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author Daniele Nicolodi <nicolodi@science.unitn.it>
date Wed, 23 Nov 2011 19:22:13 +0100
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  <h1 class="title"><a name="f3-12899" id="f3-12899"></a>Log-scale transfer function estimates</h1>
  <hr>
  
  <p>
	<h2>Description</h2>
<p>
  The LTPDA method <a href="matlab:doc('ao/ltfe')">ao/ltfe</a> estimates the transfer function of time-series
  signals, included in the input <tt>ao</tt>s following the LPSD algorithm <a href="#references">[1]</a>. Spectral density estimates are not 
  evaluated at frequencies which are linear multiples of the minimum frequency resolution <tt>1/T</tt>, where <tt>T</tt> 
  is the window lenght, but on a logarithmic scale. The algorithm takes care of calculating the frequencies at which to evaluate
  the spectral estimate, aiming at minimizing the uncertainty in the estimate itself, and to recalculate a suitable
  window length for each frequency bin.
  </p>
  <p> 
  Data are windowed prior to the estimation of the spectrum, by multiplying
  it with a <a href="specwin.html">spectral window object</a>, and can be detrended by polinomial of time in order to reduce the impact
  of the border discontinuities. Detrending is performed on each individual window.
  The user can choose the quantity being given in output among ASD (amplitude spectral density),
  PSD (power spectral density), AS (amplitude spectrum), and PS (power spectrum).
  </p>
  <br>
<h2>Syntax</h2>
</p>
<div class="fragment"><pre>
    <br>    b = ltfe(a1,a2,pl)
  </pre>
</div>
<p>
  <tt>a1</tt> and <tt>a2</tt> are the 2 <tt>ao</tt>s containing the input time series to be evaluated, <tt>b</tt> is the output object and <tt>pl</tt> is an optional parameter list.
 
  <h2>Parameters</h2>
  <p>The parameter list <tt>pl</tt> includes the following parameters:</p> 
  <ul>
  <li> <tt>'Kdes'</tt> - desired number of averages   [default: 100]</li>
  <li> <tt>'Jdes'</tt> - number of spectral frequencies to compute [default: 1000]</li>
  <li> <tt>'Lmin'</tt> - minimum segment length [default: 0]</li>
  <li> <tt>'Win'</tt> - the window to be applied to the data to remove the 
    discontinuities at edges of segments. [default: taken from user prefs].<br>
    The window is described by a string with its name and, only in the case of Kaiser window,
  the additional parameter <tt>'psll'</tt>. <br>For instance: plist('Win', 'Kaiser', 'psll', 200).  </li>
  <li> <tt>'Olap'</tt> - segment percent overlap [default: -1, (taken from window function)] </li>
  <li> <tt>'Order'</tt> - order of segment detrending <ul>
      <li>      -1 - no detrending  </li>
      <li>       0 - subtract mean [default] </li>
      <li>       1 - subtract linear fit </li>
      <li>       N - subtract fit of polynomial, order N  </li> </ul> </li>
</ul>
  The length of the window is set by the value of the parameter <tt>'Nfft'</tt>, so that the window
  is actually rebuilt using only the key features of the window, i.e. the name and, for Kaiser windows, the PSLL.
</p>

<p>
  <table cellspacing="0" class="note" summary="Note" cellpadding="5" border="1">
    <tr width="90%">
      <td>
        If the user doesn't specify the value of a given parameter, the default value is used.
      </td>
    </tr>
  </table>
</p>

</p>
<p>The function makes logaritmic frequencyscale transfer functions estimates between the 2 input <tt>ao</tt>s, and the output will contain the transfer function estimate from the first <tt>ao</tt> to the second.</p>

</pre> </div>
</p>
<h2>Algorithm</h2>
<p>
  The algorithm is implemented according to <a href="#references">[1]</a>. The sample variance is computed according to:  
</p>
<div align="center">
  <img src="images/tfe_sigma1.png" >
</div>
where
 <div align="center">
  <img src="images/tfe_sigma2.png" >
</div>
  <br>
<p>
is the coherence function.
  In the LPSD algorithm, the first frequencies bins are usually computed using a single segment containing all the data. 
  For these bins, the standard deviation of the mean is set to <tt>Inf</tt>.
</p>
  <h2>Example</h2>
<p>
  Evaluation of the transfer function between two time-series represented by:
  a low frequency sinewave signal superimposed to
  white noise, and a low frequency sinewave signal at the same frequency, phase shifted and with different
  amplitude, superimposed to white noise.
</p>
<div class="fragment"><pre>
    <br>    <span class="comment">% Parameters</span>
    nsecs = 1000;
    fs  = 10;
    nfft = 1000;
    
    <span class="comment">% Create input AOs</span>
    x = ao(plist(<span class="string">'waveform'</span>,<span class="string">'sine wave'</span>,<span class="string">'f'</span>,0.1,<span class="string">'A'</span>,1,<span class="string">'nsecs'</span>,nsecs,<span class="string">'fs'</span>,fs)) + ...
        ao(plist(<span class="string">'waveform'</span>,<span class="string">'noise'</span>,<span class="string">'type'</span>,<span class="string">'normal'</span>,<span class="string">'nsecs'</span>,nsecs,<span class="string">'fs'</span>,fs));
    x.setYunits(<span class="string">'m'</span>);
    y = ao(plist(<span class="string">'waveform'</span>,<span class="string">'sine wave'</span>,<span class="string">'f'</span>,0.1,<span class="string">'A'</span>,2,<span class="string">'nsecs'</span>,nsecs,<span class="string">'fs'</span>,fs,<span class="string">'phi'</span>,90)) + ...
        4*ao(plist(<span class="string">'waveform'</span>,<span class="string">'noise'</span>,<span class="string">'type'</span>,<span class="string">'normal'</span>,<span class="string">'nsecs'</span>,nsecs,<span class="string">'fs'</span>,fs));
    y.setYunits(<span class="string">'V'</span>);
    
    <span class="comment">% Compute transfer function</span>
    Txy = ltfe(x,y,plist(<span class="string">'win'</span>,specwin(<span class="string">'Kaiser'</span>,1,200),<span class="string">'nfft'</span>,nfft));

    <span class="comment">% Plot</span>
    iplot(Txy);
  </pre>
</div>

<img src="images/l_transfer_1.png" alt="" border="3">
<br>
<!-- <img src="images/l_transfer_2.png" alt="" border="3">
<br> -->

<h2><a name="references">References</a></h2>

<ol>
 <li> M. Troebs, G. Heinzel, Improved spectrum estimation from digitized time series
on a logarithmic frequency axis, <a href="http://dx.doi.org/10.1016/j.measurement.2005.10.010" ><i>Measurement</i>, Vol. 39 (2006), pp. 120 - 129</a>.  See also the <a href="http://dx.doi.org/10.1016/j.measurement.2008.04.004" >Corrigendum</a>. </li>
</ol>
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