研究导致了针对不同类型的系统和信号以及不同类型的性能度量的新的随机学习定律。信噪比的随机梯度上升导致了窄带信号的ASR。但是宽带强迫信号需要相关的性能度量,并且常常需要对动力系统的雅可比结构进行一些估计。我们发现了具有无限方差的脉冲噪声的非线性系统中的随机共振。指数律将SR效应或最佳噪声分散与冲动相关。我们还表明,“智能”或黑盒函数逼近器(例如自适应模糊系统)可以学习在许多非线性系统中诱发SR效应。我们为以数值向量和整个模糊集为输入的系统开发了新的模糊学习定律。附录给出了这些模糊的结果,并将其应用于多媒体问题,即教智能代理学习用户的偏好并代表用户搜索数据库。这项研究揭示了ASR的许多问题。自适应系统需要大量的输入输出样本,或者它至少需要有关系统动力学和信号的一些知识。我们没有找到定理来保证随机学习算法收敛。这反映了SR和ASR研究的一个基本问题。即使我们对非线性信号系统有确切的了解,即使是简单的系统非线性也会使复杂形式的分析变得复杂或无法进行,甚至会导致复杂化。未来的研究可能会导致新的学习法则或新的方法来近似估计随机共振的非线性系统的动力学。这将有助于回答构成ASR的关键问题:哪些嘈杂的动力学系统对哪些强制信号和哪些性能指标显示出SR效应?

著录项

  • 作者

    Mitaim, Sanya.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Engineering Electronics and Electrical.; Engineering System Science.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 150 p.
  • 总页数 150
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;系统科学;
  • 关键词

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