Asymptotic performance of queue length based network control policies
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In a communication network, asymptotic quality of
service metrics specify the probability that the delay or buffer
occupancy becomes large. An understanding of these metrics is
essential for providing worst-case delay guarantees, provisioning
buffer sizes in networks, and to estimate the frequency of
packet-drops due to buffer overflow. Second, many network control
tasks utilize queue length information to perform effectively,
which inevitably adds to the control overheads in a network.
Therefore, it is important to understand the role played by queue
length information in network control, and its impact on various
performance metrics. In this thesis, we study the interplay between
the asymptotic behavior of buffer occupancy, queue length
information, and traffic statistics in the context of scheduling,
flow control, and resource allocation. First, we consider a
single-server queue and deal with the question of how often control
messages need to be sent in order to effectively control congestion
in the queue. Our results show that arbitrarily infrequent queue
length information is sufficient to ensure optimal asymptotic decay
for the congestion probability, as long as the control information
is accurately received. However, if the control messages are
subject to errors, the congestion probability can increase
drastically, even if the control messages are transmitted often.
Next, we consider a system of parallel queues sharing a server, and
fed by a statistically homogeneous traffic pattern. We obtain the
large deviation exponent of the buffer overflow probability under
the well known max-weight scheduling policy. We also show that the
queue length based max-weight scheduling outperforms some well
known queue-blind policies in terms of the buffer overflow
probability. Finally, we study the asymptotic behavior of the queue
length distributions when a mix of heavy-tailed and light-tailed
traffic flows feeds a system of parallel queues. We obtain an exact
asymptotic queue length characterization under generalized
max-weight scheduling. In contrast to the statistically homogeneous
traffic scenario, we show that max-weight scheduling leads to poor
asymptotic behavior for the light-tailed traffic, whereas a
queue-blind priority policy gives good asymptotic
behavior.