Javascript must be enabled to continue!
MIdAS---MultI-scale bias AdjuStment
View through CrossRef
<p>Bias adjustment is the practice of statistically transforming climate model data in order to reduce systematic deviations from a reference data set, typically some sort of observations. There are numerous proposed methodologies to perform the adjustments -- ranging from simple scaling approaches to advanced multi-variate distribution based mapping. In practice, the actual bias adjustment method is a small step in the application, and most of the processing handles reading, writing and linking different data sets. These practical processing steps become especially heavy with increasing model domain size and resolution in both time and space. Here, we present a new implementation platform for bias adjustment, which we call MIdAS (MultI-scale bias AdjuStment). MIdAS is a modern code implementation that supports features such as: modern Python libraries that are suitable for large computing clusters, state-of-the-art bias adjustment methods based on quantile mapping, "day-of-year" based adjustments to avoid artificial discontinuities, and also introduces cascade adjustment in time and space. The MIdAS platform has been set up such that it will support development of methods aimed at higher resolution climate model data, explicitly targeting cases where there is a scale mismatch between data sets. In this presentaton, we describe the MIdAS assumptions and features, and present results from the main evaluation of the method for different regions around the world. We also present the most recent development of MIdAS towards different parameters.</p>
Title: MIdAS---MultI-scale bias AdjuStment
Description:
<p>Bias adjustment is the practice of statistically transforming climate model data in order to reduce systematic deviations from a reference data set, typically some sort of observations.
There are numerous proposed methodologies to perform the adjustments -- ranging from simple scaling approaches to advanced multi-variate distribution based mapping.
In practice, the actual bias adjustment method is a small step in the application, and most of the processing handles reading, writing and linking different data sets.
These practical processing steps become especially heavy with increasing model domain size and resolution in both time and space.
Here, we present a new implementation platform for bias adjustment, which we call MIdAS (MultI-scale bias AdjuStment).
MIdAS is a modern code implementation that supports features such as: modern Python libraries that are suitable for large computing clusters, state-of-the-art bias adjustment methods based on quantile mapping, "day-of-year" based adjustments to avoid artificial discontinuities, and also introduces cascade adjustment in time and space.
The MIdAS platform has been set up such that it will support development of methods aimed at higher resolution climate model data, explicitly targeting cases where there is a scale mismatch between data sets.
In this presentaton, we describe the MIdAS assumptions and features, and present results from the main evaluation of the method for different regions around the world.
We also present the most recent development of MIdAS towards different parameters.
</p>.
Related Results
Primitiveness of cometary dust collected by MIDAS on-board Rosetta
Primitiveness of cometary dust collected by MIDAS on-board Rosetta
<p>Comets are thought to have preserved dust particles from the beginning of Solar System formation, providing a unique insight into dust growth mechanisms. The Roset...
Collection alteration and pristine structural properties of dust particles collected by MIDAS/Rosetta at comet 67P/Churyumov-Gerasimenko
Collection alteration and pristine structural properties of dust particles collected by MIDAS/Rosetta at comet 67P/Churyumov-Gerasimenko
Comets are believed to have preserved pristine material from the early stages of the Solar System formation, thus providing unique information on intricate processes like dust grow...
Primitiveness of cometary dust collected by MIDAS on-boardRosetta
Primitiveness of cometary dust collected by MIDAS on-boardRosetta
<p>Comets are thought to have preserved dust particles from the very beginning of Solar System formation,&#160;providing a unique insight into intricate proce...
Progress Toward Addressing the Challenge of Mixed-phase Precipitation for the GPM Combined Algorithms 
Progress Toward Addressing the Challenge of Mixed-phase Precipitation for the GPM Combined Algorithms 
Available evidence indicates that accurate electromagnetic (EM) single scattering properties (SSPs) obtained from hydrometeors with realistic morphology are crucial for simulated s...
Tropical Indian Ocean Mixed Layer Bias in CMIP6 CGCMs Primarily Attributed tothe AGCM Surface Wind Bias
Tropical Indian Ocean Mixed Layer Bias in CMIP6 CGCMs Primarily Attributed tothe AGCM Surface Wind Bias
The relatively weak sea surface temperature bias in the tropical Indian Ocean (TIO) simulated in the coupledgeneral circulation model (CGCM) from the recently released CMIP6 has be...
Hubungan College Adjustment dengan Stres Akademik Mahasiswa Tahun Pertama Fakultas Kedokteran
Hubungan College Adjustment dengan Stres Akademik Mahasiswa Tahun Pertama Fakultas Kedokteran
Abstract. First-year students experience a transitional period in adapting to complex learning systems and academic and social demands in higher education. This study aims to exami...
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
The Analysis of Residential Property Price Bubble and Sharia Bank Financing Using MIDAS Regression Model
The Analysis of Residential Property Price Bubble and Sharia Bank Financing Using MIDAS Regression Model
In economic modeling there are constraints in terms of time frequency differences in the data used as input for estimating a model. One real example is when modeling the relationsh...

