25 research outputs found

    Probabilistic multiple kernel learning

    Get PDF
    The integration of multiple and possibly heterogeneous information sources for an overall decision-making process has been an open and unresolved research direction in computing science since its very beginning. This thesis attempts to address parts of that direction by proposing probabilistic data integration algorithms for multiclass decisions where an observation of interest is assigned to one of many categories based on a plurality of information channels

    Advances in Data Mining Knowledge Discovery and Applications

    Get PDF
    Advances in Data Mining Knowledge Discovery and Applications aims to help data miners, researchers, scholars, and PhD students who wish to apply data mining techniques. The primary contribution of this book is highlighting frontier fields and implementations of the knowledge discovery and data mining. It seems to be same things are repeated again. But in general, same approach and techniques may help us in different fields and expertise areas. This book presents knowledge discovery and data mining applications in two different sections. As known that, data mining covers areas of statistics, machine learning, data management and databases, pattern recognition, artificial intelligence, and other areas. In this book, most of the areas are covered with different data mining applications. The eighteen chapters have been classified in two parts: Knowledge Discovery and Data Mining Applications

    Microgrids:The Path to Sustainability

    Get PDF

    Microgrids

    Get PDF
    Microgrids are a growing segment of the energy industry, representing a paradigm shift from centralized structures toward more localized, autonomous, dynamic, and bi-directional energy networks, especially in cities and communities. The ability to isolate from the larger grid makes microgrids resilient, while their capability of forming scalable energy clusters permits the delivery of services that make the grid more sustainable and competitive. Through an optimal design and management process, microgrids could also provide efficient, low-cost, clean energy and help to improve the operation and stability of regional energy systems. This book covers these promising and dynamic areas of research and development and gathers contributions on different aspects of microgrids in an aim to impart higher degrees of sustainability and resilience to energy systems

    Energy Data Analytics for Smart Meter Data

    Get PDF
    The principal advantage of smart electricity meters is their ability to transfer digitized electricity consumption data to remote processing systems. The data collected by these devices make the realization of many novel use cases possible, providing benefits to electricity providers and customers alike. This book includes 14 research articles that explore and exploit the information content of smart meter data, and provides insights into the realization of new digital solutions and services that support the transition towards a sustainable energy system. This volume has been edited by Andreas Reinhardt, head of the Energy Informatics research group at Technische Universität Clausthal, Germany, and Lucas Pereira, research fellow at Técnico Lisboa, Portugal

    Reservoir Computing with high non-linear separation and long-term memory for time-series data analysis

    Get PDF
    Left unchecked the degradation of reinforced concrete can result in the weakening of a structure and lead to both hazardous and costly problems throughout the built environment. In some cases failure to recognise the problem and apply appropriate remedies has already resulted in fatalities. The problem increases with the age of any structures and consequently has become more pressing throughout the latter half of the 20th century. It is therefore of paramount importance to assess and repair these structures using an accurate and cost-effective approach. ElectroMagnetic Anomaly Detection (EMAD) is one such approach where currently analysis is performed visually, which is undesirable. A relatively new Recurrent Artificial Neural Network (RANN) approach which overcomes problems which have prohibited the widespread use of RANNs, Reservoir Computing (RC), is investigated here.This research aimed to automate the detection of defects within reinforced concrete using RC while gaining further insights into fundamental properties of an RC architecture when applied to real-world time-series datasets. As a product of these studies a novel RC architecture, Reservoir with Random Static Projections (R2SP), has been developed. R2SP helps to address what this research shows to be an antagonistic trade-off between a standard RC architecture’s ability to transform its input data onto a highly non-linear state space whilst at the same time possessing a short-term memory of its previous inputs. The R2SP architecture provided a significant improvement in performance for each dataset investigated when compared to a standard RC approach as a result of overcoming the aforementioned trade-off. The implementation of an R2SP architecture is now planned to be incorporated on a new version of the EMAD data collection apparatus to give fast or near to real-time information about areas of potential problems in real-world concrete structures

    An Initial Framework Assessing the Safety of Complex Systems

    Get PDF
    Trabajo presentado en la Conference on Complex Systems, celebrada online del 7 al 11 de diciembre de 2020.Atmospheric blocking events, that is large-scale nearly stationary atmospheric pressure patterns, are often associated with extreme weather in the mid-latitudes, such as heat waves and cold spells which have significant consequences on ecosystems, human health and economy. The high impact of blocking events has motivated numerous studies. However, there is not yet a comprehensive theory explaining their onset, maintenance and decay and their numerical prediction remains a challenge. In recent years, a number of studies have successfully employed complex network descriptions of fluid transport to characterize dynamical patterns in geophysical flows. The aim of the current work is to investigate the potential of so called Lagrangian flow networks for the detection and perhaps forecasting of atmospheric blocking events. The network is constructed by associating nodes to regions of the atmosphere and establishing links based on the flux of material between these nodes during a given time interval. One can then use effective tools and metrics developed in the context of graph theory to explore the atmospheric flow properties. In particular, Ser-Giacomi et al. [1] showed how optimal paths in a Lagrangian flow network highlight distinctive circulation patterns associated with atmospheric blocking events. We extend these results by studying the behavior of selected network measures (such as degree, entropy and harmonic closeness centrality)at the onset of and during blocking situations, demonstrating their ability to trace the spatio-temporal characteristics of these events.This research was conducted as part of the CAFE (Climate Advanced Forecasting of sub-seasonal Extremes) Innovative Training Network which has received funding from the European Union’s Horizon 2020 research and innovation programme under the Marie Skłodowska-Curie grant agreement No. 813844
    corecore