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An Introduction to Agent-Based Modeling for Geographic Processes

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Presentation on theme: "An Introduction to Agent-Based Modeling for Geographic Processes"— Presentation transcript:

1 An Introduction to Agent-Based Modeling for Geographic Processes
Anthony Jjumba, PhD GeoPath Research and Consulting Prince George, BC, Canada

2 Outline Complex Systems Agent Based Modeling Prototype ABM
Discussion and Questions

3 Complex Systems Geography: people, places and environments.
Spatial and temporal dimensions Relationships and interactions Patterns and processes Complex Systems: the collective behaviors of the parts gives rise to properties that can hardly be inferred from the properties of the constituent parts. Complexity Science as a field of study “The whole is more than the sum of its parts” – Aristotle

4 Complex Systems Examples of complex systems A colony of ants
A transportation system The economy The human body A 1980 Chevy truck? A school of fish? Space shuttling? Raising a family? A rolling ball?

5 Complex Systems Modeling Complex Systems
Reductionism Holism The properties of the system could be explained in terms of its parts. The whole system cannot be determined or explained by its component parts alone. The understanding of the parts leads to the understanding of the whole To understand the whole, we must understand the relationships between the parts in the system. Parts Relationships

6 Complex Systems Modeling approaches take on combination of both the Parts and the Relationships Consideration of feedback loops Positive feed-back (Reinforcing) Negative feed-back (Regulative) Examples: A rolling ball, predator-prey dynamics Feed-back loops can make systems counter-intuitive or unclear New highways into cities tend to lead to more traffic jams. Initially it decreases the waiting times but this in turn increases the desirability of driving a car.

7 Agent Based Modeling Modeling Complex Systems
Cause and effect are not always clear, e.g. ecosystem Non-linear relationships, emergence, self-organization, bifurcations Global coherent patterns emerge out of local interactions. Examples: flocking behavior of birds, swarming behavior of fish Simple local rules 'separation' (avoidance of crowding, or short-range repulsion) 'alignment' (steering towards the average heading of neighbors) 'cohesion' (steering towards the average position of neighbors)

8 Agent Based Modeling Modeling Complex Systems
Bottom-up modeling approaches Cellular Automata Grid of cells Cell states Neighborhood Transition rules Time steps Agent-based modeling Neighborhoods of influence Individual actions and interactions Differ from spatial interaction models (gravity, location allocation) Static, zone aggregate

9 Agent Based Modeling Cellular Automata Active Cell Neighborhood Cell
Inactive Cell K. Clarke

10 Agent Based Modeling

11 Agent Based Modeling Complex Systems Modeling Agent-based Modeling
Focused on decisions and actions of individuals Adds behavioral realism Solves the immobility of the cells Environment Sensors Effectors set get Context Analysis Processing Data Agent listener objects

12 Agent Based Modeling Crooks, A. et al

13 Agent Based Modeling Perez, L. et al

14 Agent Based Modeling Heppenstall, A. et al

15 Agent Based Modeling Schelling’s Model

16 Agent Based Modeling Riots in Kibera Slum Crooks, A. et al

17 ABM – Urban Systems Modeling land use patterns in the city
Von Thunen’s regional land use model (1826) The Burgess concentric model (1925) Urban Dynamics (Forrester, 1969) is used in reference to the multiplicity of interacting systems in a city: land use, transport system, employment, housing

18 ABM – Urban Systems “Cities [are] problems in organized complexity, like the life sciences.  They present situations in which half a dozen or several dozen quantities are all varying simultaneously and subtly interconnected ways …The variables are many but they are not helter skelter; they are interrelated into an organic whole.” – Jane Jacobs (1961) The city is a complex system Relationships and interactions between different components Continuous change makes the city a dynamic environment

19 ABM – Urban Systems Urban growth is characterised by population increase, redevelopment, expansion, densification One concern for urban planners is to forecast future population growth and plan for possible changes in land use patterns Often urban planning is top-down and sector based housing, transportation, land-use

20 ABM – Urban Systems Significant components in a city Urban Population
Housing development Infrastructure for services Planning Regulations Expression of the city’s vision and priorities Land use, Sustainability Transportation Accessibility Mobility Urban Economy Employment and Income

21 ABM – Urban Systems Representing the city Conceptualization
Geographic Space Key Actors/Stakeholders Fusion of data Physical (L1, L2), Social, Perceptual (L3) Spaces to Derive Place Abstractions (L4) for Different Locations (N1, N2). Crooks, A. et al

22 ABM – Urban Systems Urban landscape is composed of irregular spatial units

23 ABM – Urban Systems A regular grid is inappropriate for high resolution modeling Building on work by Stevens and Dragicevic (2007) Agent-based modeling using irregular spatial tessellations

24 ABM – Urban Systems Understanding the city for Transportation modeling
Household mobility Forecast of future urban land use patterns Tools that support planning

25 Prototype ABM Develop an agent-based model for the simulation of urban growth Show results from testing the model on data from one of the neighbourhoods the City of Chilliwack, BC Results of sensitivity analysis to see: how the changes in social and economic conditions of households affect the land use patterns if changes in the geometry of the cadastral parcels influence land use patterns

26 Prototype ABM Agent iCity an Agent-based Model
Drivers of urban land-use change Planning Agent Implementation of planning policies for urban growth management Policy based zoning restrictions

27 Prototype ABM Agent iCity an Agent-based Model
Drivers of urban land-use change Households size, income proximity to preferable land use classes neighborhood characteristics Move to empty units that are located in good neighborhoods

28 Prototype ABM Agent iCity an Agent-based Model
Drivers of urban land-use change Developer Identifies most profitable locations using the proximity score Industrial and Commercial Firms Employment in the City

29 Prototype ABM JUMP Plug-in Agents' Module Subdivision Module
Repast Executor Module Neighbourhood Analyser Agent iCity Planner Industrial Households Developer Retailer Subdivision to cadastral parcels Subdivision to city blocks

30 Prototype ABM

31 Prototype ABM Geometrical transformation for the parcels

32 Prototype ABM Agent iCity Settings Monthly time intervals
Developer 6 months Planner yearly Random distribution for household income Uniform distribution for number of people per household Random distribution for property value Uniform distribution for number of rooms in a dwelling Planning Policy to be implemented

33 Prototype ABM Different Scenarios for urban growth Scenario 1
No Urban Planning Policy Scenario 2 Agricultural Land Preservation Policy Scenario 3 Urban Containment Policy Other parameters Household Income: $80,000 Property Value: $250,000

34 SCENARIO 1

35 0.5 1.0 Km t=0

36 0.5 1.0 Km t=12

37 0.5 1.0 Km t=24

38 0.5 1.0 Km t=36

39 0.5 1.0 Km t=48

40 0.5 1.0 Km t=60

41 Scenario 2

42 0.5 1.0 Km t=0

43 0.5 1.0 Km t=12

44 0.5 1.0 Km t=24

45 0.5 1.0 Km t=36

46 0.5 1.0 Km t=48

47 0.5 1.0 Km t=60

48 Scenario 3

49 0.5 1.0 Km t=0

50 0.5 1.0 Km t=12

51 0.5 1.0 Km t=24

52 0.5 1.0 Km t=36

53 0.5 1.0 Km t=48

54 0.5 1.0 Km t=60

55 Sensitivity Analysis Exploration of the variations in:
Household income Property value

56 Sensitivity Analysis Variation in Household Income Low Income
Property value: $250,000 High Income Income: $110,000 Property value: $250,000 t=24 t=24

57 Sensitivity Analysis Variation in Property Value Low Value High Value
Income: $80,000 Property value: $250,000 High Value Income: $80,000 Property value: $800,000 t=24 t=24

58 Sensitivity Analysis Sensitivity to Multiple Runs + = Run 1 Run 2
Binary Overlay .

59 t=0

60 t=12

61 t=24

62 t=36

63 t=48

64 t=60

65 average

66 Prototype ABM The modular nature of the model provides the ability to extend and add improvements in the future Model can be incorporated into spatial decision support system Cadastral parcels are easier to explain VS raster data Subdivision algorithm is a new contribution with respect to existing modeling algorithms Further work is need to incorporate a complete set of actors.

67 Outlook Performing model testing, particularly calibration & validation Interdisciplinary/Institutional collaboration Increased computation power, proliferation of data collection sensors, cheaper storage point to increase application

68 Thank You


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