Admirals
GP: 82 | W: 39 | L: 37 | OTL: 6 | P: 84
GF: 182 | GA: 206 | PP%: 11.66% | PK%: 87.08%
GM : Danny Rhéaume | Morale : 50 | Team Overall : N/A
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 SPAgeContractSalary
1Axel Jonsson-FjallbyX100.007668946668585955504858635544446050002211,000,000$
2Deven Sideroff (R)X100.00736395546348485250465163485252555000233935,833$
3Lukas JasekX100.007468886168717558505161635844446350002211,000,000$
4Manuel Wiederer (R)XX100.00716486616456585265534760454444555000233736,667$
5Nathan Noel (R)XX100.00646366536349514455384454424444475000233925,000$
6Nicholas CaamanoX100.007944896372557854445858642545456250002111,000,000$
7Ryan MacInnis (R)X100.00714399647154805847605562254444615000243874,125$
8Joel Kiviranta (R)XX100.008043888059577163255059542545456147002411,000,000$
9Jordy Bellerive (R)X100.007269786769747956704959615644446150002111,000,000$
10Sasha Chmelevski (R)XX100.007368846568656662785962635944446446002111,000,000$
11Riley Sutter (R)X100.00827499637452544850464564434444555000203894,167$
12Henri JokiharjuX100.00764386826771846125524875255757635000213925,000$
13Jacob LarssonX100.00674293777369855725514875256060624700233894,166$
14Lucas CarlssonX100.007470846570737854255242624044445650002211,000,000$
15Michael Anderson (R)X100.007671897771636749254141613944445450002111,000,000$
16Brogan Rafferty (R)X100.007872926472646660256045654344445950002511,000,000$
17Leon Gawanke (R)X100.007672866372687254255241633944445550002111,000,000$
Scratches
1Keaton Thompson (R)X100.00736786676762665025444060384545535000243925,000$
2Noah Dobson (R)X100.006942918071626369255348592547476050002031,431,667$
3Johnathan Kovacevic (R)X100.007878796378555848253842624044445250002211,000,000$
4Mac Hollowell (R)X100.00676279676262665025434257404444525000213799,766$
TEAM AVERAGE100.0074618767696168554050496240464658500
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
1Adam Werner (R)100.0057597473596151605857304444575000
2Mikhail Berdin100.0059627863606351615857304444585000
Scratches
TEAM AVERAGE100.005861766860625161585730444458500
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
Ryan Huska66707368656082CAN463850,000$


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 NamePOSGP 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
1Henri JokiharjuAdmirals (ANA)D82133245-1910401659795336213.68%60188723.0181321773540000367310.00%000000.4800000253
2Sasha ChmelevskiAdmirals (ANA)C/RW79202545-234050100125379716.00%6123515.6361319353331011533259.92%48400010.7304000360
3Ondrej KaseDucksRW69132639-4209150121299310.74%11152122.0548123130000033803036.99%83800000.51212000323
4Taylor RaddyshDucksC/RW641720375831585101102346916.67%6113517.74710174228110131553357.06%109000000.6513011524
5Stefan NoesenDucksLW/RW70181735397515371125398914.40%9132618.953693327610142493039.78%18100010.5359100602
6Brogan RaffertyAdmirals (ANA)D82331341011325118785428415.56%60171620.9321012453190110335100.00%000000.4000104202
7Cody GlassDucksC/RW69131730-3401510795356813.68%6130118.873582629300032122246.85%125300000.4639000212
8Jacob LarssonAdmirals (ANA)D8252126-2058066867321426.85%78186822.784711533500221373000.00%000100.2800000112
9Lucas CarlssonAdmirals (ANA)D8210142499801015339123925.64%58172421.036410253210111334100.00%000000.2800000213
10Lukas JasekAdmirals (ANA)RW82101424-15810625575164713.33%382510.061346730000602242.86%6300000.5801001311
11Joel KivirantaAdmirals (ANA)LW/RW4861622-2300417056196110.71%375215.68279172050002441028.89%4500000.5811000050
12Leon GawankeAdmirals (ANA)D8222022-5121151475017101511.76%48131816.081234330111157000.00%000000.3300201122
13Jordy BelleriveAdmirals (ANA)C82713205460518565124210.77%46848.35000010000440057.12%55500000.5811000023
14Michael AndersonAdmirals (ANA)D8221416-41203011453257168.00%47129715.821011161000064100.00%000000.2500014000
15Ryan MacInnisAdmirals (ANA)C826915-17220311067221558.33%5100112.210115640000130044.04%74700000.3000000003
16Nick RitchieDucksLW387815-25601444169236410.14%378820.753361614910121632128.00%5000000.3817000103
17Axel Jonsson-FjallbyAdmirals (ANA)LW829514-163810587481144411.11%8105512.870116630002943155.10%4900000.2700200041
18Nicholas CaamanoAdmirals (ANA)RW824711-1262084758220694.88%7114513.970331311500001261139.13%9200000.1901000022
19Deven SideroffAdmirals (ANA)RW5132532018161871116.67%44358.53011329000091043.90%4100000.2300000110
20Nathan NoelAdmirals (ANA)C/LW5122412803113631033.33%24619.05000010000270054.55%2200000.1700000010
21Riley SutterAdmirals (ANA)RW15224-113514982725.00%115210.1400000000000050.00%1000000.5300001000
22Noah DobsonAdmirals (ANA)D42022402461533.33%18421.20101413000017100.00%000000.4700000000
23Manuel WiedererAdmirals (ANA)C/RW20101-24071212168.33%11497.48000020000161051.28%3900000.1300000001
24Keaton ThompsonAdmirals (ANA)D1000000000000.00%011.570000000000000.00%000000.0000000000
25Johnathan KovacevicAdmirals (ANA)D1000-100120000.00%077.050000000000000.00%000000.0000000000
26Mac HollowellAdmirals (ANA)D1000000000000.00%144.250000000003000.00%000000.0000000000
Team Total or Average1483175315490-731197115156715081421424105212.32%4322388016.1052971494523648459233306321348.55%555900120.4114486212323637
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
1Mikhail BerdinAdmirals (ANA)64292850.8822.3037250614312130220.688326220411
2Adam WernerAdmirals (ANA)2410910.8482.58125740543560110.778182062000
Team Total or Average88393760.8742.3749824619715690330.720508282411


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 Type Current Salary Salary RemainingSalary AverageSalary Ave RemainingSalary Cap Salary Cap Remaining Exclude from Salary Cap Salary Year 2Salary Year 3Salary Year 4Salary Year 5Salary Year 6Salary Year 7Salary Year 8Salary Year 9Salary Year 10Link
Adam WernerAdmirals (ANA)G231997-01-01Yes200 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Axel Jonsson-FjallbyAdmirals (ANA)LW221998-02-10No185 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Brogan RaffertyAdmirals (ANA)D251995-05-28Yes192 Lbs6 ft2NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Deven SideroffAdmirals (ANA)RW231997-04-14Yes171 Lbs5 ft11NoNoNo3Pro & Farm935,833$7,547$935,833$7,547$0$0$No935,833$935,833$
Henri JokiharjuAdmirals (ANA)D211999-06-17No180 Lbs6 ft0NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$Link
Jacob LarssonAdmirals (ANA)D231997-04-29No195 Lbs6 ft2NoNoNo3Pro & Farm894,166$7,211$894,166$7,211$0$0$No894,166$894,166$Link
Joel KivirantaAdmirals (ANA)LW/RW241996-03-23Yes163 Lbs5 ft10NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Johnathan KovacevicAdmirals (ANA)D221997-07-12Yes207 Lbs6 ft4NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Jordy BelleriveAdmirals (ANA)C211999-05-02Yes194 Lbs5 ft11NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Keaton ThompsonAdmirals (ANA)D241995-09-14Yes182 Lbs6 ft0NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Leon GawankeAdmirals (ANA)D211999-05-31Yes198 Lbs6 ft1NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Lucas CarlssonAdmirals (ANA)D221997-07-05No190 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Lukas JasekAdmirals (ANA)RW221997-08-28No183 Lbs6 ft1NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Mac HollowellAdmirals (ANA)D211998-09-26Yes170 Lbs5 ft10NoNoNo3Pro & Farm799,766$6,450$799,766$6,450$0$0$No799,766$799,766$
Manuel WiedererAdmirals (ANA)C/RW231996-11-21Yes170 Lbs6 ft0NoNoNo3Pro & Farm736,667$5,941$736,667$5,941$0$0$No736,667$736,667$
Michael AndersonAdmirals (ANA)D211999-05-25Yes196 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Mikhail BerdinAdmirals (ANA)G221998-02-28No163 Lbs6 ft2NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Nathan NoelAdmirals (ANA)C/LW231997-06-21Yes174 Lbs5 ft11NoNoNo3Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$925,000$
Nicholas CaamanoAdmirals (ANA)RW211998-10-07No194 Lbs6 ft2NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Noah DobsonAdmirals (ANA)D202000-01-07Yes183 Lbs6 ft4NoNoNo3Pro & Farm1,431,667$11,546$1,431,667$11,546$0$0$No1,431,667$1,431,667$
Riley SutterAdmirals (ANA)RW201999-10-24Yes200 Lbs6 ft1NoNoNo3Pro & Farm894,167$7,211$894,167$7,211$0$0$No894,167$894,167$
Ryan MacInnisAdmirals (ANA)C241996-02-13Yes185 Lbs6 ft3NoNoNo3Pro & Farm874,125$7,049$874,125$7,049$0$0$No874,125$874,125$
Sasha ChmelevskiAdmirals (ANA)C/RW211999-06-09Yes187 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Total PlayersAverage AgeAverage WeightAverage HeightAverage ContractAverage Year 1 Salary
2322.13185 Lbs6 ft11.87971,365$



5 vs 5 Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Joel KivirantaSasha ChmelevskiNicholas Caamano35122
2Axel Jonsson-FjallbyRyan MacInnisLukas Jasek30122
3Nathan NoelJordy BelleriveRiley Sutter25122
4Nicholas CaamanoManuel WiedererDeven Sideroff10122
5 vs 5 Defense
Line #DefenseDefenseTime %PHYDFOF
1Henri JokiharjuJacob Larsson35122
2Brogan RaffertyLucas Carlsson30122
3Michael AndersonLeon Gawanke25122
4Henri JokiharjuJacob Larsson10122
Power Play Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Joel KivirantaSasha ChmelevskiNicholas Caamano60122
2Axel Jonsson-FjallbyRyan MacInnisLukas Jasek40122
Power Play Defense
Line #DefenseDefenseTime %PHYDFOF
1Henri JokiharjuJacob Larsson60122
2Brogan RaffertyLucas Carlsson40122
Penalty Kill 4 Players Forward
Line #CenterWingTime %PHYDFOF
1Nicholas CaamanoSasha Chmelevski60122
2Joel KivirantaRyan MacInnis40122
Penalty Kill 4 Players Defense
Line #DefenseDefenseTime %PHYDFOF
1Henri JokiharjuJacob Larsson60122
2Brogan RaffertyLucas Carlsson40122
Penalty Kill 3 Players
Line #WingTime %PHYDFOFDefenseDefenseTime %PHYDFOF
1Nicholas Caamano60122Henri JokiharjuJacob Larsson60122
2Sasha Chmelevski40122Brogan RaffertyLucas Carlsson40122
4 vs 4 Forward
Line #CenterWingTime %PHYDFOF
1Nicholas CaamanoSasha Chmelevski60122
2Joel KivirantaRyan MacInnis40122
4 vs 4 Defense
Line #DefenseDefenseTime %PHYDFOF
1Henri JokiharjuJacob Larsson60122
2Brogan RaffertyLucas Carlsson40122
Last Minutes Offensive
Left WingCenterRight WingDefenseDefense
Joel KivirantaSasha ChmelevskiNicholas CaamanoHenri JokiharjuJacob Larsson
Last Minutes Defensive
Left WingCenterRight WingDefenseDefense
Joel KivirantaSasha ChmelevskiNicholas CaamanoHenri JokiharjuJacob Larsson
Extra Forwards
Normal PowerPlayPenalty Kill
Jordy Bellerive, Riley Sutter, Manuel WiedererJordy Bellerive, Riley SutterManuel Wiederer
Extra Defensemen
Normal PowerPlayPenalty Kill
Michael Anderson, Leon Gawanke, Brogan RaffertyMichael AndersonLeon Gawanke, Brogan Rafferty
Penalty Shots
Nicholas Caamano, Sasha Chmelevski, Joel Kiviranta, Ryan MacInnis, Lukas Jasek
Goalie
#1 : Mikhail Berdin, #2 : Adam Werner


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
1Bruins2020000058-31010000024-21010000034-100.000581300675452164043849947359501836259222.22%16475.00%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
2Condors852000102214843000010136742200000981120.7502241630067545216147438499473591454013717246613.04%56983.93%11107216451.16%1015221445.84%577118148.86%1940131220086271042515
3Crunch2020000026-41010000023-11010000003-300.00023500675452164143849947359701631451218.33%12191.67%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
4Flames824000111821-3422000001111040200011710-370.438183048106754521613743849947359130351151404224.76%46784.78%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
5Griffins220000001046110000005141100000053241.00010172700675452164343849947359441024447342.86%10190.00%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
6IceHogs32000010954110000003122100001064261.00091524006754521648438499473594310386020210.00%16193.75%11107216451.16%1015221445.84%577118148.86%1940131220086271042515
7Marlies531000101284210000105233210000076180.8001221330167545216100438499473599925699633515.15%31196.77%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
8Monarchs935000012025-5522000011213-141300000812-470.3892035551067545216151438499473591594911218840512.50%46686.96%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
9Monsters2020000015-41010000003-31010000012-100.00012300675452161843849947359401130441000.00%14192.86%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
10Moose825000011021-1140400000213-114210000188050.313102030106754521611643849947359153391511534237.14%55689.09%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
11Penguins20200000311-81010000018-71010000023-100.00036900675452163943849947359387282617211.76%14378.57%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
12Phantoms2010100035-2100010002111010000014-320.50036900675452162743849947359471822341900.00%9188.89%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
13Rampage320000101486220000009451000001054161.000142337006754521667438499473596717426612325.00%19478.95%11107216451.16%1015221445.84%577118148.86%1940131220086271042515
14Rocket21000010642110000002111000001043141.00068140067545216334384994735935934307228.57%16193.75%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
15Senators2020000029-71010000025-31010000004-400.00024600675452163043849947359421033441100.00%13376.92%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
16Sharks823010111419-54110001198141201000511-690.5631423370267545216126438499473591554011814734411.76%51394.12%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
17Soldiers311000011011-11010000024-22100000187130.500101626006754521655438499473594922365018422.22%17382.35%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
18Sound Tigers210000015501000000134-11100000021130.75058130067545216434384994735947112047900.00%10280.00%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
19Stars32100000743110000003032110000044040.66771320016754521663438499473595015305519210.53%15286.67%11107216451.16%1015221445.84%577118148.86%1940131220086271042515
20Wolf Pack3120000035-2211000003211010000003-320.333347016754521640438499473595714475717211.76%14192.86%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
21Wolves3120000068-2211000004401010000024-220.33361218016754521657438499473595216484422418.18%23578.26%01107216451.16%1015221445.84%577118148.86%1940131220086271042515
Total82303702076182206-24411717010339598-34113200104387108-21840.51218231549736675452161421438499473591572432120115674465211.66%5036587.08%41107216451.16%1015221445.84%577118148.86%1940131220086271042515
_Since Last GM Reset82303702076182206-24411717010339598-34113200104387108-21840.51218231549736675452161421438499473591572432120115674465211.66%5036587.08%41107216451.16%1015221445.84%577118148.86%1940131220086271042515
_Vs Conference522319010451271243261290002365587261110010226266-4610.58712722335024675452169164384994735996426975610262693613.38%3184286.79%41107216451.16%1015221445.84%577118148.86%1940131220086271042515
_Vs Division4113150102484100-162167000234751-42078010013749-12360.43984149233326754521667743849947359742203633800204209.80%2543187.80%11107216451.16%1015221445.84%577118148.86%1940131220086271042515

Total For Players
Games PlayedPointsStreakGoalsAssistsPointsShots ForShots AgainstShots BlockedPenalty MinutesHitsEmpty Net GoalsShutouts
8284W2182315497142115724321201156736
All Games
GPWLOTWOTL SOWSOLGFGA
8230372076182206
Home Games
GPWLOTWOTL SOWSOLGFGA
41171710339598
Visitor Games
GPWLOTWOTL SOWSOLGFGA
411320104387108
Last 10 Games
WLOTWOTL SOWSOL
550000
Power Play AttempsPower Play GoalsPower Play %Penalty Kill AttempsPenalty Kill Goals AgainstPenalty Kill %Penalty Kill Goals For
4465211.66%5036587.08%4
Shots 1 PeriodShots 2 PeriodShots 3 PeriodShots 4+ PeriodGoals 1 PeriodGoals 2 PeriodGoals 3 PeriodGoals 4+ Period
4384994735967545216
Face Offs
Won Offensive ZoneTotal OffensiveWon Offensive %Won Defensif ZoneTotal DefensiveWon Defensive %Won Neutral ZoneTotal NeutralWon Neutral %
1107216451.16%1015221445.84%577118148.86%
Puck Time
In Offensive ZoneControl In Offensive ZoneIn Defensive ZoneControl In Defensive ZoneIn Neutral ZoneControl In Neutral Zone
1940131220086271042515


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 - 2020-09-2711Admirals0Crunch3LBoxScore
2 - 2020-09-2819Monarchs2Admirals5WBoxScore
4 - 2020-09-3027Sharks4Admirals3LXXBoxScore
5 - 2020-10-0142Condors2Admirals3WBoxScore
6 - 2020-10-0252Admirals3Moose4LXXBoxScore
8 - 2020-10-0462Admirals2Moose1WBoxScore
10 - 2020-10-0668Admirals2Condors4LBoxScore
12 - 2020-10-0879Moose3Admirals2LBoxScore
14 - 2020-10-1089Admirals3Monarchs1WBoxScore
17 - 2020-10-13107Moose2Admirals0LBoxScore
18 - 2020-10-14117Admirals4Flames3WXXBoxScore
20 - 2020-10-16128Admirals3Stars2WBoxScore
21 - 2020-10-17131Flames5Admirals3LBoxScore
23 - 2020-10-19150Condors1Admirals4WBoxScore
24 - 2020-10-20161Admirals3Marlies2WBoxScore
25 - 2020-10-21169Sharks2Admirals3WXXBoxScore
26 - 2020-10-22175Admirals1Condors2LBoxScore
28 - 2020-10-24192Admirals5Rampage4WXXBoxScore
30 - 2020-10-26198Wolf Pack2Admirals1LBoxScore
32 - 2020-10-28210Admirals1Flames2LXXBoxScore
34 - 2020-10-30222Monsters3Admirals0LBoxScore
36 - 2020-11-01237Rocket1Admirals2WBoxScore
38 - 2020-11-03249Admirals2Marlies4LBoxScore
40 - 2020-11-05253Admirals3IceHogs2WBoxScore
42 - 2020-11-07265Admirals1Flames3LBoxScore
43 - 2020-11-08271Monarchs2Admirals3WBoxScore
45 - 2020-11-10285Marlies1Admirals3WBoxScore
46 - 2020-11-11300Flames3Admirals1LBoxScore
47 - 2020-11-12305Admirals2Moose1WBoxScore
49 - 2020-11-14324Monarchs3Admirals1LBoxScore
51 - 2020-11-16335Condors2Admirals3WXXBoxScore
52 - 2020-11-17345Admirals4Condors1WBoxScore
53 - 2020-11-18358Admirals1Monarchs3LBoxScore
54 - 2020-11-19367Condors1Admirals3WBoxScore
55 - 2020-11-20378Admirals2Condors1WBoxScore
57 - 2020-11-22390Wolf Pack0Admirals2WBoxScore
58 - 2020-11-23401Admirals0Senators4LBoxScore
59 - 2020-11-24410Senators5Admirals2LBoxScore
60 - 2020-11-25422Bruins4Admirals2LBoxScore
63 - 2020-11-28434Admirals5Griffins3WBoxScore
64 - 2020-11-29446Sound Tigers4Admirals3LXXBoxScore
65 - 2020-11-30456Admirals4Rocket3WXXBoxScore
67 - 2020-12-02467Admirals2Sound Tigers1WBoxScore
68 - 2020-12-03475Admirals1Sharks0WXBoxScore
69 - 2020-12-04486Phantoms1Admirals2WXBoxScore
71 - 2020-12-06497Monarchs3Admirals1LBoxScore
72 - 2020-12-07511Sharks0Admirals2WBoxScore
74 - 2020-12-09525Admirals1Stars2LBoxScore
75 - 2020-12-10534Sharks2Admirals1LBoxScore
77 - 2020-12-12546Admirals0Sharks4LBoxScore
78 - 2020-12-13554Admirals4Soldiers2WBoxScore
79 - 2020-12-14566Soldiers4Admirals2LBoxScore
81 - 2020-12-16582Monarchs3Admirals2LXXBoxScore
82 - 2020-12-17588Admirals1Moose2LBoxScore
84 - 2020-12-19601Crunch3Admirals2LBoxScore
86 - 2020-12-21611Admirals1Flames2LBoxScore
87 - 2020-12-22625Moose4Admirals0LBoxScore
88 - 2020-12-23636Admirals4Soldiers5LXXBoxScore
90 - 2020-12-25644Admirals1Monsters2LBoxScore
91 - 2020-12-26654Penguins8Admirals1LBoxScore
92 - 2020-12-27662Admirals3IceHogs2WXXBoxScore
94 - 2020-12-29677Wolves0Admirals1WBoxScore
95 - 2020-12-30687Flames2Admirals3WBoxScore
96 - 2020-12-31699Admirals2Penguins3LBoxScore
97 - 2021-01-01707Admirals1Phantoms4LBoxScore
99 - 2021-01-03719IceHogs1Admirals3WBoxScore
100 - 2021-01-04731Admirals3Bruins4LBoxScore
102 - 2021-01-06742Flames1Admirals4WBoxScore
103 - 2021-01-07755Griffins1Admirals5WBoxScore
104 - 2021-01-08763Admirals2Marlies0WBoxScore
105 - 2021-01-09777Wolves4Admirals3LBoxScore
Trade Deadline --- Trades can’t be done after this day is simulated!
107 - 2021-01-11787Admirals0Wolf Pack3LBoxScore
108 - 2021-01-12800Rampage1Admirals3WBoxScore
109 - 2021-01-13805Admirals1Sharks5LBoxScore
111 - 2021-01-15821Rampage3Admirals6WBoxScore
112 - 2021-01-16824Admirals2Wolves4LBoxScore
114 - 2021-01-18843Admirals2Monarchs4LBoxScore
116 - 2021-01-20853Stars0Admirals3WBoxScore
117 - 2021-01-21866Admirals2Monarchs4LBoxScore
118 - 2021-01-22873Moose4Admirals0LBoxScore
121 - 2021-01-25890Marlies1Admirals2WXXBoxScore
122 - 2021-01-26897Admirals3Sharks2WBoxScore



Arena Capacity - Ticket Price Attendance - %
Level 1Level 2
Capacity20001000
Ticket Price3515
Attendance00
Attendance PCT0.00%0.00%

Income
Home Games LeftAverage Attendance - %Average Income per GameYear to Date RevenueCapacityTeam Popularity
0 0 - 0.00% 0$0$3000100

Expenses
Year To Date ExpensesPlayers Total SalariesPlayers Total Average SalariesCoaches Salaries
3,555,134$ 2,234,140$ 2,234,140$ 0$
Salary Cap Per DaysSalary Cap To DatePlayers In Salary CapPlayers Out of Salary Cap
0$ 2,711,983$ 0 0

Estimate
Estimated Season RevenueRemaining Season DaysExpenses Per DaysEstimated Season Expenses
0$ 1 24,872$ 24,872$




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