Multiple channel crosstalk removal using limited connectivity neural networks

Limited connectivity neural network architectures are investigated for the removal of crosstalk in systems using mutually overlapping sub-channels for the communication of multiple signals, either analogue or digital. The crosstalk error is modelled such that a fixed proportion of the signals in adj...

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Bibliographic Details
Main Authors: Craven, Michael P., Curtis, K. Mervyn, Hayes-Gill, Barrie R.
Format: Conference or Workshop Item
Published: 1996
Subjects:
Online Access:https://eprints.nottingham.ac.uk/1903/
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author Craven, Michael P.
Curtis, K. Mervyn
Hayes-Gill, Barrie R.
author_facet Craven, Michael P.
Curtis, K. Mervyn
Hayes-Gill, Barrie R.
author_sort Craven, Michael P.
building Nottingham Research Data Repository
collection Online Access
description Limited connectivity neural network architectures are investigated for the removal of crosstalk in systems using mutually overlapping sub-channels for the communication of multiple signals, either analogue or digital. The crosstalk error is modelled such that a fixed proportion of the signals in adjacent channels is added to the main signal. Different types of neural networks, trained using gradient descent algorithms, are tested as to their suitability for reducing the errors caused by a combination of crosstalk and additional gaussian noise. In particular we propose a single layer limited connectivity neural network since it promises to be the most easily implemented in hardware. A variable gain neuron structure is described which can be used for both analogue and digital data.
first_indexed 2025-11-14T18:16:30Z
format Conference or Workshop Item
id nottingham-1903
institution University of Nottingham Malaysia Campus
institution_category Local University
last_indexed 2025-11-14T18:16:30Z
publishDate 1996
recordtype eprints
repository_type Digital Repository
spelling nottingham-19032020-05-04T20:33:29Z https://eprints.nottingham.ac.uk/1903/ Multiple channel crosstalk removal using limited connectivity neural networks Craven, Michael P. Curtis, K. Mervyn Hayes-Gill, Barrie R. Limited connectivity neural network architectures are investigated for the removal of crosstalk in systems using mutually overlapping sub-channels for the communication of multiple signals, either analogue or digital. The crosstalk error is modelled such that a fixed proportion of the signals in adjacent channels is added to the main signal. Different types of neural networks, trained using gradient descent algorithms, are tested as to their suitability for reducing the errors caused by a combination of crosstalk and additional gaussian noise. In particular we propose a single layer limited connectivity neural network since it promises to be the most easily implemented in hardware. A variable gain neuron structure is described which can be used for both analogue and digital data. 1996 Conference or Workshop Item PeerReviewed Craven, Michael P., Curtis, K. Mervyn and Hayes-Gill, Barrie R. (1996) Multiple channel crosstalk removal using limited connectivity neural networks. In: 3rd IEEE International Conference on Electronics, Circuits, and Systems (ICECS 96), 13-16 October 1996, Rhodes, Greece. neural networks ANN cross-talk gradient descent learning http://dx.doi.org/10.1109/ICECS.1996.584614
spellingShingle neural networks
ANN
cross-talk
gradient descent
learning
Craven, Michael P.
Curtis, K. Mervyn
Hayes-Gill, Barrie R.
Multiple channel crosstalk removal using limited connectivity neural networks
title Multiple channel crosstalk removal using limited connectivity neural networks
title_full Multiple channel crosstalk removal using limited connectivity neural networks
title_fullStr Multiple channel crosstalk removal using limited connectivity neural networks
title_full_unstemmed Multiple channel crosstalk removal using limited connectivity neural networks
title_short Multiple channel crosstalk removal using limited connectivity neural networks
title_sort multiple channel crosstalk removal using limited connectivity neural networks
topic neural networks
ANN
cross-talk
gradient descent
learning
url https://eprints.nottingham.ac.uk/1903/
https://eprints.nottingham.ac.uk/1903/