SlideShare a Scribd company logo
1 of 58
Download to read offline
Resilience in Spatial and Urban
Systems 2
John Östh, Aura Reggiani
& Laurie Schintler
Smart People in Smart Cities
Faculty of Economics, Matej Bel University &
Regional Science Academy & The City of
Banská Bystrica
Presentation
• The main idea
• Theoretical framework
– Central Place Theory
– Self-Organization Theory
• Questions
• Data
– Mobile phone data
– GIS data
• Methods
– Setting up a a self-organizing BigData dataset
• Results
• Conclusions
The main idea
• There is an increasing amount of papers
discussing urban and regional resilience.
• However, most times the geography of urban
areas and regions are taken for granted – i.e. the
spatial administrative organization of urban areas
and regions may or may not be mismatching the
functional regions.
• The main idea is to make use self-organization
methods to trace the spatial patterns of the
urban and regional fabric
Central Place Theory
• Invented the study of systems of cities and the
interrelationship between cities.
– Assuming that:
• Space is flat, population and resources evenly
distributed.
• Competition, cost and direction for transport, etc.
identical throughout space
– Concepts
• Threshold – minimum population needed for x
• Range – maximum distance population is willing to
commute
Christaller, W (1933), Die zentralen Orte in Süddeutschland. Gustav Fischer, Jena.
Central Place Theory and Sweden
• Year 1962-1971, a municipality reform redrew the borders
of Sweden
• Central for the process was Christaller and the CPT –
especially the idea about the administrative principle (k=7)
• This means that between 1962 and 1971, all Swedish
municipalities were redrawn so that:
– Central places became municipalities and gained control over
smaller urban areas and rural areas being near.
– Metropolitan areas were set aside due to the administrative
complexity and population size (became too populous to
administer as “local”)
– Some very remote areas were also set aside (threshold not met
but municipalities needed for administrative reasons).
Set aside ~ regions not determined on the basis of threshold and range
Self-Organization theories
”…finding that in certain situations external
forces acting on the system do not
determine/cause its behavior, but instead trigger
an internal and independent process by which
the system spontanelosuly self-organizes itself.”
(Portugali, 2000)
Self-Organization of Regions
• There is a large body of literature working on
self-organization – the amount of self-
organization literature that deals with regions
is smaller.
• However, using a wide definition…
Self-Organization of Regions
• Has been studied for a very long time:
– Von Thünen and the annuluses of economic
activities
– Alonso – bid/rent
– Christaller (1933) and Lösch (1940) – hierarchies
of activities
– Burgess (1925) and Hoyt (1939) – the morphology
of the urban landscape
Self-Organization of Regions
• Self-organizing methods are borrowed from
chemistry, physics, computer science and
math including:
– Fractals and related – i.e. sand pile cities, cellular
automata,…
– Game-related methods (see for instance Schelling)
(further reading Portugali; Batty)
Our approach to Self-Organization
• Starts with inspiration from Kohonen (1982, 2001) and
Self-Organizing Maps – where (at least) two interacting
subsystems are used to reposition neurons using a
spatially restricted and iterative learning process.
• We set up a method where mobile phones are
clustered using an iterative learning process where a
hypothetical gravitational force determines the spatial
realms of influence
• Why is this smart?
– Ai, factual flows, responsive and dynamic (not historical
data)…
Questions
• Overarching questions:
– Since CPT was used for the construction of
Swedish municipalities - can SO methods be
employed to determine CP?
– Can the Self-Organization of Phones be used to
delineate functional regions of today…tomorrow?
– Can regions of scales be constructed?
Data
• Comes from one of the major Swedish mobile
phone operators (among the largest 5)
• Network Driven Records (NDR) stored at the
MIND database at Uppsala University.
• Record all events (silent handovers, text, Internet,
Calls, etc.) and codes each event temporarily to
the nearest 5min interval – 288 temporal units in
24h
• Geography is restricted to mast-level
• Data drawn from a Tuesday in January in 2016
Data
• Used dataset contains:
– The average position of each phone and hour
(allowing for positions between masts)
– Each phone can appear in the dataset 24 times -
this is however unusual – in most cases phones
are idle for at least a few hours per 24h.
• Since we don’t want to introduce spurious locations
(i.e. back-tracking and assuming that phones are at the
same location at time t as at time t-1) – we only
position active phones.
– No data of activity or holder is included
Data
• To make handling of data easier, all average
coordinates are aggregated to the nearest
100m x 100m coordinate. The dataset still
contains of more than 1.6 million unique
locations of which the majority have more
than one phone
Data
• GIS data used to validate our SO-results
– GIS-layers depicting the distribution of urban
areas, municipality borders and of major water-
bodies
Methods: - setting up a SO dataset
• Assumption:
– Each phone exerts gravity.
– The gravitational force is modelled to decay
exponentially
– Decay parameter is derived mathematically using
a HLM design on observed mobility
(see Östh et al. 2016)
– Decay parameter value in this case = 0.00166
– Gravity is used as weight at distance dij
Alternative assumption: using Boolean k-borders (0|1) for the construction of thresholds
proved not to work – images available in the post-presentation section
Methods: - setting up a SO dataset
• The iterations are conducted using EquiPop
– K-nearest neighbour “contextualizer” for very large
datasets.
– In this study we set up EquiPop to retrieve the distance-
decay weighted average Y-coordinate (first) from the k
nearest neighbours, than the X-coordinate (second) from
the k nearest neighbours.
– We manipulate the outdata, constructing a new file with
updated Y and X coordinates and iterate the procedure
– In our studies, iterations were terminated at iteration 20
because there was no significant difference in cluster
mobility from previous state*
*for k = 50 000, the rule was thereafter applied to all ks
Methods: - setting up a SO dataset
• Determining k-values.
– Doubling sequences of k can
roughly be associated with
varying neighbourhood
functions
(Östh 2014; Östh et al. 2015)
– By applying the same
strategy to our SO regions
dataset, CP hierarchies can
be defined crudely
We constructed the following
k-phone regions:
6 250 phones
12 500 phones
25 000 phones
50 000 phones
100 000 phones
Methods – setting up a SO dataset
• Next slides will show how the 20 iterations
clustered the phones in the greater Stockholm
region
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
K = 50 000
Converting points to areas
Creating phone areas surrounding each phone at initial
position is conducted using Thiessen polygon
techniques.
Using each area as a
building-block, and by
keeping trace of its
mobility over
iterations we may
piece together (dissolve)
areas that contribute to
a self-organized cluster
for each k at iteration 20
Results
• First section
– Self-organization of phones compared to the
spatial distribution of urban areas
• Second section
– Comparison of the spatial realms of municipalities
and the spatial realms of phone-origins for the
creation of self-organized clusters.
Self-organization of phones compared to
the spatial distribution of urban areas
Self-organization of phones compared to
the spatial distribution of urban areas
• How many of the phone clusters end up
within urban areas?
– After iteration 20 and k=6250
(the most wide spread), including both clusters
reaching k and not reaching k:
• 8.3% of all phones end up in locations being more than
1000m from the nearest urban area
• 91.7% end up within or close to urban areas.
– Using only clusters reaching k:
• 100% of all phones end up in urban areas.
Since CPT was used for the construction
of Swedish municipalities - can SO
methods be employed to determine CP?
Comparing spatial realms
• The 1962 municipality delineation idea means
that very rural and very urban areas will not
match SO regions.
• Midsized municipalities will display strong
similarities with SO regions
• Can the Self-Organization of Phones be
used to delineate functional regions of
today?
• Can regions of scales be constructed?
Comparing spatial realms
Comparing spatial realms
Comparing spatial realms
Conclusion
• Self-organization of phones can be used to
create functional regions.
• Using phones of specific hours or using the
trajectories of phones could help to construct
different functional regions
Post-presentation section
K = 15 000
K= 2500
K = 500

More Related Content

What's hot

Lewis Dijkstra, DG Regional Policy
Lewis Dijkstra, DG Regional PolicyLewis Dijkstra, DG Regional Policy
Lewis Dijkstra, DG Regional Policy
plan4all
 
Vít Pászto - Rural and urban areas delimitation using fuzzy inference system
Vít Pászto	- Rural and urban areas delimitation using fuzzy inference systemVít Pászto	- Rural and urban areas delimitation using fuzzy inference system
Vít Pászto - Rural and urban areas delimitation using fuzzy inference system
swenney
 
A0311020109
A0311020109A0311020109
A0311020109
theijes
 
Regression_Presentation2
Regression_Presentation2Regression_Presentation2
Regression_Presentation2
Drake Sprague
 

What's hot (10)

Domain research presentation Midterm
Domain research presentation MidtermDomain research presentation Midterm
Domain research presentation Midterm
 
Smart Urban Planning Support through Web Data Science on Open and Enterprise ...
Smart Urban Planning Support through Web Data Science on Open and Enterprise ...Smart Urban Planning Support through Web Data Science on Open and Enterprise ...
Smart Urban Planning Support through Web Data Science on Open and Enterprise ...
 
Lewis Dijkstra, DG Regional Policy
Lewis Dijkstra, DG Regional PolicyLewis Dijkstra, DG Regional Policy
Lewis Dijkstra, DG Regional Policy
 
Vít Pászto - Rural and urban areas delimitation using fuzzy inference system
Vít Pászto	- Rural and urban areas delimitation using fuzzy inference systemVít Pászto	- Rural and urban areas delimitation using fuzzy inference system
Vít Pászto - Rural and urban areas delimitation using fuzzy inference system
 
Caenti Huelva2007 Wp4m Presentation
Caenti Huelva2007 Wp4m PresentationCaenti Huelva2007 Wp4m Presentation
Caenti Huelva2007 Wp4m Presentation
 
GIS in Public Health Research: Understanding Spatial Analysis and Interpretin...
GIS in Public Health Research: Understanding Spatial Analysis and Interpretin...GIS in Public Health Research: Understanding Spatial Analysis and Interpretin...
GIS in Public Health Research: Understanding Spatial Analysis and Interpretin...
 
A0311020109
A0311020109A0311020109
A0311020109
 
Regression_Presentation2
Regression_Presentation2Regression_Presentation2
Regression_Presentation2
 
Measuring regional difference in urban growth of Taipei city (Taiwan, China) ...
Measuring regional difference in urban growth of Taipei city (Taiwan, China) ...Measuring regional difference in urban growth of Taipei city (Taiwan, China) ...
Measuring regional difference in urban growth of Taipei city (Taiwan, China) ...
 
Integrating spatial and thematic data: the CRISOLA case for Malta and the Eur...
Integrating spatial and thematic data: the CRISOLA case for Malta and the Eur...Integrating spatial and thematic data: the CRISOLA case for Malta and the Eur...
Integrating spatial and thematic data: the CRISOLA case for Malta and the Eur...
 

Similar to Resilience in Spatial and Urban Systems 2

geographic information system pdf
geographic information system pdfgeographic information system pdf
geographic information system pdf
Rolan Ben Lorono
 

Similar to Resilience in Spatial and Urban Systems 2 (20)

hkn_talk.ppt
hkn_talk.ppthkn_talk.ppt
hkn_talk.ppt
 
Traffic models and estimation
Traffic models and estimation Traffic models and estimation
Traffic models and estimation
 
GIS and Agent-based modeling: Part 1
GIS and Agent-based modeling: Part 1GIS and Agent-based modeling: Part 1
GIS and Agent-based modeling: Part 1
 
IAOS 2018 - Defining the economic boundaries of cities. A global application,...
IAOS 2018 - Defining the economic boundaries of cities. A global application,...IAOS 2018 - Defining the economic boundaries of cities. A global application,...
IAOS 2018 - Defining the economic boundaries of cities. A global application,...
 
Topological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial SystemsTopological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial Systems
 
Technical Note of EU FP7 MONICA Project: Mobility Prediction as a Service of ...
Technical Note of EU FP7 MONICA Project: Mobility Prediction as a Service of ...Technical Note of EU FP7 MONICA Project: Mobility Prediction as a Service of ...
Technical Note of EU FP7 MONICA Project: Mobility Prediction as a Service of ...
 
L8PDF.pdf
L8PDF.pdfL8PDF.pdf
L8PDF.pdf
 
Presentation A.K Nigam sir (2) (1).pptx
Presentation A.K Nigam sir (2)  (1).pptxPresentation A.K Nigam sir (2)  (1).pptx
Presentation A.K Nigam sir (2) (1).pptx
 
Poster
PosterPoster
Poster
 
GEOGRAPHIC INFORMATION SYSTEM.pptx
GEOGRAPHIC INFORMATION SYSTEM.pptxGEOGRAPHIC INFORMATION SYSTEM.pptx
GEOGRAPHIC INFORMATION SYSTEM.pptx
 
From econophysicsto networks to data science: Estonian network of payments
From econophysicsto networks to data science: Estonian network of paymentsFrom econophysicsto networks to data science: Estonian network of payments
From econophysicsto networks to data science: Estonian network of payments
 
Multimedia Mining
Multimedia Mining Multimedia Mining
Multimedia Mining
 
Carpita metulini 111220_dssr_bari_version2
Carpita metulini 111220_dssr_bari_version2Carpita metulini 111220_dssr_bari_version2
Carpita metulini 111220_dssr_bari_version2
 
Interaktívne webové mapy ako nástroj pre analýzu heterogénnych dát pre krízov...
Interaktívne webové mapy ako nástroj pre analýzu heterogénnych dát pre krízov...Interaktívne webové mapy ako nástroj pre analýzu heterogénnych dát pre krízov...
Interaktívne webové mapy ako nástroj pre analýzu heterogénnych dát pre krízov...
 
Data Communication 1
Data Communication 1Data Communication 1
Data Communication 1
 
Nye forskninsgresultater inden for geo-spatiale data af Christian S. Jensen, AAU
Nye forskninsgresultater inden for geo-spatiale data af Christian S. Jensen, AAUNye forskninsgresultater inden for geo-spatiale data af Christian S. Jensen, AAU
Nye forskninsgresultater inden for geo-spatiale data af Christian S. Jensen, AAU
 
geographic information system pdf
geographic information system pdfgeographic information system pdf
geographic information system pdf
 
Cities: OECD analyses and indicators
Cities: OECD analyses and indicatorsCities: OECD analyses and indicators
Cities: OECD analyses and indicators
 
Remote Sensing and GIS
Remote Sensing and GISRemote Sensing and GIS
Remote Sensing and GIS
 
real life applications of network in graph theory.pptx
real life applications of network in graph theory.pptxreal life applications of network in graph theory.pptx
real life applications of network in graph theory.pptx
 

More from Regional Science Academy

More from Regional Science Academy (20)

Bots Versus Bohemians: Resiliency of Labor Markets in Automated Cities
Bots Versus Bohemians: Resiliency of Labor Markets in Automated CitiesBots Versus Bohemians: Resiliency of Labor Markets in Automated Cities
Bots Versus Bohemians: Resiliency of Labor Markets in Automated Cities
 
A selection of regional science papers important for my career
A selection of regional science papers important for my careerA selection of regional science papers important for my career
A selection of regional science papers important for my career
 
Population and Migration
Population and MigrationPopulation and Migration
Population and Migration
 
Challenges of Big Data Research
Challenges of Big Data ResearchChallenges of Big Data Research
Challenges of Big Data Research
 
Big Data and Big Cities
Big Data and Big CitiesBig Data and Big Cities
Big Data and Big Cities
 
THE CITY IN REGIONAL SCIENCE
THE CITY IN REGIONAL SCIENCETHE CITY IN REGIONAL SCIENCE
THE CITY IN REGIONAL SCIENCE
 
High-tech services to companies in the city: therise of the modern economy in...
High-tech services to companies in the city: therise of the modern economy in...High-tech services to companies in the city: therise of the modern economy in...
High-tech services to companies in the city: therise of the modern economy in...
 
The Geography of Urban Intelligence
The Geography of Urban IntelligenceThe Geography of Urban Intelligence
The Geography of Urban Intelligence
 
Matej Bel - Magnum Decus Hungariae
Matej Bel - Magnum Decus HungariaeMatej Bel - Magnum Decus Hungariae
Matej Bel - Magnum Decus Hungariae
 
Julian Wolpert
Julian Wolpert Julian Wolpert
Julian Wolpert
 
Tourism in the Smart City:a Common place for tourists and residents
Tourism in the Smart City:a Common place for tourists and residentsTourism in the Smart City:a Common place for tourists and residents
Tourism in the Smart City:a Common place for tourists and residents
 
Citiesand their (start-up) communities
Citiesand their (start-up) communitiesCitiesand their (start-up) communities
Citiesand their (start-up) communities
 
BANSKÁ BYSTRICA IN CONTEXT OF SMART URBAN DEVELOPMENT
BANSKÁ BYSTRICA IN CONTEXT OF SMART URBAN DEVELOPMENTBANSKÁ BYSTRICA IN CONTEXT OF SMART URBAN DEVELOPMENT
BANSKÁ BYSTRICA IN CONTEXT OF SMART URBAN DEVELOPMENT
 
Assessing Metropolitan Transportation Investments: Spatial Econometrics-CGE C...
Assessing Metropolitan Transportation Investments: Spatial Econometrics-CGE C...Assessing Metropolitan Transportation Investments: Spatial Econometrics-CGE C...
Assessing Metropolitan Transportation Investments: Spatial Econometrics-CGE C...
 
Regional Brain Drain in the Chilean Economy
Regional Brain Drain in the Chilean EconomyRegional Brain Drain in the Chilean Economy
Regional Brain Drain in the Chilean Economy
 
Resilience in Spatial and Urban Systems
Resilience in Spatial and Urban SystemsResilience in Spatial and Urban Systems
Resilience in Spatial and Urban Systems
 
Creative Capital, Information & Communication Technologies, & Economic Growth...
Creative Capital, Information & Communication Technologies, & Economic Growth...Creative Capital, Information & Communication Technologies, & Economic Growth...
Creative Capital, Information & Communication Technologies, & Economic Growth...
 
Data requirements for smart people in smart cities
Data requirements for smart people in smart citiesData requirements for smart people in smart cities
Data requirements for smart people in smart cities
 
Urban Empires – Cities as Global Rulers in the New Urban World
Urban Empires – Cities as Global Rulers in the New Urban WorldUrban Empires – Cities as Global Rulers in the New Urban World
Urban Empires – Cities as Global Rulers in the New Urban World
 
Geographic Clustering of Craft Breweries in Select American Cities
Geographic Clustering of Craft Breweries in Select American CitiesGeographic Clustering of Craft Breweries in Select American Cities
Geographic Clustering of Craft Breweries in Select American Cities
 

Recently uploaded

1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
QucHHunhnh
 
An Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdfAn Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdf
SanaAli374401
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
heathfieldcps1
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdf
Chris Hunter
 

Recently uploaded (20)

1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
PROCESS RECORDING FORMAT.docx
PROCESS      RECORDING        FORMAT.docxPROCESS      RECORDING        FORMAT.docx
PROCESS RECORDING FORMAT.docx
 
An Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdfAn Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdf
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdf
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
fourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writingfourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writing
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdf
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
psychiatric nursing HISTORY COLLECTION .docx
psychiatric  nursing HISTORY  COLLECTION  .docxpsychiatric  nursing HISTORY  COLLECTION  .docx
psychiatric nursing HISTORY COLLECTION .docx
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
 

Resilience in Spatial and Urban Systems 2

  • 1. Resilience in Spatial and Urban Systems 2 John Östh, Aura Reggiani & Laurie Schintler Smart People in Smart Cities Faculty of Economics, Matej Bel University & Regional Science Academy & The City of Banská Bystrica
  • 2. Presentation • The main idea • Theoretical framework – Central Place Theory – Self-Organization Theory • Questions • Data – Mobile phone data – GIS data • Methods – Setting up a a self-organizing BigData dataset • Results • Conclusions
  • 3. The main idea • There is an increasing amount of papers discussing urban and regional resilience. • However, most times the geography of urban areas and regions are taken for granted – i.e. the spatial administrative organization of urban areas and regions may or may not be mismatching the functional regions. • The main idea is to make use self-organization methods to trace the spatial patterns of the urban and regional fabric
  • 4. Central Place Theory • Invented the study of systems of cities and the interrelationship between cities. – Assuming that: • Space is flat, population and resources evenly distributed. • Competition, cost and direction for transport, etc. identical throughout space – Concepts • Threshold – minimum population needed for x • Range – maximum distance population is willing to commute Christaller, W (1933), Die zentralen Orte in Süddeutschland. Gustav Fischer, Jena.
  • 5. Central Place Theory and Sweden • Year 1962-1971, a municipality reform redrew the borders of Sweden • Central for the process was Christaller and the CPT – especially the idea about the administrative principle (k=7) • This means that between 1962 and 1971, all Swedish municipalities were redrawn so that: – Central places became municipalities and gained control over smaller urban areas and rural areas being near. – Metropolitan areas were set aside due to the administrative complexity and population size (became too populous to administer as “local”) – Some very remote areas were also set aside (threshold not met but municipalities needed for administrative reasons). Set aside ~ regions not determined on the basis of threshold and range
  • 6. Self-Organization theories ”…finding that in certain situations external forces acting on the system do not determine/cause its behavior, but instead trigger an internal and independent process by which the system spontanelosuly self-organizes itself.” (Portugali, 2000)
  • 7. Self-Organization of Regions • There is a large body of literature working on self-organization – the amount of self- organization literature that deals with regions is smaller. • However, using a wide definition…
  • 8. Self-Organization of Regions • Has been studied for a very long time: – Von Thünen and the annuluses of economic activities – Alonso – bid/rent – Christaller (1933) and Lösch (1940) – hierarchies of activities – Burgess (1925) and Hoyt (1939) – the morphology of the urban landscape
  • 9. Self-Organization of Regions • Self-organizing methods are borrowed from chemistry, physics, computer science and math including: – Fractals and related – i.e. sand pile cities, cellular automata,… – Game-related methods (see for instance Schelling) (further reading Portugali; Batty)
  • 10. Our approach to Self-Organization • Starts with inspiration from Kohonen (1982, 2001) and Self-Organizing Maps – where (at least) two interacting subsystems are used to reposition neurons using a spatially restricted and iterative learning process. • We set up a method where mobile phones are clustered using an iterative learning process where a hypothetical gravitational force determines the spatial realms of influence • Why is this smart? – Ai, factual flows, responsive and dynamic (not historical data)…
  • 11. Questions • Overarching questions: – Since CPT was used for the construction of Swedish municipalities - can SO methods be employed to determine CP? – Can the Self-Organization of Phones be used to delineate functional regions of today…tomorrow? – Can regions of scales be constructed?
  • 12. Data • Comes from one of the major Swedish mobile phone operators (among the largest 5) • Network Driven Records (NDR) stored at the MIND database at Uppsala University. • Record all events (silent handovers, text, Internet, Calls, etc.) and codes each event temporarily to the nearest 5min interval – 288 temporal units in 24h • Geography is restricted to mast-level • Data drawn from a Tuesday in January in 2016
  • 13. Data • Used dataset contains: – The average position of each phone and hour (allowing for positions between masts) – Each phone can appear in the dataset 24 times - this is however unusual – in most cases phones are idle for at least a few hours per 24h. • Since we don’t want to introduce spurious locations (i.e. back-tracking and assuming that phones are at the same location at time t as at time t-1) – we only position active phones. – No data of activity or holder is included
  • 14. Data • To make handling of data easier, all average coordinates are aggregated to the nearest 100m x 100m coordinate. The dataset still contains of more than 1.6 million unique locations of which the majority have more than one phone
  • 15. Data • GIS data used to validate our SO-results – GIS-layers depicting the distribution of urban areas, municipality borders and of major water- bodies
  • 16. Methods: - setting up a SO dataset • Assumption: – Each phone exerts gravity. – The gravitational force is modelled to decay exponentially – Decay parameter is derived mathematically using a HLM design on observed mobility (see Östh et al. 2016) – Decay parameter value in this case = 0.00166 – Gravity is used as weight at distance dij Alternative assumption: using Boolean k-borders (0|1) for the construction of thresholds proved not to work – images available in the post-presentation section
  • 17. Methods: - setting up a SO dataset • The iterations are conducted using EquiPop – K-nearest neighbour “contextualizer” for very large datasets. – In this study we set up EquiPop to retrieve the distance- decay weighted average Y-coordinate (first) from the k nearest neighbours, than the X-coordinate (second) from the k nearest neighbours. – We manipulate the outdata, constructing a new file with updated Y and X coordinates and iterate the procedure – In our studies, iterations were terminated at iteration 20 because there was no significant difference in cluster mobility from previous state* *for k = 50 000, the rule was thereafter applied to all ks
  • 18. Methods: - setting up a SO dataset • Determining k-values. – Doubling sequences of k can roughly be associated with varying neighbourhood functions (Östh 2014; Östh et al. 2015) – By applying the same strategy to our SO regions dataset, CP hierarchies can be defined crudely We constructed the following k-phone regions: 6 250 phones 12 500 phones 25 000 phones 50 000 phones 100 000 phones
  • 19. Methods – setting up a SO dataset • Next slides will show how the 20 iterations clustered the phones in the greater Stockholm region
  • 20. K = 50 000
  • 21. K = 50 000
  • 22. K = 50 000
  • 23. K = 50 000
  • 24. K = 50 000
  • 25. K = 50 000
  • 26. K = 50 000
  • 27. K = 50 000
  • 28. K = 50 000
  • 29. K = 50 000
  • 30. K = 50 000
  • 31. K = 50 000
  • 32. K = 50 000
  • 33. K = 50 000
  • 34. K = 50 000
  • 35. K = 50 000
  • 36. K = 50 000
  • 37. K = 50 000
  • 38. K = 50 000
  • 39. K = 50 000
  • 40. K = 50 000
  • 41. K = 50 000
  • 42. K = 50 000
  • 43. K = 50 000
  • 44. K = 50 000
  • 46. Creating phone areas surrounding each phone at initial position is conducted using Thiessen polygon techniques. Using each area as a building-block, and by keeping trace of its mobility over iterations we may piece together (dissolve) areas that contribute to a self-organized cluster for each k at iteration 20
  • 47. Results • First section – Self-organization of phones compared to the spatial distribution of urban areas • Second section – Comparison of the spatial realms of municipalities and the spatial realms of phone-origins for the creation of self-organized clusters.
  • 48. Self-organization of phones compared to the spatial distribution of urban areas
  • 49. Self-organization of phones compared to the spatial distribution of urban areas • How many of the phone clusters end up within urban areas? – After iteration 20 and k=6250 (the most wide spread), including both clusters reaching k and not reaching k: • 8.3% of all phones end up in locations being more than 1000m from the nearest urban area • 91.7% end up within or close to urban areas. – Using only clusters reaching k: • 100% of all phones end up in urban areas. Since CPT was used for the construction of Swedish municipalities - can SO methods be employed to determine CP?
  • 50. Comparing spatial realms • The 1962 municipality delineation idea means that very rural and very urban areas will not match SO regions. • Midsized municipalities will display strong similarities with SO regions • Can the Self-Organization of Phones be used to delineate functional regions of today? • Can regions of scales be constructed?
  • 54. Conclusion • Self-organization of phones can be used to create functional regions. • Using phones of specific hours or using the trajectories of phones could help to construct different functional regions
  • 56. K = 15 000