A New Equation for Activity Calculation in Pulse Irradiation: Derivation, Simulation and Experimental Validation
Zaijing Sun

TL;DR
This paper introduces a novel activity calculation equation for pulse irradiation that accounts for the pulsed nature of irradiation and decay processes, validated through experiments and simulations, improving accuracy over traditional methods.
Contribution
The paper derives a new activity equation specifically tailored for pulse irradiation, considering pulse width and decay, validated by experiments and simulations.
Findings
The new equation aligns well with experimental measurements.
Discrepancies with traditional equations can be significant under certain conditions.
The approach improves accuracy in activity calculations for pulsed irradiation.
Abstract
To calculate the radioactivity of product nuclides generated in pulse irradiation, it is generally assumed that the irradiation is approximately continues in the entire irradiation period () and the flux of incoming irradiation particle can be obtained by averaging their intensity in each pulse period (). However, this approximation fails to acknowledge the fact that the product nuclides are not created in each pulse period () evenly: they are only produced in a very short pulse width () and then decay in a relative long rest time (). Given by the enormous number of pulses, the sum of these decays may not be negligible. To make the activity calculation in accordance with the real situation in pulse irradiation, we scrutinize the details of irradiation and decay processes in each pulse, applies the geometric series to obtain the activity superimposition of…
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Taxonomy
TopicsRadiation Effects and Dosimetry · Thermal and Kinetic Analysis · Machine Learning in Materials Science
