2016
Autores
Cardoso, DdO; Galvão França, FM; Gama, J;
Publicação
SAC
Abstract
To cluster a data stream is a more challenging task than its regular batch version, having stricter performance constraints. In this paper an approach to this problem is presented, based on WiSARD, a memory-based artificial neural network (ANN) model. This model functioning was reviewed and improved, in order to adapt it to this task. The experimental results obtained support the use of this system for the analysis of data streams in an informative way.
2016
Autores
Paterakis, NG; Erdinc, O; Bakirtzis, AG; Catalao, J;
Publicação
2016 IEEE POWER AND ENERGY SOCIETY GENERAL MEETING (PESGM)
Abstract
2016
Autores
Moreira, RS; Torres, J; Sobral, P; Morla, R; Rouncefield, M; Blair, GS;
Publicação
PERSONAL AND UBIQUITOUS COMPUTING
Abstract
2016
Autores
Silvano, C; Agosta, G; Bartolini, A; Beccari, AR; Benini, L; Bispo, J; Cmar, R; Cardoso, JMP; Cavazzoni, C; Martinovic, J; Palermo, G; Palkovic, M; Pinto, P; Rohou, E; Sanna, N; Slaninová, K;
Publicação
PROCEEDINGS OF THE 2016 DESIGN, AUTOMATION & TEST IN EUROPE CONFERENCE & EXHIBITION (DATE)
Abstract
The main goal of the ANTAREX 1 project is to express by a Domain Specific Language (DSL) the application self-adaptivity and to runtime manage and autotune applications for green and heterogeneous High Performance Computing (HPC) systems up to the Exascale level. Key innovations of the project include the introduction of a separation of concerns between self-adaptivity strategies and application functionalities. The DSL approach will allow the definition of energy-efficiency, performance, and adaptivity strategies as well as their enforcement at runtime through application autotuning and resource and power management.
2016
Autores
Pereira, R; Saraiva, J; Cunha, J; Fernandes, JP;
Publicação
SAC
Abstract
Spreadsheets are nowadays used in a variety of contexts, including in in manipulatin large and complex data. This data is stored in a large unstructured matrix, which is hard to understand and to manipulate. Recent research has been done to manipulate and query such unstructured data, namely by proposing different query approaches to spreadsheets. In this paper we present an empirical study evaluating three recent query approaches to spreadsheets assessing their usage to query spreadsheets. The results of our study show that the end-users' productivity increases when using visual, model-driven queries are used.
2016
Autores
Osorio, GJ; Goncalves, JNDL; Lujano Rojas, JM; Catalao, JPS;
Publicação
ENERGIES
Abstract
The uncertainty and variability in electricity market price (EMP) signals and players' behavior, as well as in renewable power generation, especially wind power, pose considerable challenges. Hence, enhancement of forecasting approaches is required for all electricity market players to deal with the non-stationary and stochastic nature of such time series, making it possible to accurately support their decisions in a competitive environment with lower forecasting error and with an acceptable computational time. As previously published methodologies have shown, hybrid approaches are good candidates to overcome most of the previous concerns about time-series forecasting. In this sense, this paper proposes an enhanced hybrid approach composed of an innovative combination of wavelet transform (WT), differential evolutionary particle swarm optimization (DEEPSO), and an adaptive neuro-fuzzy inference system (ANFIS) to forecast EMP signals in different electricity markets and wind power in Portugal, in the short-term, considering only historical data. Test results are provided by comparing with other reported studies, demonstrating the proficiency of the proposed hybrid approach in a real environment.
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