Blind decision feedback equaliser for multichannels with common zeros

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Blind decision feedback equaliser for multichannels with common zeros

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Blind equalisation of a fractionally spaced channel (FSC) is generally difficult if all subchannels have common zeros . A new blind equalisation structure is proposed so that the uncommon part of the FSC is equalised with a fractionally spaced equaliser and the common part of the FSC is equalised with a decision feedback equaliser which operates at the baud rate.

Inspec keywords: poles and zeros; telecommunication channels; feedforward; decision feedback equalisers

Other keywords: fractionally spaced channel; common zeros; multichannels; blind decision feedback equaliser; fractionally spaced equaliser

Subjects: Radio links and equipment; Signal processing and detection; Transmission line links and equipment

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