Phantoms
GP: 82 | W: 42 | L: 32 | OTL: 8 | P: 92
GF: 232 | GA: 221 | PP%: 12.26% | PK%: 86.68%
GM : Yannick Bernier | 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
1Cole Bardreau (R)XX100.00864582636652625459605968255555635000263700,000$
2Lane PedersonX100.00717170667168696780636763644444675000223777,500$
3Gemel SmithXXX100.006968727268747667805968656556566750002611,000,000$
4Jack KopackaX100.00807298627256565650505765544444605000222910,833$
5Melker KarlssonXX100.006742897865628757406059777566696545002912,000,000$
6Mikkel BoedkerXX100.006743998576546362326059726175776444003011,000,000$
7Maxim LetunovX100.007771916271707265806660665744446550002411,000,000$
8Nathan BastianX100.00777875627877816250586265594444645000223992,500$
9Pontus AbergXX100.007370817670757866506265676254556751002611,000,000$
10Jack Studnicka (R)X100.00716585736575786580616563624444675000213863,333$
11Evan RodriguesXXX100.006541907766597761655964707563636650002611,000,000$
12Valentin ZykovXX100.007845877180625964256558562548486250002511,000,000$
13Alex Formenton (R)X100.00727371767367686650616864654444675000203888,333$
14Mark AltX100.00787781657770764725374262404444535000281650,000$
15Luke GreenX100.00756990606940404225284159394444485000222838,333$
16Mark FriedmanX100.00716781646775815125474159394444545000242825,000$
17Reece Willcox (R)X100.00777092627071784725394061384444535000263675,000$
18Josh Brook (R)X100.00737179697173804725374159394444525000213910,833$
Scratches
1Givani SmithXX100.00857687667654787025555961254545635000222913,333$
2Stelio MattheosX100.00787291557262645550495764544444605000212925,000$
3Lean Bergmann (R)XX100.008946897576516451265855562545456050002111,000,000$
4Danil Yurtaykin (R)XX100.006961897161606255506046594444445650002211,000,000$
5Tyrell GoulbourneXX100.00727078687069764550414458424444525000261775,000$
TEAM AVERAGE100.0075648569716471574654566349494961500
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
1Anton Forsberg100.0055617678555750585352304848554400
2Charlie Lindgren100.0051587375485354585252304646535000
Scratches
1Joseph Woll (R)100.0050648080455250554949304444524300
TEAM AVERAGE100.005261767849545157515130464653460
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
Dominique Ducharme73727068696479CAN493850,000$


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
1Gemel SmithPhantoms (PHI)C/LW/RW8234367096001011372085716416.35%13149318.211411256435720251758058.85%81900020.9401000957
2Mikkel BoedkerPhantoms (PHI)LW/RW80243458-214063162161449814.91%18169221.15715224033623564023138.70%89400000.69010000345
3Evan RodriguesPhantoms (PHI)C/LW/RW82183856-618043169150599712.00%14147417.98915244533822452583253.28%109600000.7645000243
4Valentin ZykovPhantoms (PHI)LW/RW82242751123808363123318419.51%5120314.684121634274000023031.03%5800000.8500000532
5Pontus AbergPhantoms (PHI)LW/RW7319274606001731141415511413.48%22152520.90512174034623583852246.06%16500000.60411000537
6Melker KarlssonPhantoms (PHI)C/RW5513314432605110392247714.13%28105619.21511162825102231891243.64%102200000.8358000152
7Jack StudnickaPhantoms (PHI)C821427411336034148132369910.61%13116814.261018490002903159.39%95300000.7000000353
8Alex FormentonPhantoms (PHI)LW8215264114831581110162551229.26%7121414.81178221750001855147.31%9300000.6800021355
9Lane PedersonPhantoms (PHI)C8242327138810118574717398.51%3292811.330002270000130155.19%15400000.5800001025
10Nathan BastianPhantoms (PHI)RW829152446820615687245410.34%97429.0500003000001151.72%2900000.6500112104
11Mark AltPhantoms (PHI)D7681119-2129251473539161920.51%52163521.53325183261121321200.00%000000.2300212111
12Maxim LetunovPhantoms (PHI)C8299181412028524693519.57%96057.3802234700011400160.12%32600100.5900000012
13Josh BrookPhantoms (PHI)D72411154995138282382117.39%58155821.64336132990110324000.00%000000.1900001000
14Cole BardreauPhantoms (PHI)C/RW7277144480503267114010.45%85757.990002240000242146.84%7900000.4900000111
15Mark FriedmanPhantoms (PHI)D8231114-21415134283313179.09%53191223.32156183770001370000.00%000100.1500010011
16Reece WillcoxPhantoms (PHI)D8231114410951333924112112.50%49155518.9711272210001254100.00%000000.1800100200
17Lean BergmannPhantoms (PHI)LW/RW5459145500423836121913.89%255010.1900016000001141.38%2900000.5100000100
18Givani SmithPhantoms (PHI)LW/RW19189-22952912188215.56%328414.99134677000010052.94%1700000.6300100010
19Jack KopackaPhantoms (PHI)LW375492607112892517.86%32777.500002100000111141.18%1700000.6500000110
20Luke GreenPhantoms (PHI)D4712310440671811079.09%2671815.290001310000103000.00%000000.0800000001
Team Total or Average140522036758797115890158314121628499117313.51%4242217415.785599154354358391221343157361550.83%575100220.531335557384249
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
1Anton ForsbergPhantoms (PHI)80413180.8702.6247020420515800020.62532800332
2Charlie LindgrenPhantoms (PHI)91100.9161.962760091070001.0002282000
Team Total or Average89423280.8732.5849790421416870020.647348282332


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
Alex FormentonPhantoms (PHI)LW201999-09-13Yes190 Lbs6 ft3NoNoNo3Pro & Farm888,333$7,164$888,333$7,164$0$0$No888,333$888,333$
Anton ForsbergPhantoms (PHI)G271992-11-26No192 Lbs6 ft3NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Charlie LindgrenPhantoms (PHI)G261993-12-17No190 Lbs6 ft2NoNoNo1Pro & Farm1,300,000$10,484$1,300,000$10,484$0$0$NoLink
Cole BardreauPhantoms (PHI)C/RW261993-07-22Yes185 Lbs5 ft10NoNoNo3Pro & Farm700,000$5,645$700,000$5,645$0$0$No700,000$700,000$
Danil YurtaykinPhantoms (PHI)LW/RW221997-07-01Yes165 Lbs5 ft11NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Evan RodriguesPhantoms (PHI)C/LW/RW261993-07-28No182 Lbs5 ft11NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Gemel Smith (1 Way Contract)Phantoms (PHI)C/LW/RW261994-04-16No190 Lbs5 ft10NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$100,000$806$NoLink
Givani SmithPhantoms (PHI)LW/RW221998-02-27No204 Lbs6 ft2NoNoNo2Pro & Farm913,333$7,366$913,333$7,366$0$0$No913,333$Link
Jack KopackaPhantoms (PHI)LW221998-05-05No192 Lbs6 ft2NoNoNo2Pro & Farm910,833$7,345$910,000$7,339$0$0$No910,833$Link
Jack StudnickaPhantoms (PHI)C211999-02-17Yes171 Lbs6 ft1NoNoNo3Pro & Farm863,333$6,962$863,333$6,962$0$0$No863,333$863,333$Link
Joseph WollPhantoms (PHI)G211998-07-12Yes200 Lbs6 ft3NoNoNo3Pro & Farm850,000$6,855$800,000$6,452$0$0$No800,000$800,000$Link
Josh BrookPhantoms (PHI)D211999-06-17Yes192 Lbs6 ft1NoNoNo3Pro & Farm910,833$7,345$910,833$7,345$0$0$No910,833$910,833$
Lane PedersonPhantoms (PHI)C221997-08-04No192 Lbs6 ft1NoNoNo3Pro & Farm777,500$6,270$690,000$5,565$0$0$No690,000$690,000$Link
Lean BergmannPhantoms (PHI)LW/RW211998-10-04Yes205 Lbs6 ft2NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Luke GreenPhantoms (PHI)D221998-01-11No188 Lbs6 ft1NoNoNo2Pro & Farm838,333$6,761$850,000$6,855$0$0$No838,333$Link
Mark AltPhantoms (PHI)D281991-10-17No201 Lbs6 ft4NoNoNo1Pro & Farm650,000$5,242$650,000$5,242$0$0$NoLink
Mark FriedmanPhantoms (PHI)D241995-12-25No185 Lbs5 ft11NoNoNo2Pro & Farm825,000$6,653$825,000$6,653$0$0$No825,000$Link
Maxim LetunovPhantoms (PHI)C241996-02-19No180 Lbs6 ft4NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Melker KarlssonPhantoms (PHI)C/RW291990-07-18No182 Lbs5 ft10NoNoNo1Pro & Farm2,000,000$16,129$2,000,000$16,129$0$0$NoLink
Mikkel BoedkerPhantoms (PHI)LW/RW301989-12-15No210 Lbs6 ft0NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Nathan BastianPhantoms (PHI)RW221997-12-06No205 Lbs6 ft4NoNoNo3Pro & Farm992,500$8,004$905,000$7,298$0$0$No905,000$905,000$Link
Pontus AbergPhantoms (PHI)LW/RW261993-09-22No196 Lbs5 ft11NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Reece WillcoxPhantoms (PHI)D261994-05-20Yes183 Lbs6 ft3NoNoNo3Pro & Farm675,000$5,444$675,000$5,444$0$0$No675,000$675,000$
Stelio MattheosPhantoms (PHI)RW211999-06-13No198 Lbs6 ft1NoNoNo2Pro & Farm925,000$7,460$925,000$7,460$0$0$No925,000$Link
Tyrell GoulbournePhantoms (PHI)LW/RW261994-01-25No195 Lbs5 ft11NoNoNo1Pro & Farm775,000$6,250$775,000$6,250$0$0$NoLink
Valentin ZykovPhantoms (PHI)LW/RW251995-05-14No224 Lbs6 ft1NoNoNo1Pro & Farm1,000,000$8,065$1,000,000$8,065$0$0$NoLink
Total PlayersAverage AgeAverage WeightAverage HeightAverage ContractAverage Year 1 Salary
2624.08192 Lbs6 ft11.81953,654$



5 vs 5 Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Mikkel BoedkerMelker KarlssonPontus Aberg35122
2Gemel SmithEvan RodriguesValentin Zykov30122
3Alex FormentonJack StudnickaCole Bardreau25122
4Jack KopackaLane PedersonNathan Bastian10122
5 vs 5 Defense
Line #DefenseDefenseTime %PHYDFOF
1Mark FriedmanMark Alt35122
2Reece WillcoxJosh Brook30122
3Luke GreenLane Pederson25122
4Mark FriedmanMark Alt10122
Power Play Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Mikkel BoedkerMelker KarlssonPontus Aberg60122
2Gemel SmithEvan RodriguesValentin Zykov40122
Power Play Defense
Line #DefenseDefenseTime %PHYDFOF
1Mark FriedmanMark Alt60122
2Reece WillcoxJosh Brook40122
Penalty Kill 4 Players Forward
Line #CenterWingTime %PHYDFOF
1Mikkel BoedkerPontus Aberg60122
2Melker KarlssonEvan Rodrigues40122
Penalty Kill 4 Players Defense
Line #DefenseDefenseTime %PHYDFOF
1Mark FriedmanMark Alt60122
2Reece WillcoxJosh Brook40122
Penalty Kill 3 Players
Line #WingTime %PHYDFOFDefenseDefenseTime %PHYDFOF
1Mikkel Boedker60122Mark FriedmanMark Alt60122
2Pontus Aberg40122Reece WillcoxJosh Brook40122
4 vs 4 Forward
Line #CenterWingTime %PHYDFOF
1Mikkel BoedkerPontus Aberg60122
2Melker KarlssonEvan Rodrigues40122
4 vs 4 Defense
Line #DefenseDefenseTime %PHYDFOF
1Mark FriedmanMark Alt60122
2Reece WillcoxJosh Brook40122
Last Minutes Offensive
Left WingCenterRight WingDefenseDefense
Mikkel BoedkerMelker KarlssonPontus AbergMark FriedmanMark Alt
Last Minutes Defensive
Left WingCenterRight WingDefenseDefense
Mikkel BoedkerMelker KarlssonPontus AbergMark FriedmanMark Alt
Extra Forwards
Normal PowerPlayPenalty Kill
Maxim Letunov, Jack Studnicka, Alex FormentonMaxim Letunov, Jack StudnickaAlex Formenton
Extra Defensemen
Normal PowerPlayPenalty Kill
Luke Green, Reece Willcox, Josh BrookLuke GreenReece Willcox, Josh Brook
Penalty Shots
Mikkel Boedker, Pontus Aberg, Melker Karlsson, Evan Rodrigues, Gemel Smith
Goalie
#1 : Anton Forsberg, #2 : Charlie Lindgren


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
1Admirals21000100532110000004131000010012-130.750581300927162154758955253460271142359111.11%190100.00%01215233052.15%1110228048.68%617118751.98%199413812005611988490
2Bruins30200010612-62010001046-21010000026-420.3336915009271621556589552534607012406225312.00%20385.00%01215233052.15%1110228048.68%617118751.98%199413812005611988490
3Condors210000016601000000123-11100000043130.7506111700927162153858955253460591229385120.00%12283.33%01215233052.15%1110228048.68%617118751.98%199413812005611988490
4Crunch523000001718-111000000541413000001214-240.40017304700927162151285895525346011737659139615.38%29486.21%11215233052.15%1110228048.68%617118751.98%199413812005611988490
5Flames20000110660100000103211000010034-130.75061016009271621537589552534603013164319210.53%7271.43%01215233052.15%1110228048.68%617118751.98%199413812005611988490
6Griffins431000001679211000009632200000071660.750163147019271621577589552534608422599322522.73%25196.00%01215233052.15%1110228048.68%617118751.98%199413812005611988490
7IceHogs2020000037-41010000024-21010000013-200.000369009271621536589552534603611315911218.18%13376.92%11215233052.15%1110228048.68%617118751.98%199413812005611988490
8Marlies32100000963220000007341010000023-140.6679142300927162156758955253460651343551516.67%21385.71%01215233052.15%1110228048.68%617118751.98%199413812005611988490
9Monarchs2010001056-11010000024-21000001032120.500581310927162154658955253460331124458112.50%10190.00%11215233052.15%1110228048.68%617118751.98%199413812005611988490
10Monsters1383000023830865000001221210733000011618-2180.692386510300927162152715895525346021659186238821417.07%841285.71%11215233052.15%1110228048.68%617118751.98%199413812005611988490
11Moose2010000137-41000000134-11010000003-310.25035800927162152858955253460311428341417.14%13192.31%01215233052.15%1110228048.68%617118751.98%199413812005611988490
12Penguins844000001316-3422000007704220000069-380.500132235019271621513958955253460171641181454249.52%53394.34%01215233052.15%1110228048.68%617118751.98%199413812005611988490
13Rampage43100000201193210000014861100000063360.75020355500927162151165895525346010025558630723.33%23578.26%01215233052.15%1110228048.68%617118751.98%199413812005611988490
14Rocket32100000752220000004131010000034-140.66771320019271621554589552534605518344415213.33%16193.75%01215233052.15%1110228048.68%617118751.98%199413812005611988490
15Senators312000001011-11010000023-12110000088020.3331015250092716215655895525346058144662900.00%22672.73%01215233052.15%1110228048.68%617118751.98%199413812005611988490
16Sharks21100000871110000005231010000035-220.500812200092716215435895525346033553381119.09%130100.00%11215233052.15%1110228048.68%617118751.98%199413812005611988490
17Soldiers22000000413110000002021100000021141.000461001927162153958955253460321730331616.25%13192.31%01215233052.15%1110228048.68%617118751.98%199413812005611988490
18Sound Tigers824010102526-1413000001215-3411010101311280.500254166009271621519058955253460235651371923738.11%591083.05%11215233052.15%1110228048.68%617118751.98%199413812005611988490
19Stars21000100761110000005321000010023-130.7507121900927162154758955253460371520321715.88%10190.00%01215233052.15%1110228048.68%617118751.98%199413812005611988490
20Wolf Pack824000111824-641200001811-3412000101013-370.438183149109271621514758955253460155391271643925.13%591181.36%21215233052.15%1110228048.68%617118751.98%199413812005611988490
21Wolves20100010660100000103211010000034-120.500610160092716215285895525346045152941800.00%12191.67%11215233052.15%1110228048.68%617118751.98%199413812005611988490
Total8235320136523222111412113000341251012441141901331107120-13920.56123239462624927162151699589552534601689492121216304735812.26%5337186.68%91215233052.15%1110228048.68%617118751.98%199413812005611988490
_Since Last GM Reset8235320136523222111412113000341251012441141901331107120-13920.56123239462624927162151699589552534601689492121216304735812.26%5337186.68%91215233052.15%1110228048.68%617118751.98%199413812005611988490
_Vs Conference48212000133124128-4231360002262491325814001116279-17520.5421242093331292716215964589552534609372696759042853411.93%3114585.53%41215233052.15%1110228048.68%617118751.98%199413812005611988490
_Vs Division371411001239496-2188400012494541967001114551-6360.486941592531192716215747589552534607772275687392002311.50%2553685.88%41215233052.15%1110228048.68%617118751.98%199413812005611988490

Total For Players
Games PlayedPointsStreakGoalsAssistsPointsShots ForShots AgainstShots BlockedPenalty MinutesHitsEmpty Net GoalsShutouts
8292W4232394626169916894921212163024
All Games
GPWLOTWOTL SOWSOLGFGA
8235321365232221
Home Games
GPWLOTWOTL SOWSOLGFGA
4121130034125101
Visitor Games
GPWLOTWOTL SOWSOLGFGA
4114191331107120
Last 10 Games
WLOTWOTL SOWSOL
820000
Power Play AttempsPower Play GoalsPower Play %Penalty Kill AttempsPenalty Kill Goals AgainstPenalty Kill %Penalty Kill Goals For
4735812.26%5337186.68%9
Shots 1 PeriodShots 2 PeriodShots 3 PeriodShots 4+ PeriodGoals 1 PeriodGoals 2 PeriodGoals 3 PeriodGoals 4+ Period
5895525346092716215
Face Offs
Won Offensive ZoneTotal OffensiveWon Offensive %Won Defensif ZoneTotal DefensiveWon Defensive %Won Neutral ZoneTotal NeutralWon Neutral %
1215233052.15%1110228048.68%617118751.98%
Puck Time
In Offensive ZoneControl In Offensive ZoneIn Defensive ZoneControl In Defensive ZoneIn Neutral ZoneControl In Neutral Zone
199413812005611988490


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 - 2020-09-271Phantoms5Wolf Pack4WXXBoxScore
2 - 2020-09-2813Monsters1Phantoms3WBoxScore
4 - 2020-09-3030Phantoms3Monsters1WBoxScore
5 - 2020-10-0137Monsters4Phantoms3LXXBoxScore
6 - 2020-10-0247Phantoms0Monsters1LBoxScore
8 - 2020-10-0461Wolf Pack2Phantoms1LBoxScore
10 - 2020-10-0675Wolf Pack4Phantoms2LBoxScore
12 - 2020-10-0882Phantoms3Monsters4LXXBoxScore
15 - 2020-10-1198Bruins2Phantoms3WXXBoxScore
16 - 2020-10-12104Phantoms2Monsters4LBoxScore
18 - 2020-10-14114Phantoms0Penguins3LBoxScore
20 - 2020-10-16129Sound Tigers2Phantoms0LBoxScore
22 - 2020-10-18137Monsters4Phantoms6WBoxScore
23 - 2020-10-19149Phantoms1Penguins3LBoxScore
24 - 2020-10-20156Phantoms3Wolf Pack2WBoxScore
25 - 2020-10-21168Rampage5Phantoms4LBoxScore
26 - 2020-10-22178Phantoms0Monsters3LBoxScore
28 - 2020-10-24190Monsters1Phantoms3WBoxScore
31 - 2020-10-27206Senators3Phantoms2LBoxScore
32 - 2020-10-28216Phantoms4Monsters2WBoxScore
34 - 2020-10-30224Phantoms0Wolf Pack3LBoxScore
36 - 2020-11-01235Sound Tigers4Phantoms3LBoxScore
38 - 2020-11-03250Rocket0Phantoms2WBoxScore
40 - 2020-11-05261Phantoms2Soldiers1WBoxScore
42 - 2020-11-07269Marlies2Phantoms5WBoxScore
45 - 2020-11-10287Wolf Pack1Phantoms2WBoxScore
46 - 2020-11-11301Phantoms3Senators5LBoxScore
48 - 2020-11-13310Penguins0Phantoms4WBoxScore
50 - 2020-11-15332Penguins1Phantoms0LBoxScore
51 - 2020-11-16343Phantoms6Rampage3WBoxScore
53 - 2020-11-18353Phantoms2Sound Tigers3LBoxScore
54 - 2020-11-19360Rampage1Phantoms4WBoxScore
55 - 2020-11-20370Phantoms4Sound Tigers3WBoxScore
56 - 2020-11-21379Rocket1Phantoms2WBoxScore
58 - 2020-11-23397Phantoms4Sound Tigers3WXXBoxScore
59 - 2020-11-24407Monarchs4Phantoms2LBoxScore
60 - 2020-11-25418Griffins2Phantoms7WBoxScore
62 - 2020-11-27431Phantoms3Flames4LXBoxScore
63 - 2020-11-28441Marlies1Phantoms2WBoxScore
64 - 2020-11-29449Phantoms4Monsters3WBoxScore
66 - 2020-12-01461Griffins4Phantoms2LBoxScore
68 - 2020-12-03477Phantoms3Rocket4LBoxScore
69 - 2020-12-04486Phantoms1Admirals2LXBoxScore
70 - 2020-12-05490Bruins4Phantoms1LBoxScore
71 - 2020-12-06506Crunch4Phantoms5WBoxScore
73 - 2020-12-08518Phantoms2Wolf Pack4LBoxScore
74 - 2020-12-09527Penguins4Phantoms0LBoxScore
75 - 2020-12-10538Phantoms3Crunch4LBoxScore
77 - 2020-12-12544Phantoms3Sound Tigers2WXBoxScore
78 - 2020-12-13556Condors3Phantoms2LXXBoxScore
79 - 2020-12-14565Phantoms3Griffins1WBoxScore
80 - 2020-12-15577Sharks2Phantoms5WBoxScore
82 - 2020-12-17591Penguins2Phantoms3WBoxScore
84 - 2020-12-19602Phantoms0Moose3LBoxScore
86 - 2020-12-21614Phantoms2Stars3LXBoxScore
87 - 2020-12-22624Flames2Phantoms3WXXBoxScore
88 - 2020-12-23632Phantoms2Marlies3LBoxScore
90 - 2020-12-25642Phantoms3Crunch4LBoxScore
91 - 2020-12-26649IceHogs4Phantoms2LBoxScore
93 - 2020-12-28666Moose4Phantoms3LXXBoxScore
95 - 2020-12-30684Wolves2Phantoms3WXXBoxScore
96 - 2020-12-31695Phantoms3Sharks5LBoxScore
97 - 2021-01-01707Admirals1Phantoms4WBoxScore
98 - 2021-01-02714Phantoms3Wolves4LBoxScore
99 - 2021-01-03725Soldiers0Phantoms2WBoxScore
101 - 2021-01-05740Phantoms3Crunch4LBoxScore
102 - 2021-01-06748Wolf Pack4Phantoms3LXXBoxScore
103 - 2021-01-07756Phantoms3Crunch2WBoxScore
105 - 2021-01-09769Phantoms5Senators3WBoxScore
Trade Deadline --- Trades can’t be done after this day is simulated!
106 - 2021-01-10778Rampage2Phantoms6WBoxScore
107 - 2021-01-11790Phantoms2Bruins6LBoxScore
108 - 2021-01-12796Stars3Phantoms5WBoxScore
110 - 2021-01-14814Sound Tigers6Phantoms4LBoxScore
112 - 2021-01-16827Phantoms4Condors3WBoxScore
114 - 2021-01-18839Sound Tigers3Phantoms5WBoxScore
115 - 2021-01-19848Phantoms3Penguins2WBoxScore
117 - 2021-01-21860Monsters1Phantoms3WBoxScore
118 - 2021-01-22869Phantoms1IceHogs3LBoxScore
120 - 2021-01-24883Monsters1Phantoms4WBoxScore
121 - 2021-01-25891Phantoms2Penguins1WBoxScore
122 - 2021-01-26900Phantoms4Griffins0WBoxScore
123 - 2021-01-27902Phantoms3Monarchs2WXXBoxScore



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
3,213,503$ 2,379,498$ 2,358,082$ 0$
Salary Cap Per DaysSalary Cap To DatePlayers In Salary CapPlayers Out of Salary Cap
0$ 2,370,378$ 0 0

Estimate
Estimated Season RevenueRemaining Season DaysExpenses Per DaysEstimated Season Expenses
0$ 1 26,044$ 26,044$




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