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Канд дисс Простр-е развитие городов1

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2
............................................................................................................... 4
1.
........................................................................................................ 13
1.1.
............................................................................................................................... 13
1.2.
................................................................ 31
1.3.
...................................... 45
2.
.................................................. 59
2.1
............................................................................................................................... 59
2.2.
...................................................................... 65
2.3.
(
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3.
(
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3.1.
............................................................................................................................... 82
3.2.
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............................................ 88
3.3.
............................................. 95
3
....................................................................................... 105
................................................................................................. 123
................................................................................................. 124
................................................................................................. 125
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................................................................................................. 129
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3.2
1996
: 10
1996
2005
.
.
1997
139380 143620
166313 36635
-
1998
1999
2000
2001
2002
2003
2004
2005
157500 171580 194680 212717
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1996
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2005
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279
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2006
2016
22 963 172,84
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2012-2016
: 10 000
90
80
70
29,73
60
30,85
50
23,29
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2012-2016
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