From: Subject: Agility WC-2008, live results Date: Fri, 26 Sep 2008 12:12:17 -0300 MIME-Version: 1.0 Content-Type: multipart/related; type="text/html"; boundary="----=_NextPart_000_0000_01C91FD1.1E5D80C0" X-MimeOLE: Produced By Microsoft MimeOLE V6.00.2900.2180 This is a multi-part message in MIME format. ------=_NextPart_000_0000_01C91FD1.1E5D80C0 Content-Type: text/html; charset="utf-8" Content-Transfer-Encoding: quoted-printable Content-Location: http://agilitymm2008.kennelliitto.fi/results/list/WC2008/show/netti/result.php?cid=12&tm=Y&ty=R&co=Y =EF=BB=BF Agility WC-2008, live results
=20

Live results
Large Agility Team + Large = Jumping=20 Team

Standard time:=20 39.00 + 30.00
Pos   Country   Time Faults Refuses Score
1 BRA Brazil 217.11 0 1 15.11
Dino = Brown Samir Abul = Laila
42.22 3.22
Gaya Bruno = Moreno da=20 Luz
42.12 3.12
Dino Jose Luiz = Filho
40.65 1 6.65
2 NED Netherlands 211.66 2 0 17.49
Flinn Roy = Fonteijn
38.87 0.00
Kate Martjin = Servaas
38.65 1 5.00
Dice Walter = Sontrop
36.65 0.00
3 BEL Belgium 208.53 2 1 19.00
Yoni Annick = Diels
39.31 1 5.31
Angie Theo = Uten
39.64 1 1 10.64
Banjo = Boy Sally = Andrews
36.53 0.00
4 FRA France 217.94 2 0 22.74
Ulysse dit = Vicomte S=C3=A9bastien Venat
38.79 0.00
Urfee Fabien = Tarillon
39.69 1 5.69
Van's Sylvain = Jacquemin
37.41 0.00
5 DEN Denmark 208.39 3 1 25.68
Froeken Lis = Moeller
38.04 1 5.00
Simic Sarah = Lorentzen
35.91 0.00
Panik Lone = Sommer
38.76 0.00
6 SVK Slovakia 212.88 4 1 33.00
Gera Michala = Mracka
39.91 2 1 15.91
Fatima Renata = Kralova
39.04 0.04
Benny Helena = Potfajova
36.88 2 10.00
7 CZE Czech Republic 225.09 3 2 43.63
Rohan Jan = Smocek
39.56 0.56
Dj=C3=B3 Olga = Edrova
38.46 1 5.00
Laky Radovan = Liska
42.37 1 8.37
8 CAN Canada 218.22 5 1 46.28
Spirit Lynda = Orton-Hill
42.11 3.11
Rio Tiffany = Salmon
38.40 0.00
Encore Susan = Garrett
34.54 1 5.00
9 ITA Italy 227.60 3 2 46.68
Manuchao Gianni = Orlandi
40.36 1.36
Omelette Irene = Unkauf
37.92 1 5.00
Monday Vittorio = Papavero
39.50 0.50
10 POL Poland 222.45 5 1 47.67
Christine Marta = Kordos
41.45 2 12.45
Cir Iwona = Kalisz
36.91 2 10.00
Passim Leszek = Kalisz
38.87 0.00
11 JPN Japan 225.19 3 3 49.16
Pixie Hideya = Inagawa
38.03 1 1 10.00
Vite Naomi = Kameda
43.13 1 9.13
Queen = Bee Toshiyuki = Oba
45.98 1 11.98
12 RUS Russian Federation 220.85 1 0 106.86
Bacon Svetlana = Tumanova
37.19 0.00
Nessy Elena = Taktaeva
39.00 0.00
Dan Anatoly = Laryushin
37.80 0.00
13 SUI Switzerland 227.95 5 1 129.25
Seven Sandra = Ulmer
37.31 0.00
Kenjo Kurt = Haussener
59.00 1 0.00
Shiro Martin = Eberle
37.39 2 10.00
14 SLO Slovenia 224.47 5 1 136.34
Day Tja=C5=A1a = Gregori=C4=8D
38.91 2 10.00
Kal =C4=8Cu=C4=8Dek Matej
37.44 1 5.00
Veni Petra = Pe=C4=8Dar
36.78 0.00
15 SWE Sweden 234.74 7 0 138.61
Arwen Malin = T=C3=A5ngring
59.00 1 0.00
Excel Veronica = Bache
38.82 1 5.00
Zack J=C3=B6rgen = Tellqvist
38.31 2 10.00
16 LAT Latvia 248.98 3 3 151.98
Cap Peteris = Akimovs
42.76 3.76
Alexa Evija = Ziemele
47.56 1 13.56
Ergo Vladislava = Akimova
41.73 1 7.73
17 EST Estonia 264.20 2 1 152.20
Dixi Anne = Tammiksalu
46.08 1 12.08
Queeny Kalle = Kaljus
59.00 0.00
Rej Natalia=20 Garastsenko
49.04 1 15.04
18 AUT Austria 239.28 5 2 153.62
Ginga Michaela=20 Brandstetter
37.66 2 10.00
Winnie Marion=20 Lukas-Wildmann
40.12 1.12
Knox Sonja = Mladek
40.59 2 11.59
19 USA United States 236.22 0 0 200.09
Scream Ann = Braue
37.34 0.00
Juice Marcus = Topps
35.94 0.00
Jive Carrie = Jones
59.00 0.00
20 CRO Croatia 247.74 0 1 213.36
Myf Alen = Marekovic
37.35 0.00
Djurdja Zeljko = Gora
38.03 0.00
Hita Domagoj = Vidovic
59.00 0.00
21 LTU Lithuania 245.44 5 1 224.88
Jaya Dalius = Strazdas
59.00 1 0.00
Fortuna Algirdas = Valciukas
37.56 0.00
Quick Erna = Valciukiene
40.19 1 1 11.19
22 RSA South Africa 260.16 2 0 230.08
Gusto Patricia = Anne=20 Tutton
46.34 1 12.34
Dylan Linda = Barnard
51.37 12.37
Ostara Alison = Heather=20 Roets
37.08 0.00
23 HUN Hungary 265.01 4 0 233.93
Chilli Krisztina = Kabai
59.00 0.00
Nevian Anna = Eifert
59.00 1 0.00
Cleo P=C3=A1lma = Horv=C3=A1th
39.74 0.74
24 LUX Luxembourg 261.49 7 3 260.64
Jamie Sandra = Ney
59.00 1 0.00
Brady Julie = Celmar
49.54 4 2 40.54
Jane Raymond = Rossi
37.85 1 5.00
25 FIN Finland 252.03 1 0 305.00
Yoko Jouni = Orenius
37.62 0.00
Iiro Sari = V=C3=A4h=C3=A4niitty
59.00 0.00
Zen Jaakko = Suoknuutti
36.00 1 5.00
26 ESP Spain 269.42 4 0 313.78
Angie Antonio = Molina=20 Aragones
59.00 2 0.00
Boss Oscar Muniz = Martinez
37.64 0.00
Xonny Cesar = Losada Mera
59.00 1 0.00
27 GBR Great Britain 267.77 2 1 316.48
Kai Karen = Stanbrook
59.00 1 0.00
Spice David = Alderson
38.29 0.00
Beanie Lesley = Olden
59.00 0.00
28 NOR Norway 266.47 1 3 324.47
Tessie Hans Valter = Jensen
44.30 5.30
Jigma Merethe = Elke
41.07 1 7.07
Fr=C3=B8ken Eddie = Tr=C3=B8ber
59.00 0.00
29 GER Germany 272.20 5 1 325.20
Don Tobias = Wuest
59.00 0.00
Gise Alexander = Beitl
40.06 1 1 11.06
Garry Wolfgang = Schmitt
59.00 2 0.00
30 POR Portugal 298.79 1 0 4111.79
Ben Sergio = Sousa
45.79 1 11.79
Mell Filipe = Vilhena
59.00 0.00
Breja Domingos = Carneiro
59.00 0.00
=C2=A9 Suomen = Kennelliitto - Finska=20 Kennelklubben ry. - All results are unofficial until=20 confirmed
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