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authorNaoki Pross <np@0hm.ch>2021-10-07 13:10:37 +0200
committerNaoki Pross <np@0hm.ch>2021-10-07 13:10:37 +0200
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treea8d2295dd8f69f1445d3afb43a3cbfb529d0336d /doc/thesis/chapters
parentReview sec 3 of project plan (diff)
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\chapter{Theory}
\section{Problem description}
-\section{Mathematical Model}
+
+\section{Geometric Model}
+
+\section{Statistical Model}
+%% TODO: write about advantage of statistical model instead of geometric
+
+%% TODO: review and rewrite notes
+
+\subsection{Continuous time model}
+
+Continuous time small scale fading channel response.
+
+time varying channel impulse response:
+\begin{equation}
+ h(t, \tau) = \sum_k c_k (t) \delta(\tau - \tau_k(t))
+\end{equation}
+
+received signal \(y = h * x\), i.e. convolution with channel model.
+
+\subsection{Time discretization of the model}
+
+%% TODO: explain why
+
+Assume \(x\) is a time discrete signal with and bandwidth \(W\), thus the pulse is sinc shaped
+\begin{equation}
+ x(t) = \sum_n x[n] \sinc(t/T - n)
+\end{equation}
+Ideal sampling at rate \(2W\) of \(y\) gives