协议(科学)
计算机科学
传输(电信)
计算机网络
电信
医学
病理
替代医学
作者
Manikantan Ramadas,Scott Burleigh,Stephen Farrell
摘要
This document describes the Licklider Transmission Protocol (LTP),
designed to provide retransmission-based reliability over links
characterized by extremely long message round-trip times (RTTs) and/or
frequent interruptions in connectivity. Since communication across
interplanetary space is the most prominent example of this sort of
environment, LTP is principally aimed at supporting long- haul
reliable transmission in interplanetary space, but it has applications
in other environments as well. LTP does ARQ of data transmissions by
soliciting selective- acknowledgment reception reports. It is
stateful, and has no negotiation or handshakes. In an Interplanetary
Internet setting deploying the Bundle protocol that is being developed
by the Delay Tolerant Networking Research Group, LTP is intended to
serve as a reliable convergence protocol operating in pairwise
fashion between adjacent Interplanetary Internet nodes that are in
direct RF communication. In that operational scenario, and potentially
in some other deployments of the Bundle Protocol, LTP runs directly
over a data- link layer protocol; when this is the case, forward error
correction coding and/or checksum mechanisms in the underlying data-
link layer protocol must assure the integrity of the data passed
between the communicating entities. Since no mechanisms for flow
control or congestion control are included in the design of LTP, this
protocol is not intended or appropriate for ubiquitous deployment in
the global Internet. When LTP is run over UDP, it must only be used
for software development or in private local area networks. When LTP
is not run over UDP, it must be run directly over a protocol,
(nominally a link- layer protocol), that meets the requirements
specified in section 5. This document is a product of the Delay
Tolerant Networking Research Group and has been reviewed by that
group. No objections to its publication as an RFC were raised.
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