Developing Human System Modules for Regional Climate Models

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Developing Human System Modules for Regional Climate Models

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Title: Developing Human System Modules for Regional Climate Models


1
Developing Human System Modules for Regional
Climate Models
  • Jessie Cherry
  • IARC/INE/ARSC_at_UAF
  • Peter Larsen
  • GSPP/LBNL_at_UC-Berkeley

Arctic System Modeling Workshop III, University
of Quebec, Montreal, July 2009
2
Presentation Outline
  • Old school approach to the study of Human
    Dimensions (HD) of Climate Change
  • Shortcomings with the old school approach
  • Some examples of HD modeling
  • Direct integration of HD into regional climate
    modeling (i.e., new school)
  • Implementation potential for particular sectors
    and
  • Benefits to developing an international HD
    working group for the Arctic.

3
General Climate-related Modeling Approaches
Source IPCC, 2007
4
Past Treatment of Human Dimensions
  • Second (or third-order) modeling runs
  • Limited use of downscaled physical projections
  • Few examples of model comparison/testing
    platforms and input/output sensitivity analyses
  • Weighted index, Delphi, and/or subjective
    approaches are often employed and
  • Stakeholder feedback often occurs later on in the
    development process, if at all.

5
Examples of Modeling HD Alaska
HD Project Estimating Risk to Alaska Public
Infrastructure from Climate Change (Larsen et
al, 2008)
6
Examples of Modeling HD Alaska
7
Examples of Modeling HD California
HD Project Estimating Risk to California
Energy Infrastructure from Climate Change
(Sathaye et al, 2009)
8
Examples of Modeling HD California
9
Past/Current HD Modeling Concerns
  • The old school de-coupled HD approach
  • creates a strong disconnect between the physical
    modeling and the climate impacts communities
  • occasionally ignores stakeholder needs for timely
    policy and decision making
  • often misses important feedbacks between human
    agents and the climate system and
  • makes it difficult to compare and test
    alternative modeling techniques.

10
Some Arctic Human Dimensions.
  • Resource Development
  • Hazard Response
  • Freshwater Supply
  • Renewable Energy (wind, hydro, geothermal)
  • Commercial and Sport Fishing/Hunting
  • Public and Private Infrastructure
  • Tourism
  • Subsistence Harvest
  • Marine Transport
  • Human Health

11
A New School HD Modeling Proposal.
  • Develop Human System Modules directly into the
    Arctic System Modeling platform
  • Make these modules portable and transparent
    between different regional models
  • Encourage international collaboration
  • Focus on producing multiple socioeconomic impact
    measures and
  • Facilitate model testing, scenario development,
    stakeholder feedback, etc.

12
Some Thoughts on Decision Support/Stakeholder
Feedback
  • Turban defines decision support as "an
    interactive, flexible, and adaptable
    computer-based information system, especially
    developed for supporting the solution of a
    non-structured management problem for improved
    decision making. It utilizes data, provides an
    easy-to-use interface, and allows for the
    decision maker's own insights. (Wikipedia, 2009)
  • Decision support and ongoing stakeholder feedback
    are very important factors to incorporate if the
    Arctic System Model is going to be successful.
  • What metrics will we use to gauge the overall
    performance of this entire Arctic system?

13
Some Thoughts on Climate/HD Model Interactions
  • Need not occur at each model time step (e.g.,
    hours vs. planning decades)
  • One or two-way coupling may be appropriate
    depending on the system (e.g., GHG emissions)
    and
  • Socioeconomic data collection and dissemination
    will need to be substantially improved
  • Quantifying coupled model uncertainty is very
    important, but difficult to communicate.

14
Some Thoughts on Communicating Uncertainty in HD
Impacts
Source Larsen et al (2008)
Three different AOGCMs
Monte-carlo Simulation (varied inputs)
15
More Thoughts on Uncertainty in HD Impact
Estimates
Harvard Economics Professor Martin Weitzman noted
in a seminal 2008 paper that fat-tailed
structural uncertainty about climate change,
coupled with a lack of information about
high-temperature damages, can potentially
outweigh the influence of discounting in a
cost-benefit analysis framework.
16
What are the Challenges?
  • Training and supporting interdisciplinary
    researchers may be the biggest challenge
  • Pan-Arctic data collection and management is
    another major challenge
  • Stakeholder engagement is time-consuming and
    expensive
  • Some research disciplines are further along in
    the evolution of systems modeling and
  • User-friendly decision support tools will need
    to be developed in close collaboration with
    stakeholders.

17
Why include HD modules directly into the ASM?
  • There are (some) appropriate existing regional HD
    models
  • We have the computing resources
  • We can attempt to minimize miscommunications
    between the physical and social scientists across
    the Arctic
  • Its interesting and policy-relevant work at the
    frontiers of research!!!

18
Benefits to Developing an International HD
Working Group
  • The Arctic countries share many common HD because
    of similar regional climate, geography, history,
    etc.
  • The Arctic countries also share common
    vulnerabilities
  • HD data is often disparate and difficult to find,
    particularly at the Pan-Arctic level and
  • There is considerable experience within various
    Arctic countries in the study of HD, but there is
    less knowledge sharing occurring across countries.

19
Questions?
Reminder HD Breakout Session Later Today.
20
Additional Information
  • International Arctic Research Center at UAF
    www.iarc.uaf.edu
  • Alaska Center for Climate Assessment and Policy
    (ACCAP) www.uaf.edu/accap/
  • State of Alaska Climate Change Materials
    www.climatechange.alaska.gov
  • E.O. Lawrence Berkeley National Laboratory
    www.lbl.gov
  • Goldman School of Public Policy
    www.gspp.berkeley.edu
  • Note This presentation includes personal views
    of Peter Larsen.

21
(No Transcript)
22
Climate Change Planning
Walsh Chapman PRISM downscaled multi-model
projections of temperature and precipitation for
AK under various scenarios of Greenhouse Gas
emissions
23
Integrated Assessment
  • Definition any model which combines scientific
    and socio-economic aspects of climate change
    primarily for the purpose of assessing policy
    options for climate change control (Kelly
    Kolstad, 1998)

24
Integrated Assessment Modeling
McGuffie Henderson-Sellers, 2005
25
Integrated Assessment Models
McGuffie Henderson-Sellers, 2005
26
Example of Human System Module
Goal is to be model independent work with CCSM
and other models/ couplers
Cherry
27
Communicating uncertainty
28
New Scientific Methodology?
Funtowicz Ravetz, in Ecological Economics, 1991
29
Arctic human dimensions
  • Oil and Gas Module (spill transport)
  • Rural Resilience (wind power potential)
  • Coastal Erosion (evolving coastline)
  • Freshwater (hydropower, water supply)
  • Marine Fisheries (Bering ecosystem)
  • Marine Transport (ice cover trajectories)

30
BSIERP Lower Trophic Level Ecosystem Model
Predation Losses
Euphausiids
Detritus
14 component Model NPZD-Benthos
Neocalanus
Pseudocalanus
Large microzooplankton
Small microzooplankton
Small Phytoplankton
Large Phytoplankton
Iron
Ammonium
Nitrate
Benthic Detritus
Benthic Infauna
Benthos
31
BSIERP
BSIERP Vertically Integrated models
Economic/ecological model
FEAST Higher trophic level model
NPZ-B-D Lower trophic level
ROMS Physical Oceanography
Nested models
BEST
Climate scenarios
32
Infrastructure
  • Impact of Climate Change on Infrastructure
    study done for Alaska by Peter Larsen and
    collaborators

33
Flow Chart of Model Processes
Graphs
34
ISER Public Infrastructure Study
35
Wind Farm Parameterization for WRF
Adams Keith Modification of the MYJ PBL
scheme Similar work being done commercially by
3TIER, AER, others
36
MMS-WRF winds 1
37
MMS-WRF winds 2
38
MMS-WRF winds 3
39
MMS-WRF winds 4
40
Hydropower AEA
AEA Energy Atlas, 2007
41
Ship track
42
Example of Climate-Related Decision Support
  • https//rsgis.crrel.usace.army.mil/aedis/
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