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A GIS methodology for defining the
       Metropolitan Areas
         The Italian Case Study




               Mario Boffi, Matteo Colleoni, Pietro Palvarini
                               Università di Milano Bicocca
               Dipartimento di Sociologia e Ricerca Sociale
Definition of the Metropolitan Areas
• Proposal based on the spatial distribution of some
  metropolitan functions
• Use of GIS
• Scale: Census tracts data (380.000+)

Statistical techniques
• Density analysis (Kernel model)
• Factor analysis

Data
• Population Census 2001 (residents & commuters)
• Economic Census 2001 (employees)
Metropolitan functions and indicators
Class              Metropolitan function                                  Indicator
Residence          1. Dwelling                                            Population
                   2. Manufacturing activities                            Employees
                   3. Finance and insurance activities                    Employees
Employment         4. Real estate activities                              Employees
                   5. Information and communication                       Employees
                   6. Professional, scientific and technical activities   Employees
                   7. Commerce                                            Employees
Commercial and     8. Accommodation and catering                          Employees
leisure services   9. Associationism                                      Employees
                   10. Recreational, cultural and sports activities       Employees
                   11. Health                                             Employees
                   12. Secondary education                                Employees
Services of        13. University education                               Employees
collective
interest           14. Public administration                              Employees
                   15. Social assistance                                  Employees
                   16. Transport                                          Employees
Flows              17. Mobility of persons                                Journeys
Metropolitan
    Italy
Metro-Area of
    Milan




                Metro-Area of
                   Veneto
Metro-Area of
    Turin




                Metro-Area of
                  Bologna
Metro-Area of
  Florence




                Metro-Area of
                   Rome
Metro-Area of
   Naples




                Metro-Area of
                    Bari
Area (Km2)

8.054                                   Metro areas
                                            9%

                                      Non-metro areas
        5.820
                                           91%



                  2.962
                           2.694    2.608
                                             1.908
                                                        1.284
                                                                933



Milan   Veneto   Bologna Florence   Naples   Rome       Turin   Bari
Indicator 1 - Density of population
                           (residents/Km2)

1.726
         1.643


                 1.306
                         1.169

                                 935

                                           665
                                                   566       552


                                                                      118


Naples   Rome    Turin   Bari    Milan   Florence Bologna   Veneto   Rest of
                                                                      Italy
Indicator 2 - Employment
                         (employees/Km2)


293

        236
               225


                        154
                                 141       140      134     128




                                                                     15

Turin   Rome   Milan   Bologna Florence   Naples   Veneto   Bari   Rest of
                                                                    Italy
Indicator 3 - Commercial and leisure services
                         (employees/Km2)



 98




        62
                55
                         45
                                40       39
                                                  34       31


                                                                     5

Rome   Turin   Naples   Milan   Bari   Florence Bologna   Veneto   Rest of
                                                                    Italy
Indicator 4 - Services of collective interest
                           (employees/Km2)


203




          121
                  112

                          83
                                  73
                                           60       57
                                                             45

                                                                       8

Rome     Naples   Turin   Bari   Milan   Florence Bologna   Veneto   Rest of
                                                                      Italy
Indicator 5 - Density of flows
                          (Km travelled/Km2)


6.075




        2.749
                 2.541    2.502

                                  1.725
                                           1.426   1.329     1.266

                                                                      465


Rome    Turin    Naples   Milan   Bari    Florence Veneto   Bologna   Italy
Different patterns of mobility

    Commuters per 100 residents

      22,6
                        18,5
                                            Km per commuter
                                                          13,3

                                        10,6



Total metropolitan      Italy
       areas




                                  Total metropolitan      Italy
                                         areas
Density of flows in Milan M.A.



         Varese    Como         Bergamo




Novara                 Milan                   Brescia




                    Pavia
Mario Boffi – mario.boffi@unimib.it
 Matteo Colleoni – matteo.colleoni@unimib.it
Pietro Palvarini – p.palvarini@campus.unimib.it



Laboratorio PeriMetro (Periferie Metropolitane)

 Dipartimento di Sociologia e Ricerca Sociale
         Università di Milano Bicocca

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Boffi, Colleoni & Palvarini - input2012

  • 1. A GIS methodology for defining the Metropolitan Areas The Italian Case Study Mario Boffi, Matteo Colleoni, Pietro Palvarini Università di Milano Bicocca Dipartimento di Sociologia e Ricerca Sociale
  • 2. Definition of the Metropolitan Areas • Proposal based on the spatial distribution of some metropolitan functions • Use of GIS • Scale: Census tracts data (380.000+) Statistical techniques • Density analysis (Kernel model) • Factor analysis Data • Population Census 2001 (residents & commuters) • Economic Census 2001 (employees)
  • 3. Metropolitan functions and indicators Class Metropolitan function Indicator Residence 1. Dwelling Population 2. Manufacturing activities Employees 3. Finance and insurance activities Employees Employment 4. Real estate activities Employees 5. Information and communication Employees 6. Professional, scientific and technical activities Employees 7. Commerce Employees Commercial and 8. Accommodation and catering Employees leisure services 9. Associationism Employees 10. Recreational, cultural and sports activities Employees 11. Health Employees 12. Secondary education Employees Services of 13. University education Employees collective interest 14. Public administration Employees 15. Social assistance Employees 16. Transport Employees Flows 17. Mobility of persons Journeys
  • 4. Metropolitan Italy
  • 5. Metro-Area of Milan Metro-Area of Veneto
  • 6. Metro-Area of Turin Metro-Area of Bologna
  • 7. Metro-Area of Florence Metro-Area of Rome
  • 8. Metro-Area of Naples Metro-Area of Bari
  • 9. Area (Km2) 8.054 Metro areas 9% Non-metro areas 5.820 91% 2.962 2.694 2.608 1.908 1.284 933 Milan Veneto Bologna Florence Naples Rome Turin Bari
  • 10. Indicator 1 - Density of population (residents/Km2) 1.726 1.643 1.306 1.169 935 665 566 552 118 Naples Rome Turin Bari Milan Florence Bologna Veneto Rest of Italy
  • 11. Indicator 2 - Employment (employees/Km2) 293 236 225 154 141 140 134 128 15 Turin Rome Milan Bologna Florence Naples Veneto Bari Rest of Italy
  • 12. Indicator 3 - Commercial and leisure services (employees/Km2) 98 62 55 45 40 39 34 31 5 Rome Turin Naples Milan Bari Florence Bologna Veneto Rest of Italy
  • 13. Indicator 4 - Services of collective interest (employees/Km2) 203 121 112 83 73 60 57 45 8 Rome Naples Turin Bari Milan Florence Bologna Veneto Rest of Italy
  • 14. Indicator 5 - Density of flows (Km travelled/Km2) 6.075 2.749 2.541 2.502 1.725 1.426 1.329 1.266 465 Rome Turin Naples Milan Bari Florence Veneto Bologna Italy
  • 15. Different patterns of mobility Commuters per 100 residents 22,6 18,5 Km per commuter 13,3 10,6 Total metropolitan Italy areas Total metropolitan Italy areas
  • 16. Density of flows in Milan M.A. Varese Como Bergamo Novara Milan Brescia Pavia
  • 17. Mario Boffi – mario.boffi@unimib.it Matteo Colleoni – matteo.colleoni@unimib.it Pietro Palvarini – p.palvarini@campus.unimib.it Laboratorio PeriMetro (Periferie Metropolitane) Dipartimento di Sociologia e Ricerca Sociale Università di Milano Bicocca