Displaying 20 results from an estimated 900 matches similar to: "power in a specific frequency band"
2007 Dec 12
2
discrepancy between periodogram implementations ? per and spec.pgram
hello,
I have been using the per function in package longmemo to obtain a
simple raw periodogram.
I am considering to switch to the function spec.pgram since I want to be
able to do tapering.
To compare both I used spec.pgram with the options as suggested in the
documentation of per {longmemo} to make them correspond.
Now I have found on a variety of examples that there is a shift between
2008 Jun 09
2
using spec.pgram
Hi everyone,
first of all, I would like to say that I am a newbie in R, so I apologize in
advance if my questions seem to be too easy for you.
Well, I'm looking for periodicity in histograms. I have histograms of
certain phenomenons and I'm asking whether a periodicity exists in these
data. So, I make a periodogram with the function spec.pgram. For instance,
if I have a histogram h, I
2008 Mar 27
6
help! - spectral analysis - spec.pgram
Can someone explain me this spec.pgram effect?
Code:
period.6<-c(0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10
,0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10,0,0,0,0,0,10)
period.5<-c(0,0,0,0,0,10,0,0,0,0,10,0,0,0,0,0,0,10,0,0,0,0,10,0,0,0,0,0,0,10
,0,0,0,0,10,0,0,0,0,0,0,10,0,0,0,0,10,0,0,0,0,0,0,10,0,0,0,0,10,0)
par(mfrow=c(2,1))
2024 Jul 10
1
Implementation for selecting lag of a lag window spectral estimator using generalized cross validation (using deviance)
Dear All,
I am looking for:
A software to select the lag length for a lag window spectral estimator.
Also, I have a small query in the reprex given below.
Background for the above, from the book by Percival and Walden:
1. We are given X_1,...,X_n which is one realization of a stochastic process.
2. We may compute the periodogram using FFT, for example by the
function spectrum in R.
3. The
2006 Jan 24
3
R-help Digest, Vol 35, Issue 24
Dear Prof Ripley,
First of all, unless you are an english professor, then I do not think you have
any business policing language. I'm still very much a student, both in R, and
regarding signal analysis. My competence on the subject as compared too your
own level of expertise, or my spelling for that matter, may be a contension for
you, but it would have been better had you kept that opinion
2007 Jul 09
1
When is the periodogram is consistent with white noise?
Hello everyone,
This is my first time posting to the list, thanks in advance.
I am calculating the smoothed periodogram for the residuals of an AR model
that I fit to EEG data. The autocorrelation plot of the residuals shows the
series is now approximately white (i.e. ACF = 1 at lag 0, and close to 0 for
all other lags). I would like to show that the spectrum of the series is
also
2006 Feb 15
2
arrays of lists in R ("cell arrays" in Matlab)
Dear all
I would like to have some data in the form of a 2-dimensional array
(matrix) of lists, so that I can easily find the desired list object by
indexing the structure by rows and columns. In matlab there exists a
data type called "cell array": a matrix of "cells", which are composite
objects very similar to R lists.
I know that in R you can create 1-dimensional
2009 Nov 18
1
Spectrum confidence interval
Dear useRs,
I'd like to plot a confidence interval on a periodogram. My problem is
that spec.pgram(sunspots,ci=0.95,log="yes") gives me a blue error bar on
the plot, but spec.pgram(sunspots,ci=0.95,log="no") does not. My
questions are:
1. how should I plot the confidence interval with log="no"?
2. how should I get the min and max values of the confidence
2007 Jan 08
2
Simple spectral analysis
Hello world,
I am actually trying to transfer a lecture from Statistica to
R and I ran into problems with spectral analysis, I think I
just don't get it 8-(
(The posting from "FFT, frequs, magnitudes, phases" from 2005
did not enlighten me)
As a starter for the students I have a 10year data set of air
temperature with daily values and I try to
get a periodogram where the annual
2009 Jun 19
1
typo in Lomb-Scargle periodogram implementation in spec.ls() from cts package?
Hello!
I tried to contact author of the package, but I got no reply. That is why I write it here. This might be useful for those who were using cts for spectral analysis of non-uniformly spaced data.
In file spec.ls.R from cts_1.0-1.tar.gz lines 59-60 are written as
pgram[k, i, j] <- 0.5 * ((sum(x[1:length(ti)]* cos(2 * pi * freq.temp[k] * (ti - tao))))^2/sum((cos(2 *
pi * freq.temp[k] *
2006 Jan 24
1
spec.pgram() normalized too what?
Dear list,
What on earth is spec.pgram() normalized too? If you would like to skip my
proof as to why it's not normed too the mean squared or sum squared
amplitude of the discrete function a[], feel free too skip the rest of the
message. If it is, but you know why it's not exact in spec.pgram() when it
should be, skip the rest of this message. The issue I refer herein refers
only too a
1999 Jul 19
9
time series in R
Time Series functions in R
==========================
I think a good basic S-like functionality for library(ts) in base R
would include
ts class, tsp, is.ts, as.ts
plot methods
start end window frequency cycle deltat
lag diff aggregate
filter
spectrum, spec.pgram, spec.taper, cumulative periodogram, spec.ar?
ar -- at least univariate by Yule-Walker
arima -- sim, filter, mle, diag, forecast
2010 Nov 22
1
cpgram: access data, confidence bands
Dear R experts, beginners and everyone else,
I'm calculating "cumulative periodogram" using the command "cpgram"
[1] from the MASS library. Here is a short example with the "lh"
(hormone level) dataset:
library(MASS)
plot(lh,type="l",ylab="value",xlab="time", main="Hormone Levels (lh)")
spectrum(lh,
2000 Feb 01
1
plotting spectrum of time series etc
Hi, everyone, I tried to use "spectrum()" or "spec.pgram()" to get a
periodogram of a time series but they didn't work.
Even the examples given in the help file didn't work (all with the same
error message, below). And the 'ts'ibrary was
loaded with "library(ts)" or "library("ts"). I also tried
library(tseries) but got the same problem.
2000 Sep 23
2
Units
I used the AR modelling written for R (S) on blood pressure and heart rate
signals. I used 60 one second samples and a model order of 20. I used the
"ar" finction in the "ts" package.
Given that blood pressure is measured in mmHg would the spectral density (on
the graph displayed be [mmHg]sq/Hz ?
And the heart rate is measured in Beats Per Minute (bpm) - so would the
2004 Aug 08
1
(REPOST) Simple main effects in 2-way repeated measure ANOVA
Hi all
I am running a 2-way repeated measure anova with 1 between-subjects
factor (Group=treatment, control), and 1 within-subject factor (Time of
measurement: time1, time2). I extract the results of the anova with:
summary(aov(effect ~ Group*Time + Error=Subj/Time, data=mydata))
Now, this must be clearly a dumb question, but how can I quickly
extract in R all the post-hoc t-tests for the
2009 Mar 03
1
periodogram smoothing question
Hello -
I am currently simulating bivariate AR(1) time series data and have the
following line in my code:
Px=spec.pgram(ts.union(X,XX),spans=c(?,?))
The spans option is where I enter in the vector containing the Daniell
smoother numbers, but I don't know what a Daniell smoother is (hence the
question marks). Can somebody please tell me?
Is there another option where I can simply enter in
2006 Jul 20
2
(robust) mixed-effects model with covariate
Dear all,
I am unsure about how to specify a model in R and I thought of asking
some advice to the list. I have two groups ("Group"= A, B) of
subjects, with each subject undertaking a test before and after a
certain treatment ("Time"= pre, post). Additionally, I want to enter
the age of the subject as a covariate (the performance on the test is
affected by age),
2019 Feb 14
0
Proposed speedup of spec.pgram from spectrum.R
Hello,
I propose two small changes to spec.pgram to get modest speedup when
dealing with input (x) having multiple columns. With plot = FALSE, I
commonly see ~10-20% speedup, for a two column input matrix and the speedup
increases for more columns with a maximum close to 45%. In the function as
it currently exists, only the upper right triangle of pgram is necessary
and pgram is not returned by
2007 Nov 25
1
spec.pgram() - circularity of kernel
Hi,
I am far from experienced in both R and time series hence the question.
The code for spec.pgram() seems to involve a circularity of the kernel (see
below) yielding new power estimates to all frequencies computed by FFT.
"
if (!is.null(kernel)) {
for (i in 1:ncol(x)) for (j in 1:ncol(x)) pgram[, i,
j] <- kernapply(pgram[, i, j], kernel, circular = TRUE)