The artificial neural network (ANN) data analysis method was used to recognize and classify soils of an unknown geographic origin. A total of 103 soil samples were differentiated into classes according to the regions in Serbia and Montenegro from which they were collected. Their radionuclide (Ra-226, U-238, U-235, K-40, Cs-134, Cs-137, Th-232, and Be-7) activities detected by gamma-ray spectrometry were then used as inputs to ANN. Five different training algorithms with different numbers of samples in training sets were tested and compared in order to find the one with the minimum root mean square error (RMSE). The best predictive power for the classification of soils from the fifteen regions was achieved using a network with seven hidden l...
This paper describes how artificial neural networks can be used to classify multivariate data. Two t...
The development of nuclear technologies has directed environmental radioactivity research toward con...
Existing applications of artificial neural networks in physics research and development have been an...
The artificial neural network (ANN) data analysis method was used to recognize and classify soils of...
Multivariate data analysis methods were used to recognize and classify soils of unknown geographic o...
International audienceThe present study uses different ANN training algorithms to predict soil type ...
Conventional geotechnical soil classifications aim to classify soils into families with geotechnical...
An artificial neural network (ANN) model for the prediction of measuring uncertainties in gamma-ray ...
Earth observation and monitoring of soil quality, long term changes of soil characteristics and dete...
Mosses and lichens have an important role in biomonitoring. The objective of this study is to develo...
Soil classification is a means of grouping soils into categories according to a shared set of proper...
Developing of prediction models for soil profile and its parameters using Artificial Neural Network...
Soil physical and chemical analyses are relatively high-cost and time-consuming procedures. In the s...
The most dominant source of indoor radon is the underlying soil, so the enhanced levels of radon are...
In this study, radiological distribution of gross alpha, gross beta, Ra-226, Th-232, K-40, and Cs-13...
This paper describes how artificial neural networks can be used to classify multivariate data. Two t...
The development of nuclear technologies has directed environmental radioactivity research toward con...
Existing applications of artificial neural networks in physics research and development have been an...
The artificial neural network (ANN) data analysis method was used to recognize and classify soils of...
Multivariate data analysis methods were used to recognize and classify soils of unknown geographic o...
International audienceThe present study uses different ANN training algorithms to predict soil type ...
Conventional geotechnical soil classifications aim to classify soils into families with geotechnical...
An artificial neural network (ANN) model for the prediction of measuring uncertainties in gamma-ray ...
Earth observation and monitoring of soil quality, long term changes of soil characteristics and dete...
Mosses and lichens have an important role in biomonitoring. The objective of this study is to develo...
Soil classification is a means of grouping soils into categories according to a shared set of proper...
Developing of prediction models for soil profile and its parameters using Artificial Neural Network...
Soil physical and chemical analyses are relatively high-cost and time-consuming procedures. In the s...
The most dominant source of indoor radon is the underlying soil, so the enhanced levels of radon are...
In this study, radiological distribution of gross alpha, gross beta, Ra-226, Th-232, K-40, and Cs-13...
This paper describes how artificial neural networks can be used to classify multivariate data. Two t...
The development of nuclear technologies has directed environmental radioactivity research toward con...
Existing applications of artificial neural networks in physics research and development have been an...