Lorenzo Perozzi
Institut national de la recherche scientifique
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Publication
Featured researches published by Lorenzo Perozzi.
Journal of Environmental and Engineering Geophysics | 2008
Lorenzo Perozzi; Klaus Holliger
We have used surface-based electrical resistivity tomography to detect and characterize preferential hydraulic pathways in the immediate downstream area of an abandoned, hazardous landfill. The landfill occupies the void left by a former gravel pit and its base is close to the groundwater table and lacking an engineered barrier. As such, this site is remarkably typical of many small- to medium-sized waste deposits throughout the densely populated and heavily industrialized foreland on both sides of the Alpine arc. Outflows of pollutants lastingly contaminated local drinking water supplies and necessitated a partial remediation in the form of a synthetic cover barrier, which is meant to prevent meteoric water from percolating through the waste before reaching the groundwater table. Any future additional isolation of the landfill in the form of lateral barriers thus requires adequate knowledge of potential preferential hydraulic pathways for outflowing contaminants. Our results, inferred from a suite of tomographically inverted surfaced-based electrical resistivity profiles oriented roughly perpendicular to the local hydraulic gradient, indicate that potential contaminant outflows would predominantly occur along an unexploited lateral extension of the original gravel deposit. This finds its expression as a distinct and laterally continuous high-resistivity anomaly in the resistivity tomograms. This interpretation is ground-truthed through a litholog from a nearby well. Since the probed glaciofluvial deposits are largely devoid of mineralogical clay, the geometry of hydraulic and electrical pathways across the pore space of a given lithological unit can be assumed to be identical, which allows for an order-of-magnitude estimation of the overall permeability structure. These estimates indicate that the permeability of the imaged extension of the gravel body is at least two to three orders-of-magnitude higher than that of its finer-grained embedding matrix. This corroborates the preeminent role of the high-resistivity anomaly as a potential preferential flow path.
Computational Geosciences | 2016
Lorenzo Perozzi; Erwan Gloaguen; Bernard Giroux; Klaus Holliger
We present a two-step stochastic inversion approach for monitoring the distribution of CO2 injected into deep saline aquifers for the typical scenario of one single injection well and a database comprising a common suite of well logs as well as time-lapse vertical seismic profiling (VSP) data. In the first step, we compute several sets of stochastic models of the elastic properties using conventional sequential Gaussian co-simulations (SGCS) representing the considered reservoir before CO2 injection. All realizations within a set of models are then iteratively combined using a modified gradual deformation algorithm aiming at reducing the mismatch between the observed and simulated VSP data. In the second step, these optimal static models then serve as input for a history matching approach using the same modified gradual deformation algorithm for minimizing the mismatch between the observed and simulated VSP data following the injection of CO2. At each gradual deformation step, the injection and migration of CO2 is simulated and the corresponding seismic traces are computed and compared with the observed ones. The proposed stochastic inversion approach has been tested for a realistic, and arguably particularly challenging, synthetic case study mimicking the geological environment of a potential CO2 injection site in the Cambrian-Ordivician sedimentary sequence of the St. Lawrence platform in Southern Québec. The results demonstrate that the proposed two-step reservoir characterization approach is capable of adequately resolving and monitoring the distribution of the injected CO2. This finds its expression in optimized models of P- and S-wave velocities, density, and porosity, which, compared to conventional stochastic reservoir models, exhibit a significantly improved structural similarity with regard to the corresponding reference models. The proposed approach is therefore expected to allow for an optimal injection forecast by using a quantitative assimilation of all available data from the appraisal stage of a CO2 injection site.
76th EAGE Conference and Exhibition 2014 | 2014
Lorenzo Perozzi; Bernard Giroux; Randolf S. Kofman; Douglas R. Schmitt
The success of the geological storage of CO2 depends on the capability to monitor movements of the injected fluid into the subsurface. For understanding the effects of CO2 as a pore fluid on the overall rock seismic response, a series of ultrasonic measurements on two samples of saline aquifer sandstones of the Potsdam Group have been made showing clear P-wave variations with CO2 varying phase state. Significant amplitude variation was only observed in the Covey Hill sample. The laboratory measurements and well log data were used to calibrate a numerical model that was used to perform poro-viscoelastic forward modeling of time-lapse walkaway VSP surveys. The results show that supercritical CO2 injected in the reservoir, results in a clear seismic signature. Finally, the modeling results also indicate that the possibility to rely on AVO analysis to monitor the CO2 plume is compromised by a refracted wave that appear early in the wave field.
Journal of Applied Geophysics | 2012
Lorenzo Perozzi; Erwan Gloaguen; Stéphane Rondenay; Glenn McDowell
IGSHPA Technical/Research Conference and Expo 2017 | 2017
Jasmin Raymond; Michel Malo; Louis Lamarche; Lorenzo Perozzi; Erwan Gloaguen; Carl Bégin
Geophysics | 2017
Antoine Caté; Lorenzo Perozzi; Erwan Gloaguen; Martin Blouin
Proceedings of the IGSHPA Research Track 2018 | 2018
Malin Malmberg; Jasmin Raymond; Lorenzo Perozzi; Erwan Gloaguen; Claes Mellqvist; Gerhard Schwarz; José Acuña
Greenhouse Gases-Science and Technology | 2017
Lorenzo Perozzi; Bernard Giroux; Douglas R. Schmitt; Erwan Gloaguen; Randy Kofman
Greenhouse Gases-Science and Technology | 2017
Lorenzo Perozzi; Bernard Giroux; Douglas R. Schmitt; Erwan Gloaguen
Archive | 2016
Lorenzo Perozzi; Jasmin Raymond; Simon Asselin; Erwan Gloaguen; Michel Malo; Carl Bégin