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Featured researches published by M. Di Giovanni.


Physical Review D | 2016

Comparison of methods for the detection of gravitational waves from unknown neutron stars

S. Walsh; M. Pitkin; M. Oliver; S. D’Antonio; V. Dergachev; A. Królak; P. Astone; M. Bejger; M. Di Giovanni; O. Dorosh; S. Frasca; P. Leaci; S. Mastrogiovanni; A. L. Miller; C. Palomba; M. A. Papa; O. J. Piccinni; K. Riles; O. Sauter; A. M. Sintes

Rapidly rotating neutron stars are promising sources of continuous gravitational wave radiation for the LIGO and Virgo interferometers. The majority of neutron stars in our galaxy have not been identified with electromagnetic observations. All-sky searches for isolated neutron stars offer the potential to detect gravitational waves from these unidentified sources. The parameter space of these blind all-sky searches, which also cover a large range of frequencies and frequency derivatives, presents a significant computational challenge. Different methods have been designed to perform these searches within acceptable computational limits. Here we describe the first benchmark in a project to compare the search methods currently available for the detection of unknown isolated neutron stars. The five methods compared here are individually referred to as the PowerFlux, sky Hough, frequency Hough, Einstein@Home, and time domain F-statistic methods. We employ a mock data challenge to compare the ability of each search method to recover signals simulated assuming a standard signal model. We find similar performance among the four quick-look search methods, while the more computationally intensive search method, Einstein@Home, achieves up to a factor of two higher sensitivity. We find that the absence of a second derivative frequency in the search parameter space does not degrade search sensitivity for signals with physically plausible second derivative frequencies. We also report on the parameter estimation accuracy of each search method, and the stability of the sensitivity in frequency and frequency derivative and in the presence of detector noise.


Electroencephalography and Clinical Neurophysiology | 1995

The complementary relationship between waking and REM sleep in the oculomotor system: an increase of rightward saccades during waking causes a decrease of rightward eye movements during REM sleep

L. De Gennaro; Maria Casagrande; Cristiano Violani; M. Di Giovanni; J. Herman; Mario Bertini


Gazzetta Chimica Italiana | 1997

CHIRAL 4,5-DISUBSTITUTED OXAZOLIDIN-2-ONES : STEREOSELECTIVE SYNTHESIS OF BETA -HYDROXY-ALPHA -AMINO ACIDS

M. Di Giovanni; Domenico Misiti; Giovanni Zappia; G. Delle Monache


ChemInform | 2010

A Straightforward Synthesis of (2S,3R)-3-Hydroxyproline and trans-(2R, 3S)-3-Hydroxyproline and trans-(2R,3S)-2-Hydroxymethyl-3- hydroxyprrolidine.

Natalina Dell'Uomo; M. Di Giovanni; Domenico Misiti; Giovanni Zappia; G. Delle Monache

Collaboration


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Domenico Misiti

Sapienza University of Rome

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G. Delle Monache

Catholic University of the Sacred Heart

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C. Palomba

Istituto Nazionale di Fisica Nucleare

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Cristiano Violani

Sapienza University of Rome

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L. De Gennaro

Sapienza University of Rome

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Maria Casagrande

Sapienza University of Rome

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Mario Bertini

Sapienza University of Rome

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Natalina Dell'Uomo

Sapienza University of Rome

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O. J. Piccinni

Sapienza University of Rome

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