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Noise-predictive maximum-likelihood detection
Known as:
Noise-Predictive Maximum-Likelihood (N PML) Detection
, Noise-Predictive Maximum-Likelihood (NPML) Detection
Noise-Predictive Maximum-Likelihood (NPML) is an advanced digital signal-processing method suitable for magnetic data storage systems that operate at…
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Related topics
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9 relations
Computer data storage
Hard disk drive
History of hard disk drives
Linear Tape-Open
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Broader (1)
Digital signal processing
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2018
2018
A new second order absorbing boundary layer formulation for anisotropic-elastic wavefeld simulation
Junxiao Li
,
K. Innanen
,
B. Wang
2018
Corpus ID: 165154076
The Hybrid perfectly matched layer (H-PML) is extended to simulate second order displacement-stress elastic wave equations. In…
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2011
2011
NPML Detection Employing IIR Noise-Prediction with Application to Magnetic Tape Storage
S. Ölçer
,
R. Hutchins
Global Communications Conference
2011
Corpus ID: 38252713
This paper studies noise-predictive maximum-likelihood (NPML) detection in the case where noise prediction is accomplished by…
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2007
2007
Computation of Ground Effects in a 3D-Outdoor Environment by the B-FDTD Method
R. Melo e Silva de Oliveira
,
Waldir Hipolito Barros
,
Carlos Leonidas da Silva Souza
IEEE Latin America Transactions
2007
Corpus ID: 32226317
This work intends to compute the ground influence in communication signals, obtained at specific points of an urban micro cell…
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Review
2003
Review
2003
Signal Processing for Magnetic‐Recording Channels
E. Eleftheriou
2003
Corpus ID: 53939639
In the past decade, several advanced digital signal-processing and coding techniques have been introduced into hard-disk drives…
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