Geochemical fingerprinting is a rapidly expanding discipline in the earth and environmental sciences, anchored in the recognition that geological processes leave behind physical, chemical and sometimes also isotopic patterns in the samples. Furthermore, the geochemical fingerprinting of natural cycles (water, carbon, soil and biota fingerprinting) are influenced by the anthropogenic impact and by the climate change. So, their monitoring is a tool of resilience and adaptation. In recent years, computational statistics and artificial intelligence methods have started to be used to help the process of geochemical fingerprinting. In this paper we consider data from 57 wells located in the province of Ferrara (Italy), all belonging to the same g...
The increased use of chemicals in many anthropogenic activities and their dispersion into the enviro...
Comprehensive hydrogeochemical studies have been conducted in the Campi Flegrei volcanic aquifer sin...
Geochemical data processing aims to not only reduce the random and/or systematic errors resulted fro...
Understanding the spatial variations in groundwater chemistry is fundamental to assess the groundwat...
Sources of groundwater contaminants in inhabited areas, located in complex geo-tectonic contexts, ar...
Groundwater wells are one of the most important water resources in the world. Control and management...
In hydrogeology, it is often difficult to fully understand the hydraulic factors affecting the recha...
In this study, the fuzzy c-mean clustering method was used in an unsupervised manner to automaticall...
Little research attention has been given to validating clusters obtained from the groundwater geoche...
The use of unsupervised artificial neural network techniques like the self-organizing map (SOM) algo...
Multivariate statistical techniques such as principal component (PCA) and cluster analyses, were app...
This communication is focussed on the presentation of the results of two campaigns of samples collec...
1 Cluster Analysis has numerous scientific and practical applications. This paper presents a compute...
Multivariate statistical methods (MSMs) applied to groundwater chemistry provide valuable insight in...
Hydrochemical data from a total of 104 groundwater samples were used to investigate the main factors...
The increased use of chemicals in many anthropogenic activities and their dispersion into the enviro...
Comprehensive hydrogeochemical studies have been conducted in the Campi Flegrei volcanic aquifer sin...
Geochemical data processing aims to not only reduce the random and/or systematic errors resulted fro...
Understanding the spatial variations in groundwater chemistry is fundamental to assess the groundwat...
Sources of groundwater contaminants in inhabited areas, located in complex geo-tectonic contexts, ar...
Groundwater wells are one of the most important water resources in the world. Control and management...
In hydrogeology, it is often difficult to fully understand the hydraulic factors affecting the recha...
In this study, the fuzzy c-mean clustering method was used in an unsupervised manner to automaticall...
Little research attention has been given to validating clusters obtained from the groundwater geoche...
The use of unsupervised artificial neural network techniques like the self-organizing map (SOM) algo...
Multivariate statistical techniques such as principal component (PCA) and cluster analyses, were app...
This communication is focussed on the presentation of the results of two campaigns of samples collec...
1 Cluster Analysis has numerous scientific and practical applications. This paper presents a compute...
Multivariate statistical methods (MSMs) applied to groundwater chemistry provide valuable insight in...
Hydrochemical data from a total of 104 groundwater samples were used to investigate the main factors...
The increased use of chemicals in many anthropogenic activities and their dispersion into the enviro...
Comprehensive hydrogeochemical studies have been conducted in the Campi Flegrei volcanic aquifer sin...
Geochemical data processing aims to not only reduce the random and/or systematic errors resulted fro...