In a recent paper, a statistical method referred to as cluster analysis was employed to identify clusters in forecast and observed fields. Further criteria were also proposed for matching the identified clusters in one field with those in the other. As such, the proposed methodology was designed to perform an automated form of what has been called object-oriented verification. Herein, a variation of that methodology is proposed that effectively avoids (or simplifies) the criteria for matching the objects. The basic idea is to perform cluster analysis on the combined set of observations and forecasts, rather than on the individual fields separately. This method will be referred to as combinative cluster analysis (CCA). CCA naturally lends it...
An aggregation approach is needed to overcome the prohibitive expense involved in exercising the Reg...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
Extended non-hierarchical cluster analysis is improved by deriving the initial cluster number and es...
It is now clear that the performance of numerical weather prediction (NWP) models must be assessed w...
Measures-based characterizations of errors in forecasts fail to provide useful information as increa...
The results of the verification of precipitation forecasts are highly affected by the distribution o...
Many physics-based numerical models produce a gridded, spatial field of forecasts, e.g., a temperat...
The article analyzes clustering problems that arise in forecasting tasks when clustering short time ...
Purpose: The purpose of this study is how to create an ideal cluster in predicting rainfall in Austr...
Several spatial forecast verification methods have been developed that are suited for high-resolutio...
The numerical weather prediction (NWP) model outputs are point deterministic values arranged on a th...
An object-based verification methodology for the NSSL Experimental Warn-on-Forecast System for ensem...
<p>Clustering analysis results, indicating the number, configuration and distinctiveness (mixing pro...
Advancements in weather forecast models and their enhanced resolution have led to substantially im-p...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
An aggregation approach is needed to overcome the prohibitive expense involved in exercising the Reg...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
Extended non-hierarchical cluster analysis is improved by deriving the initial cluster number and es...
It is now clear that the performance of numerical weather prediction (NWP) models must be assessed w...
Measures-based characterizations of errors in forecasts fail to provide useful information as increa...
The results of the verification of precipitation forecasts are highly affected by the distribution o...
Many physics-based numerical models produce a gridded, spatial field of forecasts, e.g., a temperat...
The article analyzes clustering problems that arise in forecasting tasks when clustering short time ...
Purpose: The purpose of this study is how to create an ideal cluster in predicting rainfall in Austr...
Several spatial forecast verification methods have been developed that are suited for high-resolutio...
The numerical weather prediction (NWP) model outputs are point deterministic values arranged on a th...
An object-based verification methodology for the NSSL Experimental Warn-on-Forecast System for ensem...
<p>Clustering analysis results, indicating the number, configuration and distinctiveness (mixing pro...
Advancements in weather forecast models and their enhanced resolution have led to substantially im-p...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
An aggregation approach is needed to overcome the prohibitive expense involved in exercising the Reg...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
Extended non-hierarchical cluster analysis is improved by deriving the initial cluster number and es...