Spelling suggestions: "subject:"clustering aggregation"" "subject:"clustering ggregation""
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[pt] LIGANDO A REOLOGIA DE EMULSOES A O A PARTIR DE OLEO CRU COM O PROCESSO DE AGREGACAO DE GOTAS / [en] LINKING THE RHEOLOGY OF W O CRUDE EMULSIONS WITH THE DROPLET AGREGGATION PROCESSELIANA PAOLA MARIN CASTANO 02 February 2021 (has links)
[pt] Esta pesquisa focou-se no estudo da reologia de emulsões A O
preparadas com diferentes óleos crus, dando atenção especial ao seu
comportamento quando sujeitas a forças brownianas e hidrodinâmicas. Em
uma microescala, as interações partícula-partícula e partícula-meio, ambas
envolvidas no fenômeno de agregação, definem o comportamento reológico da
emulsão devido às complexas estruturas criadas pelas gotículas quando sua
concentração aumenta. Um estudo experimental foi realizado para visualizar
as características da emulsão de acordo com sua concentração de fase dispersa
e a taxa de cisalhamento aplicada, verificando-se a existência de tanto o
fenômeno de coalescência quanto o de floculação durante o cisalhamento.
A modelagem das interações entre as gotículas permitiu a previsão do
comportamento da emulsão a partir da termodinâmica de coloides. Com isso,
uma metodologia que ajustasse os dados experimentais incluindo parâmetros
da taxa de cisalhamento e da concentração da fase dispersa foi proposto.
Essa metodologia foi então aplicada a algumas equações reológicas comuns,
encontradas na literatura. Este trabalho enfatiza a importância do estudo
de emulsões em escala micro a fim de obter uma melhor compreensão dos
processos de formação e quebra das complexas estruturas randômicas de
agregados. Isso permite prever seu comportamento reológico e propor um
modelo fenomenológico que o descreva. / [en] This research focused on studying the rheology of W O emulsions
formed by different crude oils, with special attention to their behavior when
subjected to Brownian and hydrodynamic forces. At a microscale level,
particle-particle and particle-medium interactions, both of which are involved
in the phenomenon of aggregation, define the emulsion s rheological behavior
due to the complex structures created by the droplets as their concentration
rises. An experimental study was performed in order to visualize the emulsions
characteristics according to its disperse phase concentration and the shear
rate applied, verifying the existence of both coalescence and flocculation
phenomena during shearing. The modeling of interactions between droplets
allowed the prediction of the emulsion s behavior by colloidal thermodynamics.
With it, a methodology to fit the experimental data that included both the
shear rate and disperse phase concentration parameters was proposed. This
work emphasizes the importance of studying emulsion systems at a micro-scale
level in order to obtain a better comprehension of the formation and breakage
processes of complex and random aggregate structures. This allows the
prediction of the emulsion s rheological behavior, and the proposition of a
phenomenological model to best describe it.
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Feedback-Driven Data ClusteringHahmann, Martin 28 February 2014 (has links) (PDF)
The acquisition of data and its analysis has become a common yet critical task in many areas of modern economy and research. Unfortunately, the ever-increasing scale of datasets has long outgrown the capacities and abilities humans can muster to extract information from them and gain new knowledge. For this reason, research areas like data mining and knowledge discovery steadily gain importance. The algorithms they provide for the extraction of knowledge are mandatory prerequisites that enable people to analyze large amounts of information. Among the approaches offered by these areas, clustering is one of the most fundamental. By finding groups of similar objects inside the data, it aims to identify meaningful structures that constitute new knowledge. Clustering results are also often used as input for other analysis techniques like classification or forecasting.
As clustering extracts new and unknown knowledge, it obviously has no access to any form of ground truth. For this reason, clustering results have a hypothetical character and must be interpreted with respect to the application domain. This makes clustering very challenging and leads to an extensive and diverse landscape of available algorithms. Most of these are expert tools that are tailored to a single narrowly defined application scenario. Over the years, this specialization has become a major trend that arose to counter the inherent uncertainty of clustering by including as much domain specifics as possible into algorithms. While customized methods often improve result quality, they become more and more complicated to handle and lose versatility. This creates a dilemma especially for amateur users whose numbers are increasing as clustering is applied in more and more domains. While an abundance of tools is offered, guidance is severely lacking and users are left alone with critical tasks like algorithm selection, parameter configuration and the interpretation and adjustment of results.
This thesis aims to solve this dilemma by structuring and integrating the necessary steps of clustering into a guided and feedback-driven process. In doing so, users are provided with a default modus operandi for the application of clustering. Two main components constitute the core of said process: the algorithm management and the visual-interactive interface. Algorithm management handles all aspects of actual clustering creation and the involved methods. It employs a modular approach for algorithm description that allows users to understand, design, and compare clustering techniques with the help of building blocks. In addition, algorithm management offers facilities for the integration of multiple clusterings of the same dataset into an improved solution. New approaches based on ensemble clustering not only allow the utilization of different clustering techniques, but also ease their application by acting as an abstraction layer that unifies individual parameters. Finally, this component provides a multi-level interface that structures all available control options and provides the docking points for user interaction.
The visual-interactive interface supports users during result interpretation and adjustment. For this, the defining characteristics of a clustering are communicated via a hybrid visualization. In contrast to traditional data-driven visualizations that tend to become overloaded and unusable with increasing volume/dimensionality of data, this novel approach communicates the abstract aspects of cluster composition and relations between clusters. This aspect orientation allows the use of easy-to-understand visual components and makes the visualization immune to scale related effects of the underlying data. This visual communication is attuned to a compact and universally valid set of high-level feedback that allows the modification of clustering results. Instead of technical parameters that indirectly cause changes in the whole clustering by influencing its creation process, users can employ simple commands like merge or split to directly adjust clusters.
The orchestrated cooperation of these two main components creates a modus operandi, in which clusterings are no longer created and disposed as a whole until a satisfying result is obtained. Instead, users apply the feedback-driven process to iteratively refine an initial solution. Performance and usability of the proposed approach were evaluated with a user study. Its results show that the feedback-driven process enabled amateur users to easily create satisfying clustering results even from different and not optimal starting situations.
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Feedback-Driven Data ClusteringHahmann, Martin 28 October 2013 (has links)
The acquisition of data and its analysis has become a common yet critical task in many areas of modern economy and research. Unfortunately, the ever-increasing scale of datasets has long outgrown the capacities and abilities humans can muster to extract information from them and gain new knowledge. For this reason, research areas like data mining and knowledge discovery steadily gain importance. The algorithms they provide for the extraction of knowledge are mandatory prerequisites that enable people to analyze large amounts of information. Among the approaches offered by these areas, clustering is one of the most fundamental. By finding groups of similar objects inside the data, it aims to identify meaningful structures that constitute new knowledge. Clustering results are also often used as input for other analysis techniques like classification or forecasting.
As clustering extracts new and unknown knowledge, it obviously has no access to any form of ground truth. For this reason, clustering results have a hypothetical character and must be interpreted with respect to the application domain. This makes clustering very challenging and leads to an extensive and diverse landscape of available algorithms. Most of these are expert tools that are tailored to a single narrowly defined application scenario. Over the years, this specialization has become a major trend that arose to counter the inherent uncertainty of clustering by including as much domain specifics as possible into algorithms. While customized methods often improve result quality, they become more and more complicated to handle and lose versatility. This creates a dilemma especially for amateur users whose numbers are increasing as clustering is applied in more and more domains. While an abundance of tools is offered, guidance is severely lacking and users are left alone with critical tasks like algorithm selection, parameter configuration and the interpretation and adjustment of results.
This thesis aims to solve this dilemma by structuring and integrating the necessary steps of clustering into a guided and feedback-driven process. In doing so, users are provided with a default modus operandi for the application of clustering. Two main components constitute the core of said process: the algorithm management and the visual-interactive interface. Algorithm management handles all aspects of actual clustering creation and the involved methods. It employs a modular approach for algorithm description that allows users to understand, design, and compare clustering techniques with the help of building blocks. In addition, algorithm management offers facilities for the integration of multiple clusterings of the same dataset into an improved solution. New approaches based on ensemble clustering not only allow the utilization of different clustering techniques, but also ease their application by acting as an abstraction layer that unifies individual parameters. Finally, this component provides a multi-level interface that structures all available control options and provides the docking points for user interaction.
The visual-interactive interface supports users during result interpretation and adjustment. For this, the defining characteristics of a clustering are communicated via a hybrid visualization. In contrast to traditional data-driven visualizations that tend to become overloaded and unusable with increasing volume/dimensionality of data, this novel approach communicates the abstract aspects of cluster composition and relations between clusters. This aspect orientation allows the use of easy-to-understand visual components and makes the visualization immune to scale related effects of the underlying data. This visual communication is attuned to a compact and universally valid set of high-level feedback that allows the modification of clustering results. Instead of technical parameters that indirectly cause changes in the whole clustering by influencing its creation process, users can employ simple commands like merge or split to directly adjust clusters.
The orchestrated cooperation of these two main components creates a modus operandi, in which clusterings are no longer created and disposed as a whole until a satisfying result is obtained. Instead, users apply the feedback-driven process to iteratively refine an initial solution. Performance and usability of the proposed approach were evaluated with a user study. Its results show that the feedback-driven process enabled amateur users to easily create satisfying clustering results even from different and not optimal starting situations.
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