Chicago Wolves

GP: 6 | W: 2 | L: 4 | OTL: 0 | P: 4
GF: 14 | GA: 25 | PP%: 33.33% | PK%: 76.19%
GM : Camil Costandi | Morale : 60 | Team Overall : 58
Your browser screen resolution is too small for this page. Some information are hidden to keep the page readable.

Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Player Name C L R D CON CK FG DI SK ST EN DU PH FO PA SC DF PS EX LD PO MO OV TA SP
1Mitchell Stephens (R)X100.007671896571747762785763656044446697610
2Morgan KlimchukX100.007167816967768062505862625944446493610
3Hudson FaschingX100.008179877279717557505356665346466292600
4Cody McLeod (C)XX100.009299406681487152255456617578805993590
5Patrick BrownXX100.007677747277818854685548634646465992590
6Adam HelewkaX100.007976876876555460506254665144446192590
7Mikhail Vorobyov (R)X100.008176917076535259745856665344446290590
8Phil LaneX100.007775816575515154504558635544445892550
9Greg ChaseX100.007468876168555749614646604444445389530
10Zac LarrazaX100.008072996572495146503848634644445368520
11Petter GranbergX100.007876827076748247253740633848485490600
12Andrey PedanX100.007381556881646657254752624945455893590
13Aaron NessX100.007166846966697354255241613948485591590
14Philippe Myers (R)X100.007679706779606252254742624044445478580
15Calle Rosen (R)X100.007366896566667051254641603944445493570
16Doyle Somerby (R)X100.008385776585555847253939643744445257570
17Niklas HanssonX100.007267836567687446253739593744445265560
18Cavan Fitzgerald (R)X100.007269806469606448253942594044445262550
Scratches
1Chris BourqueXXHO646072676081856750676261594949651610
2Bracken KearnsXXHO757185687182886278615864554444641610
3Paul CareyXXHO764389807056785842616267255556661610
4Pat CannoneXXHO756989616982885974565863554444631590
5Dante Salituro (R)X100.007061905561515250634353595044445549510
6Paul PostmaXHO734395727455636425474758256363571590
TEAM AVERAGE100.00767182677264695545505162474748586658
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Goalie Name CON SK DU EN SZ AG RB SC HS RT PH PS EX LD PO MO OV TA SP
1Dan Vladar100.00624354816761656966663044446294620
2John Muse100.00614961656564606666653044446247590
Scratches
1Michael McNiven (R)100.00516986794652505648483044445220540
TEAM AVERAGE100.0058546775595958646060304444595458
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
Kevin McCarthy52736841454654CAN58160,000$


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Player Name Team NamePOS GP G A P +/- PIM PIM5 HIT HTT SHT OSB OSM SHT% SB MP AMG PPG PPA PPP PPS PPM PKG PKA PKP PKS PKM GW GT FO% FOT GA TA EG HT P/20 PSG PSS FW FL FT S1 S2 S3
1Morgan KlimchukChicago Wolves (QUE)LW6167-98031222484.55%614424.08033190000150042.86%735000.9700000001
2Cody McLeodChicago Wolves (QUE)LW/RW6325-2115116163518.75%110918.2401127000150020.00%511000.9100001100
3Hudson FaschingChicago Wolves (QUE)RW6235-61010311276147.41%013522.51123690000130044.00%2504000.7400002000
4Mikhail VorobyovChicago Wolves (QUE)C6134-200210841712.50%09916.5200004000000054.10%6140000.8100000000
5Phil LaneChicago Wolves (QUE)RW6123-100114146117.14%110016.7000004000000050.00%433000.6000000010
6Petter GranbergChicago Wolves (QUE)D6112-8121071372214.29%814323.94101211000018000.00%011000.2800101000
7Mitchell StephensChicago Wolves (QUE)C21121005462516.67%24623.2801113000061049.12%5701000.8600000100
8Andrey PedanChicago Wolves (QUE)D6112-9121011732133.33%814323.94112211000017010.00%048000.2800101000
9Adam HelewkaChicago Wolves (QUE)LW6112-30011963916.67%210517.5310114000090037.50%853000.3800000000
10Greg ChaseChicago Wolves (QUE)C611240061352320.00%37813.08000000001110024.00%2503000.5100000000
11Aaron NessChicago Wolves (QUE)D6022000345410.00%511018.4900005000013000.00%023000.3600000000
12Philippe MyersChicago Wolves (QUE)D60111215372230.00%010717.9800005000010000.00%002000.1900001000
13Zac LarrazaChicago Wolves (QUE)LW6101-4003671914.29%07913.2500000000001066.67%310000.2500000000
14Patrick BrownChicago Wolves (QUE)C/RW6000-752107123360.00%99916.5200009000030044.34%10621000.0000002000
15Calle RosenChicago Wolves (QUE)D6000020123010.00%27312.240000000002000.00%011000.0000000000
16Niklas HanssonChicago Wolves (QUE)D6000-200100000.00%1427.080000000000000.00%101000.0000000000
17Cavan FitzgeraldChicago Wolves (QUE)D6000-200100000.00%0366.080000000000000.00%001000.0000000000
18Doyle SomerbyChicago Wolves (QUE)D6000140310000.00%26811.460000000003000.00%000000.0000000000
19Dante SalituroChicago Wolves (QUE)C4000-200246150.00%14110.4100000000000058.82%1721000.0000000000
Team Total or Average108142438-5013250941251404510010.00%51176616.354812158900021342145.77%3192939000.4300208211
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
# Goalie Name Team NameGP W L OTL PCT GAA MP PIM SO GA SA SAR A EG PS % PSA ST BG S1 S2 S3
1Dan VladarChicago Wolves (QUE)62400.8684.173600025190100000.000060001
Team Total or Average62400.8684.173600025190100000.000060001


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
Player Name Team NamePOS Age Birthday Rookie Weight Height No Trade Available For Trade Force Waivers Contract StatusType Current Salary Salary Cap Salary Cap Remaining Exclude from Salary Cap Link
Aaron NessChicago Wolves (QUE)D281990-05-18No184 Lbs5 ft10NoNoNo1RFAPro & Farm650,000$0$0$NoLink
Adam HelewkaChicago Wolves (QUE)LW221995-07-20No200 Lbs6 ft1NoNoNo1ELCPro & Farm705,000$0$0$NoLink
Andrey PedanChicago Wolves (QUE)D241993-07-07No214 Lbs6 ft5YesNoNo1ELCPro & Farm600,000$0$0$NoLink
Bracken KearnsChicago Wolves (QUE)C/LW371981-05-12No200 Lbs6 ft0YesNoNo1UFAPro & Farm500,000$0$0$NoLink
Calle RosenChicago Wolves (QUE)D241994-02-02Yes176 Lbs6 ft0NoNoNo2ELCPro & Farm925,000$0$0$NoLink
Cavan FitzgeraldChicago Wolves (QUE)D211996-08-23Yes186 Lbs6 ft0NoNoNo2ELCPro & Farm656,667$0$0$NoLink
Chris BourqueChicago Wolves (QUE)LW/RW321986-01-28No174 Lbs5 ft8YesNoNo1UFAPro & Farm500,000$0$0$NoLink
Cody McLeodChicago Wolves (QUE)LW/RW341984-06-25No210 Lbs6 ft2YesNoNo1UFAPro & Farm500,000$0$0$NoLink
Dan VladarChicago Wolves (QUE)G201997-08-20No185 Lbs6 ft5NoNoNo1ELCPro & Farm728,333$0$0$NoLink
Dante SalituroChicago Wolves (QUE)C211996-11-15Yes176 Lbs5 ft8NoNoNo2ELCPro & Farm733,000$0$0$NoLink
Doyle SomerbyChicago Wolves (QUE)D231994-07-04Yes218 Lbs6 ft6NoNoNo2ELCPro & Farm725,000$0$0$NoLink
Greg ChaseChicago Wolves (QUE)C231994-12-31No190 Lbs6 ft0YesNoNo1ELCPro & Farm550,000$0$0$NoLink
Hudson FaschingChicago Wolves (QUE)RW221995-07-28No209 Lbs6 ft2NoNoNo1ELCPro & Farm874,125$0$0$NoLink
John MuseChicago Wolves (QUE)G291988-08-01No185 Lbs5 ft11YesNoNo1UFAPro & Farm500,000$0$0$NoLink
Michael McNivenChicago Wolves (QUE)G201997-07-09Yes221 Lbs6 ft1NoNoNo1ELCPro & Farm703,333$0$0$NoLink
Mikhail VorobyovChicago Wolves (QUE)C211997-01-05Yes207 Lbs6 ft2NoNoNo3ELCPro & Farm925,000$0$0$NoLink
Mitchell StephensChicago Wolves (QUE)C211997-02-05Yes191 Lbs6 ft0NoNoNo2ELCPro & Farm925,000$0$0$NoLink
Morgan KlimchukChicago Wolves (QUE)LW231995-03-01No185 Lbs6 ft0NoNoNo1ELCPro & Farm700,000$0$0$NoLink
Niklas HanssonChicago Wolves (QUE)D231995-01-08No184 Lbs6 ft0NoNoNo1ELCPro & Farm500,000$0$0$NoLink
Pat CannoneChicago Wolves (QUE)C/RW311986-08-09No197 Lbs5 ft11YesNoNo1UFAPro & Farm500,000$0$0$NoLink
Patrick BrownChicago Wolves (QUE)C/RW261992-05-29No210 Lbs6 ft1NoNoNo1RFAPro & Farm650,000$0$0$NoLink
Paul CareyChicago Wolves (QUE)C/LW291988-09-24No198 Lbs6 ft1NoNoNo1UFAPro & Farm700,000$0$0$NoLink
Paul PostmaChicago Wolves (QUE)D291989-02-21No195 Lbs6 ft3YesNoNo1UFAPro & Farm797,500$0$0$NoLink
Petter GranbergChicago Wolves (QUE)D251992-08-27No200 Lbs6 ft3NoNoNo1RFAPro & Farm673,500$0$0$NoLink
Phil LaneChicago Wolves (QUE)RW261992-05-29No203 Lbs6 ft2NoNoNo1RFAPro & Farm500,000$0$0$NoLink
Philippe MyersChicago Wolves (QUE)D211997-01-25Yes196 Lbs6 ft5NoNoNo3ELCPro & Farm678,333$0$0$NoLink
Zac LarrazaChicago Wolves (QUE)LW251993-02-25No194 Lbs6 ft2NoNoNo1RFAPro & Farm550,000$0$0$NoLink
Total PlayersAverage AgeAverage WeightAverage HeightAverage ContractAverage Year 1 Salary
2725.19196 Lbs6 ft11.33664,807$



5 vs 5 Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Morgan KlimchukMitchell StephensHudson Fasching40122
2Adam HelewkaPatrick BrownCody McLeod30122
3Zac LarrazaMikhail VorobyovPhil Lane20122
4Mitchell StephensGreg ChaseMorgan Klimchuk10122
5 vs 5 Defense
Line #DefenseDefenseTime %PHYDFOF
1Petter GranbergAndrey Pedan40122
2Aaron NessPhilippe Myers30122
3Doyle SomerbyCalle Rosen20122
4Niklas HanssonCavan Fitzgerald10122
Power Play Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Morgan KlimchukMitchell StephensHudson Fasching60122
2Adam HelewkaPatrick BrownCody McLeod40122
Power Play Defense
Line #DefenseDefenseTime %PHYDFOF
1Petter GranbergAndrey Pedan60122
2Aaron NessPhilippe Myers40122
Penalty Kill 4 Players Forward
Line #CenterWingTime %PHYDFOF
1Mitchell StephensMorgan Klimchuk60122
2Hudson FaschingAdam Helewka40122
Penalty Kill 4 Players Defense
Line #DefenseDefenseTime %PHYDFOF
1Petter GranbergAndrey Pedan60122
2Aaron NessPhilippe Myers40122
Penalty Kill 3 Players
Line #WingTime %PHYDFOFDefenseDefenseTime %PHYDFOF
1Mitchell Stephens60122Petter GranbergAndrey Pedan60122
2Morgan Klimchuk40122Aaron NessPhilippe Myers40122
4 vs 4 Forward
Line #CenterWingTime %PHYDFOF
1Mitchell StephensMorgan Klimchuk60122
2Hudson FaschingAdam Helewka40122
4 vs 4 Defense
Line #DefenseDefenseTime %PHYDFOF
1Petter GranbergAndrey Pedan60122
2Aaron NessPhilippe Myers40122
Last Minutes Offensive
Left WingCenterRight WingDefenseDefense
Morgan KlimchukMitchell StephensHudson FaschingPetter GranbergAndrey Pedan
Last Minutes Defensive
Left WingCenterRight WingDefenseDefense
Morgan KlimchukMitchell StephensHudson FaschingPetter GranbergAndrey Pedan
Extra Forwards
Normal PowerPlayPenalty Kill
Mikhail Vorobyov, Phil Lane, Greg ChaseMikhail Vorobyov, Phil LaneGreg Chase
Extra Defensemen
Normal PowerPlayPenalty Kill
Doyle Somerby, Calle Rosen, Niklas HanssonDoyle SomerbyCalle Rosen, Niklas Hansson
Penalty Shots
Mitchell Stephens, Morgan Klimchuk, Hudson Fasching, Adam Helewka, Patrick Brown
Goalie
#1 : Dan Vladar, #2 : John Muse


Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
OverallHomeVisitor
# VS Team GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff P PCT G A TP SO EG GP1 GP2 GP3 GP4 SHF SH1 SP2 SP3 SP4 SHA SHB Pim Hit PPA PPG PP% PKA PK GA PK% PK GF W OF FO T OF FO OF FO% W DF FO T DF FO DF FO% W NT FO T NT FO NT FO% PZ DF PZ OF PZ NT PC DF PC OF PC NT
1Philadelphia Phantoms624000001425-113210000098130300000517-1240.3331424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964
Total624000001425-113210000098130300000517-1240.3331424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964
_Since Last GM Reset624000001425-113210000098130300000517-1240.3331424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964
_Vs Conference624000001425-113210000098130300000517-1240.3331424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964

Total For Players
Games PlayedPointsStreakGoalsAssistsPointsShots ForShots AgainstShots BlockedPenalty MinutesHitsEmpty Net GoalsShutouts
64L1142438140190511329400
All Games
GPWLOTWOTL SOWSOLGFGA
62400001425
Home Games
GPWLOTWOTL SOWSOLGFGA
321000098
Visitor Games
GPWLOTWOTL SOWSOLGFGA
3030000517
Last 10 Games
WLOTWOTL SOWSOL
240000
Power Play AttempsPower Play GoalsPower Play %Penalty Kill AttempsPenalty Kill Goals AgainstPenalty Kill %Penalty Kill Goals For
12433.33%21576.19%0
Shots 1 PeriodShots 2 PeriodShots 3 PeriodShots 4+ PeriodGoals 1 PeriodGoals 2 PeriodGoals 3 PeriodGoals 4+ Period
27516203560
Face Offs
Won Offensive ZoneTotal OffensiveWon Offensive %Won Defensif ZoneTotal DefensiveWon Defensive %Won Neutral ZoneTotal NeutralWon Neutral %
5110747.66%5212541.60%438749.43%
Puck Time
In Offensive ZoneControl In Offensive ZoneIn Defensive ZoneControl In Defensive ZoneIn Neutral ZoneControl In Neutral Zone
105441256212964


Last Played Games
Filter Tips
PriorityTypeDescription
1| or  OR Logical "or" (Vertical bar). Filter the column for content that matches text from either side of the bar
2 &&  or  AND Logical "and". Filter the column for content that matches text from either side of the operator.
3/\d/Add any regex to the query to use in the query ("mig" flags can be included /\w/mig)
4< <= >= >Find alphabetical or numerical values less than or greater than or equal to the filtered query
5! or !=Not operator, or not exactly match. Filter the column with content that do not match the query. Include an equal (=), single (') or double quote (") to exactly not match a filter.
6" or =To exactly match the search query, add a quote, apostrophe or equal sign to the beginning and/or end of the query
7 -  or  to Find a range of values. Make sure there is a space before and after the dash (or the word "to")
8?Wildcard for a single, non-space character.
8*Wildcard for zero or more non-space characters.
9~Perform a fuzzy search (matches sequential characters) by adding a tilde to the beginning of the query
10textAny text entered in the filter will match text found within the column
DayGame Visitor Team Score Home Team Score ST OT SO RI Link
1 - 2018-10-051Philadelphia Phantoms2Chicago Wolves3WBoxScore
2 - 2018-10-069Philadelphia Phantoms3Chicago Wolves1LBoxScore
3 - 2018-10-0717Chicago Wolves3Philadelphia Phantoms4LBoxScore
4 - 2018-10-0825Chicago Wolves1Philadelphia Phantoms7LBoxScore
5 - 2018-10-0933Philadelphia Phantoms3Chicago Wolves5WBoxScore
6 - 2018-10-1041Chicago Wolves1Philadelphia Phantoms6LBoxScore



Arena Capacity - Ticket Price Attendance - %
Level 1Level 2
Arena Capacity20001000
Ticket Price2510
Attendance5,7172,536
Attendance PCT95.28%84.53%

Income
Home Games LeftAverage Attendance - %Average Income per GameYear to Date RevenueArena CapacityTeam Popularity
38 2751 - 91.70% 83,582$250,745$3000100

Expenses
Year To Date ExpensesPlayers Total SalariesPlayers Total Average SalariesCoaches Salaries
0$ 1,794,978$ 1,821,128$ 0$
Salary Cap Per DaysSalary Cap To DatePlayers In Salary CapPlayers Out of Salary Cap
0$ 0$ 0 0

Estimate
Estimated Season RevenueRemaining Season DaysExpenses Per DaysEstimated Season Expenses
0$ 2 0$ 0$




OverallHomeVisitor
Year GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff GP W L T OTW OTL SOW SOL GF GA Diff P G A TP SO EG GP1 GP2 GP3 GP4 SHF SH1 SP2 SP3 SP4 SHA SHB Pim Hit PPA PPG PP% PKA PK GA PK% PK GF W OF FO T OF FO OF FO% W DF FO T DF FO DF FO% W NT FO T NT FO NT FO% PZ DF PZ OF PZ NT PC DF PC OF PC NT
2018624000001425-113210000098130300000517-1241424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964
Total Playoff624000001425-113210000098130300000517-1241424380035601402751620190511329412433.33%21576.19%05110747.66%5212541.60%438749.43%105441256212964