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الكلية كلية الهندسة
القسم الهندسة الكهربائية
المرحلة 4
أستاذ المادة ابراهيم عبد الله مرداس الشجيري
4/19/2011 2:05:49 PM
Communication II
Topics
1- Information theory 2- Coding of discrete Sources 3- Channel Coding 4- Introduction to Digital Signal processing (DSP) 5- Digital Filter Design 6- Selected Communication Systems a) Optical communication systems b) Satellite communication systems c) Spread spectrum systems d) Global System for Mobile communication (GSM)
References
1) G. Stremler , Introduction to Communication Systems(Textbook). 2) A. Glover , Digital Communication. 3) Introductory to Digital Signal Processing. 4) Understanding-Digital-Signal-Processing
Overview: What is Information Theory?
Key idea: The movements and transformations of information, just like those of a fluid, are constrained by mathematical and physical laws. These laws have deep connections with: • probability theory, statistics • thermodynamics (statistical physics) • spectral analysis, Fourier (and other) transforms • sampling theory, prediction, estimation theory • electrical engineering (bandwidth; signal-to-noise ratio) • complexity theory (minimal description length) • signal processing, representation, compressibility
Two fundamental questions of communication theory:
1. What is the ultimate data compression? (answer: the entropy of the data, H, is its compression limit.)
2. What is the ultimate transmission rate of communication? (answer: the channel capacity, C, is its rate limit.)
All communication schemes lie in between these two limits on the compressibility of data and the capacity of a channel. Information theory can suggest means to achieve these theoretical limits. But the subject also extends far beyond communication theory.
Mathematical Foundations; Probability Rules; Bayes Theorem
What are random variables? What is probability?
We deal with previous study with waveforms whose values can be specified exactly are said to be “ deterministic”. Now we consider a method for describing a nondeterministic , or “random” waveform signal. Random variables are variables that take on values determined by probability distributions. They may be discrete or continuous, in either their domain or their range. For example, a stream of ASCII encoded text characters in a transmitted message is a discrete random variable, with a known probability distribution for any given natural language. An analog speech signal represented by a voltage or sound pressure wave form as a function of time (perhaps with added noise), is a continuous random variable having a continuous probability density function
Probability is the measured (numerically ) the favorable outcomes of a given experiment.
Suppose that some experiment is considered in which the outcome dose not remain constant . on of the possible outcome of the experiment is label A. Tossing a coin is such an experiment , the possible outcomes being head and tails. If the experiment is repeated N times , suppose that the outcome A will occur NA times .
المادة المعروضة اعلاه هي مدخل الى المحاضرة المرفوعة بواسطة استاذ(ة) المادة . وقد تبدو لك غير متكاملة . حيث يضع استاذ المادة في بعض الاحيان فقط الجزء الاول من المحاضرة من اجل الاطلاع على ما ستقوم بتحميله لاحقا . في نظام التعليم الالكتروني نوفر هذه الخدمة لكي نبقيك على اطلاع حول محتوى الملف الذي ستقوم بتحميله .
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