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High Order Contingency Selection using Particle Swarm Optimization and Tabu SearchChegu, Ashwini 01 August 2010 (has links)
There is a growing interest in investigating the high order contingency events that may result in large blackouts, which have been a great concern for power grid secure operation. The actual number of high order contingency is too huge for operators and planner to apply a brute-force enumerative analysis. This thesis presents a heuristic searching method based on particle swarm optimization (PSO) and tabu search to select severe high order contingencies. The original PSO algorithm gives an intelligent strategy to search the feasible solution space, but tends to find the best solution only. The proposed method combines the original PSO with tabu search such that a number of top candidates will be identified. This fits the need of high order contingency screening, which can be eventually the input to many other more complicate security analyses. Reordering of branches of test system based on severity of N-1 contingencies is applied as a pre-processing to increase the convergence properties and efficiency of the algorithm. With this reordering approach, many critical high order contingencies are located in a small area in the whole searching space. Therefore, the proposed algorithm tends to concentrate in searching this area such that the number of critical branch combinations searched will increase. Therefore, the speedup ratio is found to increase significantly. The proposed algorithm is tested for N-2 and N-3 contingencies using two test systems modified from the IEEE 118-bus and 30-bus systems. Variation of inertia weight, learning factors, and number of particles is tested and the range of values more suitable for this specific algorithm is suggested. Although illustrated and tested with N-2 and N-3 contingency analysis, the proposed algorithm can be extended to even higher order contingencies but visualization will be difficult because of the increase in the problem dimensions corresponding to the order of contingencies.
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Automated design of planar mechanismsRadhakrishnan, Pradeep, 1984- 25 June 2014 (has links)
The challenges in automating the design of planar mechanisms are tremendous especially in areas related to computational representation, kinematic analysis and synthesis of planar mechanisms. The challenge in computational representation relates to the development of a comprehensive methodology to completely define and manipulate the topologies of planar mechanisms while in kinematic analysis, the challenge is primarily in the development of generalized analysis routines to analyze different mechanism topologies. Combining the aforementioned challenges along with appropriate optimization algorithms to synthesize planar mechanisms for different user-defined applications presents the final challenge in the automated design of planar mechanisms. The methods presented in the literature demonstrate synthesis of standard four-bar and six-bar mechanisms with revolute and prismatic joints. But a detailed review of these methods point to the fact that they are not scalable when the topologies and the parameters of n-bar mechanisms are required to be simultaneously synthesized. Through this research, a comprehensive and scalable methodology for synthesizing different mechanism topologies and their parameters simultaneously is presented that overcomes the limitations in different challenge areas in the following ways. In representation, a graph-grammar based scheme for planar mechanisms is developed to completely describe the topology of a mechanism. Grammar rules are developed in conjunction with this representation scheme to generate different mechanism topologies in a tree-search process. In analysis, a generic kinematic analysis routine is developed to automatically analyze one-degree of freedom mechanisms consisting of revolute and prismatic joints. Two implementations of kinematic analysis have been included. The first implementation involves the use of graphical methods for position and velocity analyses and the equation method for acceleration analysis for mechanisms with a four-bar loop. The second implementation involves the use of an optimization-based method that has been developed to handle position kinematics of indeterminate mechanisms while the velocity and acceleration analyses of such mechanisms are carried out by formulating appropriate linear equations. The representation and analysis schemes are integrated to parametrically synthesize different mechanism topologies using a hybrid implementation of Particle Swarm Optimization and Nelder-Mead simplex algorithm. The hybrid implementation is able to produce better results for the problems found in the literature using a four-bar mechanism with revolute joints as well as through other higher order mechanisms from the design space. The implementation has also been tested on three new challenge problems with satisfactory results subject to computational constraints. The difficulties in the search have been studied that indicates the reasons for the lack of solution repeatability. This dissertation concludes with a discussion of the results and future directions. / text
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An online-integrated condition monitoring and prognostics framework for rotating equipmentAlrabady, Linda Antoun Yousef 10 1900 (has links)
Detecting abnormal operating conditions, which will lead to faults developing
later, has important economic implications for industries trying to meet their
performance and production goals. It is unacceptable to wait for failures that
have potential safety, environmental and financial consequences. Moving from
a “reactive” strategy to a “proactive” strategy can improve critical equipment
reliability and availability while constraining maintenance costs, reducing
production deferrals, decreasing the need for spare parts. Once the fault
initiates, predicting its progression and deterioration can enable timely
interventions without risk to personnel safety or to equipment integrity.
This work presents an online-integrated condition monitoring and prognostics
framework that addresses the above issues holistically. The proposed
framework aligns fully with ISO 17359:2011 and derives from the I-P and P-F
curve. Depending upon the running state of machine with respect to its I-P and
P-F curve an algorithm will do one of the following:
(1) Predict the ideal behaviour and any departure from the normal operating
envelope using a combination of Evolving Clustering Method (ECM), a
normalised fuzzy weighted distance and tracking signal method.
(2) Identify the cause of the departure through an automated diagnostics
system using a modified version of ECM for classification.
(3) Predict the short-term progression of fault using a modified version of the
Dynamic Evolving Neuro-Fuzzy Inference System (DENFIS), called here
MDENFIS and a tracking signal method.
(4) Predict the long term progression of fault (Prognostics) using a combination
of Autoregressive Integrated Moving Average (ARIMA)- Empirical Mode
Decomposition (EMD) for predicting the future input values and MDENFIS for
predicting the long term progression of fault (output).
The proposed model was tested and compared against other models in the
literature using benchmarks and field data. This work demonstrates four
noticeable improvements over previous methods:
(1) Enhanced testing prediction accuracy, (2) comparable processing time if not
better, (3) the ability to detect sudden changes in the process and finally (4) the
ability to identify and isolate the problem source with high accuracy.
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Στατιστική και υπολογιστική νοημοσύνηΓεωργίου, Βασίλειος 12 April 2010 (has links)
Η παρούσα διατριβή ασχολείται με τη μελέτη και την ανάπτυξη μοντέλων ταξινόμησης τα οποία βασίζονται στα Πιθανοτικά Νευρωνικά Δίκτυα (ΠΝΔ). Τα προτεινόμενα μοντέλα αναπτύχθηκαν ενσωματώνοντας στατιστικές μεθόδους αλλά και μεθόδους από διάφορα πεδία της Υπολογιστικής Νοημοσύνης (ΥΝ). Συγκεκριμένα, χρησιμοποιήθηκαν οι Διαφοροεξελικτικοί αλγόριθμοι βελτιστοποίησης και η Βελτιστοποίηση με Σμήνος Σωματιδίων (ΒΣΣ) για την αναζήτηση βέλτιστων τιμών των παραμέτρων των ΠΝΔ. Επιπλέον, ενσωματώθηκε η τεχνική bagging για την ανάπτυξη συστάδας μοντέλων ταξινόμησης. Μια άλλη προσέγγιση ήταν η ανάπτυξη ενός Μπεϋζιανού μοντέλου για την εκτίμηση των παραμέτρων του ΠΝΔ χρησιμοποιώντας τον δειγματολήπτη Gibbs. Επίσης, ενσωματώθηκε μια Ασαφή Συνάρτηση Συμμετοχής για την καλύτερη στάθμιση των τεχνητών νευρώνων του ΠΝΔ καθώς και ένα νέο σχήμα διάσπασης του συνόλου εκπαίδευσης σε προβλήματα ταξινόμησης πολλαπλών κλάσεων όταν ο ταξινομητής μπορεί να επιτύχει ταξινόμηση δύο κλάσεων.Τα προτεινόμενα μοντέλα ταξινόμησης εφαρμόστηκαν σε μια σειρά από πραγματικά προβλήματα από διάφορες επιστημονικές περιοχές με ενθαρρυντικά αποτελέσματα. / The present thesis is dealing with the study and the development of classification models that are based on Probabilistic Neural Networks (PNN). The proposed models were developed by the incorporation of statistical methods as well as methods from several fields of Computational Intelligence (CI) into PNNs. In particular, the Differential Evolutionary optimization algorithms and Particle Swarm Optimization algorithms are employed for the search of promising values of PNNs’ parameters. Moreover, the bagging technique was incorporated for the development of an ensemble of classification models. Another approach was the construction of a Bayesian model for the estimation of PNN’s parameters utilizing the Gibbs sampler. Furthermore, a Fuzzy Membership Function was incorporated to achieve an improved weighting of PNN’s neurons. A new decomposition scheme is proposed for multi-class classification problems when a two-class classifier is employed. The proposed classification models were applied to a series of real-world problems from several scientific areas with encouraging results.
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Prediction of properties and optimal design of microstructure of multi-phase and multi-layer C/SiC compositesXu, Yingjie 08 July 2011 (has links) (PDF)
Carbon fiber-reinforced silicon carbide matrix (C/SiC) composite is a ceramic matrixcomposite (CMC) that has considerable promise for use in high-temperature structuralapplications. In this thesis, systematic numerical studies including the prediction of elasticand thermal properties, analysis and optimization of stresses and simulation ofhigh-temperature oxidations are presented for the investigation of C/SiC composites.A strain energy method is firstly proposed for the prediction of the effective elastic constantsand coefficients of thermal expansion (CTEs) of 3D orthotropic composite materials. Thismethod derives the effective elastic tensors and CTEs by analyzing the relationship betweenthe strain energy of the microstructure and that of the homogenized equivalent model underspecific thermo-elastic boundary conditions. Different kinds of composites are tested tovalidate the model.Geometrical configurations of the representative volume cell (RVC) of 2-D woven and 3-Dbraided C/SiC composites are analyzed in details. The finite element models of 2-D wovenand 3-D braided C/SiC composites are then established and combined with the stain energymethod to evaluate the effective elastic constants and CTEs of these composites. Numericalresults obtained by the proposed model are then compared with the results measuredexperimentally.A global/local analysis strategy is developed for the determination of the detailed stresses inthe 2-D woven C/SiC composite structures. On the basis of the finite element analysis, theprocedure is carried out sequentially from the homogenized composite structure of themacro-scale (global model) to the parameterized detailed fiber tow model of the micro-scale(local model). The bridge between two scales is realized by mapping the global analysisresult as the boundary conditions of the local tow model. The stress results by global/localmethod are finally compared to those by conventional finite element analyses.Optimal design for minimizing thermal residual stress (TRS) in 1-D unidirectional C/SiCcomposites is studied. The finite element models of RVC of 1-D unidirectional C/SiCIIcomposites with multi-layer interfaces are generated and finite element analysis is realized todetermine the TRS distributions. An optimization scheme which combines a modifiedParticle Swarm Optimization (PSO) algorithm and the finite element analysis is used toreduce the TRS in the C/SiC composites by controlling the multi-layer interfaces thicknesses.A numerical model is finally developed to study the microstructure oxidation process and thedegradation of elastic properties of 2-D woven C/SiC composites exposed to air oxidizingenvironments at intermediate temperature (T<900°C). The oxidized RVC microstructure ismodeled based on the oxidation kinetics analysis. The strain energy method is then combinedwith the finite element model of oxidized RVC to predict the elastic properties of composites.The environmental parameters, i.e., temperature and pressure are studied to show theirinfluences upon the oxidation behavior of C/SiC composites.
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Optimization of power system performance using facts devicesdel Valle, Yamille E. 02 July 2009 (has links)
The object of this research is to optimize the overall power system performance using FACTS devices. Particularly, it is intended to improve the reliability, and the performance of the power system considering steady state operating condition as well as the system subjected to small and large disturbances.
The methodology proposed to achieve this goal corresponds to an enhanced particle swarm optimizer (Enhanced-PSO) that is proven in this work to have several advantages, in terms of accuracy and computational effort, as compared with other existing methods.
Once the performance of the Enhanced PSO is verified, a multi-stage PSO-based optimization framework is proposed for optimizing the power system reliability (N-1 contingency criterion). The algorithm finds optimal settings for present infrastructure (generator outputs, transformers tap ratios and capacitor banks settings) as well as optimal control references for distributed static series compensators (DSSC) and optimal locations, sizes and control settings for static compensator (STATCOM) units.
Finally, a two-stage optimization algorithm is proposed to improve the power system performance in steady state conditions and when small and large perturbations are applied to the system. In this case, the algorithm provides optimal control references for DSSC modules, optimal location and sizes for capacitor banks, and optimal location, sizes and control parameters for STATCOM units (internal and external controllers), so that the loadability and the damping of the system are maximized at minimum cost.
Simulation results throughout this research show a significant improvement of the power system reliability and performance after the system is optimized.
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Advanced Computational Methods for Power System Data Analysis in an Electricity MarketKe Meng Unknown Date (has links)
The power industry has undergone significant restructuring throughout the world since the 1990s. In particular, its traditional, vertically monopolistic structures have been reformed into competitive markets in pursuit of increased efficiency in electricity production and utilization. However, along with market deregulation, power systems presently face severe challenges. One is power system stability, a problem that has attracted widespread concern because of severe blackouts experienced in the USA, the UK, Italy, and other countries. Another is that electricity market operation warrants more effective planning, management, and direction techniques due to the ever expanding large-scale interconnection of power grids. Moreover, many exterior constraints, such as environmental protection influences and associated government regulations, now need to be taken into consideration. All these have made existing challenges even more complex. One consequence is that more advanced power system data analysis methods are required in the deregulated, market-oriented environment. At the same time, the computational power of modern computers and the application of databases have facilitated the effective employment of new data analysis techniques. In this thesis, the reported research is directed at developing computational intelligence based techniques to solve several power system problems that emerge in deregulated electricity markets. Four major contributions are included in the thesis: a newly proposed quantum-inspired particle swarm optimization and self-adaptive learning scheme for radial basis function neural networks; online wavelet denoising techniques; electricity regional reference price forecasting methods in the electricity market; and power system security assessment approaches for deregulated markets, including fault analysis, voltage profile prediction under contingencies, and machine learning based load shedding scheme for voltage stability enhancement. Evolutionary algorithms (EAs) inspired by biological evolution mechanisms have had great success in power system stability analysis and operation planning. Here, a new quantum-inspired particle swarm optimization (QPSO) is proposed. Its inspiration stems from quantum computation theory, whose mechanism is totally different from those of original EAs. The benchmark data sets and economic load dispatch research results show that the QPSO improves on other versions of evolutionary algorithms in terms of both speed and accuracy. Compared to the original PSO, it greatly enhances the searching ability and efficiently manages system constraints. Then, fuzzy C-means (FCM) and QPSO are applied to train radial basis function (RBF) neural networks with the capacity to auto-configure the network structures and obtain the model parameters. The benchmark data sets test results suggest that the proposed training algorithms ensure good performance on data clustering, also improve training and generalization capabilities of RBF neural networks. Wavelet analysis has been widely used in signal estimation, classification, and compression. Denoising with traditional wavelet transforms always exhibits visual artefacts because of translation-variant. Furthermore, in most cases, wavelet denoising of real-time signals is actualized via offline processing which limits the efficacy of such real-time applications. In the present context, an online wavelet denoising method using a moving window technique is proposed. Problems that may occur in real-time wavelet denoising, such as border distortion and pseudo-Gibbs phenomena, are effectively solved by using window extension and window circle spinning methods. This provides an effective data pre-processing technique for the online application of other data analysis approaches. In a competitive electricity market, price forecasting is one of the essential functions required of a generation company and the system operator. It provides critical information for building up effective risk management plans by market participants, especially those companies that generate and retail electrical power. Here, an RBF neural network is adopted as a predictor of the electricity market regional reference price in the Australian national electricity market (NEM). Furthermore, the wavelet denoising technique is adopted to pre-process the historical price data. The promising network prediction performance with respect to price data demonstrates the efficiency of the proposed method, with real-time wavelet denoising making feasible the online application of the proposed price prediction method. Along with market deregulation, power system security assessment has attracted great concern from both academic and industry analysts, especially after several devastating blackouts in the USA, the UK, and Russia. This thesis goes on to propose an efficient composite method for cascading failure prevention comprising three major stages. Firstly, a hybrid method based on principal component analysis (PCA) and specific statistic measures is used to detect system faults. Secondly, the RBF neural network is then used for power network bus voltage profile prediction. Tests are carried out by means of the “N-1” and “N-1-1” methods applied in the New England power system through PSS/E dynamic simulations. Results show that system faults can be reliably detected and voltage profiles can be correctly predicted. In contrast to traditional methods involving phase calculation, this technique uses raw data from time domains and is computationally inexpensive in terms of both memory and speed for practical applications. This establishes a connection between power system fault analysis and cascading analysis. Finally, a multi-stage model predictive control (MPC) based load shedding scheme for ensuring power system voltage stability is proposed. It has been demonstrated that optimal action in the process of load shedding for voltage stability during emergencies can be achieved as a consequence. Based on above discussions, a framework for analysing power system voltage stability and ensuring its enhancement is proposed, with such a framework able to be used as an effective means of cascading failure analysis. In summary, the research reported in this thesis provides a composite framework for power system data analysis in a market environment. It covers advanced techniques of computational intelligence and machine learning, also proposes effective solutions for both the market operation and the system stability related problems facing today’s power industry.
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Otimização por enxame de partículas em arquiteturas paralelas de alto desempenho. / Particle swarm optimization in high-performance parallel architectures.Rogério de Moraes Calazan 21 February 2013 (has links)
A Otimização por Enxame de Partículas (PSO, Particle Swarm Optimization) é uma técnica de otimização que vem sendo utilizada na solução de diversos problemas, em diferentes áreas do conhecimento. Porém, a maioria das implementações é realizada de modo sequencial. O processo de otimização necessita de um grande número de avaliações da função objetivo, principalmente em problemas complexos que envolvam uma grande quantidade de partículas e dimensões. Consequentemente, o algoritmo pode se tornar ineficiente em termos do desempenho obtido, tempo de resposta e até na qualidade do resultado esperado. Para superar tais dificuldades, pode-se utilizar a computação de alto desempenho e paralelizar o algoritmo, de acordo com as características da arquitetura, visando o aumento de desempenho, a minimização do tempo de resposta e melhoria da qualidade do resultado final. Nesta dissertação, o algoritmo PSO é paralelizado utilizando três estratégias que abordarão diferentes granularidades do problema, assim como dividir o trabalho de otimização entre vários subenxames cooperativos. Um dos algoritmos paralelos desenvolvidos, chamado PPSO, é implementado diretamente em hardware, utilizando uma FPGA. Todas as estratégias propostas, PPSO (Parallel PSO), PDPSO (Parallel Dimension PSO) e CPPSO (Cooperative Parallel PSO), são implementadas visando às arquiteturas paralelas baseadas em multiprocessadores, multicomputadores e GPU. Os diferentes testes realizados mostram que, nos problemas com um maior número de partículas e dimensões e utilizando uma estratégia com granularidade mais fina (PDPSO e CPPSO), a GPU obteve os melhores resultados. Enquanto, utilizando uma estratégia com uma granularidade mais grossa (PPSO), a implementação em multicomputador obteve os melhores resultados. / Particle Swarm Optimization (PSO) is an optimization technique that is used to solve many problems in different applications. However, most implementations are sequential. The optimization process requires a large number of evaluations of the objective function, especially in complex problems, involving a large amount of particles and dimensions. As a result, the algorithm may become inefficient in terms of performance, execution time and even the quality of the expected result. To overcome these difficulties,high performance computing and parallel algorithms can be used, taking into account to the characteristics of the architecture. This should increase performance, minimize response time and may even improve the quality of the final result. In this dissertation, the PSO algorithm is parallelized using three different strategies that consider different granularities of the problem, and the division of the optimization work among several cooperative sub-swarms. One of the developed parallel algorithms, namely PPSO, is implemented directly in hardware, using an FPGA. All the proposed strategies, namely PPSO ( Parallel PSO), PDPSO (Parallel Dimension PSO) and CPPSO (Cooperative Parallel PSO), are implemented in a multiprocessor, multicomputer and GPU based parallel architectures. The different performed assessments show that the GPU achieved the best results for problems with high number of particles and dimensions when a strategy with finer granularity is used, namely PDPSO and CPPSO. In contrast with this, when using a strategy with a coarser granularity, namely PPSO, the multi-computer based implementation achieved the best results.
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Proposição e análise de modelos híbridos para o problema de escalonamento de produção em oficina de máquinas / Presentation and analysis of hybridization models for the jobshop scheduling problemTatiana Balbi Fraga 26 March 2010 (has links)
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior / Nas últimas décadas, o problema de escalonamento da produção em oficina de
máquinas, na literatura referido como JSSP (do inglês Job Shop Scheduling Problem), tem
recebido grande destaque por parte de pesquisadores do mundo inteiro. Uma das razões que
justificam tamanho interesse está em sua alta complexidade. O JSSP é um problema de
análise combinatória classificado como NP-Difícil e, apesar de existir uma grande variedade
de métodos e heurísticas que são capazes de resolvê-lo, ainda não existe hoje nenhum método
ou heurística capaz de encontrar soluções ótimas para todos os problemas testes apresentados
na literatura. A outra razão basea-se no fato de que esse problema encontra-se presente no diaa-
dia das indústrias de transformação de vários segmento e, uma vez que a otimização do
escalonamento pode gerar uma redução significativa no tempo de produção e,
consequentemente, um melhor aproveitamento dos recursos de produção, ele pode gerar um
forte impacto no lucro dessas indústrias, principalmente nos casos em que o setor de produção
é responsável por grande parte dos seus custos totais. Entre as heurísticas que podem ser
aplicadas à solução deste problema, o Busca Tabu e o Multidão de Partículas apresentam uma
boa performance para a maioria dos problemas testes encontrados na literatura. Geralmente, a
heurística Busca Tabu apresenta uma boa e rápida convergência para pontos ótimos ou subótimos,
contudo esta convergência é frequentemente interrompida por processos cíclicos e a
performance do método depende fortemente da solução inicial e do ajuste de seus parâmetros.
A heurística Multidão de Partículas tende a convergir para pontos ótimos, ao custo de um
grande esforço computacional, sendo que sua performance também apresenta uma grande
sensibilidade ao ajuste de seus parâmetros. Como as diferentes heurísticas aplicadas ao
problema apresentam pontos positivos e negativos, atualmente alguns pesquisadores
começam a concentrar seus esforços na hibridização das heurísticas existentes no intuito de
gerar novas heurísticas híbridas que reúnam as qualidades de suas heurísticas de base,
buscando desta forma diminuir ou mesmo eliminar seus aspectos negativos. Neste trabalho,
em um primeiro momento, são apresentados três modelos de hibridização baseados no
esquema geral das Heurísticas de Busca Local, os quais são testados com as heurísticas Busca
Tabu e Multidão de Partículas. Posteriormente é apresentada uma adaptação do método
Colisão de Partículas, originalmente desenvolvido para problemas contínuos, onde o método
Busca Tabu é utilizado como operador de exploração local e operadores de mutação são
utilizados para perturbação da solução. Como resultado, este trabalho mostra que, no caso dos
modelos híbridos, a natureza complementar e diferente dos métodos Busca Tabu e Multidão
de Partículas, na forma como são aqui apresentados, da origem à algoritmos robustos capazes
de gerar solução ótimas ou muito boas e muito menos sensíveis ao ajuste dos parâmetros de
cada um dos métodos de origem. No caso do método Colisão de Partículas, o novo algorítimo
é capaz de atenuar a sensibilidade ao ajuste dos parâmetros e de evitar os processos cíclicos
do método Busca Tabu, produzindo assim melhores resultados. / In recent decades, the Job Shop Scheduling Ploblem (JSSP) has received great
attention of researchers worldwide. One of the reasons for such interest is its high complexity.
The JSSP is a combinatorial optimization problem classified as NP-Hard and, although there
is a variety of methods and heuristics that are able to solve it, even today no method or
heuristic is able to find optimal solutions for all benchmarcks presented in the literature. The
other reason builds on noted fact that this problem is present in day-to-day of industries of
various segments and, since the optimal scheduling may cause a significant reduction in
production time and thus a better utilization of manufacturing resources, it can generate a
strong impact on the gain of these industries, especially in cases where the production sector
is responsible for most of their total costs. Among the heuristics that can be applied to the
solution of this problem, the Tabu Search and the Particle Swarm Optimization show good
performance for most benchmarcks found in the literature. Usually, the Taboo Search heuristic
presents a good and fast convergence to the optimal or sub-optimal points, but this
convergence is frequently interrupted by cyclical processes, offset, the Particle Swarm
Optimization heuristic tends towards a convergence by means of a lot of computational time,
and the performance of both heuristics strongly depends on the adjusting of its parameters.
This thesis presents four different hybridization models to solve the classical Job Shop
Scheduling Problem, three of which based on the general schema of Local Search Heuristics
and the fourth based on the method Particle Collision. These models are analyzed with these
two heuristics, Taboo Search and Particle Swarm Optimization, and the elements of this
heuristics, showing what aspects must be considered in order to achieve a best solution of the
one obtained by the original heuristics in a considerable computational time. As results this
thesis demonstrates that the four models are able to improve the robustness of the original
heuristics and the results found by Taboo Search.
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Conception et optimisation d'émetteurs sélectifs pour applications thermophotovoltaïques / Coherent thermal sources Design and optimization of thermophotovoltaic applicationsNefzaoui, Elyes 08 March 2013 (has links)
Le thermo-photovoltaïque (TPV), conversion du rayonnement thermique par des cellules photovoltaïques (PV), est un dispositif qui a suscité un intérêt croissant depuis deux décennies, notamment pour son efficacité supérieure à celle de la conversion photovoltaïque classique. Ceci est essentiellement dû à l'accord entre le spectre du rayonnement de la source thermique et le spectre de conversion de la cellule PV. Les rendements maximaux sont obtenus pour des sources thermiques cohérentes, émettant dans une gamme spectrale étroite, énergétiquement au-dessus de l'énergie de la bande interdite de la cellule PV. On propose dans ce travail d'appliquer une méthode d'optimisation stochastique, en l'occurrence l'optimisation par essaims de particules, pour concevoir et optimiser de telles sources. On aboutit alors à des structures unidimensionnelles simples, à base de films minces de diélectriques, métaux et de semi-conducteurs. Les propriétés radiatives de ces sources, stables pour des températures allant jusqu'à 1000 K, sont aisément contrôlables à l'aide de paramètres simples comme les épaisseurs des films ou la concentration de dopage. Finalement, on propose une étude d'optimisation paramétrique des propriétés optiques des matériaux susceptibles de maximiser l'échange radiatif en champ proche entre deux milieux plans semi-infinis. Cette étude aboutit à un outil pratique, sous forme d'abaques, permettant de guider le choix des matériaux pertinents afin de maximiser les puissances au même temps que l'efficacité des systèmes TPV nanométriques. / Thermo-photovoltaic conversion of thermal radiation is a concept that has been thoroughly investigated during the two last decades because of its high efficiency when compared to classical photovoltaics (PV). These high performances are mainly due to the good-matching between the thermal source radiation spectrum and the PV cell conversion spectrum. Maximal efficiencies areobtained with coherent sources that emit in narrow spectral bands, just above the band gap energy of the cell. In this report, a stochastic method to design and optimize such sources, the particle swarm optimization in this case, is firstly presented. This method leads to simple one-dimensional structures, composed of thin films of dielectrics, metals and semiconductors. The radiativeproperties of these sources are easily tunable with control parameters as simple as films thicknesses and doping concentrations. They are stable at high temperatures up to 1000 K. Second, a parametric optimization study of usual materials optical properties models (Drude and Lorentz) is presented in order to maximize radiative heat transfer between semi-infinite planes separated by nanometric gaps. This leads to a simple tool in the form of abacuses which would guide the choice of relevant materials to maximize the output power of nano thermo-photovoltaic devices.
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