Case studies in Gaussian process modelling of computer codes for carbon accounting Marc Kennedy,...

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Case studies in Gaussian process modelling of computer codes for

carbon accounting

Marc Kennedy,Clive Anderson, Stefano Conti, Tony O’Hagan

Talk Outline

Centre for Terrestrial Carbon Dynamics

Computer Models in CTCD

Bayesian emulators

Case Study 1: SPA

Case Study 2: SDGVM

Centre for Terrestrial Carbon Dynamics

The CTCD…

is a NERC centre of excellence for Earth Observation

made up of groups from Sheffield, York, Edinburgh, UCL, Forest Research

brings together experts in vegetation modelling, soil science, earth observation, carbon flux measurement and statistics

Net Ecosystem Production

Plant respiration

Photosynthesis

Gain

Loss

Soil respiration

Loss

– Terrestrial carbon source if NEP is negative

– Terrestrial carbon sink if NEP is positive

Computer Models in CTCD

SPA– Simulates plant processes at 30-minute

time intervals ForestETP

– Stand scale– Localised modelling

SDGVM– Global scale– Coarse resolution

Statistical objectives within CTCD

Contribute to the development of these models

– through model testing using sensitivity analysis

Identify the greatest sources of uncertainty

Correctly reflect the uncertainty in predictions

– Uncertainty analysis: propagating the parameter uncertainty through the model

Bayesian Emulation of Models

Model output is an unknown function of its inputs

– Convenient prior is a Gaussian process

– Run code at set of ‘well chosen’ input points

– Obtain posterior distribution

The emulator is the posterior distribution of the output

– Fast approximation

– Measure of uncertainty

– Nice analytical form for further analysis

Case study 1: Soil Plant Atmosphere (SPA) Model

SPA is a fine scale model created by Mat Williams– Aggregated SPA outputs were used to

create the simpler up-scaled model (ACM: the Aggregated Canopy Model) by fitting a set of simple equations with 9 parameters

Can an emulator do any better than ACM as an approximation to SPA?

ACM vs. Emulator for predicting SPA

Bayesian emulator created using only 150 of the total 6561 points used to create ACM

Predicted remaining 6411 SPA points using emulator and ACM– Compare Root Mean Square Errors

(RMSE)

0 5 10 15

0

5

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SP

A P

redi

ctio

ns

Emulator Predictions

RMSE = 0.314 using emulator

0 5 10 15

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ACM Predictions

RMSE = 0.726 using ACM

Case Study 2: Sheffield Dynamic Global Vegetation Model

SDGVM is a point model– each pixel represents an area, with an

associated vegetation type / land use

Vegetation type is described using 14 plant functional type parameters

SDGVM is constantly being developed– To improve process modelling– To incorporate more detailed driving data

Plant Functional Type inputs

Examples: Leaf life span Leaf area Temperature when bud bursts Temperature when leaf falls Wood density Maximum carbon storage Xylem conductivity

Emulator will allow small groups of inputs to vary, others fixed at original default values

Soil inputs

Soil clay % Soil sand % Soil depth Bulk density

Emulator for SDGVM

Built an emulator for the NEP output of SDGVM– 80 runs in the 5-dimensional input space were used as

training data– A maximin Latin hypercube design was used to ensure

even coverage of the input space. Plant scientists specified the ranges

24.259

14.24

18.384

36.204

-3.214

1.774

254.0 6.304346 7.913044 20.28985 6.521775

330.0 8.739128 8.173912 13.4058 19.56525

326.0 8.30435 5.56522 7.971025 50.000023

145.0 5.521742 5.043478 0.72465 33.695625

236.0 9.43478 8.782606 1.08695 75.0

123.0 9.608696 9.478258 21.0145 71.739151

Run code

… …

Model testing: Sensitivity analysis

We use sensitivity analysis for model checking and for model interpretation

Calculate main effects of each code input– How does output change if we vary the

input, averaged over other inputs?

Building the emulator has uncovered bugs– simply by trying different combinations of

input values

Main Effect: Leaf life span

100 150 200 250 300 350

leaf life-span

01

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me

an

NE

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Main Effect: Leaf life span (updated)

100 150 200 250 300 350

leaf life-span

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NE

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Main Effect: Senescence Temperature

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senescence

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NE

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Main Effects: Soil inputs

Soil inputs had been fixed in SDGVM

Output sensitive to sand content, but not clay content, over these ranges

More detailed soil input data are now used

0 5 10 15 20 25

soil clay%

01

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mea

n N

EP

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soil sand%

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mea

n N

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Error discovered in the soil module

NEP

-20

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0 500000 1000000 1500000

NEP

-20

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0 500000 1000000 1500000

Before… After…

Bulk density Bulk density

SDGVM: new sensitivity analysis

We initially analysed uncertainty in the NEP output at a single test site, using rough ranges for the 14 plant functional type parameters

Assumed default (uniform) probability distributions for the parameters

The aim here is to identify the greatest potential sources of uncertainty

160 170 180 190 200

max. age (years)

150

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190

1.8 2.0 2.2 2.4 2.6

water potential (M Pa)

150

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160 180 200

leaf life span (days)

150

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190

0.0035 0.0040 0.0045

minimum growth rate (m)

150

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170

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190

NE

P (

g/m

2 /y)

NE

P (

g/m

2 /y)

Leaf life span 69.1%

Minimum growth rate 14.2%

Water potential 3.4%

Maximum age 1.0%

Plant Functional Type parameters

Uncertainty is driven by just a few key parameters– Maximum age– Leaf life span– Water potential– Minimum growth rate

The next step was to refine the rough probability distributions for these parameters

Elicitation

We elicited formal probability distributions for the key parameters

– based on discussion with Ian Woodward

– representing his uncertainty about their values within the UK

– noting that each really applies as an average over the species actually present in a given pixel

Leaf life span (days) Minimum growth rate (m)

Maximum age (years) Water potential (M Pa)

Leaf life span 13.2%

Maximum age 1%

Water potential 3.3%

Seeding density 10%

Minimum growth rate 64%Leaf life span 69.1%

Minimum growth rate 14.2%

Water potential 3.4%

Maximum age 1.0%

Mean NEP = 174 gCm-2

Std deviation = 14.32 gCm-2

Mean NEP = 163 gCm-2

Std deviation = 12.65 gCm-2

Uniform probability distributions Refined probability distributions

Uncertainty analysis at sample sites

We computed uncertainty analyses on NEP outputs from SDGVM for 9 sites/pixels

NEP

Stockten on the Forest (Nr York)

Milton Keynes

Barnstaple (Devon)

Keswick (Lake District)Lowland (Scotland)

Dartmoor

New Forest (Hampshire)

Kielder

S. Ballater (Scotland)

20 70 120 170 220 270

Uncertainty is clearly substantial, even when we only take account of uncertainty in these parameters

The most important parameter is minimum growth rate, which accounts for typically at least 60% of overall NEP uncertainty– This suggests targeting this parameter for

research Seeding density?

Ongoing work

We need to estimate uncertainty in the overall UK carbon budget

– Developing new theory for aggregating uncertainty over many pixels

Windows software will be made available later this year

www.shef.ac.uk/st1mck