Pierluigi Penna
National Research Council
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Featured researches published by Pierluigi Penna.
Estuaries and Coasts | 2014
Christian Ferrarin; Luca Zaggia; Elio Paschini; Tommaso Scirocco; Giuliano Lorenzetti; Marco Bajo; Pierluigi Penna; Matteo Francavilla; Raffaele D’Adamo; Stefano Guerzoni
A multidisciplinary approach that combines field measurements, artificial neural networks, water balance analyses and hydrodynamic modelling was developed to investigate the water budget and renewal capacity of semi-closed coastal systems. The method was applied to the Lesina Lagoon, a micro-tidal lagoon in the southern Adriatic Sea (Italy). Surface water flux between the lagoon and the sea was determined by neural network prediction and used as input in the analysis. Strong seasonal variations in the water budget equation were predicted. Fresh water inputs estimated by the water balance analysis were used as forcing by a calibrated finite element model to describe the water circulation and transport time scale of the lagoon’s surface waters. The model highlighted the spatial heterogeneity of the renewal behaviour of the system, with a strong east–west water renewal time gradient. Knowledge of spatial distribution of water renewal times is crucial for understanding the lagoon’s renewal capacity and explaining the high spatial variability of the biogeochemistry of the Lesina Lagoon.
Sensors | 2014
Rosa Maria Cavalli; Mattia Betti; Alessandra Campanelli; Annalisa Di Cicco; Daniela Guglietta; Pierluigi Penna; Viviana Piermattei
This methodology assesses the accuracy with which remote data characterizes a surface, as a function of Full Width at Half Maximum (FWHM). The purpose is to identify the best remote data that improves the characterization of a surface, evaluating the number of bands in the spectral range. The first step creates an accurate dataset of remote simulated data, using in situ hyperspectral reflectances. The second step evaluates the capability of remote simulated data to characterize this surface. The spectral similarity measurements, which are obtained using classifiers, provide this capability. The third step examines the precision of this capability. The assumption is that in situ hyperspectral reflectances are considered the “real” reflectances. They are resized with the same spectral range of the remote data. The spectral similarity measurements which are obtained from “real” resized reflectances, are considered “real” measurements. Therefore, the quantity and magnitude of “errors” (i.e., differences between spectral similarity measurements obtained from “real” resized reflectances and from remote data) provide the accuracy as a function of FWHM. This methodology was applied to evaluate the accuracy with which CHRIS-mode1, CHRIS-mode2, Landsat5-TM, MIVIS and PRISMA data characterize three coastal waters. Their mean values of uncertainty are 1.59%, 3.79%, 7.75%, 3.15% and 1.18%, respectively.
software engineering and formal methods | 2013
Pierluigi Penna; Nicola Paoletti; Giuseppe Scarcella; Luca Tesei; Mauro Marini; Emanuela Merelli
We introduce DISPAS, Demersal fIsh Stock Probabilistic Agent-based Simulator, with the aim of helping to investigate and understand sustainability in the exploitation of fishery resources. The simulator has capabilities for exploring different fishing scenarios, focusing on the case study of the common sole (Solea solea) stock in the Northern Adriatic Sea (Mediterranean Sea). In order to assess and predict the availability of the fish stock under different fishing efforts, the simulator allows the user to specify fishing mortality rates (F) on a monthly basis. We present some preliminary results simulating different scenarios.
arXiv: Formal Languages and Automata Theory | 2010
Federico Buti; Flavio Corradini; Emanuela Merelli; Elio Paschini; Pierluigi Penna; Luca Tesei
We define an individual-based probabilistic model of a sole (Solea solea) behaviour. The individual model is given in terms of an Extended Probabilistic Discrete Timed Automaton (EPDTA), a new formalism that is introduced in the paper and that is shown to be interpretable as a Markov decision process. A given EPDTA model can be probabilistically model-checked by giving a suitable translation into syntax accepted by existing model-checkers. In order to simulate the dynamics of a given population of soles in different environmental scenarios, an agent-based simulation environment is defined in which each agent implements the behaviour of the given EPDTA model. By varying the probabilities and the characteristic functions embedded in the EPDTA model it is possible to represent different scenarios and to tune the model itself by comparing the results of the simulations with real data about the sole stock in the North Adriatic sea, available from the recent project SoleMon. The simulator is presented and made available for its adaptation to other species.
Geofizika | 2009
Alessandra Campanelli; Ana Bulatović; Marina Cabrini; Federica Grilli; Zoran Kljajić; Renzo Mosetti; Elio Paschini; Pierluigi Penna; Mauro Marini
Dynamics of Atmospheres and Oceans | 2011
Debora Bellafiore; A. Guarnieri; Federica Grilli; Pierluigi Penna; Giovanni Bortoluzzi; Federico Giglio; Nadia Pinardi
Estuarine Coastal and Shelf Science | 2016
Antonietta Specchiulli; Francesco Bignami; Mauro Marini; Adele Fabbrocini; Tommaso Scirocco; Alessandra Campanelli; Pierluigi Penna; Angela Santucci; Raffaele D'Adamo
Open Journal of Marine Science | 2013
Alessandra Campanelli; Marina Cabrini; Federica Grilli; Daniela Fornasaro; Pierluigi Penna; Zoran Kljajić; Mauro Marini
IEEE Journal of Oceanic Engineering | 2018
Lorenzo Corgnati; Carlo Mantovani; Annalisa Griffa; Maristella Berta; Pierluigi Penna; Paolo Celentano; Lucio Bellomo; Daniel F. Carlson; Raffaele D’Adamo
2nd Scientific Day of School of Science and Technology, UNICAM | 2012
Pierluigi Penna; Mauro Marini; Luca Tesei; L. Bolognini; Emanuela Merelli; Nicola Paoletti; Marianna Taffi; Giuseppe Scarcella