Monte Carlo methods, used to model nuclear systems, have been observed to underpredict the statistical variances in calculated results, a phenomenon which is magnified when tallied near reflecting boundaries. This underprediction is due to the fact that the histories used to calculate Monte Carlo results are often correlated to each other, negating the underlying assumption in the apparent variance calculation and introducing a bias. The real variance can be calculated using various statistical methods, and the difference between real and apparent variance quantifies the magnitude of the underprediction of variance. Although methods exist to calculate the real variance in Monte Carlo results, the physical drivers of the under-prediction phe...
Random sampling methods are used for nuclear data (ND) uncertainty propagation, often in combination...
Work performed while working as a PSAAP graduate student intern at Sandia National Laboratories. Ci...
Nowadays, reliance on nuclear models to interpolate or extrapolate between experimental data points ...
Monte Carlo methods, used to model nuclear systems, have been observed to underpredict the statistic...
It has been observed that statistical uncertainties on tallies in Monte Carlo iterated-fission-sourc...
In many reactor calculations, high fidelity, high accuracy results are required only in a small spat...
In radionuclide metrology, Monte Carlo (MC) simulation is widely used to compute parameters associat...
This paper presents a practical solution to merge information from experimental measurements and the...
This is a technical report prepared by J.D. Smith and E. Galvin on research conducted by interns at ...
The production of useful and high-quality nuclear data requires measurements with high precision and...
Accurate Monte Carlo confidence intervals (CIs), which are formed with an estimated mean and an esti...
<p>Shown are regularity indexes (RI) derived by the measurement of nearest-neighbor distances. Black...
Variance reduction techniques are employed in Monte Carlo analyses to increase the number of partic...
Random sampling methods are used for nuclear data (ND) uncertainty propagation, often in combination...
A method to automatically reduce the variance in global neutral particle Monte Carlo problems by usi...
Random sampling methods are used for nuclear data (ND) uncertainty propagation, often in combination...
Work performed while working as a PSAAP graduate student intern at Sandia National Laboratories. Ci...
Nowadays, reliance on nuclear models to interpolate or extrapolate between experimental data points ...
Monte Carlo methods, used to model nuclear systems, have been observed to underpredict the statistic...
It has been observed that statistical uncertainties on tallies in Monte Carlo iterated-fission-sourc...
In many reactor calculations, high fidelity, high accuracy results are required only in a small spat...
In radionuclide metrology, Monte Carlo (MC) simulation is widely used to compute parameters associat...
This paper presents a practical solution to merge information from experimental measurements and the...
This is a technical report prepared by J.D. Smith and E. Galvin on research conducted by interns at ...
The production of useful and high-quality nuclear data requires measurements with high precision and...
Accurate Monte Carlo confidence intervals (CIs), which are formed with an estimated mean and an esti...
<p>Shown are regularity indexes (RI) derived by the measurement of nearest-neighbor distances. Black...
Variance reduction techniques are employed in Monte Carlo analyses to increase the number of partic...
Random sampling methods are used for nuclear data (ND) uncertainty propagation, often in combination...
A method to automatically reduce the variance in global neutral particle Monte Carlo problems by usi...
Random sampling methods are used for nuclear data (ND) uncertainty propagation, often in combination...
Work performed while working as a PSAAP graduate student intern at Sandia National Laboratories. Ci...
Nowadays, reliance on nuclear models to interpolate or extrapolate between experimental data points ...