72 research outputs found
EXPERIMENTS WITH AN HOURLY STREET CANYON DISPERSION MODEL
Based on wind tunnel experiments and the yearly average calculating CAR model (Jonkers 2007) a new hourly average
calculating street canyon dispersion model is derived. With this hourly model, dispersion can be calculated for different types of
street configurations, varying in aspect ratio and building configuration. The model outcome is compared with measured
concentrations from the TRAPOS campaign. After applying linear regression, a correlation coefficient between the hourly measured
and the hourly modelled concentrations of 0.64 was found, the systematic error was 1.13
Hemodynamic Effects of Fenofibrate and Coenzyme Q10 in Type 2 Diabetic Subjects With Left Ventricular Diastolic Dysfunction
OBJECTIVE—To investigate the effects of fenofibrate and coenzyme Q10 (CoQ) on diastolic function, ambulatory blood pressure (ABP), and heart rate (HR) in type 2 diabetic subjects with left ventricular diastolic dysfunction (LVDD)
Curriculum vitae of the LOTOS-EUROS (v2.0) chemistry transport model
The development and application of chemistry transport models has a long
tradition. Within the Netherlands the LOTOS–EUROS model has been developed by
a consortium of institutes, after combining its independently developed
predecessors in 2005. Recently, version 2.0 of the model was released as an
open-source version. This paper presents the curriculum vitae of the model
system, describing the model's history, model philosophy, basic features and a
validation with EMEP stations for the new benchmark year 2012, and presents
cases with the model's most recent and key developments. By setting the model
developments in context and providing an outlook for directions for further
development, the paper goes beyond the common model description. With an
origin in ozone and sulfur modelling for the models LOTOS and EUROS, the
application areas were gradually extended with persistent organic pollutants,
reactive nitrogen, and primary and secondary particulate matter. After the
combination of the models to LOTOS–EUROS in 2005, the model was further
developed to include new source parametrizations (e.g. road resuspension,
desert dust, wildfires), applied for operational smog forecasts in the
Netherlands and Europe, and has been used for emission scenarios, source
apportionment, and long-term hindcast and climate change scenarios.
LOTOS–EUROS has been a front-runner in data assimilation of ground-based and
satellite observations and has participated in many model intercomparison
studies. The model is no longer confined to applications over Europe but is
also applied to other regions of the world, e.g. China. The increasing
interaction with emission experts has also contributed to the improvement of
the model's performance. The philosophy for model development has always been
to use knowledge that is state of the art and proven, to keep a good balance
in the level of detail of process description and accuracy of input and
output, and to keep a good record on the effect of model changes using
benchmarking and validation. The performance of v2.0 with respect to EMEP
observations is good, with spatial correlations around 0.8 or higher for
concentrations and wet deposition. Temporal correlations are around 0.5 or
higher. Recent innovative applications include source apportionment and data
assimilation, particle number modelling, and energy transition scenarios
including corresponding land use changes as well as Saharan dust forecasting.
Future developments would enable more flexibility with respect to model
horizontal and vertical resolution and further detailing of model input data.
This includes the use of different sources of land use characterization
(roughness length and vegetation), detailing of emissions in space and time,
and efficient coupling to meteorology from different meteorological models
Publisher Correction: Truncated FGFR2 is a clinically actionable oncogene in multiple cancers.
This paper was originally published under a standard Springer Nature license
Correction:How the COVID-19 pandemic highlights the necessity of animal research (vol 30, pg R1014, 2020)
(Current Biology 30, R1014–R1018; September 21, 2020) As a result of an author oversight in the originally published version of this article, a number of errors were introduced in the author list and affiliations. First, the middle initials were omitted from the names of several authors. Second, the surname of Dr. van Dam was mistakenly written as “Dam.” Third, the first name of author Bernhard Englitz was misspelled as “Bernard” and the surname of author B.J.A. Pollux was misspelled as “Pullox.” Finally, Dr. Keijer's first name was abbreviated rather than written in full. These errors, as well as various errors in the author affiliations, have now been corrected online
Modelling spatial patterns of correlations between concentrations of heavy metals in mosses and atmospheric deposition in 2010 across Europe
Background: This paper aims to investigate the correlations between the concentrations of nine heavy metals in moss and atmospheric deposition within ecological land classes covering Europe. Additionally, it is examined to what extent the statistical relations are affected by the land use around the moss sampling sites. Based on moss data collected in 2010/2011 throughout Europe and data on total atmospheric deposition modelled by two chemical transport
models (EMEP MSC-E, LOTOS-EUROS), correlation coefficients between concentrations of heavy metals in moss and in modelled atmospheric deposition were specified for spatial subsamples defined by ecological land classes of Europe (ELCE) as a spatial reference system. Linear discriminant analysis (LDA) and logistic regression (LR) were then used to separate moss sampling sites regarding their contribution to the strength of correlation considering the areal
percentage of urban, agricultural and forestry land use around the sampling location. After verification LDA models by LR, LDA models were used to transform spatial information on the land use to maps of potential correlation levels, applicable for future network planning in the European Moss Survey.
Results: Correlations between concentrations of heavy metals in moss and in modelled atmospheric deposition
were found to be specific for elements and ELCE units. Land use around the sampling sites mainly influences the correlation level. Small radiuses around the sampling sites examined (5 km) are more relevant for Cd, Cu, Ni, and Zn, while the areal percentage of urban and agricultural land use within large radiuses (75–100 km) is more relevant for As, Cr, Hg, Pb, and V. Most valid LDA models pattern with error rates of < 40% were found for As, Cr, Cu, Hg, Pb, and V. Land use-dependent predictions of spatial patterns split up Europe into investigation areas revealing potentially high
(= above-average) or low (= below-average) correlation coefficients.
Conclusions: LDA is an eligible method identifying and ranking boundary conditions of correlations between
atmospheric deposition and respective concentrations of heavy metals in moss and related mapping considering the influence of the land use around moss sampling sites
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