468,144 research outputs found

    A Hybrid Simulation of Converter-Interfaced Generation as the Part of a Large-Scale Power System Model

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    This study aims to propose an alternative hybrid approach to model renewable energy sources (RESs), which provide the most reliable results in comparison with the existing simulating tools. Within the framework of this approach, a specialized hybrid processor for modeling converter-interfaced generation (CIG) is developed. This study describes its structure and validation in the test system by comparing the results with commercial modeling tools, and also presents experimental studies of its operation as parts of the practical power system. The results obtained confirm the adequacy of the developed tools

    Coherent tool support for design-space exploration

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    Embedded Systems Innovation by TNO developed three generic tools to improve industrial applicability. POOSL provides an integrated editing, debugging and validating environment for system modelling, combined with a simulator. TRACE is a tool for visualizing quantitative analysis results. Design Framework (DF) aims for system architecting including architectural views, work flow support and the link of architectural reasoning to concrete modeling activities and artifacts. However, there is no integrated environment to support these three tools to work together. This project proposes a prototype to demonstrate cooperation between the three generic tools as an integrated environment for design-space exploration. The report describes the process that was applied to the new integrated environment, Exploration Experiment (EE). EE provides a platform to define an experiment by specifying a sequence of a model and executors. From DF, the user can execute a defined experiment and get the execution results automatically. In addition to the development of EE, this report also includes the process of the development of TRACE extensions. The extensions contain new functionalities of multiple Gantt Chart comparison and design-space visualizations, a standalone application and an executable JAVA Archive file

    Models for Co-Design of Heterogeneous Dynamically Reconfigurable SoCs

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    International audienceThe design of Systems-on-Chip is becoming an increasing difficult challenge due to the continuous exponential evolution of the targeted complex architectures and applications. Thus, seamless methodologies and tools are required to resolve the SoC design issues. This chapter presents a high level component based approach for expressing system reconfigurability in SoC co-design. A generic model of reactive control is presented for Gaspard2, a SoC co-design framework. Control integration in different levels of the framework is explored along with a comparison of their advantages and disadvantages. Afterwards, control integration at another high abstraction level is investigated which proves to be more beneficial then the other alternatives. This integration allows to integrate reconfigurability features in modern SoCs. Finally a case study is presented for validation purposes. The presented works are based on Model-Driven Engineering (MDE) and UML MARTE profile for modeling and analysis of real-time embedded systems

    Large-Scale, Dynamic, Microscopic Simulation for Region-Wide Line Source Dispersion Modeling

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    Although a variety of modeling tools have been developed to predict potential public exposure to harmful transportation emissions at regional and sub-regional scales, computational efficiency remains a critical concern in the design of modeling tools. Microscale dispersion models run at high resolution and require extremely long runtimes for larger roadway networks and high-resolution receptor grids. Motivated by the challenges encountered in the previous modeling efforts, this work develops an advanced modeling framework for region-wide applications of line source dispersion models that integrates a high-performance emission rate lookup system (i.e., MOVES-Matrix), link screening, and innovative receptor site selection routines to further accelerate model implementation within distributed computing modeling framework. The case study in the 20-county metropolitan Atlanta area accounts for an extremely large number of link-receptor pairs demonstrates that the modeling system generates comparable concentration estimates to extremely-high-resolution processes, but with very high computational efficiency. The comprehensive modeling methodology presented in this work will make comparison of air quality impacts across complex project scenarios (and transportation development alternatives over large geographic areas) much more feasible. All these aspects should be of interest to a broad readership engaged in near-road air quality modeling for transportation planning and air quality conformity and for environmental analysis under the National Environmental Policy Act.Ph.D

    Papyrus, EATOP, and MetaEdit+: a comparison between the EAST-ADL modeling tools

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    Several Architecture Description Languages (ADLs) are emerging as models to describe and represent system architectures. Among others, EAST-ADL language is highlighted. It represents an abstraction of embedded software systems for automobiles. Given the need to implement the EAST-ADL language, there are many modeling tools to perform this task. The scope of this thesis is a detailed comparison of three EAST-ADL editors: Papyrus, EATOP and MetaEdit +, providing a conceptual framework, describing the comparison criteria, and finally exemplifying thanks to the Brake-By-Wire use case which has been provided, and whose development is not the subject of this project. The motivation for developing this project is to provide comparison guide between these three modeling tools to facilitate developers choice when deciding the tool in which develop their work. RESUMEN. Diversos Lenguajes de Descripción de Arquitecturas (ADLs) están surgiendo como modelos para describir y representar arquitecturas de sistemas. Entre ellos es destacado el lenguaje EAST-ADL, que representa una abstracción de los sistemas de software embebido para automóviles. Ante la necesidad de implementar el lenguaje EAST-ADL, han surgido diversas herramientas de modelado que llevan a cabo esta tarea. El alcance de este proyecto consiste en una comparación detallada de tres editores EAST-ADL: Papyrus, EATOP y MetaEdit+, proporcionando un marco conceptual, describiendo los criterios de comparación y finalmente ejemplificando con el caso de uso Brake-By-Wire que nos ha sido proporcionado, y cuyo desarrollo no es sujeto de este proyecto. La motivación para desarrollar este proyecto parte de proporcionar al usuario una guía comparativa de estas tres herramientas de modelado para facilitar su elección a la hora de desarrollar su trabajo

    Using supervised and one-class automated machine learning for predictive maintenance

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    Predictive Maintenance (PdM) is a critical area that is benefiting from the Industry 4.0 advent. Recently, several attempts have been made to apply Machine Learning (ML) to PdM, with the majority of the research studies assuming an expert-based ML modeling. In contrast with these works, this paper explores a purely Automated Machine Learning (AutoML) modeling for PdM under two main approaches. Firstly, we adapt and compare ten recent open-source AutoML technologies focused on a Supervised Learning. Secondly, we propose a novel AutoML approach focused on a One-Class (OC) Learning (AutoOneClass) that employs a Grammatical Evolution (GE) to search for the best PdM model using three types of learners (OC Support Vector Machines, Isolation Forests and deep Autoencoders). Using recently collected data from a Portuguese software company client, we performed a benchmark comparison study with the Supervised AutoML tools and the proposed AutoOneClass method to predict the number of days until the next failure of an equipment and also determine if the equipments will fail in a fixed amount of days. Overall, the results were close among the compared AutoML tools, with supervised AutoGluon obtaining the best results for all ML tasks. Moreover, the best supervised AutoML and AutoOneClass predictive results were compared with two manual ML modeling approaches (using a ML expert and a non-ML expert), revealing competitive results.This work was executed under the project Cognitive CMMS - Cognitive Computerized Maintenance Management System, NUP: POCI-01-0247-FEDER-033574, co-funded by the Incentive System for Research and Technological Development , from the Thematic Operational Program Competitiveness of the national framework program - Portugal2020. We wish to thank the anonymous reviewers for their helpful comments

    DEVELOPMENT OF TOOLS FOR ATOM-LEVEL INTERPRETATION OF STABLE ISOTOPE-RESOLVED METABOLOMICS DATASETS

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    Metabolomics is the global study of small molecules in living systems under a given state, merging as a new ‘omics’ study in systems biology. It has shown great promise in elucidating biological mechanism in various areas. Many diseases, especially cancers, are closely linked to reprogrammed metabolism. As the end point of biological processes, metabolic profiles are more representative of the biological phenotype compared to genomic or proteomic profiles. Therefore, characterizing metabolic phenotype of various diseases will help clarify the metabolic mechanisms and promote the development of novel and effective treatment strategies. Advances in analytical technologies such as nuclear magnetic resonance and mass spectroscopy greatly contribute to the detection and characterization of global metabolites in a biological system. Furthermore, application of these analytical tools to stable isotope resolved metabolomics experiments can generate large-scale high-quality metabolomics data containing isotopic flow through cellular metabolism. However, the lack of the corresponding computational analysis tools hinders the characterization of metabolic phenotypes and the downstream applications. Both detailed metabolic modeling and quantitative analysis are required for proper interpretation of these complex metabolomics data. For metabolic modeling, currently there is no comprehensive metabolic network at an atom-resolved level that can be used for deriving context-specific metabolic models for SIRM metabolomics datasets. For quantitative analysis, most available tools conduct metabolic flux analysis based on a well-defined metabolic model, which is hard to achieve for complex biological system due to the limitations in our knowledge. Here, we developed a set of methods to address these problems. First, we developed a neighborhood-specific coloring method that can create identifier for each atom in a specific compound. With the atom identifiers, we successfully harmonized compounds and reactions across KEGG and MetaCyc databases at various levels. In addition, we evaluated the atom mappings of the harmonized metabolic reactions. These results will contribute to the construction of a comprehensive atom-resolved metabolic network. In addition, this method can be easily applied to any metabolic database that provides a molfile representation of compounds, which will greatly facilitate future expansion. In addition, we developed a moiety modeling framework to deconvolute metabolite isotopologue profiles using moiety models along with the analysis and selection of the best moiety model(s) based on the experimental data. To our knowledge, this is the first method that can analyze datasets involving multiple isotope tracers. Furthermore, instead of a single predefined metabolic model, this method allows the comparison of multiple metabolic models derived from a given metabolic profile, and we have demonstrated the robust performance of the moiety modeling framework in model selection with a 13C-labeled UDP-GlcNAc isotopologue dataset. We further explored the data quality requirements and the factors that affect model selection. Collectively, these methods and tools help interpret SIRM metabolomics datasets from metabolic modeling to quantitative analysis

    A Framework for BIM Model-Based Construction Cost Estimation

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    This thesis presents a framework to conduct a quantity take-off (QTO) and cost estimate within the Building Information Modeling (BIM) Environment. The product of this framework is a model-based cost estimating tool. The framework addresses the cost uncertainty associated with the detailed information defining BIM model element properties. This cost uncertainty is due to the lack of available tools that address detailed QTO and cost estimation using solely a BIM platform. In addition, cost estimators have little experience in leveraging and managing information within semantic-rich BIM models. Unmanaged BIM element parameters are considered a source of uncertainty in a model-based cost estimate, therefore they should be managed and quantified as work items. A model-based system, which assists the estimators to conduct a QTO and cost estimate within the BIM environment, is developed. This system harnesses BIM element parameters to drive work items associated with the parameter’s host element. The system also captures the cost of scope not modeled in the design team’s BIM models. The system consists of four modules 1) establishing estimate requirements, 2) planning and structuring the estimate, 3) quantification and costing, and 4) model-based historical cost data collection. The complete system can produce a project cost estimate based on the 3D BIM Model. This framework is supported by a computation engine built within an existing virtual design and construction (VDC) model review software. The computation engine supports BIM authoring and reviewing BIM data. The Framework’s quantification and costing module was compared to existing methods in a case study. The outcomes of the model-based system demonstrated improved cost estimate accuracy in comparison to the BIM QTO method and improved speed compared to the traditional methods. The framework provides a systematic workflow for conducting a detailed cost estimate leveraging the parameters stored in the BIM models
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