Haigang District

Haigang (Chinese: 海港; pinyin: Hǎigǎng; lit.: 'seaport') is a district of the coastal city of Qinhuangdao, Hebei province, People's Republic of China. The seat of the municipal government, as of 2004, it had a population of 550,000 residing in an area of 121 km2 (47 sq mi).

Haigang

海港区
District
Haigang
Location in Hebei
Coordinates: 39°56′04″N 119°36′37″E
CountryPeople's Republic of China
ProvinceHebei
Prefecture-level cityQinhuangdao
District seatWenhua Road Subdistrict (文化路街道)
Area
  Total121 km2 (47 sq mi)
Elevation
4.6 m (15 ft)
Population
 (2004)
  Total550,000
  Density4,500/km2 (12,000/sq mi)
Time zoneUTC+8 (China Standard)
Websitewww.qhdhgq.gov.cn

Administrative divisions

There are 13 subdistricts and 8 towns in Haigang District.[1]

Subdistricts:

  • Wenhua Road Subdistrict (文化路街道)
  • Haibin Road Subdistrict (海滨路街道)
  • Beihuan Road Subdistrict (北环路街道)
  • Jianshe Avenue Subdistrict (建设大街街道)
  • Hedong Subdistrict (河东街道)
  • Xigang Road Subdistrict (西港路街道)
  • Yanshan Avenue Subdistrict (燕山大街街道)
  • Gangcheng Avenue Subdistrict (港城大街街道)
  • Donghuan Road Subdistrict (东环路街道)
  • Baitaling Subdistrict (白塔岭街道)
  • Qinhuangdao Economic and Technological Development Zone
    Zhujiang Street Subdistrict
    (秦皇岛经济技术开发区珠江道街道)
  • Huanghe Street Subdistrict (黄河道街道)
  • Tengfei Road Subdistrict (腾飞路街道)

Towns:

  • Donggang (东港镇)
  • Haigang Town (海港镇)
  • Xigang (西港镇)
  • Haiyang (海阳镇)
  • Beigang (北港镇)
  • Shimenzhai (石门寨镇)
  • Zhucaoying (驻操营镇)
  • Duzhuang (杜庄镇)
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gollark: https://arxiv.org/pdf/2108.09293.pdf

References

  1. 2011年统计用区划代码和城乡划分代码:海港区 (in Chinese). National Bureau of Statistics of the People's Republic of China. Retrieved 2012-07-20.



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