List of Counties in the People's Republic of China

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List of Counties in the People's Republic of China Name of County (Chinese: 县; SNo Prefecture Province Type Population (2010) pinyin: Xiàn) 1 Yaohai Hefei Anhui District 902,830 2 Luyang Hefei Anhui District 609,239 3 Shushan Hefei Anhui District 1,022,321 4 Baohe Hefei Anhui District 817,686 5 Changfeng Hefei Anhui County 629,535 6 Feidong Hefei Anhui County 861,960 7 Feixi Hefei Anhui County 858,895 8 Lujiang Hefei Anhui County 973,850 9 Juchao ? Chaohu Hefei Anhui City 780,700 10 Jinghu Wuhu Anhui District 533,330 11 Yijiang Wuhu Anhui District 309,514 12 Jiujiang Wuhu Anhui District 421,695 13 Sanshan Wuhu Anhui District 144,378 14 Wuhu Wuhu Anhui County 294,039 15 Fanchang Wuhu Anhui County 257,764 16 Nanling Wuhu Anhui County 404,278 17 Wuwei Wuhu Anhui County 1,180,069 18 Longzihu Bengbu Anhui District 243,123 19 Bengshan Bengbu Anhui District 334,426 20 Yuhui Bengbu Anhui District 249,361 21 Huaishang Bengbu Anhui District 145,874 22 Huaiyuan Bengbu Anhui County 1,028,066 23 Wuhe Bengbu Anhui County 621,973 24 Guzhen Bengbu Anhui County 541,644 25 Datong Huainan Anhui District 180,917 26 Tianjia'an Huainan Anhui District 593,981 27 Xiejiaji Huainan Anhui District 320,251 28 Bagongshan Huainan Anhui District 175,993 29 Panji Huainan Anhui District 395,684 30 Fengtai Huainan Anhui County 667,070 31 Huashan Ma'anshan Anhui District 303,855 32 Yushan Ma'anshan Anhui District 309,672 33 Bowang Ma'anshan Anhui District not established 34 Dangtu Ma'anshan Anhui County 624,771 35 Hanshan Ma'anshan Anhui County 376,436 36 He(xian) Ma'anshan Anhui County 460,161 37 Duji Huaibei Anhui District 324,398 38 Xiangshan Huaibei Anhui District 467,358 39 Lieshan Huaibei Anhui District 321,565 40 Suixi Huaibei Anhui County 1,000,955 41 Tongguanshan Tongling Anhui District 287,765 42 Shizishan Tongling Anhui District 114,297 43 Jiao(qu) Tongling Anhui District 72,301 44 Tongling Tongling Anhui County 249,595 45 Yingjiang Anqing Anhui District 251,000 46 Daguan Anqing Anhui District 275,000 47 Yixiu Anqing Anhui District 254,000 48 Huaining Anqing Anhui County 593,000 49 Zongyang Anqing Anhui County 839,000 50 Qianshan Anqing Anhui County 500,000 51 Taihu Anqing Anhui County 515,000 52 Susong Anqing Anhui County 571,000 53 Wangjiang Anqing Anhui County 527,000 54 Yuexi Anqing Anhui County 322,000 55 Tongcheng Anqing Anhui City 664,000 56 Tunxi Huangshan Anhui District 217,600 57 Huangshan Huangshan Anhui District 147,600 58 Huizhou Huangshan Anhui District 95,500 59 She(xian) Huangshan Anhui County 409,300 60 Xiuning Huangshan Anhui County 250,500 61 Yi(xian) Huangshan Anhui County 80,700 62 Qimen Huangshan Anhui County 157,800 63 Langya Chuzhou Anhui District 310427 64 Nanqiao Chuzhou Anhui District 251,894 65 Lai'an Chuzhou Anhui County 432,021 66 Quanjiao Chuzhou Anhui County 383,885 67 Dingyuan Chuzhou Anhui County 779,174 68 Fengyang Chuzhou Anhui County 644,895 www.downloadexcelfiles.com 69 Mingguang Chuzhou Anhui City 602,840 70 Tianchang Chuzhou Anhui City 532,732 71 Yingzhou Fuyang Anhui District 691,698 72 Yingdong Fuyang Anhui District 519,562 73 Yingquan Fuyang Anhui District 557,687 74 Linquan Fuyang Anhui County 1,543,218 75 Taihe Fuyang Anhui County 1,361,145 76 Funan Fuyang Anhui County 1,168,117 77 Yingshang Fuyang Anhui County 1,196,535 78 Jieshou Fuyang Anhui City 561,956 79 Yongqiao Suzhou Anhui District 1,647,642 80 Dangshan Suzhou Anhui County 800,408 81 Xiao(xian) Suzhou Anhui County 1,130,916 82 Lingbi Suzhou Anhui County 975,308 83 Si(xian) Suzhou Anhui County 798,650 84 Jin'an Lu'an Anhui District 923,938 85 Yu'an Lu'an Anhui District 854,645 86 Shou(xian) Lu'an Anhui County 1,008,116 87 Huoqiu Lu'an Anhui County 1,246,129 88 Shucheng Lu'an Anhui County 749,273 89 Jinzhai Lu'an Anhui County 514,456 90 Huoshan Lu'an Anhui County 315,144 91 Qiaocheng Bozhou Anhui District 1,409,436 92 Woyang Bozhou Anhui County 1212054 93 Mengcheng Bozhou Anhui County 1,062,080 94 Lixin Bozhou Anhui County 1,167,087 95 Guichi Chizhou Anhui District 595,268 96 Dongzhi Chizhou Anhui County 468,280 97 Shitai Chizhou Anhui County 92,238 98 Qingyang Chizhou Anhui County 246,732 99 Xuanzhou Xuancheng Anhui District 772,500 100 Langxi Xuancheng Anhui County 320,600 101 Guangde Xuancheng Anhui County 487,200 102 Jing(xian) Xuancheng Anhui County 299,600 103 Jixi Xuancheng Anhui County 156100 104 Jingde Xuancheng Anhui County 120,000 105 Ningguo Xuancheng Anhui City 376,900 106 Jinjiazhuang (dissolved) Ma'anshan Anhui District 128,004 107 Dongcheng Directly administered Beijing District 919,000 108 Xicheng Directly administered Beijing District 1,243,000 109 Chaoyang Directly administered Beijing District 3,545,000 110 Haidian Directly administered Beijing District 3,281,000 111 Fengtai Directly administered Beijing District 2,112,000 112 Shijingshan Directly administered Beijing District 616,000 113 Tongzhou Directly administered Beijing District 1,184,000 114 Shunyi Directly administered Beijing District 877,000 115 Changping Directly administered Beijing District 1,661,000 116 Daxing Directly administered Beijing District 1,365,000 117 Mentougou Directly administered Beijing District 290,000 118 Fangshan Directly administered Beijing District 945,000 119 Pinggu Directly administered Beijing District 416,000 120 Huairou Directly administered Beijing District 373,000 121 Miyun Directly administered Beijing County 468,000 122 Yanqing Directly administered Beijing County 317,000 123 Xuanwu (dissolved) Directly administered Beijing District merge into Dongcheng 124 Chongwen (dissolved) Directly administered Beijing District merge into Xicheng 125 Yuzhong Directly administered Chongqing District 630,100 126 Dadukou Directly administered Chongqing District 301,000 127 Jiangbei Directly administered Chongqing District 738,000 128 Shapingba Directly administered Chongqing District 1,000,000 129 Jiulongpo Directly administered Chongqing District 1,084,400 130 Nan'an Directly administered Chongqing District 759,600 131 Beibei Directly administered Chongqing District 680,400 132 Yubei Directly administered Chongqing District 1,345,400 133 Banan Directly administered Chongqing District 918,700 134 Fuling Directly administered Chongqing District 1,066,700 135 Changshou Directly administered Chongqing District 770,000 136 Jiangjin Directly administered Chongqing District 1,233,100 137 Hechuan Directly administered Chongqing District 1,293,000 138 Yongchuan Directly administered Chongqing District 1,024,700 139 Nanchuan Directly administered Chongqing District 534,300 www.downloadexcelfiles.com 140 Qijiang Directly administered Chongqing District 801,000 141 Dazu Directly administered Chongqing District 671,200 142 Wanzhou Directly administered Chongqing District 1,563,100 143 Qianjiang Directly administered Chongqing District 445,000 144 Tongnan Directly administered Chongqing County 640,000 145 Tongliang Directly administered Chongqing District 600,100 146 Rongchang Directly administered Chongqing County 661,300 147 Bishan Directly administered Chongqing District 586,000 148 Liangping Directly administered Chongqing County 687,500 149 Chengkou Directly administered Chongqing County 193,000 150 Fengdu Directly administered Chongqing County 649,200 151 Dianjiang Directly administered Chongqing County 704,500 152 Zhong(xian) Directly administered Chongqing County 751,400 153 Kai(xian) Directly administered Chongqing County 1,160,300 154 Yunyang Directly administered Chongqing County 912,900 155 Fengjie Directly administered Chongqing County 834,300 156 Wushan Directly administered Chongqing County 495,100 157 Wuxi Directly administered Chongqing County 414,100 158 Wulong Directly administered Chongqing County 351,000 159 Shizhu Directly administered Chongqing Autonomous county (Tujia) 415,100 160 Xiushan Directly administered Chongqing Autonomous county (Tujia & Miao) 501,600 161 Youyang Directly administered Chongqing Autonomous county (Tujia & Miao) 578,100 162 Pengshui Directly administered Chongqing Autonomous county (Maio & Tujia) 545,100 163 Wansheng (dissolved) Directly administered Chongqing District 255,800 164 Shuangqiao (dissolved) Directly administered Chongqing District 50,100 165 Gulou Fuzhou Fujian District 687,706 166 Taijiang Fuzhou Fujian District 446,891 167 Cangshan Fuzhou Fujian District 762,746 168 Mawei Fuzhou Fujian District 231,929 169 Jin'an Fuzhou Fujian District 792,491 170 Minhou Fuzhou Fujian County 662,118 171 Lianjiang Fuzhou Fujian County 561,490 172 Luoyuan Fuzhou Fujian County 207,677 173 Minqing Fuzhou Fujian County 237,643 174 Yongtai Fuzhou Fujian County 249,455 175 Pingtan Fuzhou Fujian County 357,760 176 Fuqing Fuzhou Fujian City 1,234,838 177 Changle Fuzhou Fujian City 682,626 178 Siming Xiamen Fujian District 929,998 179 Haicang Xiamen Fujian District 288,739 180 Huli Xiamen Fujian District 931,291 181 Jimei Xiamen Fujian District 580,857 182 Tong'an Xiamen Fujian District 496,129 183 Xiang'an Xiamen Fujian District 304,333 184 Chengxiang Putian Fujian District 413,853 185 Hanjiang Putian Fujian District 470,097 186 Licheng Putian Fujian District 499,110 187 Xiuyu Putian Fujian District 570,741 188 Xianyou Putian Fujian County 824,707 189 Meilie Sanming Fujian District 176,539 190 Sanyuan Sanming Fujian District 198,958 191 Mingxi Sanming Fujian County 102,667 192 Qingliu Sanming Fujian County 136,248 193 Ninghua Sanming Fujian County 272,443 194 Datian Sanming Fujian County 311,631 195 Youxi Sanming Fujian County 352,067 196 Sha(xian) Sanming Fujian County 226,669 197 Jiangle Sanming Fujian County 148,867 198 Taining Sanming Fujian County 110,278 199 Jianning
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