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Publications

2020

Editorial message: Special track on data streams

Authors
Bifet, A; Carvalho, A; Ferreira, C; Gama, J;

Publication
Proceedings of the ACM Symposium on Applied Computing

Abstract

2020

The ExoGRAVITY project: Using single mode interferometry to characterize exoplanets

Authors
Lacour, S; Wang, JJ; Nowak, M; Pueyo, L; Eisenhauer, F; Lagrange, AM; Mollière, P; Abuter, R; Amorin, A; Asensio Torres, R; Bauböck, M; Benisty, M; Berger, JP; Beust, H; Blunt, S; Boccaletti, A; Bohn, A; Bonnefoy, M; Bonnet, H; Brandner, W; Cantalloube, F; Caselli, P; Charnay, B; Chauvin, G; Choquet, E; Christiaens, V; Clénet, Y; Cridland, A; De Zeeuw, PT; Dembet, R; Dexter, J; Drescher, A; Duvert, G; Gao, F; Garcia, P; Garcia Lopez, R; Gardner, T; Gendron, E; Genzel, R; Gillessen, S; Girard, JH; Haubois, X; Heißel, G; Henning, T; Hinkley, S; Hippler, S; Horrobin, M; Houllé, M; Hubert, Z; Jiménez Rosales, A; Jocou, L; Kammerer, J; Keppler, M; Kervella, P; Kreidberg, L; Lapeyrère, V; Le Bouquin, JB; Léna, P; Lutz, D; Maire, AL; Mérand, A; Monnier, JD; Mouillet, D; Muller, A; Nasedkin, E; Ott, T; Otten, GPPL; Paladini, C; Paumard, T; Perraut, K; Perrin, G; Pfuhl, O; Rameau, J; Rodet, L; Rodriguez Coira, G; Rousset, G; Shangguan, J; Shimizu, T; Stadler, J; Straub, O; Straubmeier, C; Sturm, E; Stolker, T; Van Dishoeck, EF; Vigan, A; Vincent, F; Von Fellenberg, SD; Ward Duong, K; Widmann, F; Wieprecht, E; Wiezorrek, E; Woillez, J;

Publication
Proceedings of SPIE - The International Society for Optical Engineering

Abstract
Combining adaptive optics and interferometric observations results in a considerable contrast gain compared to single-telescope, extreme AO systems. Taking advantage of this, the ExoGRAVITY project is a survey of known young giant exoplanets located in the range of 0.1"to 2"from their stars. The observations provide astrometric data of unprecedented accuracy, being crucial for refining the orbital parameters of planets and illuminating their dynamical histories. Furthermore, GRAVITY will measure non-Keplerian perturbations due to planet-planet interactions in multi-planet systems and measure dynamical masses. Over time, repetitive observations of the exoplanets at medium resolution (R = 500) will provide a catalogue of K-band spectra of unprecedented quality, for a number of exoplanets. The K-band has the unique properties that it contains many molecular signatures (CO, H2O, CH4, CO2). This allows constraining precisely surface gravity, metallicity, and temperature, if used in conjunction with self-consistent models like Exo-REM. Further, we will use the parameter-retrieval algorithm petitRADTRANS to constrain the C/O ratio of the planets. Ultimately, we plan to produce the first C/O survey of exoplanets, kick-starting the difficult process of linking planetary formation with measured atomic abundances. © COPYRIGHT SPIE. Downloading of the abstract is permitted for personal use only.

2020

Knee Point Detection in Water Absorption Curves: Hygric Resistance in Multilayer Building Materials

Authors
Azevedo, AC; Delgado, JMPQ; Guimarães, AS; Ribeiro, I; Sousa, R;

Publication
Hygrothermal Behaviour and Building Pathologies - Building Pathology and Rehabilitation

Abstract

2020

Topics in Theoretical Computer Science - Third IFIP WG 1.8 International Conference, TTCS 2020, Tehran, Iran, July 1-2, 2020, Proceedings

Authors
Barbosa, LS; Abam, MA;

Publication
TTCS

Abstract

2020

Predictive Trading Strategy for Physical Electricity Futures

Authors
Monteiro, C; Alfredo Fernandez Jimenez, LA; Ramirez Rosado, IJ;

Publication
ENERGIES

Abstract
This article presents an original predictive strategy, based on a new mid-term forecasting model, to be used for trading physical electricity futures. The forecasting model is used to predict the average spot price, which is used to estimate the Risk Premium corresponding to electricity futures trade operations with a physical delivery. A feed-forward neural network trained with the extreme learning machine algorithm is used as the initial implementation of the forecasting model. The predictive strategy and the forecasting model only need information available from electricity derivatives and spot markets at the time of negotiation. In this paper, the predictive trading strategy has been applied successfully to the Iberian Electricity Market (MIBEL). The forecasting model was applied for the six types of maturities available for monthly futures in the MIBEL, from 1 to 6 months ahead. The forecasting model was trained with MIBEL price data corresponding to 44 months and the performances of the forecasting model and of the predictive strategy were tested with data corresponding to a further 12 months. Furthermore, a simpler forecasting model and three benchmark trading strategies are also presented and evaluated using the Risk Premium in the testing period, for comparative purposes. The results prove the advantages of the predictive strategy, even using the simpler forecasting model, which showed improvements over the conventional benchmark trading strategy, evincing an interesting hedging potential for electricity futures trading.

2020

Preface to the special issue on performance measurement and efficiency analysis-theory and practice

Authors
Carosi, L; Camanho, A; D'Inverno, G; De Witte, K; Riccardi, R;

Publication
DECISIONS IN ECONOMICS AND FINANCE

Abstract

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