Spatial autocorrelation is an intrinsic characteristic in freshwater stream environments where nested watersheds and flow connectivity may produce patterns that are not captured by Euclidean distance. Yet, many common autocovariance functions used in geostatistical models are statistically invalid when Euclidean distance is replaced with hydrologic distance. We use simple worked examples to illustrate a recently developed moving-average approach used to construct two types of valid autocovariance models that are based on hydrologic distances. These models were designed to represent the spatial configuration, longitudinal connectivity, discharge, and flow direction in a stream network. They also exhibit a different covariance structure than ...
Scientists need appropriate spatial-statistical models to account for the unique features of stream ...
Graduation date: 2010This collection of three manuscripts serves to improve methods for collecting,\...
Estimating concentrations or flow rates along a stream network requires specific Random Functions (R...
Spatial autocorrelation is an intrinsic characteristic in freshwater stream environments where neste...
1. Geostatistical models based on Euclidean distance fail to represent the spatial configuration, co...
In this article we use moving averages to develop new classes of models in a flexible modeling frame...
In this article we use moving averages to develop new classes of models in a flexible modeling frame...
We develop spatial statistical models for stream networks that can estimate relationships between a ...
Geostatistical models are typically based on symmetric straight-line distance, which fails to repres...
Mixed, moving average (MMA) approaches to geostatistical modelling on stream networks are still in t...
The application of existing geostatistical theory to the context of stream networks provides a numbe...
Streams and rivers host a significant portion of Earth's biodiversity and provide important ecosyste...
Preservation of rivers and water resources is crucial in most environmental policies and many effort...
Streams and rivers host a significant portion of Earth’s biodiversity and pro-vide important ecosyst...
Many statistical models are available for spatial data but the vast majority of these assume that sp...
Scientists need appropriate spatial-statistical models to account for the unique features of stream ...
Graduation date: 2010This collection of three manuscripts serves to improve methods for collecting,\...
Estimating concentrations or flow rates along a stream network requires specific Random Functions (R...
Spatial autocorrelation is an intrinsic characteristic in freshwater stream environments where neste...
1. Geostatistical models based on Euclidean distance fail to represent the spatial configuration, co...
In this article we use moving averages to develop new classes of models in a flexible modeling frame...
In this article we use moving averages to develop new classes of models in a flexible modeling frame...
We develop spatial statistical models for stream networks that can estimate relationships between a ...
Geostatistical models are typically based on symmetric straight-line distance, which fails to repres...
Mixed, moving average (MMA) approaches to geostatistical modelling on stream networks are still in t...
The application of existing geostatistical theory to the context of stream networks provides a numbe...
Streams and rivers host a significant portion of Earth's biodiversity and provide important ecosyste...
Preservation of rivers and water resources is crucial in most environmental policies and many effort...
Streams and rivers host a significant portion of Earth’s biodiversity and pro-vide important ecosyst...
Many statistical models are available for spatial data but the vast majority of these assume that sp...
Scientists need appropriate spatial-statistical models to account for the unique features of stream ...
Graduation date: 2010This collection of three manuscripts serves to improve methods for collecting,\...
Estimating concentrations or flow rates along a stream network requires specific Random Functions (R...