Title: Focus Topics and New Strategic Capabilities
1Focus Topics and New Strategic Capabilities
- N. A. Schwadron, K. Kozarev, L. Townsend, M.
Desai, M. A. Dayeh, F. Cucinotta, D. Hassler, H.
Spence, M. PourArsalan, K. Korreck, R. Squier, M.
Golightly, G. Zank, X. Ao, M. Kim, C. Zeitlin, G.
Li, O. Verkhoglyadova
2Current Capabilities
- Acute time-dependent radiation environment near
Earth, Moon, Mars and throughout the inner
heliosphere - Linear-Energy-Spectra at the Moon (LET spectra
through the heliosphere underway) - Testing/model validation via comparison to
Ulysses, CRaTER, Marie - Radiation environment specified from energetic
particle simulations (e.g., PATH code and
LFM-Helio coupling underway) - Radiation environment through Mars atmosphere
- Radiation environment through Earths atmosphere
nearing completion
http//emmrem.bu.edu
3Module Availability
- Open source software available on request and
distributed through subversion - Module Web Interface through the EMMREM Website
- Module delivered and installed at the CCMC
- BRYNTRN radiation transport model running in real
time - Working on coupling between BRYNTRN and the
ReleASE model - EMMREM delivered and up and running at the Space
Radiation Group (SRAG)
http//emmrem.bu.edu
4Drivers, Boundary Conditions, Model Integration
- Boundary conditions specified from observed
energetic particle fluxes and solar wind
measurements from spacecraft at or inside 1 AU
(Helios, ACE, GOES, SOHO) - Model Coupling
- MHD models (e.g., ENLIL, LFM-Helio) specify the
plasma environment through which energetic
particle simulations run - Energetic particle modules couple to ENLIL, which
in turn has inner BCs from source surface models
using synoptic maps and photospheric magnetograms - Coupling with Modeled CMEs (e.g., Cone Model CMEs
via ENLIL) - Radiation environment coupled with particle
simulations (particle simulation codes become
drivers) - Radiation environment from predictive models
using energetic particle precursors (e.g.,
coupling to the Release model)
http//emmrem.bu.edu
5Future Capabilities Needed
- Probabilistic solar particle flux forecast
modeling - Coupling between EMMREM and integrated risk
models for comprehensive SPE scenario models - Radiation environment from extreme events
- How bad can the environment be?
- How probable are extreme events?
- What is the physics behind extreme events?
- Further modeling of events with BCs from inside
1 AU to validate forecasting methods - Messenger
- Events and coupling with Release model
- Future Solar Orbiter, Solar Probe Plus
http//emmrem.bu.edu
6Future - Physics of SEPs
- Determine Peak intensity and Fluence gradients
inside 1 AU - Role of CME shocks vs flares (e.g., determine
coronal heights where CMEs first drive
SEP-producing shocks) - CME shock acceleration efficiency (e.g.,
quasi-parallel vs quasi-perp, preceding CMEs,
seed particle variability) - Generation and dissipation of self-excited waves
and their effects on streaming limits and
rigidity-dependent spectral breaks - Role of rigidity-dependent scattering and
diffusion on particle fluxes at 1 AU - Multiple observational vantage points beyond 1 AU
to determine gradients, understand transport, and
validate models (e.g., Cassini, Mars missions,
planetary probes)
7EMMREM Framework
Schwadron et al., Space Weather Journal, 2010
8EMMREM Primary Transport
- Energetic Particle Radiation Environment Module
(EPREM) - Physical 3-D kinetic mode for the transport of
energetic particles in a Lagrangian field-aligned
grid (Kota, 2005) including pitch-angle
scattering, curvature and gradient drift,
perpendicular transport - Capable of simulating transport of protons
electrons and heavier ions - Currently driven by data at 1 AU (Goes,
SOHO/ERNE) - Run on an event-by-event basis
9EPREM simulations
Kozarev et al., submitted to SWJ
Dayeh et al., submitted to SWJ
10Source reveals extremely broad longitudinal
distribution
11EMMREM Secondary Transport
- Radiation transport Input is time series from
EPREM. - - BRYNTRN (BaRYoN TraNsport) code for light
ions, primarily for SEP calculations - - HZETRN code for high Z primary and secondary
ions transport for SEP and GCR calculations
Look-up tables for Mars atmosphere. - - HETC-HEDS (High-Energy Transport Code Human
Exploration and Development of Space) Monte Carlo
code Look-up tables for Earth atmosphere - Scenarios
- - Earth
- - Moon
- - Mars
- - Interplanetary
- Completed EMMREM framework capable of performing
radiation calculations that account for
time-dependent positions, spacecraft and human
geometry, spacesuit shielding, atmospheres and
surface habitats.
12Doses exceed limits with spacesuit shielding,
below limits for spacecraft shielding
13Dose rate and dose at Martian atmospheric heights
14Radiation Exposure from Large SPE Events
BFO dose rate during Aug.. 1972 SPE Event
Cumulative dose
Myung-Hee et al., 2006
15Coupling to MHD
Coupling between EPREM and WSA/Enlil
16Coupling to MHD
- Testing coupling to WSA/Enlil runs with cone
model - Coupling to a new MHD code being developed at BU
(LFM-helio) underway
Kozarev et al., submitted to SWJ
17Results of Physics-Based Simulated Event (PATH
Code)
18EMMREM Web interface
- Currently available
- - GOES proton input
- - EPREM runs on request
- - BRYNTRN runs on request
- - Sim results visualization
- New functionality soon
- - Mars radiation environment
- - LET specra for comparison with CraTER
- - Earth atmospheric radiation environment
- - Catalogue of historical events with radiation
environment information
19EMMREM at CCMC
Delivered and installed EMMREM successfully.
More information about the model
at http//ccmc.gsfc.nasa.gov/models/modelinfo.ph
p?modelEMMREM
20Integrated Risk Projection
EMMREM
Space Radiation Environment
Mitigation - Shielding materials
Risk Assessment -Dosimetry -Biomarkers -Uncertain
ties -Space Validation
Radiation Shielding
Initial Cellular and Tissue Damage DNA breaks,
tissue microlesions
- Radioprotectants
DNA repair, Recombination, Cell cycle
checkpoint, Apoptosis, Mutation, Persistent
oxidative damage, Genomic Instability
-Pharmaceuticals
Tissue and Immune Responses
Riskj (age,sex,mission)
Risks Chronic Cancer, Cataracts, Central
Nervous System, Heart Disease Acute Lethality,
Sickness, Performance
Risks Acute Radiation Syndromes Cancer Cataracts
Neurological Disorders
21Major Questions for Acute Risk Models
- What are the dose-rate modification (DRM) effects
for SPE Acute risks? - What are the Relative Biological Effectieness
(RBEs) for protons and secondaries? - How do DRM and RBEs vary with Acute risks?
- Are there synergistic effects from other flight
stressors (microgravity, stress, bone loss) or
GCR on Acute risks? - For which Acute risks are countermeasures needed?
- How can the effectiveness of Acute
countermeasures be evaluated and extrapolated to
Humans?
22Acute Radiation Risks Research
- Overall Objectives
- Accurate Risk assessment models support
- Permissible Exposure Limits (PEL) Determination
- Informed Consent Process
- Operational Procedures
- Dosimetry
- EVA timelines
- Solar Forecasting Requirements
- Shielding Requirements
- Countermeasure (CM) Requirements
- Approach
- Probabilistic Risk Assessment applied to Solar
Particle Events (SPE) - Models of acute risks used to evaluate acute CMs
for SPE and Lunar Surface conditions - EMMREM provides a tool to evaluate and assess
acute risks
23Probabilistic Solar Particle Flux Forecast
Modeling
24SPE Database for the Recent Solar Cycles
19 20
21 22 23
25Model-based Prediction of SPE Frequency based on
the Measurements of SPE Flux
Propensity of SPEs Hazard Function of Offset b
Distribution Density Function
19 20 21 22
23
m1783rd day
Typical Nonspecific Future Cycle
26Approaches
- Cumulative frequency distribution of recorded
SPEs - Model for the realistic application and the
dependence - of multiple SPEs
- Non-constant hazard function defined for the best
propensity of SPE data in space era - Non-homogenous Poisson process model for SPE
frequency in an arbitrary mission period - Cumulative probability of SPE occurrence during a
given mission period using fitted Poisson model - 3. Simulation of F30, 60, or 100 distribution for
each mission periods by a random draw from Gamma
distribution