89 research outputs found
An Adaptive Scheme for Admission Control in ATM Networks
This paper presents a real time front-end admission control scheme for ATM networks. A call management scheme which uses the burstiness associated with traffic sources in a heterogeneous ATM environment to effect dynamic assignment of bandwidth is presented. In the proposed scheme, call acceptance is based on an on-line evaluation of the upper bound on cell loss probability which is derived from the estimated distribution of the number of calls arriving. Using this scheme, the negotiated quality of service will be assured when there is no estimation error. The control mechanism is effective when the number of calls is large, and tolerates loose bandwidth enforcement and loose policing control. The proposed approach is very effective in the connection oriented transport of ATM networks where the decision to admit new traffic is based on thea priori knowledge of the state of the route taken by the traffic
Contributions to modelling of internet traffic by fractal renewal processes.
The principle of parsimonious modelling of Internet traffic states that a minimal
number of descriptors should be used for its characterization. Until early 1990s,
the conventional Markovian models for voice traffic had been considered suitable
and parsimonious for data traffic as well. Later with the discovery of strong
correlations and increased burstiness in Internet traffic, various self-similar count
models have been proposed. But, in fact, such models are strictly mono-fractal
and applicable at coarse time scales, whereas Internet traffic modelling is about
modelling traffic at fine and coarse time scales; modelling traffic which can be
mono and multi-fractal; modelling traffic at interarrival time and count levels;
modelling traffic at access and core tiers; and modelling all the three structural
components of Internet traffic, that is, packets, flows and sessions.
The philosophy of this thesis can be described as: “the renewal of renewal theory
in Internet traffic modelling”. Renewal theory has a great potential in modelling
statistical characteristics of Internet traffic belonging to individual users, access
and core networks. In this thesis, we develop an Internet traffic modelling
framework based on fractal renewal processes, that is, renewal processes with
underlying distribution of interarrival times being heavy-tailed. The proposed
renewal framework covers packets, flows and sessions as structural components
of Internet traffic and is applicable for modelling the traffic at fine and coarse
time scales. The properties of superposition of renewal processes can be used
to model traffic in higher tiers of the Internet hierarchy. As the framework is
based on renewal processes, therefore, Internet traffic can be modelled at both
interarrival times and count levels
Some aspects of traffic control and performance evaluation of ATM networks
The emerging high-speed Asynchronous Transfer Mode (ATM) networks are expected to integrate through statistical multiplexing large numbers of traffic sources having a broad range of statistical characteristics and different Quality of Service (QOS) requirements. To achieve high utilisation of network resources while maintaining the QOS, efficient traffic management strategies have to be developed. This thesis considers the problem of traffic control for ATM networks. The thesis studies the application of neural networks to various ATM traffic control issues such as feedback congestion control, traffic characterization, bandwidth estimation, and Call Admission Control (CAC). A novel adaptive congestion control approach based on a neural network that uses reinforcement learning is developed. It is shown that the neural controller is very effective in providing general QOS control. A Finite Impulse Response (FIR) neural network is proposed to adaptively predict the traffic arrival process by learning the relationship between the past and future traffic variations. On the basis of this prediction, a feedback flow control scheme at input access nodes of the network is presented. Simulation results demonstrate significant performance improvement over conventional control mechanisms. In addition, an accurate yet computationally efficient approach to effective bandwidth estimation for multiplexed connections is investigated. In this method, a feed forward neural network is employed to model the nonlinear relationship between the effective bandwidth and the traffic situations and a QOS measure. Applications of this approach to admission control, bandwidth allocation and dynamic routing are also discussed. A detailed investigation has indicated that CAC schemes based on effective bandwidth approximation can be very conservative and prevent optimal use of network resources. A modified effective bandwidth CAC approach is therefore proposed to overcome the drawback of conventional methods. Considering statistical multiplexing between traffic sources, we directly calculate the effective bandwidth of the aggregate traffic which is modelled by a two-state Markov modulated Poisson process via matching four important statistics. We use the theory of large deviations to provide a unified description of effective bandwidths for various traffic sources and the associated ATM multiplexer queueing performance approximations, illustrating their strengths and limitations. In addition, a more accurate estimation method for ATM QOS parameters based on the Bahadur-Rao theorem is proposed, which is a refinement of the original effective bandwidth approximation and can lead to higher link utilisation
Dynamic bandwidth allocation in ATM networks
Includes bibliographical references.This thesis investigates bandwidth allocation methodologies to transport new emerging bursty traffic types in ATM networks. However, existing ATM traffic management solutions are not readily able to handle the inevitable problem of congestion as result of the bursty traffic from the new emerging services. This research basically addresses bandwidth allocation issues for bursty traffic by proposing and exploring the concept of dynamic bandwidth allocation and comparing it to the traditional static bandwidth allocation schemes
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Performance analysis of error recovery and congestion control in high-speed networks
In the past few years, Broadband Integrated Services Digital Network (B-ISDN) has received increasing attention as a communication architecture capable of supporting multimedia applications. Among the techniques proposed to implement B-ISDN, Asynchronous Transfer Mode (ATM) is considered to be the most promising transfer technique because of its efficiency and flexibility.In ATM networks, the performance bottleneck of the network, which was once the channel transmission speed, is shifted to the processing speed at the network switching nodes and the propagation delay of the channel. This shift is because the high-speed channel increases the ratio of processing time to packet transmission time and also the ratio of propagation delay to packet transmission time. The increased processing overhead makes it difficult to implement hop-by-hop schemes, which may impose prohibitably high processing at each switching node. The increased propagation delay overhead makes traffic control in ATM a challenge since a large number of packets can be in transit between two ATM switching nodes. Because of these fundamental changes, control schemes developed for traditional networks may not perform efficiently, and thus, new network architectures (congestion control schemes, error control schemes, etc.) are required in ATM networks.In this dissertation, we first present an extensive survey of various traffic control schemes and network protocols for ATM networks. In this survey, possible traffic control schemes are examined, and problems of those schemes and their possible solutions are presented. Next, we investigate two key research issues in ATM networks (and other types of high-speed networks): the effects of protocol-processing overhead and the efficiency of traffic control schemes.We first investigate the effects of protocol-processing overhead on the performance of error recovery schemes. Specifically, we investigate the performance trade-offs between link-by-link and edge-to-edge error recovery schemes. Our results show that for a network with high-speed/low-error-rate channels, an edge-to-edge scheme gives a smaller delay than a link-by-link scheme. We then investigate the effectiveness of a priority packet discarding scheme, a congestion control mechanism suitable for high-speed networks. We derive loss probabilities for each stream and investigate the impact of burstiness of traffic streams on the performance of individual streams
Stochastic Dynamic Programming and Stochastic Fluid-Flow Models in the Design and Analysis of Web-Server Farms
A Web-server farm is a specialized facility designed specifically for housing Web
servers catering to one or more Internet facing Web sites. In this dissertation, stochastic
dynamic programming technique is used to obtain the optimal admission control
policy with different classes of customers, and stochastic
uid-
ow models
are used to compute the performance measures in the network. The two types of
network traffic considered in this research are streaming (guaranteed bandwidth per
connection) and elastic (shares available bandwidth equally among connections).
We first obtain the optimal admission control policy using stochastic dynamic
programming, in which, based on the number of requests of each type being served,
a decision is made whether to allow or deny service to an incoming request. In
this subproblem, we consider a xed bandwidth capacity server, which allocates the
requested bandwidth to the streaming requests and divides all of the remaining bandwidth
equally among all of the elastic requests. The performance metric of interest in
this case will be the blocking probability of streaming traffic, which will be computed
in order to be able to provide Quality of Service (QoS) guarantees.
Next, we obtain bounds on the expected waiting time in the system for elastic
requests that enter the system. This will be done at the server level in such a way
that the total available bandwidth for the requests is constant. Trace data will be
converted to an ON-OFF source and
fluid-
flow models will be used for this analysis. The results are compared with both the mean waiting time obtained by simulating
real data, and the expected waiting time obtained using traditional queueing models.
Finally, we consider the network of servers and routers within the Web farm where
data from servers
flows and merges before getting transmitted to the requesting users
via the Internet. We compute the waiting time of the elastic requests at intermediate
and edge nodes by obtaining the distribution of the out
ow of the upstream node.
This out
ow distribution is obtained by using a methodology based on minimizing the
deviations from the constituent in
flows. This analysis also helps us to compute waiting
times at different bandwidth capacities, and hence obtain a suitable bandwidth to
promise or satisfy the QoS guarantees.
This research helps in obtaining performance measures for different traffic classes
at a Web-server farm so as to be able to promise or provide QoS guarantees; while at
the same time helping in utilizing the resources of the server farms efficiently, thereby
reducing the operational costs and increasing energy savings
Analysis of priority queues with session-based arrival streams
In this paper, we analyze a discrete-time priority queue with session-based arrivals. We consider a user population, where each user can start and end sessions. Sessions belong to one of two classes and generate a variable number of fixed-length packets which arrive to the queue at the rate of one packet per slot. The lengths of the sessions are generally distributed. Packets of the first class have transmission priority over the packets of the other class. The model is motivated by a web server handling delay-sensitive and delay-insensitive content. By using probability generating functions, some performance measures of the queue such as the moments of the packet delays of both classes are calculated. The impact of the priority scheduling discipline and of the session nature of the arrival process is shown by some numerical examples
Two extensions of Kingman's GI/G/1 bound
A simple bound in GI/G/1 queues was obtained by Kingman using a discrete martingale transform. We extend this technique to 1) multiclass queues and 2) Markov Additive Processes (MAPs) whose background processes can be time-inhomogeneous or have an uncountable state-space. Both extensions are facilitated by a necessary and sufficient ordinary differential equation (ODE) condition for MAPs to admit continuous martingale transforms. Simulations show that the bounds on waiting time distributions are almost exact in heavy-traffic, including the cases of 1) heterogeneous input, e.g., mixing Weibull and Erlang-k classes and 2) Generalized Markovian Arrival Processes, a new class extending the Batch Markovian Arrival Processes to continuous batch sizes
Traffic control mechanisms with cell rate simulation for ATM networks.
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