32 research outputs found
Higher order Dependency of Chaotic Maps
Some higher-order statistical dependency aspects
of chaotic maps are presented. The autocorrelation
function (ACF) of the mean-adjusted squares, termed the
quadratic autocorrelation function, is used to access nonlinear
dependence of the maps under consideration. A simple
analytical expression for the quadratic ACF has been
found in the case of fully stretching piece-wise linear maps.
A minimum bit energy criterion from chaos communications
is used to motivate choosing maps with strong negative
quadratic autocorrelation. A particular map in this
class, a so-called deformed circular map, is derived which
performs better than other well-known chaotic maps when
used for spreading sequences in chaotic shift-key communication
systems
Optimal Spreading Sequences for Chaos-Based Communication Systems
As a continuation from [2], some higherorder
statistical dependency aspects of chaotic spreading
sequences used in communication systems are presented.
The autocorrelation function (ACF) of the mean-adjusted
squares, termed the quadratic autocorrelation function,
forms the building block of nonlinear dependence assessment
of the family of spreading sequences under investigation.
Explicit results are provided for the theoretical lower
bound, the so-called Fr´echet lower bound, of the quadratic
ACF of that family. A method for producing a spreading
sequence which attains the Fr´echet bound is introduced
Simulation of Some Autoregressive Markovian Sequences of Positive Random Variables
Winter Simulation ConferenceMethods of simulation depending sequences of continuous positive-valued random variables with exponential and uniform marginal distributions are given. In most cases the sequences are first-order, linear autoregressive, Markovian processes. A two-parameter family of this type with exponential marginals is defined and its transformation to a similar multiplicative process with uniform marginals is given. It is shown that for a subclass of this two-parameter family extension to mixed exponential marginals is possible, giving a model of broad applicability for analyzing data and modeling stochastic systems. Efficient simulation of some of these schemes is discussed
The Exponential Autoregressive-Moving Average EARMA (p,q) Process
A new model for pth‐order autoregressive processes with exponential marginal distributions, ear(p), is developed and an earlier model for first‐order moving average exponential processes is extended to qth‐order, giving an ema(q) process. The correlation structures of both processes are obtained separately. A mixed process, earma(p,q), incorporating aspects of both ear(p) and ema(q) correlation structures is then developed. The earma(p, q) process is an analog of the standard arma(p, q) time series models for Gaussian processes and is generated from a single sequence of independent and identically distributed exponential varables.Office of Naval Research NR-42-284National Science Foundation AF 47
Modelling and Residual Analysis of Nonlinear Autoregressive Time Series in Exponential Variables
An approach to modelling and residual analysis of nonlinear autoregressive time series in exponential variables is presented; the approach is illustrated by an analysis of a long series of wind velocity data which has first been detrended and then transformed into a stationary series with an exponential marginal distribution. The stationary series is modelled with a newly developed type of second order autoregressive process with random coefficients, called the NEAR(2) model; it has a second order autoregressive correlation structure but is nonlinear because its coefficients are random. The exponential distributional assumptions involved in this model highlight a very broad four parameter structure which combines five exponential random variables into a sixth exponential random variable; other applications of this structure are briefly considered. Dependency in the NEAR(2) process not accounted for by standard autocorrelations is explored by developing a residual analysis for time series having autoregressive correlation structure; this involves defining linear uncorrelated residuals which are dependent, and then assessing this higher order dependence by standard time series computations. The application of this residual analysis to the wind velocity data illustrates both the utility and difficulty of nonlinear time series modelling.Office of Naval Research NR-04
On the stationary version of the generalized hyperbolic ARCH model
This paper finds conditions under which the generalized hyperbolic ARCH-type model is strictly stationary. Properties of the model are investigated and in particular an estimation procedure is proposed. The resulting stationary model provides with a robust non-Gaussian ARCH-type alternative