Do you know that where I'm sitting right now, the population density is 2,787,840 people per square mile?
And here are two other numbers (from Wikipedia) that you shouldn't believe: The population density of Manhattan is 71,201/sq mi. And of Australia: 7.3/sq mi.
And now a number that might just be credible: Hong Kong has 2,346.1/sq mi.
My personal population density I got by allotting myself 10 square feet, and then extrapolating to a square mile. True, as far as it goes, but this must be what Mark Twain meant by "lies, damned lies, and statistics."
Population densities (PDs) have meaning only if averaged over some relevant space. The size of that space is a matter of geographical judgment, and cannot simply be left to the statistician's computer.
Australia's is easy to discredit: 90% of the country is empty desert. The habitable land (on which the population survives) is much smaller, and the relevant population density must therefore be (a still low) 70-80 people per square mile.
So let's consider some relevant spaces. We'll start in Indiana, come back to New York, and end up in Hong Kong.
Indiana is a state where the population is fairly evenly dispersed: there are no large uninhabited spaces, and likewise, no megacities of enormous density. The PD is 169.5/sq. mile.
In Table 1, I have taken 2000 census data and ranked Indiana counties by population, reporting also the land area and the density.
Geographic area |
Population |
Land area |
Pop.
Density/sq. mi of land |
Cumulative Population
|
Cumulative area
|
Cumulative Density
|
Anti-cumulative Density
|
|
Indiana |
6,080,485
|
35,867
|
169.50
|
|||||
#
|
COUNTY | |||||||
1
|
Marion County |
860,457
|
396.25
|
2,171.50
|
860,457
|
396.25
|
2,171.50
|
169.53
|
2
|
Lake County |
484,556
|
496.98
|
975.00
|
1,345,012
|
893.23
|
1,505.79
|
147.16
|
3
|
Allen County |
331,846
|
657.25
|
504.90
|
1,676,858
|
1,550.48
|
1,081.51
|
135.40
|
4
|
St. Joseph County |
265,577
|
457.34
|
580.70
|
1,942,435
|
2,007.82
|
967.43
|
128.32
|
5
|
Elkhart County |
182,788
|
463.81
|
394.10
|
2,125,223
|
2,471.63
|
859.85
|
122.21
|
6
|
Hamilton County |
182,734
|
397.94
|
459.20
|
2,307,957
|
2,869.57
|
804.29
|
118.44
|
7
|
Vanderburgh County |
171,916
|
234.57
|
732.90
|
2,479,873
|
3,104.14
|
798.89
|
114.33
|
8
|
Tippecanoe County |
148,937
|
499.79
|
298.00
|
2,628,811
|
3,603.93
|
729.43
|
109.90
|
9
|
Porter County |
146,798
|
418.11
|
351.10
|
2,775,609
|
4,022.04
|
690.10
|
106.99
|
10
|
Madison County |
133,378
|
452.13
|
295.00
|
2,908,987
|
4,474.17
|
650.17
|
103.78
|
11
|
Monroe County |
120,553
|
394.35
|
305.70
|
3,029,540
|
4,868.52
|
622.27
|
101.03
|
12
|
Delaware County |
118,774
|
393.29
|
302.00
|
3,148,314
|
5,261.81
|
598.33
|
98.42
|
13
|
Johnson County |
115,204
|
320.19
|
359.80
|
3,263,518
|
5,582.00
|
584.65
|
95.81
|
14
|
LaPorte County |
110,136
|
598.24
|
184.10
|
3,373,654
|
6,180.24
|
545.88
|
93.02
|
15
|
Vigo County |
105,864
|
403.29
|
262.50
|
3,479,518
|
6,583.53
|
528.52
|
91.18
|
16
|
Hendricks County |
104,099
|
408.39
|
254.90
|
3,583,616
|
6,991.92
|
512.54
|
88.82
|
17
|
Clark County |
96,460
|
375.04
|
257.20
|
3,680,077
|
7,366.96
|
499.54
|
86.47
|
18
|
Howard County |
84,961
|
293.07
|
289.90
|
3,765,038
|
7,660.03
|
491.52
|
84.23
|
19
|
Kosciusko County |
74,068
|
537.5
|
137.80
|
3,839,105
|
8,197.53
|
468.32
|
82.09
|
20
|
Grant County |
73,408
|
414.03
|
177.30
|
3,912,513
|
8,611.56
|
454.33
|
81.01
|
21
|
Bartholomew County |
71,441
|
406.84
|
175.60
|
3,983,954
|
9,018.40
|
441.76
|
79.54
|
22
|
Wayne County |
71,109
|
403.57
|
176.20
|
4,055,063
|
9,421.97
|
430.38
|
78.09
|
23
|
Floyd County |
70,818
|
148
|
478.50
|
4,125,881
|
9,569.97
|
431.13
|
76.59
|
24
|
Morgan County |
66,702
|
406.47
|
164.10
|
4,192,582
|
9,976.44
|
420.25
|
74.33
|
25
|
Hancock County |
55,377
|
306.12
|
180.90
|
4,247,960
|
10,282.56
|
413.12
|
72.92
|
26
|
Warrick County |
52,387
|
384.07
|
136.40
|
4,300,347
|
10,666.63
|
403.16
|
71.63
|
27
|
Henry County |
48,527
|
392.93
|
123.50
|
4,348,874
|
11,059.56
|
393.22
|
70.64
|
28
|
Noble County |
46,291
|
411.11
|
112.60
|
4,395,165
|
11,470.67
|
383.17
|
69.80
|
29
|
Dearborn County |
46,117
|
305.21
|
151.10
|
4,441,282
|
11,775.88
|
377.15
|
69.08
|
30
|
Boone County |
46,091
|
422.85
|
109.00
|
4,487,372
|
12,198.73
|
367.86
|
68.04
|
31
|
Lawrence County |
45,915
|
448.83
|
102.30
|
4,533,288
|
12,647.56
|
358.43
|
67.31
|
32
|
Marshall County |
45,138
|
444.27
|
101.60
|
4,578,426
|
13,091.83
|
349.72
|
66.63
|
33
|
Shelby County |
43,451
|
412.64
|
105.30
|
4,621,877
|
13,504.47
|
342.25
|
65.95
|
34
|
Jackson County |
41,356
|
509.31
|
81.20
|
4,663,233
|
14,013.78
|
332.76
|
65.23
|
35
|
Cass County |
40,915
|
412.87
|
99.10
|
4,704,148
|
14,426.65
|
326.07
|
64.85
|
36
|
DeKalb County |
40,280
|
362.88
|
111.00
|
4,744,428
|
14,789.53
|
320.80
|
64.19
|
37
|
Dubois County |
39,654
|
430.09
|
92.20
|
4,784,082
|
15,219.62
|
314.34
|
63.39
|
38
|
Knox County |
39,255
|
515.83
|
76.10
|
4,823,337
|
15,735.45
|
306.53
|
62.79
|
39
|
Huntington County |
38,068
|
382.59
|
99.50
|
4,861,404
|
16,118.04
|
301.61
|
62.45
|
40
|
Montgomery County |
37,636
|
504.51
|
74.60
|
4,899,041
|
16,622.55
|
294.72
|
61.73
|
41
|
Miami County |
36,097
|
375.62
|
96.10
|
4,935,138
|
16,998.17
|
290.33
|
61.39
|
42
|
Putnam County |
36,023
|
480.31
|
75.00
|
4,971,161
|
17,478.48
|
284.42
|
60.70
|
43
|
Wabash County |
34,954
|
413.17
|
84.60
|
5,006,115
|
17,891.65
|
279.80
|
60.33
|
44
|
LaGrange County |
34,920
|
379.56
|
92.00
|
5,041,035
|
18,271.21
|
275.90
|
59.77
|
45
|
Harrison County |
34,305
|
485.22
|
70.70
|
5,075,340
|
18,756.43
|
270.59
|
59.07
|
46
|
Clinton County |
33,866
|
405.1
|
83.60
|
5,109,206
|
19,161.53
|
266.64
|
58.74
|
47
|
Adams County |
33,631
|
339.36
|
99.10
|
5,142,837
|
19,500.89
|
263.72
|
58.14
|
48
|
Steuben County |
33,218
|
308.72
|
107.60
|
5,176,055
|
19,809.61
|
261.29
|
57.29
|
49
|
Greene County |
33,154
|
541.73
|
61.20
|
5,209,209
|
20,351.34
|
255.96
|
56.33
|
50
|
Gibson County |
32,504
|
488.78
|
66.50
|
5,241,713
|
20,840.12
|
251.52
|
56.15
|
51
|
Jefferson County |
31,692
|
361.37
|
87.70
|
5,273,405
|
21,201.49
|
248.73
|
55.82
|
52
|
Whitley County |
30,700
|
335.52
|
91.50
|
5,304,105
|
21,537.01
|
246.28
|
55.03
|
53
|
Jasper County |
30,065
|
559.87
|
53.70
|
5,334,170
|
22,096.88
|
241.40
|
54.18
|
54
|
Daviess County |
29,802
|
430.66
|
69.20
|
5,363,972
|
22,527.54
|
238.11
|
54.20
|
55
|
Wells County |
27,599
|
369.96
|
74.60
|
5,391,571
|
22,897.50
|
235.47
|
53.71
|
56
|
Jennings County |
27,537
|
377.22
|
73.00
|
5,419,108
|
23,274.72
|
232.83
|
53.12
|
57
|
Randolph County |
27,396
|
452.83
|
60.50
|
5,446,504
|
23,727.55
|
229.54
|
52.52
|
58
|
Washington County |
27,213
|
514.42
|
52.90
|
5,473,717
|
24,241.97
|
225.80
|
52.23
|
59
|
Posey County |
27,043
|
408.5
|
66.20
|
5,500,760
|
24,650.47
|
223.15
|
52.20
|
60
|
Clay County |
26,571
|
357.62
|
74.30
|
5,527,331
|
25,008.09
|
221.02
|
51.69
|
61
|
Ripley County |
26,514
|
446.36
|
59.40
|
5,553,844
|
25,454.45
|
218.19
|
50.94
|
62
|
Fayette County |
25,580
|
214.96
|
119.00
|
5,579,425
|
25,669.41
|
217.36
|
50.58
|
63
|
White County |
25,262
|
505.24
|
50.00
|
5,604,687
|
26,174.65
|
214.13
|
49.14
|
64
|
Decatur County |
24,554
|
372.6
|
65.90
|
5,629,241
|
26,547.25
|
212.05
|
49.09
|
65
|
Starke County |
23,569
|
309.31
|
76.20
|
5,652,810
|
26,856.56
|
210.48
|
48.42
|
66
|
Scott County |
22,961
|
190.39
|
120.60
|
5,675,772
|
27,046.95
|
209.85
|
47.46
|
67
|
Franklin County |
22,156
|
386
|
57.40
|
5,697,928
|
27,432.95
|
207.70
|
45.89
|
68
|
Owen County |
21,801
|
385.18
|
56.60
|
5,719,729
|
27,818.13
|
205.61
|
45.36
|
69
|
Jay County |
21,791
|
383.64
|
56.80
|
5,741,520
|
28,201.77
|
203.59
|
44.82
|
70
|
Sullivan County |
21,734
|
447.2
|
48.60
|
5,763,254
|
28,648.97
|
201.17
|
44.22
|
71
|
Fulton County |
20,526
|
368.51
|
55.70
|
5,783,780
|
29,017.48
|
199.32
|
43.95
|
72
|
Spencer County |
20,373
|
398.69
|
51.10
|
5,804,153
|
29,416.17
|
197.31
|
43.32
|
73
|
Carroll County |
20,176
|
372.26
|
54.20
|
5,824,329
|
29,788.43
|
195.52
|
42.84
|
74
|
Orange County |
19,297
|
399.52
|
48.30
|
5,843,626
|
30,187.95
|
193.57
|
42.14
|
75
|
Perry County |
18,917
|
381.39
|
49.60
|
5,862,543
|
30,569.34
|
191.78
|
41.71
|
76
|
Rush County |
18,250
|
408.28
|
44.70
|
5,880,793
|
30,977.62
|
189.84
|
41.14
|
77
|
Fountain County |
17,964
|
395.69
|
45.40
|
5,898,758
|
31,373.31
|
188.02
|
40.84
|
78
|
Parke County |
17,257
|
444.77
|
38.80
|
5,916,015
|
31,818.08
|
185.93
|
40.44
|
79
|
Vermillion County |
16,801
|
256.89
|
65.40
|
5,932,815
|
32,074.97
|
184.97
|
40.62
|
80
|
Tipton County |
16,587
|
260.39
|
63.70
|
5,949,402
|
32,335.36
|
183.99
|
38.94
|
81
|
Brown County |
14,957
|
312.26
|
47.90
|
5,964,359
|
32,647.62
|
182.69
|
37.12
|
82
|
Newton County |
14,547
|
401.85
|
36.20
|
5,978,906
|
33,049.47
|
180.91
|
36.07
|
83
|
Blackford County |
14,050
|
165.1
|
85.10
|
5,992,956
|
33,214.57
|
180.43
|
36.05
|
84
|
Pulaski County |
13,748
|
433.68
|
31.70
|
6,006,704
|
33,648.25
|
178.51
|
33.00
|
85
|
Pike County |
12,842
|
336.18
|
38.20
|
6,019,546
|
33,984.43
|
177.13
|
33.25
|
86
|
Crawford County |
10,729
|
305.68
|
35.10
|
6,030,275
|
34,290.11
|
175.86
|
32.37
|
87
|
Martin County |
10,353
|
336.14
|
30.80
|
6,040,629
|
34,626.25
|
174.45
|
31.84
|
88
|
Benton County |
9,426
|
406.31
|
23.20
|
6,050,055
|
35,032.56
|
172.70
|
32.13
|
89
|
Switzerland County |
9,068
|
221.18
|
41.00
|
6,059,123
|
35,253.74
|
171.87
|
36.47
|
90
|
Warren County |
8,429
|
364.88
|
23.10
|
6,067,552
|
35,618.62
|
170.35
|
34.84
|
91
|
Union County |
7,351
|
161.55
|
45.50
|
6,074,903
|
35,780.17
|
169.78
|
52.09
|
92
|
Ohio County |
5,619
|
86.72
|
64.80
|
6,080,522
|
35,866.89
|
169.53
|
64.37
|
There are big differences from one part of the state to another. Marion County (Indianapolis) is the most populous, with PD = 2171. At the other extreme, Warren County has the smallest density (90 of 92 by population), with PD = 23.1, or 100-fold smaller. Does averaging these numbers make any sense?
I have calculated what I call the Cumulative Density (CD). For Marion County, being the most populous, the CD is simply the PD for that county. For Lake County (Gary-Hammond, and #2 in population), the CD is the sum of the populations of the two counties, divided by the sum of their land areas, and so on. For Ohio County (smallest by population) all populations and all land areas are added, and CD = PD for the state.
Similarly, I have calculated the Anti-cumulative density (aCD), which is the same thing, but now starting at the bottom of the table. The aCD for Ohio County equals the PD for Ohio County, whereas the aCD for Marion County equals that for the state as a whole.
So what does this mean in terms of observables? Consider the drive from Indianapolis to St. Louis, westbound on I-70. This is a heavily traveled road, with lots of truck traffic. The largest city along this stretch is Terre Haute, in Vigo County.
Now consider an alternate, parallel route: the four-lane highway - US 40 (known for much of its stretch as the National Road). This has very little traffic, and almost no truck traffic. Why?
The interstate connects metropolitan areas, and hence traffic on the interstate will reflect the cumulative density. The parallel side roads such as US 40 carry mostly local traffic, and thus traffic should be proportional to the anti-cumulative density.
So the cumulative density for Vigo County is 528/sq mile, a number that averages in Indianapolis and its collar counties. On the other hand, the anti-cumulative density is 91/sq mile, or approximately 6 times smaller. Indeed, a factor of six is probably a good estimate for the traffic difference between I-70 and US 40. So for a more relaxing trip to Indy – if somewhat slower – take US 40.
The population density of Manhattan is almost as absurd as my personal population density. Manhattan is not an appropriate average: one needs to include reasonable hinterland space from which the island draws its food, water and labor. The metropolitan area does just fine.
Table 2 shows census data for Downstate New York, defined as the metro area most generously understood. This includes much of the Catskill Park from which the City gets its water. This area has 12.9 million people spread over 5100 square miles, for a PD of 2,530. (Including relevant parts of NJ reduces this number to 2140.)
Geographic area | Population |
Land area |
Pop. Density |
Cumulative Population | Cumulative area | Cumulative Density | Anti-cumulative Density | |
New York | 18,976,457 | 47213.79 | 401.90 | |||||
Upstate New York | 6,109,043 | 42128.85 | 145.01 | |||||
# | COUNTY | |||||||
1 | Kings County | 2,465,326 | 70.61 | 34,916.60 | 2,465,326 | 70.61 | 34,914.69 | 2,530.49 |
2 | Queens County | 2,229,379 | 109.24 | 20,409.00 | 4,694,705 | 179.85 | 26,103.45 | 2,074.47 |
3 | New York County | 1,537,195 | 22.96 | 66,940.10 | 6,231,900 | 202.81 | 30,727.77 | 1,666.17 |
4 | Suffolk County | 1,419,369 | 912.2 | 1,556.00 | 7,651,269 | 1,115.01 | 6,862.06 | 1,359.14 |
5 | Nassau County | 1,334,544 | 286.69 | 4,655.00 | 8,985,813 | 1,401.70 | 6,410.65 | 1,313.91 |
6 | Bronx County | 1,332,650 | 42.03 | 31,709.30 | 10,318,463 | 1,443.73 | 7,147.09 | 1,053.86 |
7 | Westchester County | 923,459 | 432.82 | 2,133.60 | 11,241,922 | 1,876.55 | 5,990.74 | 700.03 |
8 | Richmond County | 443,728 | 58.48 | 7,587.90 | 11,685,650 | 1,935.03 | 6,039.00 | 506.64 |
9 | Orange County | 341,367 | 816.34 | 418.20 | 12,027,017 | 2,751.37 | 4,371.28 | 375.17 |
10 | Rockland County | 286,753 | 174.22 | 1,645.90 | 12,313,770 | 2,925.59 | 4,208.99 | 360.13 |
11 | Dutchess County | 280,150 | 801.59 | 349.50 | 12,593,920 | 3,727.18 | 3,378.94 | 256.39 |
12 | Ulster County | 177,749 | 1126.48 | 157.80 | 12,771,669 | 4,853.66 | 2,631.35 | 201.43 |
13 | Putnam County | 95,745 | 231.28 | 414.00 | 12,867,414 | 5,084.94 | 2,530.49 | 413.98 |
Total Downstate New York | 12,867,414 | 5084.94 | 2,530.49 | |||||
New Jersey | 6,208,552 | 3838.53 | 1,617.43 | |||||
Total Metro | 19,075,966 | 8,923 | 2,137.73 |
This isn't Indiana anymore! Metro New York City really is more densely populated than the Hoosier state – by about a factor of 10. The aCD where I live (Ulster County) is double that of Vigo County, and indeed, my local highways are at least twice as busy.
But it would be a mistake to average in all of New York State into a single PD number. The census tells us that NYS has 401/sq. mile, but that is Mark-Twain-land. Upstate New York – beyond the political – has only tenuous connections with the City.
Table 3 shows the census data for all upstate counties in New York - the PD is 145/sq mile, or sparser than Indiana. Indeed, Hamilton County, entirely within the Adirondack Park, only has 3/sq. mile! I once lived in Chautauqua County (aCD = 71), and can compare upstate NY, Indiana, and downstate NY; my car insurance rates have varied proportionally to the aCD.
Geographic area | Pop. | Land area |
Pop. Density |
Cumulative Population | Cumulative area | Cumulative Density | Anti-cumulative Density | |
Upstate New York | 6,109,043 | 42128.85 | 145.01 | |||||
# | COUNTY | |||||||
1 | Erie County | 950,265 | 1044.21 | 910.00 | 950,265 | 1,044.21 | 910.03 | 145.01 |
2 | Monroe County | 735,343 | 659.29 | 1,115.30 | 1,685,608 | 1,703.50 | 989.50 | 125.56 |
3 | Onondaga County | 458,336 | 780.29 | 587.40 | 2,143,944 | 2,483.79 | 863.17 | 109.42 |
4 | Albany County | 294,565 | 523.45 | 562.70 | 2,438,509 | 3,007.24 | 810.88 | 100.01 |
5 | Oneida County | 235,469 | 1212.7 | 194.20 | 2,673,978 | 4,219.94 | 633.65 | 93.82 |
6 | Niagara County | 219,846 | 522.95 | 420.40 | 2,893,824 | 4,742.89 | 610.14 | 90.61 |
7 | Saratoga County | 200,635 | 811.84 | 247.10 | 3,094,459 | 5,554.73 | 557.09 | 86.00 |
8 | Broome County | 200,536 | 706.82 | 283.70 | 3,294,995 | 6,261.55 | 526.23 | 82.42 |
9 | Rensselaer County | 152,538 | 653.96 | 233.30 | 3,447,533 | 6,915.51 | 498.52 | 78.46 |
10 | Schenectady County | 146,555 | 206.1 | 711.10 | 3,594,088 | 7,121.61 | 504.67 | 75.58 |
11 | Chautauqua County | 139,750 | 1062.05 | 131.60 | 3,733,838 | 8,183.66 | 456.26 | 71.84 |
12 | Oswego County | 122,377 | 953.3 | 128.40 | 3,856,215 | 9,136.96 | 422.05 | 69.97 |
13 | St. Lawrence County | 111,931 | 2685.6 | 41.70 | 3,968,146 | 11,822.56 | 335.64 | 68.28 |
14 | Jefferson County | 111,738 | 1272.2 | 87.80 | 4,079,884 | 13,094.76 | 311.57 | 70.64 |
15 | Ontario County | 100,224 | 644.38 | 155.50 | 4,180,108 | 13,739.14 | 304.25 | 69.89 |
16 | Steuben County | 98,726 | 1392.64 | 70.90 | 4,278,834 | 15,131.78 | 282.77 | 67.94 |
17 | Tompkins County | 96,501 | 476.05 | 202.70 | 4,375,335 | 15,607.83 | 280.33 | 67.79 |
18 | Wayne County | 93,765 | 604.21 | 155.20 | 4,469,100 | 16,212.04 | 275.67 | 65.37 |
19 | Chemung County | 91,070 | 408.17 | 223.10 | 4,560,170 | 16,620.21 | 274.37 | 63.28 |
20 | Cattaraugus County | 83,955 | 1309.85 | 64.10 | 4,644,125 | 17,930.06 | 259.01 | 60.72 |
21 | Cayuga County | 81,963 | 693.18 | 118.20 | 4,726,088 | 18,623.24 | 253.77 | 60.54 |
22 | Clinton County | 79,894 | 1038.95 | 76.90 | 4,805,982 | 19,662.19 | 244.43 | 58.84 |
23 | Sullivan County | 73,966 | 969.71 | 76.30 | 4,879,948 | 20,631.90 | 236.52 | 58.00 |
24 | Madison County | 69,441 | 655.86 | 105.90 | 4,949,389 | 21,287.76 | 232.50 | 57.18 |
25 | Herkimer County | 64,427 | 1411.25 | 45.70 | 5,013,816 | 22,699.01 | 220.88 | 55.64 |
26 | Livingston County | 64,328 | 632.13 | 101.80 | 5,078,144 | 23,331.14 | 217.66 | 56.37 |
27 | Warren County | 63,303 | 869.29 | 72.80 | 5,141,447 | 24,200.43 | 212.45 | 54.84 |
28 | Columbia County | 63,094 | 635.73 | 99.20 | 5,204,541 | 24,836.16 | 209.55 | 53.97 |
29 | Otsego County | 61,676 | 1002.8 | 61.50 | 5,266,217 | 25,838.96 | 203.81 | 52.31 |
30 | Washington County | 61,042 | 835.44 | 73.10 | 5,327,259 | 26,674.40 | 199.71 | 51.74 |
31 | Genesee County | 60,370 | 494.11 | 122.20 | 5,387,629 | 27,168.51 | 198.30 | 50.59 |
32 | Fulton County | 55,073 | 496.17 | 111.00 | 5,442,702 | 27,664.68 | 196.74 | 48.22 |
33 | Tioga County | 51,784 | 518.69 | 99.80 | 5,494,486 | 28,183.37 | 194.95 | 46.07 |
34 | Chenango County | 51,401 | 894.36 | 57.50 | 5,545,887 | 29,077.73 | 190.73 | 44.07 |
35 | Franklin County | 51,134 | 1631.49 | 31.30 | 5,597,021 | 30,709.22 | 182.26 | 43.15 |
36 | Allegany County | 49,927 | 1030.22 | 48.50 | 5,646,948 | 31,739.44 | 177.92 | 44.84 |
37 | Montgomery County | 49,708 | 404.82 | 122.80 | 5,696,656 | 32,144.26 | 177.22 | 44.48 |
38 | Cortland County | 48,599 | 499.65 | 97.30 | 5,745,255 | 32,643.91 | 176.00 | 41.30 |
39 | Greene County | 48,195 | 647.75 | 74.40 | 5,793,450 | 33,291.66 | 174.02 | 38.35 |
40 | Delaware County | 48,055 | 1446.37 | 33.20 | 5,841,505 | 34,738.03 | 168.16 | 35.71 |
41 | Orleans County | 44,171 | 391.4 | 112.90 | 5,885,676 | 35,129.43 | 167.54 | 36.20 |
42 | Wyoming County | 43,424 | 592.91 | 73.20 | 5,929,100 | 35,722.34 | 165.98 | 31.91 |
43 | Essex County | 38,851 | 1796.8 | 21.60 | 5,967,951 | 37,519.14 | 159.06 | 28.09 |
44 | Seneca County | 33,342 | 324.91 | 102.60 | 6,001,293 | 37,844.05 | 158.58 | 30.61 |
45 | Schoharie County | 31,582 | 622.02 | 50.80 | 6,032,875 | 38,466.07 | 156.84 | 25.15 |
46 | Lewis County | 26,944 | 1275.42 | 21.10 | 6,059,819 | 39,741.49 | 152.48 | 20.80 |
47 | Yates County | 24,621 | 338.24 | 72.80 | 6,084,440 | 40,079.73 | 151.81 | 20.62 |
48 | Schuyler County | 19,224 | 328.71 | 58.50 | 6,103,664 | 40,408.44 | 151.05 | 12.01 |
49 | Hamilton County | 5,379 | 1720.39 | 3.10 | 6,109,043 | 42,128.83 | 145.01 | 3.13 |
And finally, a word on Hong Kong. I've never been there, and haven't looked up any statistics other than the Wikipedia number, but I tend to believe that. It seems remarkably close to the New York metro number, which I hypothesize is a reasonable density for any large mega-city in the world.
Do you know that where I'm sitting right now, the population density is 2,140 people per square mile?
Now that's a number you can believe in.
Daniel Jelski is Dean of Science & Engineering State University of New York at New Paltz.
great post
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Thank you
Mr. Cox's comment is useful and informative. Thank you.
MORE
More information relevant to the interesting article by Daniel Jelski.
Perhaps the critical issue with respect to density is that of the urban area (area of continuous development) or the part of it in which one lives. Density is less of an issue in the Australian outback, for example, than in the northern suburbs of Sydney, where state government planners are forcing high rise residential buildings into neighborhoods of single family-detached houses. Some consider this neighborhood destroying (see: http://www.newgeography.com/content/00910-forcing-density-australias-sub...).
Density varies a great deal, even in the same metropolitan areas (labor market areas). While the highest density New York metropolitan area (labor market area) census tract is over 200,000 per square mile (approximately 80,000 per square kilometer), the lowest are in the vast rural areas (more than one-half the New York MSA is rural or countryside, not urban).
At Daniel Jelski’s personal density of 2.8 million per square mile (1.1 million per square kilometer), his personal space is akin to large lot suburbia compared to Hong Kong’s Kowloon Walled City, which was demolished in the early 1990s. Densities have been estimated to have been as high as nearly 5.0 million per square mile (http://www.demographia.com/rac-hk.pdf) or 1.9 million per square kilometer. Even that is not terribly dense, compared to the maximum loadings on Mumbai’s suburban railway, which can exceed 40 million per square mile or 16 million per square kilometer, a density at which the city of Portland could accommodate the world’s population (that could finally satisfy the density wishes of its planners).
Jelski could, however, stretch out a bit in the highest density Dhaka slums, now estimated at 2.5 million per square mile (http://www.rentalcartours.net/rac-dhaka.pdf) or 1.0 million per square kilometer.
FYI…. density estimates are provided for all identified urban areas in the world over 500,000 population at http://demographia.com/db-worldua.pdf. The 2010 edition will be out late in the first quarter. There is also more on urban geography at http://www.newgeography.com/content/001076-on-cities-ghg-emissions-apple....
Wendell Cox
Demographia
www.demographia.com