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1\section{Pedestal Extraction \label{sec:pedestals}}
2
3\subsection{Pedestal RMS}
4
5The background $BG$ (Pedestal)
6can be completely described by the noise-autocorrelation matrix $\boldsymbol{B}$
7(eq.~\ref{eq:autocorr}),
8where the diagonal elements give what is usually denoted as the ``Pedestal RMS''.
9\par
10
11By definition, the $\boldsymbol{B}$ and thus the ``pedestal RMS''
12is independent from the signal extractor.
13
14\subsection{Bias and Mean-squared Error}
15
16Consider a large number of same signals $S$. By applying a signal extractor
17we obtain a distribution of estimated signals $\widehat{S}$ (for fixed $S$ and
18fixed background fluctuations $BG$). The distribution of the quantity
19
20\begin{equation}
21X = \widehat{S}-S
22\end{equation}
23
24has the mean $B$ and the Variance $MSE$ defined as:
25
26\begin{eqnarray}
27 B \ \ \ \ = \ \ \ \ \ \ <X> \ \ \ \ \ &=& \ \ <\widehat{S}> \ -\ S\\
28 R \ \ \ \ = \ <(X-B)^2> &=& \ Var[\widehat{S}]\\
29 MSE \ = \ \ \ \ \ <X^2> \ \ \ \ &=& \ Var[\widehat{S}] +\ B^2
30\end{eqnarray}
31
32The parameter $B$ is also called the {\textit{\bf BIAS}} of the estimator and $MSE$
33the {\textit{\bf MEAN-SQUARED ERROR}} which combines the variance of $\widehat{S}$ and
34the bias. Both depend generally on the size of $S$ and the background fluctuations $BG$,
35thus: $B = B(S,BG)$ and $MSE = MSE(S,BG)$.
36
37\par
38Usually, one measures easily the parameter $R$, but needs the $MSE$ for statistical analysis (e.g.
39in the image cleaning).
40However, only in case of a vanishing bias $B$, the two numbers are equal. Otherwise,
41the bias $B$ has to be known beforehand. Note that every sliding window extractor has a
42bias, especially at low or vanishing signals $S$.
43
44\subsection{Pedestal Fluctuations as Contribution to the Signal Fluctuations}
45
46A photo-multiplier signal yields, to a very good approximation, the
47following relation:
48
49\begin{equation}
50\frac{Var[Q]}{<Q>^2} = \frac{1}{<n_{phe}>} * F^2
51\end{equation}
52
53Here, $Q$ is the signal fluctuation due to the number of signal photo-electrons
54(equiv. to the signal $S$), and $Var[Q]$ the fluctuations of the true signal $Q$
55due to the Poisson fluctuations of the number of photo-electrons. Because of:
56
57\begin{eqnarray}
58\widehat{Q} &=& Q + X \\
59Var(\widehat{Q}) &=& Var(Q) + Var(X) \\
60Var(Q) &=& Var(\widehat{Q}) - Var(X)
61\end{eqnarray}
62
63$Var[Q]$ can be obtained from:
64
65\begin{eqnarray}
66Var(Q) &\approx& Var(\widehat{Q}) - Var(\widehat{Q}=0)
67\label{eq:rmssubtraction}
68\end{eqnarray}
69
70In the last line of eq.~\ref{eq:rmssubtraction}, it is assumed that $R$ does not dependent
71on the signal height\footnote{%
72A way to check whether the right RMS has been subtracted is to make the
73``Razmick''-plot
74
75\begin{equation}
76 \frac{Var[\widehat{Q}]}{<\widehat{Q}>^2} \quad \textit{vs.} \quad \frac{1}{<\widehat{Q}>}
77\end{equation}
78
79This should give a straight line passing through the origin. The slope of
80the line is equal to
81
82\begin{equation}
83 c * F^2
84\end{equation}
85
86where $c$ is the photon/ADC conversion factor $<Q>/<m_{pe}>$.}
87(as is the case
88for the digital filter, eq.~\ref{eq:of_noise}). One can then retrieve $R$
89by applying the signal extractor to a {\textit{\bf fixed window}} of pedestal events, where the
90bias vanishes and measure $Var[\widehat{Q}=0]$.
91
92\subsection{Methods to Retrieve Bias and Mean-Squared Error}
93
94In general, the extracted signal variance $R$ is different from the pedestal RMS.
95It cannot be obtained by applying the signal extractor to pedestal events, because of the
96(unknown) bias.
97\par
98In the case of the digital filter, $R$ is expected to be independent from the
99signal amplitude $S$ and depends only on the background $BG$ (eq.~\ref{eq:of_noise}).
100It can then be obtained from the calculation of the variance $Var[\widehat{Q}]$
101by applying the extractor to a fixed window of pure background events (``pedestal events'')
102and get rid of the bias in that way.
103\par
104
105In order to calculate bias and Mean-squared error, we proceeded in the following ways:
106\begin{enumerate}
107\item Determine $R$ by applying the signal extractor to a fixed window
108 of pedestal events. The background fluctuations can be simulated with different
109 levels of night sky background and the continuous light source, but no signal size
110 dependency can be retrieved with this method.
111\item Determine $B$ and $MSE$ from MC events with and without added noise.
112 Assuming that $MSE$ and $B$ are negligible for the events without noise, one can
113 get a dependency of both values from the size of the signal.
114\item Determine $MSE$ from the fitted error of $\widehat{S}$, which is possible for the
115 fit and the digital filter (eq.~\ref{eq:of_noise}).
116 In prinicple, all dependencies can be retrieved with this method.
117\end{enumerate}
118
119
120\begin{figure}[htp]
121\centering
122\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38993_RelMean.eps}
123\vspace{\floatsep}
124\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38995_RelMean.eps}
125\vspace{\floatsep}
126\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38996_RelMean.eps}
127\caption{MExtractTimeAndChargeSpline with amplitude extraction:
128Difference in mean pedestal (per FADC slice) between extraction algorithm
129applied on a fixed window of 1 FADC slice (``extractor random'') and a simple addition of
1302 FADC slices (``fundamental''). On the left, a run with closed camera has been taken, in the center
131 an opened camera observing an extra-galactic star field and on the right, an open camera being
132illuminated by the continuous light of the calibration (level: 100). Every entry corresponds to one
133pixel.}
134\label{fig:amp:relmean}
135\end{figure}
136
137\begin{figure}[htp]
138\centering
139\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38993_RelMean.eps}
140\vspace{\floatsep}
141\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38995_RelMean.eps}
142\vspace{\floatsep}
143\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38996_RelMean.eps}
144\caption{MExtractTimeAndChargeSpline with integral over 2 slices:
145Difference in mean pedestal (per FADC slice) between extraction algorithm
146applied on a fixed window of 2 FADC slices (``extractor random'') and a simple addition of
1472 FADC slices (``fundamental''). On the left, a run with closed camera has been taken, in the center
148 an opened camera observing an extra-galactic star field and on the right, an open camera being
149illuminated by the continuous light of the calibration (level: 100). Every entry corresponds to one
150pixel.}
151\label{fig:int:relmean}
152\end{figure}
153
154\begin{figure}[htp]
155\centering
156\vspace{\floatsep}
157\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38993_RelMean.eps}
158\vspace{\floatsep}
159\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38995_RelMean.eps}
160\vspace{\floatsep}
161\includegraphics[width=0.3\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38996_RelMean.eps}
162\caption{MExtractTimeAndChargeDigitalFilter:
163Difference in mean pedestal (per FADC slice) between extraction algorithm
164applied on a fixed window of 6 FADC slices and time-randomized weights (``extractor random'')
165and a simple addition of
1666 FADC slices (``fundamental''). On the left, a run with closed camera has been taken, in the center
167 an opened camera observing an extra-galactic star field and on the right, an open camera being
168illuminated by the continuous light of the calibration (level: 100). Every entry corresponds to one
169pixel.}
170\label{fig:df:relmean}
171\end{figure}
172
173%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
174
175\subsubsection{ \label{sec:determiner} Application of the Signal Extractor to a Fixed Window
176of Pedestal Events}
177
178By applying the signal extractor to a fixed window of pedestal events, we
179determine the parameter $R$ for the case of no signal ($Q = 0$). In the case of
180extractors using a fixed window (extractors nr. \#1 to \#22
181in section~\ref{sec:algorithms}), the results are the same by construction
182as calculating the pedestal RMS.
183\par
184In MARS, this functionality is implemented with a function-call to: \\
185
186{\textit{\bf MJPedestal::SetExtractionWithExtractorRndm()}} and/or \\
187{\textit{\bf MExtractPedestal::SetRandomCalculation()}}\\
188
189Besides fixing the global extraction window, additionally the following steps are undertaken
190in order to assure that the bias vanishes:
191
192\begin{description}
193\item[\textit{MExtractTimeAndChargeSpline}:\xspace] The spline
194maximum position -- which determines the exact extraction window -- is placed arbitrarily
195at a random place within the digitizing binning resolution of one central FADC slice.
196\item[\textit{MExtractTimeAndChargeDigitalFilter}:\xspace] The second step timing
197offset $\tau$ (eq.~\ref{eq:offsettau}) gets randomized for each event.
198\end{description}
199
200\par
201
202The following figures~\ref{fig:amp:relmean} through~\ref{fig:df:relrms} show results
203obtained with the second method for three background intensities:
204
205\begin{enumerate}
206\item Closed camera and no (Poissonian) fluctuation due to photons from the night sky background
207\item The camera pointing to an extra-galactic region with stars in the field of view
208\item The camera illuminated by a continuous light source of intensity 100.
209\end{enumerate}
210
211Figures~\ref{fig:amp:relmean} through~\ref{fig:df:relmean}
212show the calculated biases obtained with this method for all pixels in the camera
213and for the different levels of (night-sky) background.
214One can see that the bias vanishes to an accuracy of better than 1\%
215for the extractors which are used in this TDAS.
216
217%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%1
218
219\begin{figure}[htp]
220\centering
221\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38993_RMSDiff.eps}
222\vspace{\floatsep}
223\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38995_RMSDiff.eps}
224\vspace{\floatsep}
225\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Amplitude_Amplitude_Range_01_09_01_10_Run_38996_RMSDiff.eps}
226\caption{MExtractTimeAndChargeSpline with amplitude:
227Difference in RMS (per FADC slice) between extraction algorithm
228applied on a fixed window and the corresponding pedestal RMS.
229Closed camera (left), open camera observing extra-galactic star field (right) and
230camera being illuminated by the continuous light (bottom).
231Every entry corresponds to one pixel.}
232\label{fig:amp:relrms}
233\end{figure}
234
235
236\begin{figure}[htp]
237\centering
238\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38993_RMSDiff.eps}
239\vspace{\floatsep}
240\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38995_RMSDiff.eps}
241\vspace{\floatsep}
242\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeSpline_Rise-and-Fall-Time_0.5_1.5_Range_01_10_02_12_Run_38996_RMSDiff.eps}
243\caption{MExtractTimeAndChargeSpline with integral over 2 slices:
244Difference in RMS (per FADC slice) between extraction algorithm
245applied on a fixed window and the corresponding pedestal RMS.
246Closed camera (left), open camera observing extra-galactic star field (right) and
247camera being illuminated by the continuous light (bottom).
248Every entry corresponds to one
249pixel.}
250\label{fig:amp:relrms}
251\end{figure}
252
253
254\begin{figure}[htp]
255\centering
256\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38993_RMSDiff.eps}
257\vspace{\floatsep}
258\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38995_RMSDiff.eps}
259\vspace{\floatsep}
260\includegraphics[width=0.47\linewidth]{MExtractTimeAndChargeDigitalFilter_Weights_cosmics_weights.dat_Range_01_14_02_14_Run_38996_RMSDiff.eps}
261\caption{MExtractTimeAndChargeDigitalFilter:
262Difference in RMS (per FADC slice) between extraction algorithm
263applied on a fixed window and the corresponding pedestal RMS.
264Closed camera (left), open camera observing extra-galactic star field (right) and
265camera being illuminated by the continuous light (bottom).
266Every entry corresponds to one pixel.}
267\label{fig:df:relrms}
268\end{figure}
269
270
271
272%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
273
274Figures~\ref{fig:amp:relrms} through~\ref{fig:amp:relrms} show the
275differences in $R$ between the calculated pedestal RMS and
276the one obtained by applying the extractor, converted to equivalent photo-electrons. One entry
277corresponds to one pixel of the camera.
278The distributions have a negative mean in the case of the digital filter showing the
279``filter'' capacity of that algorithm. It ``filters out'' between 0.12 photo-electrons night sky
280background for the extra-galactic star-field until 0.2 photo-electrons for the continuous light.
281
282%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
283
284
285\subsubsection{ \label{sec:determiner} Application of the Signal Extractor to a Sliding Window
286of Pedestal Events}
287
288By applying the signal extractor to a global extraction window of pedestal events, allowing
289it to ``slide'' and maximize the encountered signal, we
290determine the bias $B$ and the mean-squared error $MSE$ for the case of no signal ($S=0$).
291\par
292In MARS, this functionality is implemented with a function-call to: \\
293
294{\textit{\bf MJPedestal::SetExtractionWithExtractor()}} \\
295
296\par
297Table~\ref{tab:bias} shows bias, resolution and mean-square error for all extractors using
298a sliding window. In this sample, every extractor had the freedom to move 5 slices,
299i.e. the global window size was fixed to five plus the extractor window size. This first line
300shows the resolution of the smallest, robust fixed window algorithm in order to give a reference.
301One can see that the bias $B$ typically decreases
302with increasing window size (except for the digital filter), while the error $R$ increases with
303increasing window size. There is also a small difference between the obtained error on a fixed window
304extraction and the one obtained from a sliding window extraction in the case of the spline and digital
305filter algorithms.
306The mean-squared error has an optimum somewhere between: In the case of the
307sliding window and the spline at the lowest window size, in the case of the digital filter
308at 4 slices. The global winners are extractors \#25 (spline with integration of 1 slice) and \#29
309(digital filter with integration of 4 slices). All sliding window extractors -- except \#21 --
310have a smaller mean-square error than the resolution of the fixed window reference extractor.
311
312\begin{table}[htp]
313\centering
314\scriptsize{
315\begin{tabular}{|c|c|c|c|c|c|c|c|c|c|c|c|c|c|}
316\hline
317\hline
318\multicolumn{14}{|c|}{Statistical Parameters for $S=0$} \\
319\hline
320\hline
321 & & \multicolumn{4}{|c|}{Closed camera} & \multicolumn{4}{|c|}{Extra-galactic NSB} & \multicolumn{4}{|c|}{Galactic NSB} \\
322\hline
323\hline
324Nr. & Name & $R$ & $R$ & $B$ & $\sqrt{MSE}$ & $R$ &$R$ & $B$ & $\sqrt{MSE}$& $R$ & $R$& $B$ & $\sqrt{MSE}$ \\
325 & & (FW) & (SW)& (SW)& (SW) & (FW) &(SW) & (SW)& (SW) & (FW)&(SW) & (SW)&(SW) \\
326\hline
327\hline
3284 & Fixed Win. 8 & 1.2 & -- & 0.0 & 1.2 & 2.5 & -- & 0.0 & 2.5 & 3.0 & -- & 0.0 & 3.0 \\
329\hline
33017 & Slid. Win. 2 & 0.5 & 0.5 & 0.4 & 0.6 & 1.4 & 1.4 & 1.2 & 1.8 & 1.6 & 1.6 & 1.5 & 2.2 \\
33118 & Slid. Win. 4 & 0.8 & 0.8 & 0.5 & 0.9 & 1.9 & 1.9 & 1.2 & 2.2 & 2.2 & 2.3 & 1.6 & 2.8 \\
33220 & Slid. Win. 6 & 1.0 & 1.0 & 0.4 & 1.1 & 2.2 & 2.2 & 1.1 & 2.5 & 2.6 & 2.7 & 1.4 & 3.0 \\
33321 & Slid. Win. 8 & 1.2 & 1.3 & 0.4 & 1.4 & 2.5 & 2.5 & 1.0 & 2.7 & 3.0 & 3.2 & 1.4 & 3.5 \\
334\hline
33523 & Spline Amp. & 0.4 & \textcolor{red}{\bf 0.4} & 0.4 & 0.6 & 1.1 & 1.2 & 1.3 & 1.8 & 1.3 & 1.4 & 1.6 & 2.1 \\
33624 & \textcolor{red}{\bf Spline Int. 1} & 0.4 & \textcolor{red}{\bf 0.4} & 0.3 & \textcolor{red}{\bf 0.5} & 1.0 & 1.2 & 1.0 & 1.6 & 1.3 & \textcolor{red}{\bf 1.3} & 1.3 & \textcolor{red}{\bf 1.8} \\
33725 & Spline Int. 2 & 0.5 & 0.5 & 0.3 & 0.6 & 1.3 & 1.4 & 0.9 & 1.7 & 1.7 & 1.6 & 1.2 & 2.0 \\
33826 & Spline Int. 4 & 0.7 & 0.7 & \textcolor{red}{\bf 0.2 } & 0.7 & 1.5 & 1.7 & \textcolor{red}{\bf 0.8} & 1.9 & 2.0 & 2.0 & 1.0 & 2.2 \\
33927 & Spline Int. 6 & 1.0 & 1.0 & 0.3 & 1.0 & 2.0 & 2.0 & \textcolor{red}{\bf 0.8} & 2.2 & 2.6 & 2.5 & \textcolor{red}{\bf 0.9} & 2.7 \\
340\hline
34128 & Dig. Filt. 6 & 0.4 & 0.5 & 0.4 & 0.6 & 1.1 & 1.3 & 1.3 & 1.8 & 1.3 & 1.5 & 1.5 & 2.1 \\
34229 & \textcolor{red}{\bf Dig. Filt. 4} & 0.3 & \textcolor{red}{\bf 0.4} & 0.3 & \textcolor{red}{\bf 0.5} & 0.9 & \textcolor{red}{\bf 1.1} & 1.0 & \textcolor{red}{\bf 1.5} & 1.1 & 1.4 & 1.2 & \textcolor{red}{\bf 1.8} \\
343\hline
344\hline
345\end{tabular}
346}
347\caption{The statistical parameters bias, resolution and mean error for the sliding window
348algorithm. The first line displays the resolution of the smallest, robust fixed window extractor
349for reference. All units in equiv.
350photo-electrons, uncertainty: 0.1 phes. All extractors were allowed to move 5 FADC slices plus
351their window size. The ``winners'' for each row are marked in red. Global winners (within the given
352uncertainty) are the extractors Nr. \#24 (MExtractTimeAndChargeSpline with an integration window of
3531 FADC slice) and Nr.\#29
354(MExtractTimeAndChargeDigitalFilter with an integration window size of 4 slices)}
355\label{tab:bias}
356\end{table}
357
358
359
360
361\par
362Figures~\ref{fig:amp:distped} through~\ref{fig:df:distped} show the
363extracted pedestal distributions for the digital filter with cosmics weights (extractor~\#28) and the
364spline amplitude (extractor~\#27), respectively for one examplary channel (corresponding to pixel 200).
365One can see the (asymmetric) Poisson behaviour of the
366night sky background photons for the distributions with open camera and the cutoff at the lower egde
367for the distribution with high-intensity continuous light due to a limited pedestal offset and the cutoff
368to negative fluctuations.
369\par
370
371\begin{figure}[htp]
372\centering
373\includegraphics[height=0.43\textheight]{PedestalSpectrum-18-Run38993.eps}
374\vspace{\floatsep}
375\includegraphics[height=0.43\textheight]{PedestalSpectrum-18-Run38995.eps}
376\caption{MExtractTimeAndChargeSlidingWindow with extraction window of 4 FADC slices:
377Distribution of extracted "pedestals" from pedestal run with
378closed camera (top) and open camera observing an extra-galactic star field (bottom) for one channel
379(pixel 100). The result obtained from a simple addition of 4 FADC
380slice contents (``fundamental'') is displayed as red histogram, the one obtained from the application of
381the algorithm on
382a fixed window of 4 FADC slices as blue histogram (``extractor random'') and the one obtained from the
383full algorithm allowed to slide within a global window of 12 slices. The obtained histogram means and
384RMSs have been converted to equiv. photo-electrons.}
385\label{fig:sw:distped}
386\end{figure}
387
388
389\begin{figure}[htp]
390\centering
391\includegraphics[height=0.43\textheight]{PedestalSpectrum-23-Run38993.eps}
392\vspace{\floatsep}
393\includegraphics[height=0.43\textheight]{PedestalSpectrum-23-Run38995.eps}
394\caption{MExtractTimeAndChargeSpline with amplitude extraction:
395Spectrum of extracted "pedestals" from pedestal run with
396closed camera lids (top) and open lids observing an extra-galactic star field (bottom) for one channel
397(pixel 100). The result obtained from a simple addition of 2 FADC
398slice contents (``fundamental'') is displayed as red histogram, the one obtained from the application
399of the algorithm on a fixed window of 1 FADC slice as blue histogram (``extractor random'')
400and the one obtained from the
401full algorithm allowed to slide within a global window of 12 slices. The obtained histogram means and
402RMSs have been converted to equiv. photo-electrons.}
403\label{fig:amp:distped}
404\end{figure}
405
406\begin{figure}[htp]
407\centering
408\includegraphics[height=0.43\textheight]{PedestalSpectrum-25-Run38993.eps}
409\vspace{\floatsep}
410\includegraphics[height=0.43\textheight]{PedestalSpectrum-25-Run38995.eps}
411\caption{MExtractTimeAndChargeSpline with integral extraction over 2 FADC slices:
412Distribution of extracted "pedestals" from pedestal run with
413closed camera lids (top) and open lids observing an extra-galactic star field (bottom) for one channel
414(pixel 100). The result obtained from a simple addition of 2 FADC
415slice contents (``fundamental'') is displayed as red histogram, the one obtained from the application
416of time-randomized weigths on a fixed window of 2 FADC slices as blue histogram and the one obtained from the
417full algorithm allowed to slide within a global window of 12 slices. The obtained histogram means and
418RMSs have been converted to equiv. photo-electrons.}
419\label{fig:int:distped}
420\end{figure}
421
422\begin{figure}[htp]
423\centering
424\includegraphics[height=0.43\textheight]{PedestalSpectrum-28-Run38993.eps}
425\vspace{\floatsep}
426\includegraphics[height=0.43\textheight]{PedestalSpectrum-28-Run38995.eps}
427\caption{MExtractTimeAndChargeDigitalFilter: Spectrum of extracted "pedestals" from pedestal run with
428closed camera lids (top) and open lids observing an extra-galactic star field (bottom) for one channel
429(pixel 100). The result obtained from a simple addition of 6 FADC
430slice contents (``fundamental'') is displayed as red histogram, the one obtained from the application
431of time-randomized weigths on a fixed window of 6 slices as blue histogram and the one obtained from the
432full algorithm allowed to slide within a global window of 12 slices. The obtained histogram means and
433RMSs have been converted to equiv. photo-electrons.}
434\label{fig:df:distped}
435\end{figure}
436
437\par
438
439Because the background is determined by the single photo-electrons from the night-sky background,
440the following possibilities can occur:
441
442\begin{enumerate}
443\item There is no ``signal'' (photo-electron) in the extraction window and the extractor
444finds only electronic noise.
445Usually, the returned signal charge is then negative.
446\item The extractor finds the signal from one photo-electron
447\item The extractor finds an overlap of two or more photo-electrons.
448\end{enumerate}
449
450Although the probability to find a certain number of photo-electrons in a fixed window follows a
451Poisson distribution, the one for employing the sliding window is {\textit{not}} Poissonian. The extractor
452will usually find one photo-electron even if more are present in the global search window, i.e. the
453probability for two or more photo-electrons to occur in the global search window is much higher than
454the probability for these photo-electrons to overlap in time such as to be recognized as a double
455or triple photo-electron pulse by the extractor. This is especially true for small extraction windows
456and for the digital filter.
457
458\par
459
460Given a global extraction window of size $WS$ and an average rate of photo-electrons from the night-sky
461background $R$, we will now calculate the probability for the extractor to find zero photo-electrons in the
462$WS$. The probability to find $k$ photo-electrons can be written as:
463
464\begin{equation}
465P(k) = \frac{e^{-R\cdot WS} (R \cdot WS)^k}{k!}
466\end{equation}
467
468and thus:
469
470\begin{equation}
471P(0) = e^{-R\cdot WS}
472\end{equation}
473
474The probability to find more than one photo-electron is then:
475
476\begin{equation}
477P(>0) = 1 - e^{-R\cdot WS}
478\end{equation}
479
480Figures~\ref{fig:sphe:sphespectrum} show spectra
481obtained with the digital filter applied on two different global search windows.
482One can clearly distinguish a pedestal peak (fitted to Gaussian with index 0),
483corresponding to the case of  $P(0)$ and further
484contributions of $P(1)$ and $P(2)$ (fitted to Gaussians with index 1 and 2).
485One can also see that the contribution of $P(0)$ dimishes
486with increasing global search window size.
487
488\begin{figure}
489\centering
490\includegraphics[height=0.3\textheight]{SinglePheSpectrum-28-Run38995-WS2.5.eps}
491\vspace{\floatsep}
492\includegraphics[height=0.3\textheight]{SinglePheSpectrum-28-Run38995-WS4.5.eps}
493\vspace{\floatsep}
494\includegraphics[height=0.3\textheight]{SinglePheSpectrum-28-Run38995-WS8.5.eps}
495\caption{MExtractTimeAndChargeDigitalFilter: Spectrum obtained from the extraction
496of a pedestal run using a sliding window of 6 FADC slices allowed to move within a window of
4977 (top), 9 (center) and 13 slices.
498A pedestal run with galactic star background has been taken and one exemplary pixel (Nr. 100).
499One can clearly see the pedestal contribution and a further part corresponding to one or more
500photo-electrons.}
501\label{fig:df:sphespectrum}
502\end{figure}
503
504In the following, we will make a short consistency test: Assuming that the spectral peaks are
505attributed correctly, one would expect the following relation:
506
507\begin{equation}
508P(0) / P(>0) = \frac{e^{-R\cdot WS}}{1-e^{-R\cdot WS}}
509\end{equation}
510
511We tested this relation assuming that the fitted area underneath the pedestal peak $Area_0$ is
512proportional to $P(0)$ and the sum of the fitted areas underneath the single photo-electron peak
513$Area_1$ and the double photo-electron peak $Area_2$ proportional to $P(>0)$. Thus, one expects:
514
515\begin{equation}
516Area_0 / (Area_1 + Area+2 ) = \frac{e^{-R\cdot WS}}{1-e^{-R\cdot WS}}
517\end{equation}
518
519We estimated the effective window size $WS$ as the sum of the range in which the digital filter
520amplitude weights are greater than 0.5 (1.6 FADC slices) and the global search window minus the
521size of the window size of the weights (which is 6 FADC slices). Figures~\ref{fig::df:ratiofit}
522show the result for two different levels of night-sky background.
523
524\par
525
526\begin{figure}[htp]
527\centering
528\includegraphics[height=0.4\textheight]{SinglePheRatio-28-Run38995.eps}
529\vspace{\floatsep}
530\includegraphics[height=0.4\textheight]{SinglePheRatio-28-Run39258.eps}
531\caption{MExtractTimeAndChargeDigitalFilter: Fit to the ratio of the area beneath the pedestal peak and
532the single and double photo-electron(s) peak(s) with the extraction algorithm
533applied on a sliding window of different sizes.
534In the top plot, a pedestal run with extra-galactic star background has been taken and in the bottom,
535a galatic star background. An exemplary pixel (Nr. 100) has been used.
536Above, a rate of 0.8 phe/ns and below, a rate of 1.0 phe/ns has been obtained.}
537\label{fig:df:ratiofit}
538\end{figure}
539
540
541
542%%% Local Variables:
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