439 research outputs found
Resolution test of GOCE satellite data applied to density anomalies at crustal and upper mantle levels
The Gravity field and steady-state Ocean Circulation Explorer (GOCE) satellite mission was devised by the European Space Agency to study the Earth’s gravity field with an unprecedented accuracy using gravity gradient data. The goal of this study is to analyze the resolution in terms of size, burial depth and density contrast of anomalous bodies related to geological structures that can be identified from GOCE data. A parametric study is performed by calculating the gravity gradients associated with rectangular prisms with fixed aspect ratio of 9:3:1 and varying the size, burial depth, and density contrast, selecting those structures showing amplitudes and wavelength variations comparable to the accuracy of GOCE data. Results show that the minimum size for crustal anomalies to be resolved for the vertical component of the gravity gradient is 22.5x7.5x2.5km for a Δρ=500kg/m3 , burial depth of 0km, and at computation height of 255km. To generate a sufficient signal in amplitude and wavelength in all the components, the size of the anomalous body is 270x90x30km. For a body with Δρ=50kg/m3 and 0km burial depth a minimum size of 41.4x13.8x4.6km is required for the vertical component at a computation height of 255km. In addition, the application to the 3D case of a passive continental margin which broadly resembles the crustal structure of the NW-Iberia shows that the signal of all gravity gradient components is dominated by the crustal thinning associated with the passive continental margins and the corresponding isostatic response
Lithospheric structure across the Himalayan-Tibetan orogen: a petrological and geophysical study
Abstract HKT-ISTP 2013
A
Online regenerator placement.
Connections between nodes in optical networks are realized by lightpaths. Due to the decay of the signal, a regenerator has to be placed on every lightpath after at most d hops, for some given positive integer d. A regenerator can serve only one lightpath. The placement of regenerators has become an active area of research during recent years, and various optimization problems have been studied. The first such problem is the Regeneration Location Problem (Rlp), where the goal is to place the regenerators so as to minimize the total number of nodes containing them. We consider two extreme cases of online Rlp regarding the value of d and the number k of regenerators that can be used in any single node. (1) d is arbitrary and k unbounded. In this case a feasible solution always exists. We show an O(log|X| ·logd)-competitive randomized algorithm for any network topology, where X is the set of paths of length d. The algorithm can be made deterministic in some cases. We show a deterministic lower bound of W([(log(|E|/d) ·logd)/(log(log(|E|/d) ·logd))])log(Ed)logdlog(log(Ed)logd) , where E is the edge set. (2) d = 2 and k = 1. In this case there is not necessarily a solution for a given input. We distinguish between feasible inputs (for which there is a solution) and infeasible ones. In the latter case, the objective is to satisfy the maximum number of lightpaths. For a path topology we show a lower bound of Öl/2l2 for the competitive ratio (where l is the number of internal nodes of the longest lightpath) on infeasible inputs, and a tight bound of 3 for the competitive ratio on feasible inputs
A Genetic Model of Impulsivity, Vulnerability to Drug Abuse and Schizophrenia-Relevant Symptoms With Translational Potential: The Roman High- vs. Low-Avoidance Rats
The bidirectional selective breeding of Roman high- (RHA) and low-avoidance (RLA) rats
for respectively rapid vs. poor acquisition of active avoidant behavior has generated
two lines/strains that differ markedly in terms of emotional reactivity, with RHA rats
being less fearful than their RLA counterparts. Many other behavioral traits have been
segregated along the selection procedure; thus, compared with their RLA counterparts,
RHA rats behave as proactive copers in the face of aversive conditions, display
a robust sensation/novelty seeking (SNS) profile, and show high impulsivity and an
innate preference for natural and drug rewards. Impulsivity is a multifaceted behavioral
trait and is generally defined as a tendency to express actions that are poorly
conceived, premature, highly risky or inappropriate to the situation, that frequently lead
to unpleasant consequences. High levels of impulsivity are associated with several
neuropsychiatric conditions including attention-deficit hyperactivity disorder, obsessive/compulsive
disorder, schizophrenia, and drug addiction. Herein, we review the behavioral
and neurochemical differences between RHA and RLA rats and survey evidence that
RHA rats represent a valid genetic model, with face, construct, and predictive validity,
to investigate the neural underpinnings of behavioral disinhibition, novelty seeking,
impulsivity, vulnerability to drug addiction as well as deficits in attentional processes,
cognitive impairments and other schizophrenia-relevant traits
The value of satellite remote sensing soil moisture data and the DISPATCH algorithm in irrigation fields
Soil moisture measurements are needed in a large number of applications such
as hydro-climate approaches, watershed water balance management and
irrigation scheduling. Nowadays, different kinds of methodologies exist for
measuring soil moisture. Direct methods based on gravimetric sampling or time
domain reflectometry (TDR) techniques measure soil moisture in a small volume
of soil at few particular locations. This typically gives a poor description
of the spatial distribution of soil moisture in relatively large agriculture
fields. Remote sensing of soil moisture provides widespread coverage and can
overcome this problem but suffers from other problems stemming from its low
spatial resolution. In this context, the DISaggregation based on Physical And
Theoretical scale CHange (DISPATCH) algorithm has been proposed in the
literature to downscale soil moisture satellite data from 40 to 1 km
resolution by combining the low-resolution Soil Moisture Ocean Salinity
(SMOS) satellite soil moisture data with the high-resolution Normalized
Difference Vegetation Index (NDVI) and land surface temperature (LST)
datasets obtained from a Moderate Resolution Imaging Spectroradiometer
(MODIS) sensor. In this work, DISPATCH estimations are compared with soil
moisture sensors and gravimetric measurements to validate the DISPATCH
algorithm in an agricultural field during two different hydrologic scenarios:
wet conditions driven by rainfall events and wet conditions driven by local
sprinkler irrigation. Results show that the DISPATCH algorithm provides
appropriate soil moisture estimates during general rainfall events but not
when sprinkler irrigation generates occasional heterogeneity. In order to
explain these differences, we have examined the spatial variability scales of
NDVI and LST data, which are the input variables involved in the downscaling
process. Sample variograms show that the spatial scales associated with the
NDVI and LST properties are too large to represent the variations of the
average soil moisture at the site, and this could be a reason why the DISPATCH
algorithm does not work properly in this field site.</p
T-RFPred: a nucleotide sequence size prediction tool for microbial community description based on terminal-restriction fragment length polymorphism chromatograms
<p>Abstract</p> <p>Background</p> <p>Terminal-Restriction Fragment Length Polymorphism (T-RFLP) is a technique used to analyze complex microbial communities. It allows for the quantification of unique or numerically dominant phylotypes in amplicon pools and it has been used primarily for comparisons between different communities. T-RFPred, Terminal-Restriction Fragment Prediction, was developed to identify and assign taxonomic information to chromatogram peaks of a T-RFLP fingerprint for a more comprehensive description of microbial communities. The program estimates the expected fragment size of representative 16S rRNA gene sequences (either from a complementary clone library or from public databases) for a given primer and restriction enzyme(s) and provides candidate taxonomic assignments.</p> <p>Results</p> <p>To show the accuracy of the program, T-RFLP profiles of a marine bacterial community were described using artificial bacterioplankton clone libraries of sequences obtained from public databases. For all valid chromatogram peaks, a phylogenetic group could be assigned.</p> <p>Conclusions</p> <p>T-RFPred offers enhanced functionality of T-RFLP profile analysis over current available programs. In particular, it circumvents the need for full-length 16S rRNA gene sequences during taxonomic assignments of T-RF peaks. Thus, large 16S rRNA gene datasets from environmental studies, including metagenomes, or public databases can be used as the reference set. Furthermore, T-RFPred is useful in experimental design for the selection of primers as well as the type and number of restriction enzymes that will yield informative chromatograms from natural microbial communities.</p
Lagrangian modeling of reactive transport in heterogeneous porous media with an automatic locally adaptive particle support volume
The particle support volume is crucial for simulating reactive transport with Lagrangian methods as it dictates the interaction among particles. Assuming that it is constant in space, the particle support volume can be selected by means of kernel density estimation theory, an approach that has been shown to provide accurate estimates in simple setups. However, the particle support volume should intuitively vary with the particle position and evolve with time so as to mimic the local behavior of the solute plume. In this paper, we present a new approach to select a locally optimal particle support volume in reactive transport simulations. We consider that each particle has a different support volume that can locally adapt its shape and size with time based on the nearby particle distribution. By introducing a new optimality criterion, closed-form expressions of the particle support volume are presented under certain assumptions. In advection-dominated transport, we propose to orient the support volume along the local velocities. Numerical simulations of solute transport in a randomly heterogeneous porous medium demonstrate that the new approach can substantially increase accuracy with a more rapid convergence to the true solution with the number of particles. The error reduction seen in local approaches is particularly important in regions with extreme (high and low) density of particles. The method is shown to be computationally efficient, displaying better results than traditional histogram or global kernel methods for the same computational effort.Peer ReviewedPostprint (published version
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