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Brazil: Goiânia

Contents: Goiânia

Municipality


1,302,001 Population [2010] – census

1,437,366 Population [2022] – census

729.0km² Area

1,972/km² Density [2022]

Contents: Subdistricts

The population of the subdistricts of Goiânia by census years.

NameStatusPopulation
Census
2000-08-01
Population
Census
2010-08-01
Population
Census
2022-08-01
AeroportoMunicipal Subdistrict11,63810,7218,409
Aeroporto Internacional Santa GenovevaMunicipal Subdistrict2264829
AeroviáriosMunicipal Subdistrict16,07614,59211,607
Alto da Glória e RedençãoMunicipal Subdistrict11,68314,98017,371
Autódromo ou Parque LozandesMunicipal Subdistrict4596,55110,699
Bairro FelizMunicipal Subdistrict11,98311,71711,233
Baliza-ItaipuMunicipal Subdistrict21,21734,34647,015
BuenoMunicipal Subdistrict29,98838,58453,221
CampinasMunicipal Subdistrict24,15420,97516,021
Campus Universitário/Conjunto ItatiaiaMunicipal Subdistrict10,05412,76616,560
Cândida de Morais/Maria DilceMunicipal Subdistrict25,27828,47429,665
CapuavaMunicipal Subdistrict20,50322,14620,551
CaravelasMunicipal Subdistrict6,62817,58920,639
CEASA/Aldeia do ValeMunicipal Subdistrict4331,8502,330
Celina Park/Recreio dos FuncionáriosMunicipal Subdistrict19,39034,96954,004
CentralMunicipal Subdistrict23,23323,10217,728
Chácaras São JoaquimMunicipal Subdistrict5,12812,30816,644
Cidade JardimMunicipal Subdistrict40,92239,66728,580
CoimbraMunicipal Subdistrict10,8959,3447,424
Criméia LesteMunicipal Subdistrict14,22713,66215,592
FinsocialMunicipal Subdistrict42,10666,13178,554
Goiânia IIMunicipal Subdistrict4,2105,76511,632
JaóMunicipal Subdistrict4,7677,0287,096
Jardim AméricaMunicipal Subdistrict40,57340,94637,831
Jardim AtlânticoMunicipal Subdistrict4,9777,60314,949
Jardim Balneário Meia Ponte/Mansões GoianasMunicipal Subdistrict19,33424,23726,249
Jardim EuropaMunicipal Subdistrict34,82337,21230,588
Jardim GoiásMunicipal Subdistrict6,71111,82622,572
Jardim GuanabaraMunicipal Subdistrict30,12832,25328,092
Jardim Novo MundoMunicipal Subdistrict39,93641,16438,227
Jardim PetrópolisMunicipal Subdistrict6,76310,13212,204
Jardim PrimaveraMunicipal Subdistrict7,1138,2627,376
João BrazMunicipal Subdistrict24,90529,19329,145
Leste UniversitárioMunicipal Subdistrict19,81521,02319,834
Marechal RondonMunicipal Subdistrict32,54229,76025,261
MaristaMunicipal Subdistrict8,3016,47511,173
Mutirão e CuritibaMunicipal Subdistrict38,33742,98339,926
Negrão de LimaMunicipal Subdistrict6,1009,32715,777
Norte FerroviárioMunicipal Subdistrict5,7475,1014,081
Nova SuiçaMunicipal Subdistrict6,6658,3847,672
Novo Horizonte/FaiçalvilleMunicipal Subdistrict29,23434,42233,484
OesteMunicipal Subdistrict26,92026,51924,939
Parque AmazôniaMunicipal Subdistrict23,57627,26738,523
Parque Bom JesusMunicipal Subdistrict1,2208,54715,413
Parque das Laranjeiras e Jardim da LuzMunicipal Subdistrict42,32445,24550,318
Parque Oeste IndustrialMunicipal Subdistrict10,70712,94016,238
Parque Santa RitaMunicipal Subdistrict10,40222,59634,620
Pedro Ludovico/Bela Vista/Jardins das EsmeraldasMunicipal Subdistrict34,78535,40131,969
Riviera/Água BrancaMunicipal Subdistrict20,69521,52319,697
Santa GenovevaMunicipal Subdistrict4,8316,0356,633
Santo AntonioMunicipal Subdistrict3,2472,9332,577
Santo HilárioMunicipal Subdistrict20,28228,14331,723
São DomingosMunicipal Subdistrict24,08525,19123,563
SudoesteMunicipal Subdistrict23,46624,95325,818
SulMunicipal Subdistrict13,53011,6229,084
Urias MagalhãesMunicipal Subdistrict22,26223,06020,810
Vera CruzMunicipal Subdistrict21,55523,03825,953
Vila Jardim São Judas Tadeu/Jardim PompéiaMunicipal Subdistrict8,93710,67110,215
Vila NovaMunicipal Subdistrict16,47115,89314,237
Vila PedrosoMunicipal Subdistrict22,14122,60819,658
Vila Regina/Parque Industrial Paulista/Santos DumontMunicipal Subdistrict9,51314,21216,776
Vila RicaMunicipal District1,6151,6441,715
Vila RizzoMunicipal Subdistrict6,96814,39122,272
Zona RuralMunicipal Subdistrict6,27329,95167,570
GoiâniaMunicipality1,093,0071,302,0011,437,366

Source: Instituto Brasileiro de Geografia e Estatistica.

Explanation: Area figures of districts are computed by using geospatial data.