Title: MSc' Zhengkun Jiang WUR
1Optimization of Mobile Radioactivity Sampling
Design
- MSc. Zhengkun Jiang (WUR)
- Dr. ir. Sytze de Bruin (WUR)
- Dr. ir. Gerard B.M. Heuvelink (WUR)
- Dr. Chris J.W. Twenhöfel (RIVM)
2Introduction
Nuclear accident
Posing severe impacts on environment and human
health
Radioactivity Monitoring Network
Providing early warning and monitoring against
nuclear accident
3Problem definition
- More accurate information about spatial
distribution of the radioactive contaminant near
accident site is needed - Static monitoring networks are usually too coarse
to estimate local conditions.
- Proposed solution
- additional mobile measuring devices
- Key Question Where to optimally allocate
additional mobile measuring devices?
4Simulated accident and NPK-PUFF model
Simulated accident
- Borssele nuclear power plant
- South West wind (3-4 m / s)
- Cs-137 (Bq / m3)
- Time instant 5 hours
NPK-PUFF model
- Spatial distribution of radioactive contaminant
- Prognostic overview of radiological dose
5Methodology
- Geostatistical model Uncertainty
- The true concentration is assumed as the sum
of deterministic trend (NPK-PUFF prediction) and
spatially auto-correlated stochastic residual
True concentration (x, t) NPK-PUFF prediction
(x, t) residual (x, t)
6Methodology
- Impact factor
- ? false positive impact factor
- ? false negative impact factor
- ? ? 1 5
- Optimization Criterion
- to minimize a weighted sum of the
expected area occupied by the two false states
for certain action level at certain time
Correctly classified
false positive
Correctly classified
false negative
7Methodology
- Geographical Constraints
- Openness
- Accessibility
8Methodology Optimization procedure
preparation
Objective function calculation
Spatial simulated annealing
Semivariogram model
True concentration maps
Calculated the expected total cost
Predicted plume
New cost lt old cost
predicted concentration maps
100 Realizations of simulated residual
Candidate sampling locations
100 Interpolated residuals fields
Predicted plume
Randomly generated sampling configuration
New sampling design is accepted
New sampling design is not accepted and generates
the next design from the last accepted design
9Results The expected total cost
10Results initial and final sampling designs
Initial sampling design
final sampling design after 2000 spatial
simulated annealing iterations
11Results The corresponding probabilities of
sampling design
final false positive probability map
Initial false negative probability map
12Results The corresponding probabilities of
sampling design
Initial false positive probability map
final false positive probability map
13Conclusions
- The optimal sampling design is achieved by
improving data dependent objective function and
using stochastic simulation and spatial simulated
annealing - Time integration is needed for dose calculation
- More elaborate residual model and simulated
realizations is needed
14Q A
Thank you for your attention!