50 research outputs found

    Development of a methodology to obtain climate change projections of coastline evolution considering multiple time and spatial scales in an uncertainty context

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    RESUMEN: En esta tesis doctoral se establece un marco para el análisis de impactos costeros compatible con los condicionantes computacionales y de escala impuestos por el cambio climático y orientado hacia una mejor estimación del riesgo y hacia el diseño de estrategias de adaptación efectivas. Para ello, se desarrolla un modelo de evolución de la línea de costa basado en la física de los procesos y enriquecido por datos mediante asimilación. Una vez validado, el modelo se usa para pronosticar la respuesta de un tramo costero considerando la incertidumbre asociada al oleaje y al nivel del mar futuros. Esas proyecciones de la línea de costa se emplean a su vez para actualizar la morfología costera y obtener proyecciones de inundación que incorporan el efecto de la erosión. Finalmente, se desarrolla un nuevo modelo capaz de resolver de forma acoplada la evolución de la línea de costa y la morfología costera aplicable a diferentes configuraciones incluidas playas con corales, vegetación y estructuras antrópicas.ABSTRACT: In this PhD thesis, a coastal impact modelling framework that fulfills the computational and scale constraints imposed by climate change and oriented to produce better risk estimates and designing effective adaptation strategies, is established. To this end, a novel physics-based and data-assimilated shoreline evolution model is built. Once validated, the model is used to forecast the shoreline response considering climate-related uncertainty associated to future waves and water levels. Next, the shoreline projections are employed to update the nearshore morphology and to obtain erosion-enhanced flooding projections. Finally, a novel model capable of jointly resolving the shoreline evolution and the complete coastal morphology applicable to most of the sandy coastal settings worldwide including beaches protected by coral reefs, vegetation or man-made structures; is developed

    SIS 2017. Statistics and Data Science: new challenges, new generations

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    The 2017 SIS Conference aims to highlight the crucial role of the Statistics in Data Science. In this new domain of ‘meaning’ extracted from the data, the increasing amount of produced and available data in databases, nowadays, has brought new challenges. That involves different fields of statistics, machine learning, information and computer science, optimization, pattern recognition. These afford together a considerable contribute in the analysis of ‘Big data’, open data, relational and complex data, structured and no-structured. The interest is to collect the contributes which provide from the different domains of Statistics, in the high dimensional data quality validation, sampling extraction, dimensional reduction, pattern selection, data modelling, testing hypotheses and confirming conclusions drawn from the data

    An Integrated Cybersecurity Risk Management (I-CSRM) Framework for Critical Infrastructure Protection

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    Risk management plays a vital role in tackling cyber threats within the Cyber-Physical System (CPS) for overall system resilience. It enables identifying critical assets, vulnerabilities, and threats and determining suitable proactive control measures to tackle the risks. However, due to the increased complexity of the CPS, cyber-attacks nowadays are more sophisticated and less predictable, which makes risk management task more challenging. This research aims for an effective Cyber Security Risk Management (CSRM) practice using assets criticality, predication of risk types and evaluating the effectiveness of existing controls. We follow a number of techniques for the proposed unified approach including fuzzy set theory for the asset criticality, machine learning classifiers for the risk predication and Comprehensive Assessment Model (CAM) for evaluating the effectiveness of the existing controls. The proposed approach considers relevant CSRM concepts such as threat actor attack pattern, Tactic, Technique and Procedure (TTP), controls and assets and maps these concepts with the VERIS community dataset (VCDB) features for the purpose of risk predication. Also, the tool serves as an additional component of the proposed framework that enables asset criticality, risk and control effectiveness calculation for a continuous risk assessment. Lastly, the thesis employs a case study to validate the proposed i-CSRM framework and i-CSRMT in terms of applicability. Stakeholder feedback is collected and evaluated using critical criteria such as ease of use, relevance, and usability. The analysis results illustrate the validity and acceptability of both the framework and tool for an effective risk management practice within a real-world environment. The experimental results reveal that using the fuzzy set theory in assessing assets' criticality, supports stakeholder for an effective risk management practice. Furthermore, the results have demonstrated the machine learning classifiers’ have shown exemplary performance in predicting different risk types including denial of service, cyber espionage, and Crimeware. An accurate prediction can help organisations model uncertainty with machine learning classifiers, detect frequent cyber-attacks, affected assets, risk types, and employ the necessary corrective actions for its mitigations. Lastly, to evaluate the effectiveness of the existing controls, the CAM approach is used, and the result shows that some controls such as network intrusion, authentication, and anti-virus show high efficacy in controlling or reducing risks. Evaluating control effectiveness helps organisations to know how effective the controls are in reducing or preventing any form of risk before an attack occurs. Also, organisations can implement new controls earlier. The main advantage of using the CAM approach is that the parameters used are objective, consistent and applicable to CPS

    Essentials of Business Analytics

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    High-Performance Modelling and Simulation for Big Data Applications

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    This open access book was prepared as a Final Publication of the COST Action IC1406 “High-Performance Modelling and Simulation for Big Data Applications (cHiPSet)“ project. Long considered important pillars of the scientific method, Modelling and Simulation have evolved from traditional discrete numerical methods to complex data-intensive continuous analytical optimisations. Resolution, scale, and accuracy have become essential to predict and analyse natural and complex systems in science and engineering. When their level of abstraction raises to have a better discernment of the domain at hand, their representation gets increasingly demanding for computational and data resources. On the other hand, High Performance Computing typically entails the effective use of parallel and distributed processing units coupled with efficient storage, communication and visualisation systems to underpin complex data-intensive applications in distinct scientific and technical domains. It is then arguably required to have a seamless interaction of High Performance Computing with Modelling and Simulation in order to store, compute, analyse, and visualise large data sets in science and engineering. Funded by the European Commission, cHiPSet has provided a dynamic trans-European forum for their members and distinguished guests to openly discuss novel perspectives and topics of interests for these two communities. This cHiPSet compendium presents a set of selected case studies related to healthcare, biological data, computational advertising, multimedia, finance, bioinformatics, and telecommunications
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