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Published byLoraine Powell Modified over 8 years ago
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An Experimental Receiver Design For Diffuse IR Channels Based on Wavelet Analysis & Artificial Intelligence R J Dickenson and Z Ghassemlooy O ptical C ommunication R esearch G roup Sheffield Hallam University www.shu.ac.uk/ocr
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Contents Diffuse IR indoor multipath channel Compensating schemes Traditional receivers Wavelet and AI based receiver Proposed receiver Simulation results Conclusions
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Diffuse IR System - Major Performance Limiting Factors Inter Symbol Interference Noise Power Limitations
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Compensating Methods Modulation Schemes –DH-PIM –DPIM –PPM Diversity –Angle –Multi-beam Tx Rx
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Traditional Receiver Concepts ZFE DFE Coding - Block - Convolutional - Turbo Normalised optical power requirements Vs. normalised delay spread for various modulation schemes
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Alternative Techniques - Wavelet Analysis & Artificial Intelligence De-noising Image Compression Earthquake Electrical Fault Detection Mechanical Plant Fault Prediction Apple Ripeness Communications
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What Is A Wavelet? Simple Description: A finite duration waveform Has an average value of zero Is a basis function, just like a sine wave in Fourier analysis
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Fourier Analysis And The Wavelet Transform 3 sine waves at different frequencies and times. Frequency spectrum The peaks will remain statically located regardless of where in time the frequencies occur
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Fourier Analysis And The Wavelet Transform Wavelet results In the wavelet domain we have both a representation of frequency (scale), and also an indication of where the frequency occurs in time.
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Neural Networks Loosely based on biological neuron Neural networks come in many flavours Used extensively as classifiers Supervised and unsupervised learning
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Channel Model & Receiver Structure Input data format: OOK NRZ Channel: Carruthers & Kahn Channel Model, with impulse response of: where u(t) is the unit step function
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Simulation Flow Chart ANN: - 4 layers with 176 neurons - 3 different activation functions, trained to detect the value of the centre bit from a 5 bit length window CWT: - 5 bit sliding window - coif1 mother wavelet - Operating scales of 60, 80, 100 and 120 using
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Simulation Results – BER V. SNR Data rate: 40 and 50 Mb/s Normalised delay spread: 0.44 and 0.55 for BER of 10 -5 the wavelet-AI scheme offers SNR improvement of: - ~ 8 dB at 40 Mbps - ~ 15 dB at 50 Mbps over the filtered threshold scheme For the wavelet-AI scheme the penalty for increasing the data rate by 10 Mbps is ~ 5dB whilst it is around 15dB for the basic scheme.
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Conclusions A novel technique to combat multipath dispersion Improvement of ~ 8 dB in SNR compared with the threshold based detection scheme Promising results, however, significant further work is required. Not intended to replace coding methods
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Any Questions? Thank you for your kind attention. I will attempt to answer any questions you have.
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