2016 NORTHERN MIDDLESEX TRAFFIC VOLUME REPORT. Photo: Market Street in Downtown Lowell ADT: 7,200 vehicles per day.

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1 : : 7, NTEN IEEX TFFI E ET N x f 40, 2 F, 01852

2 NTIE F NNIIINTIN IT N TETIN T ENEFIIIE F T I/N T N x z N), f T I f f 1964 T I), f 1987,. T I b f q f, f, E f) b x f, b bf f, b bj f. f b F, F T, b b b f, x, b. T N T I f., N f,, E f, f T f Ex N T N b, , 98, 98, b,, f b b,,,, x, x, b,., N Ex 526, 4 q,,, f,,, f,, b b f b,,,,, x, x,,,,, b, ), b. If T q f T I f b, : N T I N x f 40, 200, ) j@. F T f f T I f, T I b) 180 f. Tff : 2016 E 1

3 T f f b, 300 f : ) b, 6 F, TTY: F f q b f, : : N x f 40, 200, : 978) Fx: 978) E: j@. T b f b.. If f, N T I fçã j á, f E Tí I N f របស ន ប ល ក អនករត វក របក របព ត ម ន ន ស មទ ក ទកអនកឯក ទស ល ជ ព កទ 6 របស N ត មរយ លខទ រស ពទ fó, f N Tí I fò ò, E N T I 如果需要使用其它语言了解信息, 请联系马萨诸塞州交通部 N) 民权法案 第六章专员, 电话 T f f f T, f f F F T,.. f T. I f ff f T.

4 Tb f 1. INTTIN... 1 Tff? EFNE E T NNIN TE T TE TFFI E T ET N TFFI NTIN EE Y TYE TNEI IT T TFFI NITIN EE IY TFFI TFFI E TEN IN TE N EIN TFFI T IN TE NTEN IEEX EIN EY EIE NITIN TNIN EENT NT NTEN IEEX TFFI NT INENTY Y F NY N EITIN... 49

5 1. INTTIN T 2016 Tff ff b 2015, b N x f N) ff. T b ff N x b T 2016 f z ff b :, f,, b,,, Tb, Tb, f. T ff x f Nb. I 2016, 91). Tff? Tff f f z f ff. Tff, f. ff z j f, f f. f b, f f. 1.1 EFNE E T NNIN T Fx f T FT) f f 21 21), f b b f... T bj f f b j f. T FT f : f; If ; ; b; F E ; E b; j ; I b ) f f ; E NTEN IEEX EIN TFFI E ET 1

6 T 2016 N x T b f. T N x ff f f b x f Tb 1 1). T ff f f T I TI) j z f f b TI j. TE 1 1: TFFI NTIN EFNE EE f T T Y 2040) f T T b Ex b f f b 25%, : N x T Ix F F ) I / ) Tff ) f ) f f f ff I 495, I 93, 3) 1.2 TE T TE TFFI E T ET T 2016 Tff ff b N f T T) f T b f f f b.,, ff f. T ff, ff, b. 1.3 N TFFI NTIN EE T N x Tff N x f ), f,,. f ff I T) b. b b ff, b. f b b f b b f. T f f ) f b f. Tff b b. N ff T ff 2), b. I, N f, NTEN IEEX EIN TFFI E ET 2

7 1.4 Y TYE f, N ff f. N f ) I F f f f z f. T f f b T, f b F F). T b ) ) b f f f: 1 = I 5 = j 2 = F/Ex 3 = 6 = 3 = 7 = 4 = T f b. T f b f f b b I f. x f x f, ff E f b. T f f b N x f f. 1.5 TNEI IT T N ff T ff b. b f, T f, f q ff b b N ff Tb 1 2). N T ff q b. Tb 1 2: T IY IIIN EQETE TFFI NT TIN F 2016 T I / /T 4043 f E f 4044 f 4046 f f 4058 b Tb E f 4066 E f x T I f f 4086 f Tb T 4108 Tb 4109 T Tb N f f f N f E f 4143 f 4146 b f. I NTEN IEEX EIN TFFI E ET 3

8 T q f b f ff. T, F f F F 2 6), f ff f. T f ff. F x f f, f b f f b q. I T q, N ff ff f. N, T, z f 900, b Tb ) NTEN IEEX EIN TFFI E ET 4

9 1.1: F f N x N N N I E I 3 b T 4 E F b T 3 f TEKY b N x T f N f E E T 3 f 6 N x f 27 2 f f 0 27 $ F E 3 x 495 : T/N 2013 ; 2010 bz ); I b); E ). 225 x /7/2017 b N. ff f b. T F EF bz 2010) f ETF x 4 N I F 40 b 3 b F f /b j /b T x T /b E b b b 111 N T EEE N N T E TYN f 3 N N 111 N N E TT 40, 200, ) NTEN IEEX EIN TFFI E ET 5

10 1.2: 2016 Tff E TT N N 93 F 129 I E I 3 b T 15, x T 8,100 b T E N E 4 11, ,200 8,600 2,600 1,900 1,600 f TEKY 4,800 N x f 2, $ b 11, /27/2017 b N. 1,900 9,300 ff f b. 12,600 23,833 15, T : N 2016 ff ); T/N 2013 ; 2010 bz ); I b); E ). 2,900 9, ,200 11,600 4,200 bz 2010) 11,200 3, , T I /b j /b /b F 133 b F f 10,000 9, ,200 EF 9,200 4,600 1,100 9,400 3,000 f ETF 4,700 x 7,200 1,400 6,100 4,700 f 15,000-23,833 10,000-14,999 N 8,900 5,900 2,800 12, ,499 2,500-4,999 5,000-9,999 13,400 b Tff ) x 14, ,500 N E 7, f E E 11,800 T 7,400 12,600 x T 2,100 4, , b b 5,800 11,700 1,100 2,500 2,300 b 2,600 13,600 T 990 8,600 3,600 11,700 7,600 8,400 13,000 2, N ,400 TYN N 880 N T E f 2,300 3 EEE 6,800 N 9,500 N N 111 N N 6,500 4,000 f 40, 200, ) NTEN IEEX EIN TFFI E ET 6

11 2. TFFI NITIN N f ff f ff. T,, f. 2.1 EE IY TFFI Tff ) b f f 24. N f f f 48. ff ). T b x f j f j f 2016 x f Tb Tb 1 3: T IY IIIN TTEIE TFFI T ETIN: 2016 JTENT FT 2016 F F J Fb J J N 2: j, 5, 6 & : I 495 I : b,, &, 2, 3, 5, 6, 2, Tb 1 4: 2016 XE ETIN FT F x F ) ,5, b ) , , j f f. T f ff f b N x. I 495 f 4 f I 495 N f 4 f f. I 495 f N f I 495 N f I 495 f Tb I 495 f 133 Tb 3 f I 495 f. f.. Tb 2.2 TFFI E TEN IN TE N EIN I ff, ff z. ff. T ff 2016 NTEN IEEX EIN TFFI E ET 7

12 ff. T f T j f f. FIE 2 1: NTY TFFI T TEN F TTIN 4170: TE I 495 NT F TE 4 IN EF 130,000 EE IY TFFI, 120,000, ,000 90,000 80,000 70,000 JN FE Y JN J E T N E NT F ff I 495 f Tb. T ff f b. F 2015 j f j I 495. FIE 2 2: NTY TFFI T TEN F TTIN 4094: TE I 495 T F TE 133 IN TEKY 140,000 EE IY TFFI, 130, ,000, ,000 90,000 80,000 JN FE Y JN J E T N E NT NTEN IEEX EIN TFFI E ET 8

13 FIE 2 3: NTY TFFI T TEN F TTIN 4080: E NNET T F IN TEET IN E 48,000 EE IY TFFI, 46,000 44,000 42,000 40,000,000 36,000 34,000 32,000 30,000 JN FE Y JN J E T N E NT F 2 3 f ff j f I. T ff f 34,000 44,000. T ff J ) b ). FIE 2 4: NTY TFFI T TEN F TTIN 4114: E NNET NT F I 495 IN EF 34,000 EE IY TFFI, 32,000 30,000 28,000 26,000 24,000 22,000 20,000 JN FE Y JN J E T N E NT NTEN IEEX EIN TFFI E ET 9

14 F 2 4 f ff j f I 495 f. 23,000 32,000 ),, b f,, f ff f ff. T b f. 2.3 TFFI T IN TE NTEN IEEX EIN ff f f f x. f N ff ff. ff b f. N ff Tff f f 2008 f. F 2 5 ff f. b q. Tff b : FIE 2 5: EE NN TFFI T TE F NTEN IEEX NITIE Tff b, ff f 0.86). 2.1 ff f N x. Tff b f.. b f ff b Tb ) NTEN IEEX EIN TFFI E ET 10

15 2.1: Tff b Tff ) N 93 N -3.73% I E I 5.56% 9.71% b T x T f f E E 129 b T 4 3 f 4.17% E 3.33% E 5.88% 129 b -5.49% N N x f 3 TEKY % 0 $ 4.64% f 5.49% 3.91% : N, T/N 2013 ; 2010 bz ); I b); E ). 3.61% -3.04% T 7.52% -5.14% % 495 bz 2010) 225 f 16.22% F 7% 12.75% 3.74% 3.34% T 3 f EF ETF I /b j /b /b x 3% -4.98% -4.63% N 3.96% b F f 7/27/2017 b N. 3% 16.22% 0.01% 2.99% 0% -2.99% -3% -5.49% ff f b. Tff % -4.01% x b 40 7% F % 7% 7% -3.33% 7% T E b x T 5.83% % -3.7% b -3.79% -3.03% 3.46% -3.97% -3.13% b T 7% TYN 7% 7% N 111 7% 7% N 3 N T E EEE 7% -3.03% N 3.89% N N 111 N N E TT 6.72% 5.93% f -3.33% 40, 200, ) NTEN IEEX EIN TFFI E ET 11

16 2.4 EY EIE NITIN f b f f. f f N x. N f T f b, f. T N F f F f. T 13 ff f x f F 2 6 ff f. 2.2 f N x. T f ff b Tb ). b 4 13 F f b f. f f b f b q. f f f f ff f. f b. I 495 ff 11 ff. I. I b 3,,, x 4 6 f ff NTEN IEEX EIN TFFI E ET 12

17 FIE 2-6: F f F 2016 NTEN IEEX EIN TFFI E ET 13

18 : - - z. T b b. T,,, - b, -. :,, f f f. T-x, F-T, : -x, f-,. I f,,,,, b,,, b. -x, f- f. : f - b x x x. T b b) f -. f b b b b f. N: I f f b :. T b. b. f b b f b x.. b f b b f x. Tf, f x.. T b - f T-x, x-t, T: f,,,., x. T-x T: f,,,., x. F x T: f f x. F x T T: f x f, f. F-x T T: f-x f, f. x x T T: x x f, f. F x -T T: f x f, f x-x -T T: x-x f, f. x -T T: x f, f. b f b T f. b f f f f f NTEN IEEX EIN TFFI E ET 14

19 2.2: T Tff b Tff ) N 3 93 F 4.3% % E 5.9% I E I 4.4% 3 7.9% 4.4% x T f 16.4% b T f E E 4.6% 8% TEKY 4.2% 5% 5.3% b T 4 4.3% N N x f $ f 5% % % 4.9% 7% 3 N 5.5% 7% 133 8% f 6% 4.7% 5.6% 10.4% 225 f 5.1% 27 : N, T/N 2013 ; 2010 bz ); I b); E ). 6.8% 4% % 6.1% % 10% 11% 4 7.4% 4.9% 7.1% 4.7% 4.6% 5.6% 4 5.8% 3 T F f 4.9% 5.1% x 5.6% f 9.8% 3 EF x 4.6% 4.1% 6 4.6% F x 6.3% ETF N T 7/27/2017 b N. 6% 5% F bz 2010) T ff b T. ff f b. b 2 ) I /b j /b /b 40 b F f 5.9% 7.1% 3 T Tff % 6.8% x T 4.0% - 6.9% 2.0% - 3.9% 0.5% - 1.9% 4.6% 7% E 7.0% % T 9.6% % N b b 4.4% b 4.1% T 4.9% 4.3% 6.6% 4.1% 4.3% 4.3% 4.1% N EEE TYN f N T E 11.8% % 5.6% N N 4% N N 111 N N E TT 7.8% 40, 200, ) NTEN IEEX EIN TFFI E ET 15

20 TNIN EENT NT N ff f f f f. T..)..) ff, f ff. f f,, b. T ff f. F f, N ff NTEN IEEX TFFI NT INENTY T b f ff N x Tb T Tff f b N z. T b b b. Tff , b. ff, 2005, b b N ff 978) 454 T ff b b b f f, q. T ff b f N b: NTEN IEEX EIN TFFI E ET 16

21 b I E 62 I J f F F f E F J T J J N 0 F f x º T F J q b T F 62 f b b T T F E F E b N N ff f T E J K N E E T b b b INTN 77 T b N b E K b J N If N E b b b T b E z F T J b F T F N N 22 I F b 11 E b J - 3 b T N I Jf b x b f f T 1 b F j Y x f E b T b 62 b T x 2016 NTEN IEEX EIN TFFI E ET E : N, T/N 2013 ; 2010 bz ); I b); E ). 7/27/2017 b N E b ff f b. J K b f b ff b J F F b T T K 540 K E ff J E ff F 2 f J b I 33 F x N TEKY N 35 b 36 T K 129 E b F x J J b K F J J f J E EF F T I /b j /b /b bz 2010) E Tff b b I) b F f b J f f F 795 b N K ff T T F x E F I F F x F ff ff I b q 48 F T 86 E N b b 88 K 68 F T T 745 F Q 4 F IE 56 J J 96 K E K bb F T F b q J x b Q N E F T N F q IEI 763 N z b T 815 F E E K E K J q E N b b 87 J f 52 f Tb T b x E 41 E F F 129 J Q N b F K F T 34 N T 773 b F T 70 EF K 29 E 7 N F I 495 K K b x K E z b J b E F J E 2.3: Tff F 0.5 E TT N x f 40, 200, )

22 Tb 2 3: T f Tff, N I T N 5,200 5,800 1 E f 3 ) N 2,800 2,900 2 f bb N 3,600 3, E f K N 1,700 2,000 2, N f N 7,200 8,000 8, f 129 ) N 3,800 3, N f "T" N 5,900 6, /Tb T N 7,900 6,400 7,900 8, f N 4, f N 2,400 2,600 2, /Tb T N 6,400 6,500 5,700 4,000 6,600 7, ff f 3 ) N 3,500 4,500 5, f T N 4,500 5,300 5,900 6, E f x T N 14,400 15,300 15,700 15,900 15,100 15, f N 15, E f 3 ) N 8,700 9,200 10, N f N 8, N 7, f 3 ) N 1, N f 129 ) N 3,100 3, b & N 5, E f T 7,100 6, /Tb T N 2,100 2,600 3, x E f x T N 5,700 6,400 6,700 6, x f 3 ) N 3, E f 3 ) N 4,000 4,000 4, x f T N 14,300 13,200 11, x T E/ f N 10,800 10,500 10, E f N 3, E f N 1,200 1,500 1,300 1, N f 3 N 2,000 1,500 1, N f N 6,000 6,200 6,400 5, N f 129 ) N 4,100 4,000 4,900 4,400 4,600 4, N f 4N ) N 2,000 1, T, N 11) 4,100 4, E f 7,900 7,300 7, f N 6,900 6, f 3 ) 1 E N 3, % ) 2016 NTEN IEEX EIN TFFI E ET 18

23 Tb 2 3: T f Tff, N I f ) E f K N 13,100 13,500 14, T N 8,800 8,100 12, ) E f N 6,500 8, ) N/ f N 9,700 7, /f T T 91, , , , ,899, f T 86,000 82,953 88,100 88,296 88,606 95, , f Tb T 90,500 85,691 85,9 86,000 90,503 94, , ) N f N 19, ) N f ff N 23, ) N f N 18,700 19, ) N f x N 18,100 19, ) f N 18, ) f T 21,800 25,800 22,800 22,880 23,454 22, ) f F N 21, % ) 70 3 / /f T N 9,800 8,400 9, ) f 1 N 19, ) f N 13, N f T N 5, N N 7, N ) N f N 5,900 6,200 6, N ) f N 5,800 6, N / /f T 6,100 5,500 7, f T N 2,100 2,800 3,000 4, T F E f 3 ) N 5, Tb N f 3 N 9,000 9,700 10,300 8, Tb f b T 14,200 /Tb T N 4, f 3 ) N 8,500 8,000 8,100 8, NTEN IEEX EIN TFFI E ET 19

24 J T f K E zb E K F b q 0 J º T b K b J N b b E J b J K z b E T F Z x T b b Tb F N x K T K E F N K b K T b T IEI E TT N x f 40, 200, ) F 87 3 J f F E F 70 x q E F F b J x F 2016 NTEN IEEX EIN TFFI E ET 67 7/27/2017 b N. b b : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b F N E T IE F J 133 F N E T 129 I N F 3 x Ff F T F F 959 N x q f b Ff b b F F K 171 F 132 J f x b f F 810 z E 811 F F 169 I F T I /b j /b /b bz 2010) Tff b b I) b F f N b F T 27 f J 225 T E f f 142 F J ETF f K b Nx f f N F E F F J E f b 958 J T 802 I b b b J 783 Fb T Tb f b f b T f 109 T x b b b b F f f EF b f 162 E b F F x E 793 f f x 103 b 120 3N b T 818 E Y N x f T E E 3 40 E T 151 I TYN b T x 2.4: f Tff

25 Tb 2 4: T f f Tff, N I f q N N f 27 ) N K N f N 6,000 6, K f 3 ) N 1, E f N f 3 ) N 3,900 T N 2,800 2,800 2,600 2,400 2,500 2,400 2,400 2, f 4 ) N 4,800 4, E f N 4,100 4,100 4, f 4 N ) N 2,400 2,700 2,900 3, f N 4,700 4,700 4, f N 3,100 3, N f q T & N 21, f N 19, f/tb T N 2,400 2, b f 40 )/ q N 2,400 2,100 2,200 2, N f N N f 129 ) N 9,100 9,100 8,900 9,400 9, f f ) N 9,700 9,400 9, f N, T 07) 4,000 3,900 5,800 3,800 3,800 3, N f ) N 4,300 3,900 4, I f 4 N ) T 107,415,100, , , , , I-495 F N f Ex 36 56, I-495 F f Ex 35 43, f b N f N f N 2,000 5, N f N f I ,400 24,313 24,682 23,814 25, N/E f 3 N 3,700 3,600 3, f 27 ) N 3,800 3,500 3,800 3, b f 1, /f T N 11,200 11,700 9, x E f N 8,800 8,900 8, E f N 2,500 2,500 2,600 3, E f T N 4, f K N f N f N 4,200 4, % ) 2016 NTEN IEEX EIN TFFI E ET 21

26 Tb 2 4: T f f Tff, N I f f 3 N 9,500 8, f 27 ) N 1,400 1, f 4 ) N E f N 2,300 2,300 / f/f T 127 N 2,200 2,300 2,000 2,100 2,200 2,400 2,200 2, E f 3 N 7,700 8,100 9, f f N 2, f 27 ) N 1,600 1,100 1, Q f x N f 3 ) N 3,600 3, E f 3 N 2,600 2, N f 129 ) N 3,200 3,300 3,100 3, , f ) E f / N 14,200 14, f ) N f I-495 T 14, f ) f I-495 T 26,500 24,700 33,600 19,800 19,870 20,747 22,046 19, f/f T N 7,900 7,900 8,300 8, ) f K N 9,100 9, ) f 4 N ) N 9, E f f N 13, ) E f N 11,700 14,200 14,300 13,400 13, ) E f f ) N 7,900 7,900 10, ) f N 9, f/f T 5,300 4,500 3,900 3,900 3,928 4,149 4,3 4, ) N f N 9, ) f N 7,400 7, /f T T 91, , , , ,899, /f T T 86,305 92, , , ,600 86,900 87,147 89, , , N f I-495 T 99, , , f I-495 T 119, f T 104, f ) T 100, ,091 99,800 99, ,097 99, f 4 N ) T 118, , , f 40 ) T 94,300 91,200 85, , / /f T N 9,800 8,400 9, f/ T 7, ) f f) T 11,100 8,900 10, % ) 2016 NTEN IEEX EIN TFFI E ET 22

27 Tb 2 4: T f f Tff, N I /f T N 5,100 4,900 5,300 5,000 5, ) N f N 12,100 17, Tb ) N f 40 ) N 10,900 11, Tb /x f/tb T N 7,100 6,500 7,400 7, ) f / N 6, N / /f T 6,100 5,500 7, N ) N f I-495 T 26, N ) N f T 12,100 10,500 14,700 13, N ) N f f N 12, N ) I-495 T 21,800 18,100 19, N ) f I-495 T 19, f/f T 13,300 13,100 12,700 12,900 13,674 13,506 12, ) E 3 N N 7,800 9,000 8,200 8, ) f 3 N N 13, ) f q N, 02) 6,100 6, I-495 N f 4 N ) T 96, , ,550 98,369 97, ,454 93,807 99, I-495 f 3 T 97,600 96,841 97, , , ,853 96, N f 3,100 2, f N 2, f N 3, N f N 10,900 10,500 11, N f f ) N 8,600 9, , f N 8,300 8,700 9, /f T N 8,600 8,700 9,000 9, b N f f ) N 1,000 1,200 1, E f 4 ) N 3, f b N T N f N 2,400 2,400 2, T f 129 ) N 3,200 2,800 3,200 3,100 2, E N) f 4 ) N 1,800 1, f N f ) N 3,400 3,100 2,900 3, f f N 4, N f q 3 ) N % ) 2016 NTEN IEEX EIN TFFI E ET 23

28 N N,, N N T z E TT J Q 40, 200, ) N z ff K N J x T Ex F E b F 7 E b f T T b E T b F E J z T I E º T N x f 0 J z T b K N E F E F F b T b b b J ff I J ff f b. b 133 T : N, T/N 2013 ; 2010 bz ); I b); E ). I TEKY T F bz 2010) 200 Y b K F T ff 748 ff T F x T J T E I /b j /b /b 7/27/2017 b N. N b b F f F b b 1 E 199 b b b b N K b 193 K K 953 Tff b b I) x b 18 T T 749 b b 208 F 2016 NTEN IEEX EIN TFFI E ET b T T E E f F T J N x F 300 Y N E E 6 f 185 T E b 12 b 11 f F 3 b 3 2 F f I x F 829 Z 756 T T T 176 b 198 b f 179 f b J J T K 3 N K f b I F 177 f F x T f K T b F f x N TY N 184 K N 188 F 183 T 872 T F x q 761 T J F Jff b T F 603 Q T x J F I N T 2.5: Tff J N b T I ETEN T b K b f 1 E E,, N N 211 Q E F

29 N I Tb 2 5: T f Tff, E f N 6,700 5,400 4,700 5, b E f N 2,700 2,200 2, b f b N 2, N f ) N 2, E f b N 5, E f N 5,000 5, Fx N f ) N 2, f N 3,900 3,300 3, J N f ) N 1,400 1,600 1, / T N 8,800 8,200 8, E f N N 9, N f N 16, f N 16, f N 8,700 9, f T z N 16, E f ) N 2, / T 11,400 14,100 14,500 12,000 12, N N & N 11,825 9,700 8,900 9, N f N 14,300 12,600 12,500 11, f N 10,200 9, E f ) N 4,200 4,400 4, f J N 3,600 3,300 3, E f J N 4, f N 4,600 3, / T N 1,800 2,000 2, N f /) N 1,500 1,300 1, N N f N 13, N f N 6, N /Tb T N 6,300 6,500 6, f N 3,100 3, N f z 2006) 1, N f N 4, f N 2,800 3,700 N, N N 09) 1, , % ) 2016 NTEN IEEX EIN TFFI E ET 25

30 N I Tb 2 5: T f Tff, N 200 T & 12,300 12,700 13, F / / T N 14,300 11,300 14, ) f N 12, N 202 T & 10,700 12, ) b T 13, ) E f Fx N 11, ) N f N 12, ) N f J N 8,400 8,300 9, ) N f N 12, ) f J N 9, ) f Fx N 12, ) E f N 16, / T T 13,400 13,207 13,700 13,700 13,647 11,100 12,453 13,111 14,075 12, N 11,500 11,900 11,800 12,300 11,100 11,400 12,667 11,619 11, ) f N 11,600 11,600 11, N f ) N 3, T N 2, f N N 3,300 2,400 2, Tb / /Tb N 6,200 6,000 5, N T N 1, E f N 2, E f 2006) 1, f ) N 5, % ) 2016 NTEN IEEX EIN TFFI E ET 26

31 N N f K F I, N 1 J ff N J N 111 J J E E N I Y N 224 b b F E E E Kb K J 231 K 970 F N T E ff N, N f F F 906 F T F F F 805 f 234 E 3 - b N K x : b Tff Tff b b I) b F f I /b j /b /b bz 2010) T : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b. 7/27/2017 b N. N x f 40, 200, ) T N 219 K b I I Tx N I b b T Y N º E T F 2016 NTEN IEEX EIN TFFI E ET 27 z f E T T

32 N I Tb 2 6: T f b Tff, f ) N E f ) N f b ) N f N 3,500 3,500 2, f ) N 3,200 3,000 3,300 3, N, 219 T 08) 2,000 2,200 2,100 2, N N N N N f N N & N N N f ) N 270 ) N 3,400 2,800 3,100 2, N & N N 1,900 1,700 1,700 1, N f N 2,100 2,300 2, f ) N 2,200 2,400 2, N f N ) N K / b/tb T N 10,200 10,300 10,200 11, ) E f N 13, ) f N 11,800 10,900 11, /b b/ N 7,900 7,500 8,700 14,600 8, T N f ) N b/tb T N f f N 1,100 3 % ) 2016 NTEN IEEX EIN TFFI E ET 28

33 E b K N J T K N f T T ff F J K ff Tb I 7 4 E 5 E 0.5 TEKY E TT 0 40, 200, ) b N x f 6 F F T x f T T z K K T b b J T b 0 K b º 248 J E 435 T F F b T F K f 7/27/2017 b N x : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b. T 262 I /b j /b /b bz 2010) f E E b K N b F T K T E T ff F b E T f E T E N b K b b b N b 306 F Tff b b I) b F f K T 249 x 305 f F x bb 4 N E q 276 F 396 E 767 E F N b Q J T E : Tff J F I F 729 E f b b 7 6 F J b 2016 NTEN IEEX EIN TFFI E ET F E b ff N T N E T T T 278 F J F N J b F 364 b F E bb b E T E E b K N b F b J N F I f 709 E EF f N f F b b b b b F F b F F F f b 676 b b b b f b b T b x K T b 3 x x F N E T J F T b b T E N b b b T E N b E E f Y N f b J F E E b T x TYN T b T 29

34 N I Tb 2 7: f Tff, E f N 1, f N 13,400 12,700 14, f T 9,300 10,747 11, f x N 6,900 6,200 6,100 6,000 5, N f 6 N 1,300 1, f N 1,100 1, , /Tb T N 7, N f N 10,700 8, f I-495 N 7,400 6,800 7, E f N 8,000 N 96),, I J x 08) 15, N f N 15, E f F T 11, T 11, f N 9,500 9, f F T 9, f N 10,300 7, f N 6,500 6, b N f F N 3,600 3, f 3 ) N 1,700 1,500 1, f J N 13,400 11, /Tb T N 5,000 4,800 4,700 4,400 4, N f N 5, f N 3,900 4, N f ) N 2,300 2, N f N 5,900 6, N f T 20, N f F 32, F 7, f T 02), N 06), F 07) 24,700 28, F N f ) 9, ff ) 11, F E f N 9, F N f N 2, F f F E/ f & T 12, F N f T & N 13,100 13, % ) 2016 NTEN IEEX EIN TFFI E ET 30

35 N I Tb 2 7: f Tff, F N f T / N 19,900 15,800 18, F f T 15, F E f K N 10, f T 22, f T 5, f T 18,500 17,300 17,361 18,998 20, E f N 9, f 3 T ) N 3, f N 9,500 8, f N 1, I E f 15, I E f N N 6,900 9,000 8, I E f N 12, I f f ) 13,200 12,300 12,400 11, I N 11,800 11,700 12, J f T 01), F 07) 1, Jff T J N f N 6, K N f x F 1,185 / T N 8,800 8,200 8, f ) N, I 08) 6,200 5,800 7,510 5,500 5,600 6,400 6,200 6, N 10,500 10,900 10,000 11, E f N 8,900 11,300 9,900 10, ) N f T 4, f N 2, f 3 ) N 1,300 1,100 1,100 1, f T N 4, N f I-495 Ex T 55, N f T 33,500 48,919 53,650 54, f T 17, f I-495 Ex T 35, f T 37,252 37,978 37,857,839 24,084 42, f 3 T ) T 40,900 / T 11,400 14,100 14,500 12,000 12, N f ) N 12, f E N 12,300 12,300 11,700 11, ff ) 7, f 9,800 9,200 7, E f b N 7, % ) 2016 NTEN IEEX EIN TFFI E ET 31

36 N I Tb 2 7: f Tff, E f,, N 5,400 4,500 4, E f J N 12,600 13,600 / T N 1,800 2,000 2, /f T N 11,200 11,700 9, x E f F 9, x E f 8,300 8, x E N 8, x f N 8,900 8,400 8,300 8, x f F 9, x f N 8,000 7,600 8, x f F 13,274 3 x f T 9,500 8,900 7, E f 3 ) 02), 07) 10, N f N F 5, F N f ) T, N 7,900 8,400 8, E f N 5,400 5,600 5, E f T 17,400 17, f 02),, 15,550 17, f N 7,900 7,900 7, N 20, f N 8,500 8, E f N 3,200 3, f N 4, E f, N 11) 9, ) f ) I 12) 27, ) f N 19, ) E f N 97), F 07) 13, ) E f N 11, f ) N f b 11, f ) N f N 12, f ) f N 16, f ) f 3 f ) N 12, f ) f F 14, F / / T N 14,300 11,300 14, ) f T 24,000 24,900 24,803 25,076 24,564 25,504 25, ) f F N 12,800 13,100 12,600 12, N, T06, /Tb T 09) 19,300 18,900 18, /f T T 86,305 92, , , ,600 86,900 87,147 89, , , / T T 13,400 13,207 13,700 13,700 13,647 11,100 12,453 13,111 14,075 12, % ) 2016 NTEN IEEX EIN TFFI E ET 32

37 N I Tb 2 7: f Tff, ) N f F T 18,576 22,100 22,3 21,269 19,600 19,669 20,132 24,456 17, ) f T 24, /Tb T N, T05) 25,000 2 N ) N f T 30,670 29,700 30,019 28,583 30,100 30,206 27,571 30, ) N f T 30,400 24,500 25,600 25,501 26,200 22,941 23,188 23,674 23, f/ T 7, ) N f E T 18,400 18,241 17,708 17,000 17,060 17,344 17, ) N f 02), T07) 16, ) f N 7,400 7, ) f N 10,300 10, ) f N 5, /f T N 5,100 4,900 5,300 5,000 5, ) f I 6, T ) N f 42, T ) f F 32, T ) f T 29, f T f F ) N 6,900 7,000 7, f ) f T 11,900 10,600 10,637 12,157 12, f ) f 8,100 7, f ) f N 8,800 9, I-495 N f T 130, , , , , , , , , , I-495 f Tb) T 130, , , , , , , , , , f N f T F 4, N f N 7,800 8, f N 9,700 9, f T 5,800 5, x E f ) N 4,200 3, f 3 ) N 3,300 3,800 /f T N 8,600 8,700 9,000 9, f f N 10, N f N 4,000 4,600 4,200 4, N f 3 f ) 6,200 4, f N 10,300 11,400 10, f 15, ff ) N f T 2, ff f T 1, f N 4,700 4, T N f N 1, T f f N 3,900 4,900 4, % ) 2016 NTEN IEEX EIN TFFI E ET 33

38 N I Tb 2 7: f Tff, T f N T N f F 4, N f N, T 15,700 02), 05), 416 N f F N 07,10) 14,400 16,100 16, f F & 15, f F N 7, f ) N 10,800 10,900 8, /Tb T N 3,000 3,200 2,800 2, F E f ) I 26, F f N 15,200 15, F E f Tx ) T 17,900 17,563 17,761 16,700 18,327 19,266 14, F f ) T 17,700 17,000 16,680 19,400 17,200 17,693 18, F f T 22,200 13,300 13,248 13,394 14,764 15,499 15, f N 3,100 3,200 3, F E f 1, N f N 5,600 5,800 7, f E f & N 12,800 12,100 12,200 12, f N f T N 27, f f 9,900 9, N f x N 8, N f 3 f ) N 6,200 6,000 5, f x N 5,500 5, f 6,200 8,000 7,600 6, b f I ,500 10, b f I-495 N 7,400 7,700 7,300 7, f x T & N 16,300 16, % ) 2016 NTEN IEEX EIN TFFI E ET 34

39 T E E N K I N E, N T N E N T T q 119 b b b J f f T ff E E E T f b F N E I 467 I, N T 'N N 111 E T q Tb 920 N f N K F 111 N f 1 J 919 N 458 J J J E E T N I Y N bb F N, N N T E Kb 231 F J K F K b Tff b b I) b F f I /b j /b /b bz 2010) T : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b. 7/27/2017 b N. º I E Y 2016 NTEN IEEX EIN TFFI E ET : Tff N x f 40, 200, ) E T T

40 Tb 2 8: T f Tff, N I N N & N 1,790 1,400 1,487 1, f N 1,600 1, N ) N 1,900 1,900 1,400 1, N f ) N T E N f 111 N ) N 1,400 1, E f ) N 1,800 1,800 1, T 2, E f N 4, N f N 2, f N 9, f Tb ) N 4,400 3,600 3, N N & N 2,200 1,800 2,4 1,800 2, f N N f ) N 2, N f N 3,000 3, T 1, E f N ) N f ) N 7,800 7,600 6, N N N & N 7,297 6,400 7,170 6,100 7, ) N f N 3,000 3, ) N f E N 3,100 4, ) N f 119 ) N 6,100 5,900 6,000 5, ) f ) N 3, ) E f N 9, ) f N 11, ) f N 9,800 10,100 10,100 8, ) f 111 ) N 11,600 8, ) f N ) f / N /b b/ N 7,900 7,500 8,700 14,600 8, T ) & f N 7,300 5,700 5,800 5, /T T N 14,200 13,500 13, ) E f T ) N 7,900 8,700 8, ) E f N 10,300 10,500 T 2, f 119 ) N 1,600 1,900 1, Tb E f N 7, T ) f N 7, % ) 2016 NTEN IEEX EIN TFFI E ET 36

41 40, 200, ) b F j f J F T E TT º 1 N F E f E K T K z T b E E J b T J J N x f K Q b N ff N f f K N b N J F F ff Jb K 527 b Tb 904 II IIN N T T N N F I N 7/27/2017 b N. f x E f : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b. E 93 K T I /b j /b /b bz 2010) 535 Tff b b I) b F f K f 533 F J J b J b T F 516 b F F E b x T F J f I F 11 Y 703 E j E 903 f Y f K I F E f : Tb Tff Y 129 f x E K E z b 545 q J N q b b I K E K E K J j J E b T J F T b I E I xf b T 474 N b F 501 N J F I 498 f F N E 544 J F 491 N q q K E b E 770 J 508 b N K E 509 N J F z b q x F T Q F f E NTEN IEEX EIN TFFI E ET F J F N F T f J J 5 K E J K 772 K b J J E TEKY 524 N x N F b F E E f 261 E E K T E F E b N F K T F b T f f F T b T F E T T J N b b b Y b K N T

42 Tb 2 9: T f Tb Tff, N I f ) N 2,100 2,300 2,300 1, /Tb T N 7,900 6,400 7,900 8, /Tb T N 7,800 /Tb T N 6,400 6,500 5,700 4,000 6,600 7, N f E N 1,500 1, N f N 2,300 1,800 2, f E N 3,800 4, f N 6,100 5,800 /Tb T N 5,000 4,800 4,700 4,400 4, T 23, E E f 12,400 11,200 10, E E f N 15,500 11, E E f N 11,600 10,600 10, E E f N N 10,100 8, E f N N 11, F N f 133 ) N 3,100 2, /Tb T N 2,100 2,600 3, I f 133 ) N 6,800 6,100 5, K f N N f N 4,300 4,400 4, N f E N 4, N f N 4,600 4,200 4, f E N 4, E f E N 2,300 2,400 2, N N f E N 5,800 5,500 5, N f E N 2, N f K N 4,100 4, N f 133 ) N 5,600 4,900 4, E f ) N 1, E f b N 1, N f N 1,500 1,700 1, f ) N 6,700 6,100 T N 3,100 3,100 3, T f N 3,800 3,300 3,500 4, N f 133 ) N 3,700 5,300 5, f ) N 1,200 1, f 1,400 1,400 1,600 1, T N 15,900 15, /Tb T, T06, 09) 19,300 18,900 18, ) E f N 13,500 13,100 % ) 2016 NTEN IEEX EIN TFFI E ET

43 Tb 2 9: T f Tb Tff, N I ) f I-495 N, T 14, /Tb T N, T05) 25, T N 12,900 13,500 12, ) N f I-495 N, T 24, ) N f N 17,200 17, ) f / N 23, ) f N 17,400 17, ) f I-495 T 28,300 27,300 27,593 26,273 26,500 26,593 26,114 32,858 33,599 24, ) f T & N 16,200 15,967 16,548 18,500 18,428 18,630 17,158 17, ) f N 19,700 22, ) f N 12,200 13,600 12, I-495 f 133 ) T 115, , ,718,253, , , E f N 8, E f ) N 5,200 5,400 6,200 5, f ) N 11, N f ) N 9,300 9,900 10, N f N 2,100 1, f N 3, f N 3, f N 5,000 4,600 5, T N f I-495 N 1,500 1,400 1, T N f 133 ) N f I-93 N 1,400 1,600 /Tb T N 4, b N 6, E f N 7,900 5,200 7, f N 9,500 8, f N 7,300 6,400 6, b f N 8,300 7,200 % ) 2016 NTEN IEEX EIN TFFI E ET 39

44 557 F E 5 F T b T F b T T z 4 0.5J E TT 40, 200, ) N x f b 0 T x f E f K K T b K b x f F K b T b º f T F b f T b T f f E f Tx N I b 7/27/2017 b N. ff f b. F F f T F ff b b E F N N bz 2010) EF F : N, T/N 2013 ; 2010 bz ); I b); E ). b F f I /b j /b /b b N F Tff b b I) T 6 x N x f 3 40 E E T b T f f 2.10: Tb Tff N E T E F T 551 I b E 3 T T 151 F Q x Q F J F K NTEN IEEX EIN TFFI E ET 603 T F K ETF 218 q T F b N N F 593 b J Q I 548 T b b f 600 I T x TN T I z I b N TYN ff F x F N T E x F 556 E N T J F F 861 T f 580 F E E,, N N 558 N N,, N N 575 N N,, N N 40

45 Tb 2 10: T f Tb Tff, N I f f N 2,100 2, b E f N 2,100 1,800 1,500 1, b N f 4,500 4, f K ) N 2, f/tb T N 2,400 2, b N f f N 5,000 4, b f f N b f 3 N 2,900 2,800 2,700 2, F N f N 8, f b N N f b N 2,700 2,500 2, f x N 3,300 2,300 2,600 2, N N 7,100 7,200 7, T ,2010,2011) & N N 2003, 2009) 20,993 20,683 19,601 19,500 16,204 20,300 20,586 22,563 20, x N f N 14, x N f TJ xx z N N 8, x N f TJ xx z N 7, x f N 11,700 12,500 N /Tb T 218 N 6,300 6,500 6, N E f F N 1, K ) f 7,900 7,300 6,400 7, K ) f 3 N 98), T 11,500 K / b/tb 234 T N 10,200 10,300 10,200 11, ) ) f T 9,550 9,483 9,8 9,494 9,636 8,565 10, ) f 3 F ) N 5,300 5,000 6, T & N 575 N T 64,280 76,500 77,200 75,832 77,423 73,100 86,453 87, Tb/f T T 77,603 90,400 86,200 84,673 83,000 86,900 87,987 88,047 96,625 98, Ex 35 N N 6, Ex 35 N 7, F N N & N 2011) 8,000 7,700 7,805 6,700 6, x ) f f 8,400 7,200 % ) 2016 NTEN IEEX EIN TFFI E ET 41

46 Tb 2 10: T f Tb Tff, N I Tb /x f/tb T N 7,100 6,500 7,400 7, b N f N 1,400 1,300 1, b f N 2, b E f 3 F ) N 5,300 5, Tb/f T 593 N 6,500 7,500 Tb / 603 /Tb T N 6,200 6,000 5, /Tb T 755 N 3,000 3,200 2,800 2, f E f 3 11,600 10,800 10, f f 3 x ) 9,800 8, f f 3 N 14, N f K ) N 1, % ) 2016 NTEN IEEX EIN TFFI E ET 42

47 2.11: f Tff Tb b 1 K K T F K b K 225 IE 0 º J F TN T T F 0.5 E TT N x f 40, 200, ) b N b bb 647 E F T J b T b F T F b 2 b T N E f N b T T f T f f N b b b F - bb f F 27 N J E N 2 f T E f 225 f N x b J ff f 4 J T b J ff b 127 f I b b b 2016 NTEN IEEX EIN TFFI E ET F 7/27/2017 b N. : N, T/N 2013 ; 2010 bz ); I b); E ). ff f b. b f f T 656 ff b b F b 672 x E 670 b f x E b f b T 604 E N J N x 607 b F 3 T N f F E K b x x ff I b Eq F T E EF 2 F b F T Y F N 837 K b I /b j /b /b T 495 E b F f F T Tff b b I) bz 2010) J T T 623 F f N 495 T b T E K 2 ITTETN 636 J E T T N N ETF b F 613 b b f T f F N E K T J N b b b E Tb T b N J N K F f K K I T F b F N N I TN N Q b J TYN I I I E T b N T E f f

48 N I Tb 2 11: T f f Tff, N 3, I & T07) 31, N f I N 17,000 14,700 15, f N 14,000 15,500 13, f N 10, N f b N 10,000 9,800 9, f ) T 07) 11, N f F N 2,000 2,100 2, N f N 2,100 2, N f N 9,400 8, f 40 ) N 6,700 5,100 5, f N 7, b N f 40 ) N 3,200 2,900 3, b f 40 ) N 1,300 1,800 1, E E f 225 ) N 3,100 3,100 3, F E f N 1,200 2,500 2,400 2, N f 40 ) N N f xb N 3,600 3,600 3, E f 225 ) N 1,700 1,700 1, f N 1, K N f 40 ) N E f 1 ) N 4,700 5, E f N 1,500 1, E f N 3, E f N 8,200 8,500 8,500 7, E f N 12, f N 8,400, 625 Nx N f ) N 09) 4,700 3,300 3, N N f N 5, f 40 ) N 4,600 4,900 4,800 4, / f/f T N 2,200 2,300 2,000 2,100 2,200 2,400 2,200 2, E f 225 ) N 1,000 1,100 1, f F N 1, E f 225 ) N 1,900 2, N f N 3,700 3,500 3,800 3, f ) N 4, f N 6,400 6,100 6, f/f T N 7,900 7,900 8,300 8, T N 11,100 9,600 10, % ) 2016 NTEN IEEX EIN TFFI E ET 44

49 N I Tb 2 11: T f f Tff, ) E f T07) 19, ) E f Nx 13, ) E f f N 11, ) E f T 9,550 T07), 643 ) f N 11) 18,737 16,700 05), 644 ) f Nx T07) 16,500 11, ) f 225 ) N 9, ) f T 12, T N 5,400 6, ) f 27 ) N 9,100 9,000 9, ) N f N 4,900 5,300 6, ) N f ) N 6,400 6,700 7, ) f b N 5,300 5, ) f ) N 5, ) f f ) N 5, T 4,700 5, f/f T 5,300 4,500 3,900 3,900 3,928 4,149 4,3 4, ) N f 225 ) N 4,200 4, T N 7,500 7,600 7,100 7, Tb/f T T 77,603 90,400 86,200 84,673 83,000 86,900 87,987 88,047 96,625 98, f/f T 13,300 13,100 12,700 12,900 13,674 13,506 12, T N 4,400 4,100 4, ) E f F N 9, ) E f N N 10, ) f b N 8,800 9, ) f N 4,500 4, ) f N N 10,000, 667 f f ) N 2,600 2, Tb/f T N 6,500 7, T N f ) 6,450 5, T N f I-495 N 4,600 4,800 5, T f ), N 1, T N f ) 4,525 N & 673 T F N f F T 2, b/tb T N % ) 2016 NTEN IEEX EIN TFFI E ET 45

50 3. Y F NY N EITIN T ff b f, f b f b: N = N x f T = f T, f = TE = T E & = & ) = = f N = N NT = N f T = = I. = T = Tff F = F ) bb f f: N N.. = N.. f =.. = T.. T = T. = I = I = = = = = = = N = N = E = E = = b = = Tff = T = T TI = T I = f 2016 NTEN IEEX EIN TFFI E ET 46

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