INTERSYMBOL INTERFERENCE (ISI)

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Presentation transcript:

INTERSYMBOL INTERFERENCE (ISI) Chapter 3 INTERSYMBOL INTERFERENCE (ISI) Intersymbol Interference ISI on Eye Patterns Combatting ISI Nyquist’s First Method for zero ISI Raised Cosine-Rolloff Pulse Shape Nyquist Filter Huseyin Bilgekul Eeng360 Communication Systems I Department of Electrical and Electronic Engineering Eastern Mediterranean University

Intersymbol Interference Intersymbol interference (ISI) occurs when a pulse spreads out in such a way that it interferes with adjacent pulses at the sample instant. Example: assume polar NRZ line code. The channel outputs are shown as spreaded (width Tb becomes 2Tb) pulses shown (Spreading due to bandlimited channel characteristics). Channel Input Pulse width Tb Channel Output Pulse width Tb Data 1 Data 0

Intersymbol Interference For the input data stream: The channel output is the superposition of each bit’s output: 1 Resultant Channel Output Waveform 1

Extension Beyond Tb is ISI ISI on Eye Patterns The amount of ISI can be seen on an oscilloscope using an Eye Diagram or Eye pattern. Distortion Noise Margin Amplitude Extension Beyond Tb is ISI Time (Tb)

Intersymbol Interference If the rectangular multilevel pulses are filtered improperly as they pass through a communications system, they will spread in time, and the pulse for each symbol may be smeared into adjacent time slots and cause Intersymbol Interference. How can we restrict BW and at the same time not introduce ISI? 3 Techniques.

Intersymbol Interference Flat-topped multilevel input signal having pulse shape h(t) and values ak: he(t) is the pulse shape that will appear at the output of the receiver filter.

Intersymbol Interference Equivalent Impulse Response he(t) : Equivalent transfer function: Receiving filter can be designed to produce a needed He(f) in terms of HT(f) and HC(f): Output signal can be rewritten as: He(f), chosen such to minimize ISI is called EQUALIZING FILTER)

Combating ISI Three strategies for eliminating ISI: Use a line code that is absolutely bandlimited. Would require Sinc pulse shape. Can’t actually do this (but can approximate). Use a line code that is zero during adjacent sample instants. It’s okay for pulses to overlap somewhat, as long as there is no overlap at the sample instants. Can come up with pulse shapes that don’t overlap during adjacent sample instants. Raised-Cosine Rolloff pulse shaping Use a filter at the receiver to “undo” the distortion introduced by the channel. Equalizer.

Nyquist’s First Method for Zero ISI ISI can be eliminated by using an equivalent transfer function, He(f), such that the impulse response satisfies the condition: Sampling Instants ISI occurs but, NO ISI is present at the sampling instants

Nyquist’s First Method for Zero ISI There will be NO ISI and the bandwidth requirement will be minimum (Optimum Filtering) if the transmit and receive filters are designed so that the overall transfer function He(f) is: This type of pulse will allow signalling at a baud rate of D=1/Ts=2B (for Binary R=1/Ts=2B) where B is the absolute bandwidth of the system. He(f) 1/fs fs/2 -fs/2

Nyquist’s First Method for Zero ISI

Nyquist’s First Method for Zero ISI He(f) 1/fs fs/2 -fs/2 Zero crossings at non-zero integer multiples of the bit period he(t) Since pulses are not possible to create due to: Infinite time duration. Sharp transition band in the frequency domain. The Sinc pulse shape can cause significant ISI in the presence of timing errors. If the received signal is not sampled at exactly the bit instant (Synchronization Errors), then ISI will occur. We seek a pulse shape that: Has a more gradual transition in the frequency domain. Is more robust to timing errors. Yet still satisfies Nyquist’s first method for zero ISI.

Raised Cosine-Rolloff Nyquist Filtering Because of the difficulties caused by the Sa type pulse shape, consider other pulse shapes which require more bandwidth such as the Raised Cosine-rolloff Nyquist filter but they are less affected by synchrfonization errors. The Raised Cosine Nyquist filter is defined by its rollof factor number r=fΔ/fo.

Raised Cosine-Rolloff Nyquist Filtering Now filtering requirements are relaxed because absolute bandwidth is increased. Clock timing requirements are also relaxed. The r=0 case corresponds to the previous Minimum bandwidth case.

Raised Cosine-Rolloff Nyquist Filtering Impulse response is given by: The tails of he(t) are now decreasing much faster than the Sa function (As a function of t2). ISI due to synchronization errors will be much lower.

Raised Cosine-Rolloff Nyquist Filtering Frequency response and impulse responses of Raised Cosine pulses for various values of the roll off parameter.

Raised Cosine-Rolloff Nyquist Filtering Illustrating the received bit stream of Raised Cosine pulse shaped transmission corresponding to the binary stream of 1 0 0 1 0 for 3 different values of r=0, 0.5, 1. 1 0 0 1 0 1 0 0 1 0

Bandwidth for Raised Cosine Nyquist Filtering The bandwidth of a Raised-cosine (RC) rolloff pulse shape is a function of the bit rate and the rolloff factor: Or solving for bit rate yields the expression: This is the maximum transmitted bit rate when a RC-rolloff pulse shape with Rolloff factor r is transmitted over a baseband channel with bandwidth B.

Nyquist Filter Raised Cosine Filter is also called a NYQUIST FILTER. NYQUIST FILTERS refer to a general class of filters that satisfy the NYQUIST’s First Criterion. Theorem: A filter is said to be a Nyquist filter if the effective transfer function is : There will be no intersymbol interference at the system output if the symbol rate is

Nyquist Filter Characteristics