Search Books

Environmental data mining and modeling based on machine learning algorithms and geostatistics [An article from: Environmental Modelling and Software]

Author M. Kanevski, R. Parkin, A. Pozdnukhov, V. Timonin
Publisher Elsevier
📄 Viewing lite version Full site ›
🌎 Shop on Amazon — choose country
8.95 USD
🛒 Buy New on Amazon 🇺🇸

✓ Available for download now

Share:
Book Details
PublisherElsevier
ISBN / ASINB000RR1IVQ
ISBN-13978B000RR1IV9
AvailabilityAvailable for download now
MarketplaceUnited States 🇺🇸

Description

This digital document is a journal article from Environmental Modelling and Software, published by Elsevier in 2004. The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.

Description:
The paper presents some contemporary approaches to spatial environmental data analysis. The main topics are concentrated on the decision-oriented problems of environmental spatial data mining and modeling: valorization and representativity of data with the help of exploratory data analysis, spatial predictions, probabilistic and risk mapping, development and application of conditional stochastic simulation models. The innovative part of the paper presents integrated/hybrid model-machine learning (ML) residuals sequential simulations-MLRSS. The models are based on multilayer perceptron and support vector regression ML algorithms used for modeling long-range spatial trends and sequential simulations of the residuals. ML algorithms deliver non-linear solution for the spatial non-stationary problems, which are difficult for geostatistical approach. Geostatistical tools (variography) are used to characterize performance of ML algorithms, by analyzing quality and quantity of the spatially structured information extracted from data with ML algorithms. Sequential simulations provide efficient assessment of uncertainty and spatial variability. Case study from the Chernobyl fallouts illustrates the performance of the proposed model. It is shown that probability mapping, provided by the combination of ML data driven and geostatistical model based approaches, can be efficiently used in decision-making process.