Fast Prediction Method of Radon Concentration in Environment Air

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Abstract:

Base on the theory that 222Rn can transport in any medium, fast prediction model of radon concentration in environment air can be acquired. And it has been proved accurate by an experiment in laboratory. Many field tests also showed that the average absolute relative error is 8.78% between mean value of measurement and that of fast prediction. It can be predict fleetly the radon concentration by 226Ra which is acquired from the airborne gamma-ray spectra. The relative error between measurement and model is-11.7%. Therefore, the transport model can be effectively applied to predict radon concentration in environment air.

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819-822

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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DOI: 10.18356/49c437f9-en

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