Results 11 to 20 of about 463 (174)

Caterpillar RLNC (CRLNC): A Practical Finite Sliding Window RLNC Approach

open access: yesIEEE Access, 2017
Random linear network coding (RLNC) is a popular coding scheme for improving communication and content distribution over lossy channels. For packet streaming applications, such as video streaming and general IP packet streams, recent research has shown ...
Simon Wunderlich   +2 more
exaly   +5 more sources

Learning-Based Adaptive Sliding-Window RLNC for High Bandwidth-Delay Product Networks

open access: yesIEEE Access, 2023
Sliding-window random linear network coding (RLNC) is a good fit for achieving low in-order delivery delay in future-generation networks characterized by lossy links.
, Amir Haider, Hyung Seok Kim
exaly   +5 more sources

RS-RLNC: A Reinforcement Learning-Based Selective Random Linear Network Coding Framework for Tactile Internet

open access: yesIEEE Access, 2023
Tactile Internet (TI) has very stringent networking requirements and the transport layer plays a crucial role in meeting these requirements. However, the transport layer has several inherent limitations (e.g., bufferbloat, incast issue, and head of line ...
, Amir Haider, Hyung Seok Kim
exaly   +4 more sources

Scalable Network Coding for Heterogeneous Devices over Embedded Fields [PDF]

open access: yesEntropy, 2022
In complex network environments, there always exist heterogeneous devices with different computational powers. In this work, we propose a novel scalable random linear network coding (RLNC) framework based on embedded fields, so as to endow heterogeneous ...
Hanqi Tang   +4 more
doaj   +3 more sources

SpaRec: Sparse Systematic RLNC Recoding in Multi-Hop Networks [PDF]

open access: yesIEEE Access, 2021
Sparse Random Linear Network Coding (RLNC) reduces the computational complexity of the RLNC decoding through a low density of the non-zero coding coefficients, which can be achieved through sending uncoded (systematic) packets.
Elif Tasdemir   +2 more
exaly   +4 more sources

Progressive Multicore RLNC Decoding With Online DAG Scheduling [PDF]

open access: yesIEEE Access, 2019
A complete generation of packets coded with Random Linear Network Coding (RLNC) can be quickly decoded on a multicore system by scheduling the involved matrix block operations in parallel with an offline (pre-recorded) directed acyclic graph (DAG).
Simon Wunderlich   +2 more
exaly   +4 more sources

On Vector Random Linear Network Coding in Wireless Broadcasts [PDF]

open access: yesEntropy
Compared with scalar linear network coding (LNC) formulated over the finite field GF(2L), vector LNC offers enhanced flexibility in the code design by enabling linear operations over the vector space GF(2)L and demonstrates a number of advantages over ...
Rina Su   +3 more
doaj   +3 more sources

PACE: Redundancy Engineering in RLNC for Low-Latency Communication

open access: yesIEEE Access, 2017
Random linear network coding (RLNC) is attractive for data transfer as well as data storage and retrieval in complex and unreliable settings. The existing systematic RLNC approach first sends all source symbols in a generation without encoding followed ...
Sreekrishna Pandi   +2 more
exaly   +4 more sources

Systematic-RLNC Based Secure and QoS Centric Routing Scheme for WSNs

open access: yesJournal of Telecommunications and Information Technology, 2019
In this paper a highly robust and efficient systematic-random linear network coding (S-RLNC) routing scheme is proposed. Unlike classic security systems, the proposed S-RLNC transmission model incorporates an advanced pre-coding and interleaving concept ...
Ajaykumar Notom   +2 more
doaj   +3 more sources

Caterpillar RLNC With Feedback (CRLNC-FB): Reducing Delay in Selective Repeat ARQ Through Coding

open access: yesIEEE Access, 2018
Wireless networks typically employ some form of forward error correction (FEC) coding and some automatic repeat request (ARQ) protocol to ensure reliable data transmission over lossy channels.
Frank Gabriel   +2 more
exaly   +4 more sources

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