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Network partitioning techniques based on network natural properties for power system applicationAlkhelaiwi, Ali Mani Turki January 2002 (has links)
In this thesis, the problem of partitioning a network into interconnected sub-networks is addressed. The goal is to achieve a partitioning which satisfies a set of specific engineering constraints, imposed in this case, by the requirements of the decomposed state-estimation (DSE) in electrical power systems. The network-partitioning problem is classified as NP-hard problem. Although many heuristic algorithms have been proposed for its solution, these often lack directness and computational simplicity. In this thesis, three new partitioning techniques are described which (i) satisfy the DSE constraints, and (ii) simplify the NP-hard problem by using the natural graph properties of a network. The first technique is based on partitioning a spanning tree optimally using the natural property of the spanning tree branches. As with existing heuristic techniques, information on the partitioning is obtained only at the end of the partitioning process. The study of the DSE constraints leads to define conditions of an ideal balanced partitioning. This enables data on the balanced partitioning to be obtained, including the numbers of boundary nodes and cut-edges. The second partitioning technique is designed to obtain these data for a given network, by finding the minimum covering set of nodes with maximum nodal degree. Further simplification is then possible if additional graph-theoretical properties are used. A new natural property entitled the 'edge state phenomenon' is defined. The edge state phenomenon may be exploited to generate new network properties. In the third partitioning technique, two of these, the 'network external closed path' and the 'open internal paths', are used to identify the balanced partitioning, and hence to partition the network. Examples of the application of all three methods to network partitioning are provided.
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Modification, development, application and computational experiments of some selected network, distribution and resource allocation models in operations researchNyamugure, Philimon January 2017 (has links)
Thesis (Ph.D. (Statistics)) -- University of Limpopo, 2017 / Operations Research (OR) is a scientific method for developing quantitatively
well-grounded recommendations for decision making. While it is true that it
uses a variety of mathematical techniques, OR has a much broader scope. It is
in fact a systematic approach to solving problems, which uses one or more analytical
tools in the process of analysis. Over the years, OR has evolved through
different stages. This study is motivated by new real-world challenges needed
for efficiency and innovation in line with the aims and objectives of OR – the
science of better, as classified by the OR Society of the United Kingdom. New
real-world challenges are encountered on a daily basis from problems arising
in the fields of water, energy, agriculture, mining, tourism, IT development,
natural phenomena, transport, climate change, economic and other societal requirements.
To counter all these challenges, new techniques ought to be developed.
The growth of global markets and the resulting increase in competition
have highlighted the need for OR techniques to be improved. These developments,
among other reasons, are an indication that new techniques are needed
to improve the day-to-day running of organisations, regardless of size, type and
location.
The principal aim of this study is to modify and develop new OR techniques
that can be used to solve emerging problems encountered in the areas of linear
programming, integer programming, mixed integer programming, network
routing and travelling salesman problems. Distribution models, resource allocation
models, travelling salesman problem, general linear mixed integer
ii
programming and other network problems that occur in real life, have been
modelled mathematically in this thesis. Most of these models belong to the
NP-hard (non-deterministic polynomial) class of difficult problems. In other
words, these types of problems cannot be solved in polynomial time (P). No general
purpose algorithm for these problems is known. The thesis is divided into
two major areas namely: (1) network models and (2) resource allocation and
distribution models. Under network models, five new techniques have been developed:
the minimum weight algorithm for a non-directed network, maximum
reliability route in both non-directed and directed acyclic network, minimum
spanning tree with index less than two, routing through 0k0 specified nodes,
and a new heuristic to the travelling salesman problem. Under the resource
allocation and distribution models section, four new models have been developed,
and these are: a unified approach to solve transportation and assignment
problems, a transportation branch and bound algorithm for the generalised assignment
problem, a new hybrid search method over the extreme points for
solving a large-scale LP model with non-negative coefficients, and a heuristic
for a mixed integer program using the characteristic equation approach. In
most of the nine approaches developed in the thesis, efforts were done to compare
the effectiveness of the new approaches to existing techniques. Improvements
in the new techniques in solving problems were noted. However, it was
difficult to compare some of the new techniques to the existing ones because
computational packages of the new techniques need to be developed first. This
aspect will be subject matter of future research on developing these techniques
further. It was concluded with strong evidence, that development of new OR
techniques is a must if we are to encounter the emerging problems faced by the
world today.
Key words: NP-hard problem, Network models, Reliability, Heuristic, Largescale
LP, Characteristic equation, Algorithm.
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Otimização por Nuvem de Partículas e Busca Tabu para Problema da Diversidade MáximaBonotto, Edison Luiz 31 January 2017 (has links)
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Previous issue date: 2017-01-31 / The Maximu m Diversity Problem (MDP) is a problem of combinatorial optimization
area that aims to select a pre-set number of elements in a given set so that a sum of
the differences between the selected elements are greater as possible. MDP belongs
to the class of NP-Hard problems, that is, there is no known algorithm that solves
in polynomial time accurately. Because they have a complexity of exponential order,
require efficient heuristics to provide satisfactory results in acceptable time. However,
heuristics do not guarantee the optimality of the solution found. This paper proposes a
new hybrid approach for a resolution of the Maximum Diversity Problem and is based
on the Particle Swarm Optimization (PSO) and Tabu Search (TS) metaheuristics,
The algorithm is called PSO_TS. The use of PSO_TS achieves the best results for
known instances testing in the literature, thus demonstrating be competitive with the
best algorithms in terms of quality of the solutions. / O Problema da Diversidade Máxima (MDP) é um problema da área de Otimização
Combinatória que tem por objetivo selecionar um número pré-estabelecido de elementos
de um dado conjunto de maneira tal que a soma das diversidades entre os
elementos selecionados seja a maior possível. O MDP pertence a classe de problemas
NP-difícil, isto é, não existe algoritmo conhecido que o resolva de forma exata em
tempo polinomial. Por apresentarem uma complexidade de ordem exponencial, exigem
heurísticas eficientes que forneçam resultados satisfatórios em tempos aceitáveis.
Entretanto, as heurísticas não garantem otimalidade da solução encontrada. Este
trabalho propõe uma nova abordagem híbrida para a resolução do Problema da
Diversidade Máxima e está baseada nas meta-heurísticas de Otimização por Nuvem
de Partículas (PSO) e Busca Tabu(TS). O algoritmo foi denominado PSO_TS. Para
a validação do método, os resultados encontrados são comparados com os melhores
existentes na literatura.
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Exploring algorithms to score control points in metrogaine eventsVan Hoepen, Wilhelmina Adriana 02 1900 (has links)
Metrogaining is an urban outdoor navigational sport that uses a street map to which
scored control points have been added. The objective is to collect maximum score
points within a set time by visiting a subset of the scored control points. There
is currently no metrogaining scoring standard, only guidelines on how to allocate
scores. Accordingly, scoring approaches were explored to create new score sets by
using scoring algorithms based on a simple relationship between the score of, and
the number of visits to a control point.
A spread model, which was developed to evaluate the score sets, generated a range
of routes by solving a range of orienteering problems, which belongs to the class of
NP-hard combinatorial optimisation problems. From these generated routes, the
control point visit frequencies of each control point were determined. Using the visit
frequencies, test statistics were subsequently adapted to test the goodness of scoring
for each score set.
The ndings indicate that the score-visits relationship is not a simple one, as the number of visits to a control point is not only dependent on its score, but also on
the scores of the surrounding control points. As a result, the scoring algorithms
explored were unable to cope with the complex scoring process uncovered. / Decision Sciences / M. Sc. (Operations Research)
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