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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
21

Physics-Based Modelling and Simulation Framework for Multi-Objective Optimization of Lithium-Ion Cells in Electric Vehicle Applications

Gaonkar, Ashwin 05 1900 (has links)
Indiana University-Purdue University Indianapolis (IUPUI) / In the last years, lithium-ion batteries (LIBs) have become the most important energy storage system for consumer electronics, electric vehicles, and smart grids. The development of lithium-ion batteries (LIBs) based on current practice allows an energy density increase estimated at 10% per year. However, the required power for portable electronic devices is predicted to increase at a much faster rate, namely 20% per year. Similarly, the global electric vehicle battery capacity is expected to increase from around 170 GWh per year today to 1.5 TWh per year in 2030--this is an increase of 125% per year. Without a breakthrough in battery design technology, it will be difficult to keep up with the increasing energy demand. To that end, a design methodology to accelerate the LIB development is needed. This can be achieved through the integration of electro-chemical numerical simulations and machine learning algorithms. To help this cause, this study develops a design methodology and framework using Simcenter Battery Design Studio® (BDS) and Bayesian optimization for design and optimization of cylindrical cell type 18650. The materials of the cathode are Nickel-Cobalt-Aluminum (NCA)/Nickel-Manganese-Cobalt-Aluminum (NMCA), anode is graphite, and electrolyte is Lithium hexafluorophosphate (LiPF6). Bayesian optimization has emerged as a powerful gradient-free optimization methodology to solve optimization problems that involve the evaluation of expensive black-box functions. The black-box functions are simulations of the cyclic performance test in Simcenter Battery Design Studio. The physics model used for this study is based on full system model described by Fuller and Newman. It uses Butler-Volmer Equation for ion-transportation across an interface and solvent diffusion model (Ploehn Model) for Aging of Lithium-Ion Battery Cells. The BDS model considers effects of SEI, cell electrode and microstructure dimensions, and charge-discharge rates to simulate battery degradation. Two objectives are optimized: maximization of the specific energy and minimization of the capacity fade. We perform global sensitivity analysis and see that thickness and porosity of the coating of the LIB electrodes that affect the objective functions the most. As such the design variables selected for this study are thickness and porosity of the electrodes. The thickness is restricted to vary from 22microns to 240microns and the porosity varies from 0.22 to 0.54. Two case studies are carried out using the above-mentioned objective functions and parameters. In the first study, cycling tests of 18650 NCA cathode Li-ion cells are simulated. The cells are charged and discharged using a constant 0.2C rate for 500 cycles. In the second case study a cathode active material more relevant to the electric vehicle industry, Nickel-Manganese-Cobalt-Aluminum (NMCA), is used. Here, the cells are cycled for 5 different charge-discharge scenarios to replicate charge-discharge scenario that an EVs battery module experiences. The results show that the design and optimization methodology can identify cells to satisfy the design objective that extend and improve the pareto front outside the original sampling plan for several practical charge-discharge scenarios which maximize energy density and minimize capacity fade.
22

Bayesian Topology Optimization for Efficient Design of Origami Folding Structures

Shende, Sourabh 15 June 2020 (has links)
No description available.
23

Optimisation des lois de commande d’un imageur sur critère optronique. Application à un imageur à deux étages de stabilisation. / Line of Sight controller global tuning based on a high-level optronic criterion. Application to a double-stage stabilization platform

Frasnedo, Sophie 06 December 2016 (has links)
Ces travaux sur la stabilisation de la Ligne de Visée d’un dispositif optronique s’inscrivent dans le contexte actuel de durcissement des exigences de stabilisation et de réduction du temps accordé à la synthèse des lois de commande.Ils incluent dans un premier temps l’amélioration de la performance intrinsèque de stabilisation du système. La solution proposée ici est l’ajout d’un étage de stabilisation supplémentaire à une structure de stabilisation existante. L’architecture de ce nouvel étage est définie. Les composants sont choisis parmi les technologies existantes puis caractérisés expérimentalement. Un modèle complet du système à deux étages de stabilisation est ensuite proposé.L’objectif de ces travaux comprend également la simplification des procédures d’élaboration des lois de commande par l’utilisation d’une fonction de coût F incluant notamment la Fonction de Transfert de Modulation (qui quantifie le flou introduit par l’erreur de stabilisation dans l’image) en lieu et place ducritère dérivé usuel qui nécessite des vérifications supplémentaires et qui peut s’avérer conservatif.L’évaluation de F étant coûteuse en temps de calcul, un algorithme d’optimisation bayésienne, adapté à l’optimisation des fonctions coûteuses, permet la synthèse des lois de commande du système dans un temps compatible avec les contraintes industrielles, à partir de la modélisation du système précédemment proposée. / The presented work on the Line of Sight stabilization of an optronic device meets the heightened demands regarding stabilization performances that come with the reduction of the time allowed to controller tuning.It includes the intrinsinc improvement of the system stabilization. The proposed solution features a double stabilization stage built from a single stabilization stage existing system. The new architecture is specified and the new components are chosen among the existing technology and experimentally characterized. A complete double stabilization stage model is then proposed.The simplification of the controller tuning process is another goal. The designed cost function F includes a high-level optronic criterion, the Modulation Transfer Function (that quantifies the level of blur broughtinto the image by the residual motion of the platform) instead of the usual low-level and potentially conservative criterion.The function F is costly to evaluate. In order to tune the controller parameters within industrial time constraints, a Bayesian algorithm, adapted to optimization with a reduced budget of evaluations, is implemented.Controllers of both stabilization stages are simultaneously tuned thanks to the previously developped system model.
24

PHYSICS-BASED MODELLING AND SIMULATION FRAMEWORK FOR MULTI-OBJECTIVE OPTIMIZATION OF LITHIUM-ION CELLS IN ELECTRIC VEHICLE APPLICATIONS

Ashwin Pramod Gaonkar (12469470) 27 April 2022 (has links)
<p>  </p> <p>In the last years, lithium-ion batteries (LIBs) have become the most important energy storage system for consumer electronics, electric vehicles, and smart grids. The development of lithium-ion batteries (LIBs) based on current practice allows an energy density increase estimated at 10% per year. However, the required power for portable electronic devices is predicted to increase at a much faster rate, namely 20% per year. Similarly, the global electric vehicle battery capacity is expected to increase from around 170 GWh per year today to 1.5 TWh per year in 2030--this is an increase of 125% per year. Without a breakthrough in battery design technology, it will be difficult to keep up with the increasing energy demand. To that end, a design methodology to accelerate the LIB development is needed. This can be achieved through the integration of electro-chemical numerical simulations and machine learning algorithms.</p> <p><br></p> <p>To help this cause, this study develops a design methodology and framework using Simcenter Battery Design Studio® (BDS) and Bayesian optimization for design and optimization of cylindrical cell type 18650. The materials of the cathode are Nickel-Cobalt-Aluminum (NCA)/Nickel-Manganese-Cobalt-Aluminum (NMCA), anode is graphite, and electrolyte is Lithium hexafluorophosphate (LiPF6). Bayesian optimization has emerged as a powerful gradient-free optimization methodology to solve optimization problems that involve the evaluation of expensive black-box functions. The black-box functions are simulations of the cyclic performance test in Simcenter Battery Design Studio. </p> <p>The physics model used for this study is based on full system model described by Fuller and Newman. It uses Butler-Volmer Equation for ion-transportation across an interface and solvent diffusion model (Ploehn Model) for Aging of Lithium-Ion Battery Cells. The BDS model considers effects of SEI, cell electrode and microstructure dimensions, and charge-discharge rates to simulate battery degradation. Two objectives are optimized: maximization of the specific energy and minimization of the capacity fade. We perform global sensitivity analysis and see that thickness and porosity of the coating of the LIB electrodes that affect the objective functions the most. As such the design variables selected for this study are thickness and porosity of the electrodes. The thickness is restricted to vary from 22 micron to 240 microns and the porosity varies from 0.22 to 0.54. </p> <p>Two case studies are carried out using the above-mentioned objective functions and parameters. In the first study, cycling tests of 18650 NCA cathode Li-ion cells are simulated. The cells are charged and discharged using a constant 0.2C rate for 500 cycles. In the second case study a cathode active material more relevant to the electric vehicle industry, Nickel-Manganese-Cobalt-Aluminum (NMCA), is used. Here, the cells are cycled for 5 different charge-discharge scenarios to replicate charge-discharge scenario that an EVs battery module experiences. The results show that the design and optimization methodology can identify cells to satisfy the design objective that extend and improve the pareto front outside the original sampling plan for several practical charge-discharge scenarios which maximize energy density and minimize capacity fade. </p>
25

BAYESIAN OPTIMIZATION FOR DESIGN PARAMETERS OF AUTOINJECTORS.pdf

Heliben Naimeshkum Parikh (15340111) 24 April 2023 (has links)
<p>The document describes the computational framework to optimize spring-driven Autoinjectors. It involves Bayesian Optimization for efficient and cost-effective design of Autoinjectors.</p>
26

Automatic parameter tuning in localization algorithms / Automatisk parameterjustering av lokaliseringsalgoritmer

Lundberg, Martin January 2019 (has links)
Many algorithms today require a number of parameters to be set in order to perform well in a given application. The tuning of these parameters is often difficult and tedious to do manually, especially when the number of parameters is large. It is also unlikely that a human can find the best possible solution for difficult problems. To be able to automatically find good sets of parameters could both provide better results and save a lot of time. The prominent methods Bayesian optimization and Covariance Matrix Adaptation Evolution Strategy (CMA-ES) are evaluated for automatic parameter tuning in localization algorithms in this work. Both methods are evaluated using a localization algorithm on different datasets and compared in terms of computational time and the precision and recall of the final solutions. This study shows that it is feasible to automatically tune the parameters of localization algorithms using the evaluated methods. In all experiments performed in this work, Bayesian optimization was shown to make the biggest improvements early in the optimization but CMA-ES always passed it and proceeded to reach the best final solutions after some time. This study also shows that automatic parameter tuning is feasible even when using noisy real-world data collected from 3D cameras.
27

BAYESIAN OPTIMAL DESIGN OF EXPERIMENTS FOR EXPENSIVE BLACK-BOX FUNCTIONS UNDER UNCERTAINTY

Piyush Pandita (6561242) 10 June 2019 (has links)
<div>Researchers and scientists across various areas face the perennial challenge of selecting experimental conditions or inputs for computer simulations in order to achieve promising results.</div><div> The aim of conducting these experiments could be to study the production of a material that has great applicability.</div><div> One might also be interested in accurately modeling and analyzing a simulation of a physical process through a high-fidelity computer code.</div><div> The presence of noise in the experimental observations or simulator outputs, called aleatory uncertainty, is usually accompanied by limited amount of data due to budget constraints.</div><div> This gives rise to what is known as epistemic uncertainty. </div><div> This problem of designing of experiments with limited number of allowable experiments or simulations under aleatory and epistemic uncertainty needs to be treated in a Bayesian way.</div><div> The aim of this thesis is to extend the state-of-the-art in Bayesian optimal design of experiments where one can optimize and infer statistics of the expensive experimental observation(s) or simulation output(s) under uncertainty.</div>
28

Design Methodology for High-performance Circuits Based on Automatic Optimization Methods. / Mise en place d'une démarche de conception pour circuits hautes performances basée sur des méthodes d'optimisation automatique

Tugui, Catalin Adrian 14 January 2013 (has links)
Ce travail de thèse porte sur le développement d’une méthodologie efficace pour la conception analogique, des algorithmes et des outils correspondants qui peuvent être utilisés dans la conception dynamique de fonctions linéaires à temps continu. L’objectif principal est d’assurer que les performances pour un système complet peuvent être rapidement investiguées, mais avec une précision comparable aux évaluations au niveau transistor.Une première direction de recherche a impliqué le développement de la méthodologie de conception basée sur le processus d'optimisation automatique de cellules au niveau transistor et la synthèse de macro-modèles analogiques de haut niveau dans certains environnements comme Mathworks - Simulink, VHDL-AMS ou Verilog-A. Le processus d'extraction des macro-modèles se base sur un ensemble complet d'analyses (DC, AC, transitoire, paramétrique, Balance Harmonique) qui sont effectuées sur les schémas analogiques conçues à partir d’une technologie spécifique. Ensuite, l'extraction et le calcul d'une multitude de facteurs de mérite assure que les modèles comprennent les caractéristiques de bas niveau et peuvent être directement régénéré au cours de l'optimisation.L'algorithme d'optimisation utilise une méthode bayésienne, où l'espace d’évaluation est créé à partir d'un modèle de substitution (krigeage dans ce cas), et la sélection est effectuée en utilisant le critère d’amélioration (Expected Improvement - EI) sujet à des contraintes. Un outil de conception a été développé (SIMECT), qui a été intégré comme une boîte à outils Matlab, employant les algorithmes d’extraction des macro-modèles et d'optimisation automatique. / The aim of this thesis is to establish an efficient analog design methodology, the algorithms and the corresponding design tools which can be employed in the dynamic conception of linear continuous-time (CT) functions. The purpose is to assure that the performance figures for a complete system can be rapidly investigated, but with comparable accuracy to the transistor-level evaluations. A first research direction implied the development of the novel design methodology based on the automatic optimization process of transistor-level cells using a modified Bayesian Kriging approach and the synthesis of robust high-level analog behavioral models in environments like Mathworks – Simulink, VHDL-AMS or Verilog-A.The macro-model extraction process involves a complete set of analyses (DC, AC, transient, parametric, Harmonic Balance) which are performed on the analog schematics implemented on a specific technology process. Then, the extraction and calculus of a multitude of figures of merit assures that the models include the low-level characteristics and can be directly regenerated during the optimization process.The optimization algorithm uses a Bayesian method, where the evaluation space is created by the means of a Kriging surrogate model, and the selection is effectuated by using the expected improvement (EI) criterion subject to constraints.A conception tool was developed (SIMECT), which was integrated as a Matlab toolbox, including all the macro-models extraction and automatic optimization techniques.
29

Bayesovská optimalizace / Bayesian optimization

Kostovčík, Peter January 2017 (has links)
Optimization is an important part of mathematics and is mostly used for practical applications. For specific types of objective functions, a lot of different methods exist. A method to use when the objective is unknown and/or expensive can be difficult to determine. One of the answers is bayesian optimization, which instead of direct optimization creates a probabilistic model and uses it to constructs easily optimizable auxiliary function. It is an iterative method that uses information from previous iterations to find new point in which the objective is evaluated and tries to find the optimum within a fewer iterations. This thesis introduces bayesian optimization, suma- rizes its different approaches in lower and higher dimensions and shows when to use it suitably. An important part of the thesis is my own optimization algorithm which is applied to different practical problems - e.g. parameter optimization in machine learning algorithm. 1
30

Hierarchical Bayesian optimization of targeted motor outputs with spatiotemporal neurostimulation

Laferrière Cyr, Samuel 12 1900 (has links)
Ce mémoire par article part de la question suivante: pouvons-nous utiliser des prothèses neurales afin d’activer artificiellement certain muscles dans le but d’accélérer la guérison et le réapprentissage du contrôle moteur après un AVC ou un traumatisme cervical ? Cette question touche plus de 15 millions de personnes chaque année à travers le monde, et est au coeur de la recherche de Numa Dancause et Marco Bonizzato, nos collaborateurs dans le département de Neuroscience de l’Université de Montréal. Il est maintenant possible d’implanter des électrodes à grande capacité dans le cortex dans le but d’acheminer des signaux électriques, mais encore difficile de prédire l’effet de stimulations sur le cerveau et le reste du corps. Cependant, des résultats préliminaires prometteurs sur des rats et singes démontrent qu’une récupération motrice non-négligeable est observée après stimulation de régions encore fonctionnelles du cortex moteur. Les difficultés rattachées à l’implémentation optimale de stimulation motocorticale consistent donc à trouver une de ces régions, ainsi qu’un protocole de stimulation efficace à la récupération. Bien que cette optimisation a été jusqu’à présent faite à la main, l’émergence d’implants capables de livrer des signaux sur plusieurs sites et avec plusieurs patrons spatio-temporels rendent l’exploration manuelle et exhaustive impossible. Une approche prometteuse afin d’automatiser et optimiser ce processus est d’utiliser un algorithme d’exploration bayésienne. Mon travail a été de déveloper et de raffiner ces techniques avec comme objectif de répondre aux deux questions scientifiques importantes suivantes: (1) comment évoquer des mouvements complexes en enchainant des microstimulations corticales ?, et (2) peuvent-elles avoir des effets plus significatifs que des stimulations simples sur la récupération motrice? Nous présentons dans l’article de ce mémoire notre approche hiérarchique utilisant des processus gaussiens pour exploiter les propriétés connues du cerveau afin d’accélérer la recherche, ainsi que nos premiers résultats répondant à la question 1. Nous laissons pour des travaux futur une réponse définitive à la deuxième question. / The idea for this thesis by article sprung from the following question: can we use neural prostheses to stimulate specific muscles in order to help recovery of motor control after stroke or cervical injury? This question is of crucial importance to 15 million people each year around the globe, and is at the heart of Numa Dancause and Marco Bonizzato’s research, our collaborators in the Neuroscience department at the University of Montreal. It is now possible to implant large capacity electrodes for electrical stimulation in cortex, but still difficult to predict their effect on the brain and the rest of the body. Nevertheless, preliminary but promising results on rats and monkeys have shown that a non-negligible motor recovery is obtained after stimulation of regions of motor cortex that are still functional. The difficulties related to optimal microcortical stimulation hence consist in finding both one of these regions, and a stimulation protocol with optimal recovery efficacy. This search has up to present day been performed by hand, but recent and upcoming large scale stimulation technologies permitting delivery of spatio-temporal signals are making such exhaustive searches impossible.A promising approach to automating and optimizing this discovery is the use of Bayesian optimization. My work has consisted in developing and refining such techniques with two scientific questions in mind: (1) how can we evoke complex movements by chaining cortical microstimulations?, and (2) can these outperform single channel stimulations in terms of recovery efficacy? We present in the main article of this thesis our hierarchical Bayesian optimization approach which uses gaussian processes to exploit known properties of the brain to speed up the search, as well as first results answering question 1. We leave to future work a definitive answer to the second question.

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