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K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Offi

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Page 1: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

K S Rajan

Institute of Industrial Science,

University of Tokyo

IGBP-II LAND Research Program

LAND SC-TT MemberScientific Officer, LUCC Focus 2 Office

Page 2: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Current Structure of IGBP

Page 3: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

New Structure of IGBP (2003~ )

GCTELUCC

Page 4: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

New Joint Projects

START

Page 5: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Objective of the LAND Project:

To identify changes in the human-environment system and critical thresholds of vulnerability at local, regional and global scales of the system.

Page 6: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Fundamental Principles for LAND research

First, integrating for Transition to sustainability‘functionalities’ or characteristics of the Earth System

• feedbacks (processes which amplify or dampen aspects of the dynamics of the planetary life-support system),

• teleconnections (linkages between processes across space), • switch and choke points on the earth’s surface (control

points).

Second, Integrative with other sciences, as possibleThird, a fruitful platform of investigations - exploration of pathways (or trajectories) of land change

Page 7: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Major Concepts to consider

Ecosystems as life-support systems Pathways of change (trajectory analysis)People and ecosystems at risk (vulnerability )Methodological issues

Coupled (socio-economic and biophysical) models Linked, geo-referenced and long-term databases of socio-economic and biophysical variables Comparative regional assessments:

Page 8: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

THE LAND ProjectLand-Centric integrative research programmeGuiding Questions of the Research Agenda are:

1. What are the dynamics and drivers of variability and change in human-environment systems?

2. How is the provision of environmental goods and services affected by changes in human-environment systems?

3. What are the characteristics and dynamics of vulnerability in human-environment systems?

Page 9: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Focal Research Themes

Agents, Drivers And Processes Of Terrestrial Human Environmental Change Ecosystem Goods And Services Vulnerability Of Terrestrial Human Environment Systems To Global Change

Page 10: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Research Questions (1)How do economic growth, globalization, governance, and other socio-economic processes interact to drive changes in land use and the functioning of the land system? How does the changing spatial distribution of land use, urbanization, changing populations, and settlement patterns to drive changes in the land system, and in land-atmosphere, land-ocean exchanges?How do management of land systems and disturbances drive changes in the land system, and its interaction with the atmosphere and oceans?

Page 11: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Research Questions (2)How does the legacy of historical management and disturbance, drive changes in the land system, and its interactions with the atmosphere and oceans now and in the future?How do environmental changes and human activities drive changes in biodiversity and how do these effects feed forward to cause changes in ecosystem functioning and properties?How does the changing physical and chemical atmosphere interact with the land to drive changes in land systems, land-atmosphere and land ocean exchanges?

Page 12: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Focus on Integrated Research Activities:

Agriculture impacts and feedbacks• An integrative systems analysis• Land scarcity and degradation• Impacts of the inputs and flow

 MEGA-BASINS: How do biophysical and human-decision interactions control vulnerability of mega-basins?

• Water Resources – Availability, Development and Management

• Water-Food-Economic Production System Interactions• Upstream-Downstream Links (Material Flows)

Page 13: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Agricultural Land Use Modeling and

Irrigation Demands

Page 14: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Spatial-EPIC Overall Framework

Temperature

RadiationPrecipitatio

n

Tillage

Layered Soil Pedon

Percolation

RunoffSediment

Chemicals-Dissolved-Adsorbed

WindEvapotransipration

Physical Components of the Model

Page 15: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Using Crop Models and GIS to Study the Global Irrigation Water Requirements

Modelling for Crop Growth

EPIC

EPIC Model EPIC ParametersSimulation

IE

Logit Model

Land use pattern

and irrigation water use

Combination for Main Crops

Estimate of

planting and

harvest date

Sample data of Land use and choices

RS, GPS and other

Investigated data

Internationalmarket/trade

model

Data handling(Interpolating, analysis)

Export of grid data

Maps(Climate,Soil, Terrain) and socio-economic data (Population, income, …)

GIS

Creating of spatial database

Flowchart of GIS-EPIC

Page 16: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Using Crop Models and GIS to Study the Global Irrigation Water Requirements

Estimation of Land Productivity

Rice Yields(T/HA)

Maize Yields

(T/HA)

Page 17: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Using Crop Models and GIS to Study the Global Irrigation Water Requirements

Comparing the wheat crop yields simulated by EPIC with FAO statistic data

0.0

1.0

2.0

3.0

4.05.0

6.0

7.0

8.0

9.0

10.0

0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0

Simulated wheat yield in 2000 Statistic wheat yield in 2000

T/HA

Comparing the rice crop yields simulated by EPIC with FAO statistic data

0.0

2.0

4.0

6.0

8.0

10.0

12.0

14.0

0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 11.0 12.0 13.0

Simulated rice yield in 2000 Statistic rice yield in 2000 (T /HA)

T/HA

T/HA

Comparing the maize crop yields simulated by EPIC with FAO statistic data

0.0

2.0

4.0

6.0

8.0

10.0

12.0

0.0 1.0 2.0 3.0 4.0 5.0 6.0 7.0 8.0 9.0 10.0 11.0

Simulated maize yield in 2000 Statistic maize yield in 2000 (T /HA)

T/HA

T/HA

Comparing the soybean crop yields simulated by EPIC with FAO statistic data

0.0

1.0

2.0

3.0

4.0

0.0 0.5 1.0 1.5 2.0 2.5 3.0 3.5 4.0

Simulated soybean yield in 2000 Statistic soybean yield in 2000

T/HA

Estimation of Land Productivity

Page 18: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Spatial-EPIC Results for India - RiceFig. RICE Validation

R2 = 0.2123

0.0

1.0

2.0

3.0

0.0 1.0 2.0 3.0 4.0

Reported District Average

Sim

ula

ted

Dis

tric

t A

vera

ge

1990

Linear (1990)

Fig. State Wise Comaprision of Rice Crop Yiled (t/ha)

0.0

0.5

1.0

1.5

2.0

2.5

3.0

3.5

Andhra P

rades

h

Assam

Bihar

Gujrat

Harya

na

Jam

mu &

Kas

hmir

Karnat

aka

Keral

a

Mad

hya P

rades

h

Mah

aras

tra

Orissa

Punjab

Tamil

Nadu

Uttar P

rades

h

Wes

t Ben

gal

Ave

rag

e R

epo

rted

Yie

ld (

t/h

a)

0.0

0.5

1.0

1.5

2.0

2.5

3.0

Ave

rage

Sim

ulat

ed Y

ield

(t/h

a)

Actu_Rice95

Sim_Rice95

Page 19: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Impact of Climate Change Scenario over RICE Crop

Page 20: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

-30 -20 -10 0 10 20

% increase/decrease in yield than of present condition

+2Deg +2Deg+25%rain -2Deg-25%rain -25%Rain

Impact of Climate Change Scenario over RICE Crop

Page 21: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Source: Fukui, 1993

An Example of the INTERACTIONS at the LOCAL Scale

Page 22: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Earth (Environment ) Resource System

(Land/ Water, Ecosystem)

Agricultural Land Use(Crop Choice)

Urban Land Use

Pastures/Grassland

Other Land uses

Farmer

Land Owner

Micro-sphere of Decision Making

Market Dynamics Cumulative Changesin Environment

Changes in Life Style

Macro-sphere of Decision Making

Policy Directions Migrations

Short termLong Term

Water Supply

Page 23: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Environment / Resource System

MICROSub-Models

SPATIAL URBAN EXPANSION MODEL

BIO-PHYSICAL CROP MODEL

AGRO-ECONOMIC Sub-Model

Behavioral Models

Land UserLand Use Conversion - within Agriculture

MigrationAgent Decision Sub-Model

Model Structure of AGENT-LUC

PopulationPrice Supply

Regulations

National Scenario Crop Demand Estimation MACROSub-Model

International Market

Page 24: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office
Page 25: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Examples of the Micro-Simulation Model Results [1]

Legend

Income Map of Nan Province

Page 26: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Urban Centre

No. of Households in Each Grid : 60LU: Paddy(4); Maize(1,6,7,8); Paddy+Maize(rest)

Examples of the Micro-Simulation Model Results [2]

Page 27: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Income Graph (Around Urban Center)

-400000

-200000

0

200000

400000

600000

800000

1 1 2 2 3 3 4 4 5 5 6 6 7 7 8 8 9 9 10 10 11 11

in B

ahts

Revenue Gen_Cost On_Farm_Inc Off_Farm_Inc Gross_Inc

Page 28: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

No. of Households in Each Grid : 83(1,2); 117(rest)LU: Paddy(all grid points)

Examples of the Micro-Simulation Model Results [3]

Page 29: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Income Graph (Far from Urban Center)

-400000

-200000

0

200000

400000

600000

800000

1 1 2 2 3 3 4 4 5 5 6 6 7 7 8 8 9 9 10 10 11 11in B

ahts

Revenue Gen_Cost On_Farm_Inc Off_Farm_Inc Gross_Inc

Fixed CostVariable Cost - Land Based - Yield Based

Page 30: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

USGS Land cover map

Web-DSS Project

Page 31: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Define discharge observation point

Web-DSS Project

Page 32: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

@irri.raw0:other, 1:unirrigated2: irrigated 3 outside

Scenario-1(no change)

Scenario2All agricultural lands changeto irrigated lands.

Scenario3All lands changeto irrigated lands.

Web-DSS Project

Page 33: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

0

10000

20000

30000

40000

50000

60000

70000

80000

1 2 3 4 5 6 7 8 9 10 11 12

シナリオ1シナリオ2シナリオ3

万立米/日

Monthly discharge at point C

Month

Scenario1Scenario2Scenario3

x 10.000 m3

Web-DSS Project

Page 34: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

0

20000

40000

60000

80000

100000

120000

140000

160000

1 2 3 4 5 6 7 8 9 10 11 12

シナリオ1シナリオ2シナリオ3

万立米/日

Monthly discharge at point A

Month

Scenario1Scenario2Scenario3

x 10.000 m3 Web-DSS Project

Page 35: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Sponsored by START Will cover 3 Sub-regions

South Asia South East Asia East Asia

MAIRS - Monsoon Asia Integrated Regional Studies

Page 36: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Monsoon Asia Integrated Regional Studies

1. Emissions/Energy/industrial transformations – 2. Climate-related Disasters and Hazards

– floods, droughts, storms, fires, GLOFs

3. Water (fresh and salt), catchments and coasts 4. Food, Fiber 5. Human health 6. Biodiversity and ecosystem change + Ecosystem services

Cross-Cutting Themes : Land Use; Monsoon climate system Resilience;

Adaptive capacity; Ecosystem services

Page 37: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Water-Food Theme

1. How will changes in land-use and cover, atmospheric emissions, and ocean productivity in the Asian Monsoon region interact with the global hydrological cycle?

2. What will be the consequences of changes in land-use, and modification of rivers for ground water, riverine, coastal and marine environments?

3. Will these changes amplify vulnerability to (the natural and man-made disasters like) floods and droughts

–Food Production Systems

Page 38: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Vulnerability Theme

How will changes in the AM, especially the frequency and intensity of extreme event challenges human responses?

How do rapid economic and social changes influence vulnerability to hazards?

How many changes in frequency/severity of biological invasions, pests, weeds and diseases affect human well-being?

How can human-decision making be improved to reduce disasters under both current and future environmental conditions?

Page 39: K S Rajan Institute of Industrial Science, University of Tokyo IGBP-II LAND Research Program LAND SC-TT Member Scientific Officer, LUCC Focus 2 Office

Thank You !!