This book combines geostatistics and global mapping systems to present an up-to-the-minute study of environmental data. Featuring numerous case studies, the reference covers model dependent (geostatistics) and data driven (machine learning algorithms) analysis techniques such as risk mapping, conditional stochastic simulations, descriptions of spatial uncertainty and variability, artificial neural networks (ANN) for spatial data, Bayesian maximum entropy (BME), and more
Soil properties play important roles in a lot of environmental issues like diffuse pollution, erosio...
The book aims to investigate methods and techniques for spatial statistical analysis suitable to mod...
Environmental signal forecasting is the process of making predictions of the future based on past an...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
Categorical variables often comes naturally and play an important role in environmental studies. Tra...
Environmental and ecological risk assessments are defined as the process for evaluating the likeliho...
Categorical variables have always played an important role in a wide variety of statistical applicat...
First developed to predict continuous variables, Bayesian Maximum Entropy (BME) has become a complet...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The use of machine learning techniques in classification problems has been shown to be useful in man...
Geostatistics provides an efficient tool for mapping environmental variables from observations an...
The paper deals with the development and application of the generic methodology for automatic proces...
Advances in geospatial and Machine Learning techniques for large datasets of georeferenced observati...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Environmental Informatics uses a panoply of tools from the Statistics, Mathematics, Computing, and V...
Soil properties play important roles in a lot of environmental issues like diffuse pollution, erosio...
The book aims to investigate methods and techniques for spatial statistical analysis suitable to mod...
Environmental signal forecasting is the process of making predictions of the future based on past an...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
Categorical variables often comes naturally and play an important role in environmental studies. Tra...
Environmental and ecological risk assessments are defined as the process for evaluating the likeliho...
Categorical variables have always played an important role in a wide variety of statistical applicat...
First developed to predict continuous variables, Bayesian Maximum Entropy (BME) has become a complet...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
The use of machine learning techniques in classification problems has been shown to be useful in man...
Geostatistics provides an efficient tool for mapping environmental variables from observations an...
The paper deals with the development and application of the generic methodology for automatic proces...
Advances in geospatial and Machine Learning techniques for large datasets of georeferenced observati...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Environmental Informatics uses a panoply of tools from the Statistics, Mathematics, Computing, and V...
Soil properties play important roles in a lot of environmental issues like diffuse pollution, erosio...
The book aims to investigate methods and techniques for spatial statistical analysis suitable to mod...
Environmental signal forecasting is the process of making predictions of the future based on past an...