| Literature DB >> 30861489 |
Aleem Dad Khan Tareen1, Khawaja M Asim2, Kimberlee Jane Kearfott3, Muhammad Rafique4, Malik Sajjad Ahmed Nadeem5, Talat Iqbal2, Saeed Ur Rahman6.
Abstract
In this article, three computational intelligence (CI) models were developed to automatically detect anomalous behaviour in soil radon gas (222Rn) time series data. Data were obtained at a fault line and analysed using three machine learning techniques with the aim at identifying anomalies in temporal radon data prompted by seismic events. Radon concentrations were modelled with corresponding meteorological and statistical parameters. This leads to the estimation of soil radon gas without and with meteorological parameters. The comparison between computed radon concentration and actual radon concentrations was used in finding radon anomaly based upon automated system. The anomaly in radon time series data could be considered due to noise or seismic activity. Findings of study show that under meticulously characterized environments, on exclusion of noise contribution, seismic activity is responsible for anomalous behaviour seen in radon time series data.Entities:
Keywords: Computational intelligence models; Meteorological parameters; Seismic events; Soil radon; Time series
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Year: 2019 PMID: 30861489 DOI: 10.1016/j.jenvrad.2019.03.003
Source DB: PubMed Journal: J Environ Radioact ISSN: 0265-931X Impact factor: 2.674