Login

San Diego Seagulls
GP: 29 | W: 12 | L: 14 | OTL: 3 | P: 27
GF: 143 | GA: 181 | PP%: 32.71% | PK%: 58.49%
GM : Olivier Lemay | Morale : 91 | Team Overall : N/A
Next Games #415 vs Toronto Marlies
Your browser screen resolution is too small for this page. Some information are hidden to keep the page readable.

Game Center
Iowa Wild
13-10-2, 28pts
2
FINAL
5 San Diego Seagulls
12-14-3, 27pts
Team Stats
W1StreakL1
9-3-1Home Record7-4-1
4-7-1Home Record5-10-2
4-5-1Last 10 Games5-3-2
4.40Goals Per Game4.93
4.16Goals Against Per Game6.24
27.78%Power Play Percentage32.71%
62.82%Penalty Kill Percentage58.49%
San Diego Seagulls
12-14-3, 27pts
4
FINAL
8 Hershey Bears
15-8-2, 32pts
Team Stats
L1StreakW1
7-4-1Home Record9-4-0
5-10-2Home Record6-4-2
5-3-2Last 10 Games6-3-1
4.93Goals Per Game5.12
6.24Goals Against Per Game4.60
32.71%Power Play Percentage36.99%
58.49%Penalty Kill Percentage60.00%
Toronto Marlies
8-13-4, 20pts
Day 82
San Diego Seagulls
12-14-3, 27pts
Team Stats
L1StreakL1
5-6-2Home Record7-4-1
3-7-2Away Record5-10-2
5-5-0Last 10 Games5-3-2
2.52Goals Per Game4.93
3.52Goals Against Per Game4.93
20.00%Power Play Percentage32.71%
81.13%Penalty Kill Percentage58.49%
San Diego Seagulls
12-14-3, 27pts
Day 87
Syracuse Crunch
7-19-1, 15pts
Team Stats
L1StreakW1
7-4-1Home Record5-6-1
5-10-2Away Record2-13-0
5-3-2Last 10 Games3-6-1
4.93Goals Per Game2.33
6.24Goals Against Per Game2.33
32.71%Power Play Percentage23.86%
58.49%Penalty Kill Percentage72.53%
Tucson Roadrunners
10-13-1, 21pts
Day 89
San Diego Seagulls
12-14-3, 27pts
Team Stats
W3StreakL1
6-6-1Home Record7-4-1
4-7-0Away Record5-10-2
4-6-0Last 10 Games5-3-2
4.33Goals Per Game4.93
4.46Goals Against Per Game4.93
37.97%Power Play Percentage32.71%
67.03%Penalty Kill Percentage58.49%
Team Leaders
Goals
Jordan Gustafson
26
Assists
Jordan Gustafson
26
Points
Jordan Gustafson
52
Marian StudenicPlus/Minus
Marian Studenic
1
Olle Eriksson EkWins
Olle Eriksson Ek
7
Olle Eriksson EkSave Percentage
Olle Eriksson Ek
0.809

Team Stats
Goals For
143
4.93 GFG
Shots For
892
30.76 Avg
Power Play Percentage
32.7%
35 GF
Offensive Zone Start
36.1%
Goals Against
181
6.24 GAA
Shots Against
873
30.10 Avg
Penalty Kill Percentage
58.5%%
44 GA
Defensive Zone Start
31.1%
Team Info

General ManagerOlivier Lemay
CoachDavid Oliver
DivisionDivision 3
ConferenceConference 1
Captain
Assistant #1Josh Mahura
Assistant #2


Arena Info

Capacity3,000
Attendance2,234
Season Tickets0


Roster Info

Pro Team23
Farm Team20
Contract Limit43 / 55
Prospects20


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
1Alex NewhookX100.00573594756984787578737264757672838200222925,000$
2Austin WagnerXX100.00824286697484876759656469667371578200261950,000$
3Carsen TwarynskiXXX100.00803594628176715768565958637370598200252700,000$
4Derick BrassardXX99.00773594687783896981706562719590498200351950,000$
5Marian StudenicX100.0070378463718077635961625863706955820X0242800,000$
6Riley TufteX100.0093866758998389565555546354707178820X0252800,000$
7Tommy NovakX100.00623592647381866477655964637370598200263875,000$
8Vinni LettieriXX100.0065359661707775676767685667777238820X0282800,000$
9Matthew Wood (R)X100.00735092777888857656656864815757888200183925,000$
10Ryan Greene (R)X100.00635080756384818076676758775857788200192800,000$
11Kasper Halttunen (R)X100.00795590708389887156636166725656858000183850,000$
12Jordan Gustafson (R)X100.00725479707274727477716954525352798200192900,000$
13Aaron NessX100.00603596636769686230645863529281538200331700,000$
14Adam ClendeningX100.00706562637387926530685661528375597800301700,000$
15Axel AnderssonX100.00603595647272786633636065547268728200232700,000$
16Otto LeskinenX100.00743596637076776030615759497471398200262700,000$
17Simon BenoitX100.0080379262838679593060566748716941820X0242800,000$
18Olen Zellweger (R)X100.00675082767283857736666472705555808200203700,000$
Scratches
1Josh Mahura (A)X100.00553594667280756930716462537068607600253925,000$
2Nick DeSimoneX100.00663791597873795530615458478073347100282800,000$
TEAM AVERAGE99.9570448866758081675365626261716862810
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 SPAgeContractSalary
1Garret Sparks100.0071858384796869696871708591378500301700,000$
2Olle Eriksson Ek100.0076838084797376767473716771728200241975,000$
Scratches
1Olivier Rodrigue100.0071888671767069676872717773658000232900,000$
TEAM AVERAGE100.007385838078707171707271767858820
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
David Oliver63677058746976CAN501900,000$


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
1Jordan GustafsonSan Diego Seagulls (ANA)C29262652-62404819119376021.85%453918.59813213184000001143.48%23705031.9300000522
2Alex NewhookSan Diego Seagulls (ANA)C29251439-10201746100285025.00%1046716.1163914290000152049.37%237476011.6701000104
3Matthew WoodSan Diego Seagulls (ANA)RW29191938-10605435102325618.63%647716.46371026790110272029.17%24717001.5900000113
4Derick BrassardSan Diego Seagulls (ANA)C/RW29161935-1280546275336221.33%1264722.3251015138410161022156.71%6635214011.0812000211
5Austin WagnerSan Diego Seagulls (ANA)LW/RW29122234-9100855595276012.63%2559620.58561117800001380041.67%242921001.1412000221
6Vinni LettieriSan Diego Seagulls (ANA)C/RW29141933-1020264154294825.93%1156219.4127910790000200150.66%377219011.1700000031
7Aaron NessSan Diego Seagulls (ANA)D2932023-44018594320246.98%5074025.55134997011296110%0437000.6200000100
8Kasper HalttunenSan Diego Seagulls (ANA)RW2961723-12241036297931617.59%1544615.3800000000000035.48%31409001.0300011110
9Adam ClendeningSan Diego Seagulls (ANA)D29215171711560483215146.25%3569824.09279797000071000%0428000.4900030001
10Marian StudenicSan Diego Seagulls (ANA)RW28391212018928161710.71%41766.3000000000090020.00%5240001.3600000010
11Olen ZellwegerSan Diego Seagulls (ANA)D294812-8140146328161414.29%3043214.9200000101323000%0618000.5500000000
12Simon BenoitSan Diego Seagulls (ANA)D2901111-71002452218130%2447616.42011541000010000%0222000.4600000000
13Ryan GreeneSan Diego Seagulls (ANA)C297411-212081735221920.00%31585.4700000000002036.36%11212001.3900000000
14Tommy NovakSan Diego Seagulls (ANA)C29279-300615197910.53%31434.9500000000001053.33%9053001.2500000001
15Otto LeskinenSan Diego Seagulls (ANA)D29257-194036482112119.52%4163922.07213468000267000%0028000.2200000000
16Carsen TwarynskiSan Diego Seagulls (ANA)C/LW/RW29044-81002820104120%1050117.310112570000650042.31%26103000.1601000000
17Riley TufteSan Diego Seagulls (ANA)LW29044-9335652513360%438213.2000000000020033.33%938000.2100001000
18Nick DeSimoneSan Diego Seagulls (ANA)D11123-104081382212.50%922820.74112326000016000%019000.2600000000
19Axel AnderssonSan Diego Seagulls (ANA)D18022-100052810570%1128615.930000000000000%0115000.1401000000
20Josh MahuraSan Diego Seagulls (ANA)D1000-100000000%100.570000000000000%00000000000000
Team Total or Average522142227369-1482403061068489234754515.92%308860416.483560951418292241456711451.91%1520411244060.8627042131114
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
1Olle Eriksson EkSan Diego Seagulls (ANA)247530.8095.6710480099517279100.75041811010
2Olivier RodrigueSan Diego Seagulls (ANA)114500.8036.1246100472391382000110000
3Garret SparksSan Diego Seagulls (ANA)91400.7098.262470034117620000018000
Team Total or Average44121430.7946.151757001808734793042929010


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 Acquired By Last Trade Date Force Waivers Waiver Possible Contract Contract Signature Date Force UFA Emergency Recall Type Current Salary Salary 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 10Salary Cap Year 2Salary Cap Year 3Salary Cap Year 4Salary Cap Year 5Salary Cap Year 6Salary Cap Year 7Salary Cap Year 8Salary Cap Year 9Salary Cap Year 10No Trade Year 2No Trade Year 3No Trade Year 4No Trade Year 5No Trade Year 6No Trade Year 7No Trade Year 8No Trade Year 9No Trade Year 10Link
Aaron NessSan Diego Seagulls (ANA)D331990-05-18No186 Lbs5 ft10NoNoAssign ManuallyNoNo12024-01-21FalseFalsePro & Farm700,000$0$0$No---------------------------Link
Adam ClendeningSan Diego Seagulls (ANA)D301992-10-26No201 Lbs6 ft0NoNoAssign ManuallyNoNo12024-01-23FalseFalsePro & Farm700,000$0$0$No---------------------------Link / NHL Link
Alex NewhookSan Diego Seagulls (ANA)C222001-01-28No205 Lbs6 ft1NoNoN/ANoNo2FalseFalsePro & Farm925,000$0$0$No925,000$--------925,000$--------No--------Link / NHL Link
Austin WagnerSan Diego Seagulls (ANA)LW/RW261997-06-23No191 Lbs6 ft1NoNoN/ANoNo1FalseFalsePro & Farm950,000$0$0$No---------------------------Link / NHL Link
Axel AnderssonSan Diego Seagulls (ANA)D232000-02-10No189 Lbs6 ft0NoNoTrade2024-01-04NoNo2FalseFalsePro & Farm700,000$0$0$No700,000$--------700,000$--------No--------Link / NHL Link
Carsen TwarynskiSan Diego Seagulls (ANA)C/LW/RW251997-11-24No206 Lbs6 ft2NoNoN/ANoNo2FalseFalsePro & Farm700,000$0$0$No700,000$--------700,000$--------No--------Link / NHL Link
Derick BrassardSan Diego Seagulls (ANA)C/RW351987-09-22No205 Lbs6 ft1NoNoN/ANoNo1FalseFalsePro & Farm950,000$0$0$No---------------------------Link / NHL Link
Garret SparksSan Diego Seagulls (ANA)G301993-06-28No205 Lbs6 ft3NoNoAssign ManuallyNoNo12024-01-04FalseFalsePro & Farm700,000$0$0$No---------------------------Link / NHL Link
Jordan GustafsonSan Diego Seagulls (ANA)C192004-01-20Yes184 Lbs6 ft0NoNoN/ANoNo2FalseFalsePro & Farm900,000$0$0$No900,000$--------900,000$--------No--------
Josh MahuraSan Diego Seagulls (ANA)D251998-05-05No192 Lbs6 ft0NoNoN/ANoNo3FalseFalsePro & Farm925,000$0$0$No925,000$925,000$-------925,000$925,000$-------NoNo-------Link / NHL Link
Kasper HalttunenSan Diego Seagulls (ANA)RW182005-06-07Yes212 Lbs6 ft3NoNoN/ANoNo3FalseFalsePro & Farm850,000$0$0$No850,000$850,000$-------850,000$850,000$-------NoNo-------
Marian StudenicSan Diego Seagulls (ANA)RW241998-10-28No173 Lbs6 ft1NoYesN/ANoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link / NHL Link
Matthew WoodSan Diego Seagulls (ANA)RW182005-02-06Yes195 Lbs6 ft5NoNoN/ANoNo3FalseFalsePro & Farm925,000$0$0$No925,000$925,000$-------925,000$925,000$-------NoNo-------
Nick DeSimoneSan Diego Seagulls (ANA)D281994-11-21No194 Lbs6 ft2NoNoTrade2024-01-04NoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link / NHL Link
Olen ZellwegerSan Diego Seagulls (ANA)D202003-09-10Yes182 Lbs5 ft9NoNoProspectNoNo32023-12-11FalseFalsePro & Farm700,000$0$0$No700,000$700,000$-------700,000$700,000$-------NoNo-------
Olivier RodrigueSan Diego Seagulls (ANA)G232000-07-06No165 Lbs6 ft1NoNoTrade2024-01-04NoNo2FalseFalsePro & Farm900,000$0$0$No900,000$--------900,000$--------No--------Link
Olle Eriksson EkSan Diego Seagulls (ANA)G241999-06-22No195 Lbs6 ft3NoNoN/ANoNo1FalseFalsePro & Farm975,000$0$0$No---------------------------Link / NHL Link
Otto LeskinenSan Diego Seagulls (ANA)D261997-02-06No192 Lbs5 ft11NoNoN/ANoNo2FalseFalsePro & Farm700,000$0$0$No700,000$--------700,000$--------No--------Link
Riley TufteSan Diego Seagulls (ANA)LW251998-04-10No241 Lbs6 ft6NoYesN/ANoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link / NHL Link
Ryan GreeneSan Diego Seagulls (ANA)C192003-10-21Yes176 Lbs6 ft1NoNoN/ANoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link
Simon BenoitSan Diego Seagulls (ANA)D241998-09-19No195 Lbs6 ft3NoYesN/ANoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link / NHL Link
Tommy NovakSan Diego Seagulls (ANA)C261997-04-28No186 Lbs6 ft1NoNoN/ANoNo3FalseFalsePro & Farm875,000$0$0$No875,000$875,000$-------875,000$875,000$-------NoNo-------Link / NHL Link
Vinni LettieriSan Diego Seagulls (ANA)C/RW281995-02-06No189 Lbs5 ft11NoYesN/ANoNo2FalseFalsePro & Farm800,000$0$0$No800,000$--------800,000$--------No--------Link
Total PlayersAverage AgeAverage WeightAverage HeightAverage ContractAverage Year 1 Salary
2324.83194 Lbs6 ft11.96820,652$



5 vs 5 Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Ryan GreeneDerick BrassardKasper Halttunen40005
2Austin WagnerVinni LettieriJordan Gustafson30005
3Riley TufteAlex NewhookMatthew Wood20014
4Alex NewhookTommy NovakMatthew Wood10014
5 vs 5 Defense
Line #DefenseDefenseTime %PHYDFOF
1Aaron NessAdam Clendening40041
2Axel AnderssonOtto Leskinen35041
3Simon BenoitOlen Zellweger25050
4Aaron NessAdam Clendening0050
Power Play Forward
Line #Left WingCenterRight WingTime %PHYDFOF
1Alex NewhookDerick BrassardJordan Gustafson60005
2Austin WagnerVinni LettieriMatthew Wood40005
Power Play Defense
Line #DefenseDefenseTime %PHYDFOF
1Aaron NessAdam Clendening60005
2Simon BenoitOtto Leskinen40005
Penalty Kill 4 Players Forward
Line #CenterWingTime %PHYDFOF
1Derick BrassardMatthew Wood60050
2Vinni LettieriAustin Wagner40050
Penalty Kill 4 Players Defense
Line #DefenseDefenseTime %PHYDFOF
1Aaron NessAdam Clendening60050
2Olen ZellwegerOtto Leskinen40050
Penalty Kill 3 Players
Line #WingTime %PHYDFOFDefenseDefenseTime %PHYDFOF
1Derick Brassard60050Aaron NessAdam Clendening60050
2Vinni Lettieri40050Olen ZellwegerOtto Leskinen40050
4 vs 4 Forward
Line #CenterWingTime %PHYDFOF
1Derick BrassardMatthew Wood60005
2Vinni LettieriAustin Wagner40005
4 vs 4 Defense
Line #DefenseDefenseTime %PHYDFOF
1Aaron NessAdam Clendening60005
2Simon BenoitOtto Leskinen40005
Last Minutes Offensive
Left WingCenterRight WingDefenseDefense
Alex NewhookDerick BrassardMatthew WoodAaron NessAdam Clendening
Last Minutes Defensive
Left WingCenterRight WingDefenseDefense
Alex NewhookDerick BrassardMatthew WoodAaron NessAdam Clendening
Extra Forwards
Normal PowerPlayPenalty Kill
Derick Brassard, Matthew Wood, Kasper HalttunenDerick Brassard, Matthew WoodDerick Brassard
Extra Defensemen
Normal PowerPlayPenalty Kill
Otto Leskinen, Simon Benoit, Olen ZellwegerOtto LeskinenOtto Leskinen, Simon Benoit
Penalty Shots
Alex Newhook, Austin Wagner, Derick Brassard, Vinni Lettieri, Matthew Wood
Goalie
#1 : Olle Eriksson Ek, #2 : Garret Sparks
Custom OT Lines Forwards
Ryan Greene, Austin Wagner, Derick Brassard, Vinni Lettieri, Jordan Gustafson, Matthew Wood, Matthew Wood, Kasper Halttunen, Riley Tufte, Alex Newhook, Tommy Novak
Custom OT Lines Defensemen
Aaron Ness, Adam Clendening, Olen Zellweger, Otto Leskinen, Simon Benoit


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
1Belleville Senators404000001031-211010000037-430300000724-1700.0001017270048444841103053032761412535267011218.18%13469.23%028254351.93%25746854.91%25049250.81%638402663240456225
2Chicago Wolves10000010541000000000001000001054121.00057120048444842130530327614381310172150.00%50100.00%028254351.93%25746854.91%25049250.81%638402663240456225
3Cleaveland Monsters2100000114104110000009451000000156-130.7501421350048444846530530327614572910448112.50%5340.00%028254351.93%25746854.91%25049250.81%638402663240456225
4Coachella Valley Firebirds10001000211000000000001000100021121.00023500484448431305303276143213625200.00%3166.67%028254351.93%25746854.91%25049250.81%638402663240456225
5Colorado Eagles10100000511-60000000000010100000511-600.000591400484448429305303276143958103133.33%4250.00%028254351.93%25746854.91%25049250.81%638402663240456225
6Henderson Silver Knights311001002023-311000000651201001001418-430.500203252004844484104305303276149739245711327.27%7442.86%028254351.93%25746854.91%25049250.81%638402663240456225
7Hershey Bears312000001518-31100000085320200000713-620.33315223700484448492305303276147539276815746.67%11281.82%128254351.93%25746854.91%25049250.81%638402663240456225
8Iowa Wild32100000151142200000012481010000037-440.66715243900484448488305303276148628185713430.77%9544.44%028254351.93%25746854.91%25049250.81%638402663240456225
9Milwaukee Admirals11000000853110000008530000000000021.0008142200484448433305303276143088267457.14%440.00%028254351.93%25746854.91%25049250.81%638402663240456225
10Providence Bruins1000010067-11000010067-10000000000010.5006101600484448428305303276143276233133.33%30100.00%028254351.93%25746854.91%25049250.81%638402663240456225
11Rockford IceHogs1010000019-81010000019-80000000000000.00012300484448432305303276142111227200.00%110.00%028254351.93%25746854.91%25049250.81%638402663240456225
12Springfield Thunderbirds10001000761100010007610000000000021.00071118004844484393053032761432912246233.33%6433.33%028254351.93%25746854.91%25049250.81%638402663240456225
13Stockton Heat11000000752000000000001100000075221.000713200048444842730530327614321018284125.00%4175.00%028254351.93%25746854.91%25049250.81%638402663240456225
14Syracuse Crunch21100000101001010000045-11100000065120.5001014240048444846430530327614601724385240.00%12466.67%028254351.93%25746854.91%25049250.81%638402663240456225
15Tucson Roadrunners11000000981000000000001100000098121.00091524004844484423053032761427610315360.00%6350.00%128254351.93%25746854.91%25049250.81%638402663240456225
16Utica Comets1010000017-6000000000001010000017-600.00011200484448428305303276142913920000%2150.00%028254351.93%25746854.91%25049250.81%638402663240456225
17Wilkes-Barre/Scranton Penguins20200000815-71010000048-41010000047-300.0008122000484448459305303276146126224510330.00%11554.55%028254351.93%25746854.91%25049250.81%638402663240456225
Total2991402211143181-3812640110068653173100111175116-41270.466143227370004844484892305303276148733082406101073532.71%1064458.49%228254351.93%25746854.91%25049250.81%638402663240456225
_Since Last GM Reset2991402211143181-3812640110068653173100111175116-41270.466143227370004844484892305303276148733082406101073532.71%1064458.49%228254351.93%25746854.91%25049250.81%638402663240456225
_Vs Conference195110020193129-36733001004041-11228001015388-35130.3429314423700484448459230530327614563211158396682232.35%702662.86%228254351.93%25746854.91%25049250.81%638402663240456225

Total For Players
Games PlayedPointsStreakGoalsAssistsPointsShots ForShots AgainstShots BlockedPenalty MinutesHitsEmpty Net GoalsShutouts
2927L114322737089287330824061000
All Games
GPWLOTWOTL SOWSOLGFGA
299142211143181
Home Games
GPWLOTWOTL SOWSOLGFGA
126411006865
Visitor Games
GPWLOTWOTL SOWSOLGFGA
17310111175116
Last 10 Games
WLOTWOTL SOWSOL
431101
Power Play AttempsPower Play GoalsPower Play %Penalty Kill AttempsPenalty Kill Goals AgainstPenalty Kill %Penalty Kill Goals For
1073532.71%1064458.49%2
Shots 1 PeriodShots 2 PeriodShots 3 PeriodShots 4+ PeriodGoals 1 PeriodGoals 2 PeriodGoals 3 PeriodGoals 4+ Period
305303276144844484
Face Offs
Won Offensive ZoneTotal OffensiveWon Offensive %Won Defensif ZoneTotal DefensiveWon Defensive %Won Neutral ZoneTotal NeutralWon Neutral %
28254351.93%25746854.91%25049250.81%
Puck Time
In Offensive ZoneControl In Offensive ZoneIn Defensive ZoneControl In Defensive ZoneIn Neutral ZoneControl In Neutral Zone
638402663240456225


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
13Syracuse Crunch5San Diego Seagulls4LBoxScore
29San Diego Seagulls1Belleville Senators9LBoxScore
843Henderson Silver Knights5San Diego Seagulls6WBoxScore
1263San Diego Seagulls6Syracuse Crunch5WBoxScore
1581Iowa Wild2San Diego Seagulls7WBoxScore
20104Belleville Senators7San Diego Seagulls3LBoxScore
22114San Diego Seagulls3Belleville Senators7LBoxScore
26134Wilkes-Barre/Scranton Penguins8San Diego Seagulls4LBoxScore
29147San Diego Seagulls3Hershey Bears5LBoxScore
32164San Diego Seagulls8Henderson Silver Knights9LXBoxScore
34172Milwaukee Admirals5San Diego Seagulls8WBoxScore
37185San Diego Seagulls4Wilkes-Barre/Scranton Penguins7LBoxScore
40204San Diego Seagulls5Chicago Wolves4WXXBoxScore
43218Hershey Bears5San Diego Seagulls8WBoxScore
45228Rockford IceHogs9San Diego Seagulls1LBoxScore
47240San Diego Seagulls6Henderson Silver Knights9LBoxScore
49253San Diego Seagulls2Coachella Valley Firebirds1WXBoxScore
51260San Diego Seagulls1Utica Comets7LBoxScore
54272San Diego Seagulls3Iowa Wild7LBoxScore
56285Cleaveland Monsters4San Diego Seagulls9WBoxScore
58299San Diego Seagulls9Tucson Roadrunners8WBoxScore
60307San Diego Seagulls5Cleaveland Monsters6LXXBoxScore
62320Providence Bruins7San Diego Seagulls6LXBoxScore
64328San Diego Seagulls5Colorado Eagles11LBoxScore
68350Springfield Thunderbirds6San Diego Seagulls7WXBoxScore
70360San Diego Seagulls7Stockton Heat5WBoxScore
73373San Diego Seagulls3Belleville Senators8LBoxScore
75384Iowa Wild2San Diego Seagulls5WBoxScore
77396San Diego Seagulls4Hershey Bears8LBoxScore
82415Toronto Marlies-San Diego Seagulls-
87439San Diego Seagulls-Syracuse Crunch-
89448Tucson Roadrunners-San Diego Seagulls-
93466San Diego Seagulls-Grand Rapids Griffins-
95476San Diego Seagulls-San Jose Barracuda-
96480Stockton Heat-San Diego Seagulls-
100500San Diego Seagulls-Chicago Wolves-
103509San Diego Seagulls-Rockford IceHogs-
104514Bridgeport Sound Tigers-San Diego Seagulls-
108537San Diego Seagulls-Laval Rocket-
110544Laval Rocket-San Diego Seagulls-
112557San Diego Seagulls-Canucks Abbotsford-
115576San Jose Barracuda-San Diego Seagulls-
118592San Diego Seagulls-Toronto Marlies-
120608Canucks Abbotsford-San Diego Seagulls-
124623San Diego Seagulls-Hartford Wolfpack-
126639Rochester Americans-San Diego Seagulls-
133672Lehigh Valley Phantoms-San Diego Seagulls-
139704Manitoba Moose-San Diego Seagulls-
142722San Diego Seagulls-Texas Stars-
144734Henderson Silver Knights-San Diego Seagulls-
147754San Diego Seagulls-Wilkes-Barre/Scranton Penguins-
150766Wilkes-Barre/Scranton Penguins-San Diego Seagulls-
156795Colorado Eagles-San Diego Seagulls-
Trade Deadline --- Trades can’t be done after this day is simulated!
161823Hershey Bears-San Diego Seagulls-
163830San Diego Seagulls-Providence Bruins-
165842San Diego Seagulls-Bakersfield Condors-
169858Chicago Wolves-San Diego Seagulls-
173882San Diego Seagulls-Milwaukee Admirals-
175892Milwaukee Admirals-San Diego Seagulls-
177900San Diego Seagulls-Manitoba Moose-
181926San Diego Seagulls-Bridgeport Sound Tigers-
182927Syracuse Crunch-San Diego Seagulls-
188959Ontario Reigh-San Diego Seagulls-
193985Utica Comets-San Diego Seagulls-
1991013Texas Stars-San Diego Seagulls-
2031029San Diego Seagulls-Rochester Americans-
2061044Coachella Valley Firebirds-San Diego Seagulls-
2081061San Diego Seagulls-Charlotte Checkers-
2111079Charlotte Checkers-San Diego Seagulls-
2151097San Diego Seagulls-Springfield Thunderbirds-
2171111Belleville Senators-San Diego Seagulls-
2191119San Diego Seagulls-Ontario Reigh-
2241148Bakersfield Condors-San Diego Seagulls-
2271167Grand Rapids Griffins-San Diego Seagulls-
2331197Hartford Wolfpack-San Diego Seagulls-
2361208San Diego Seagulls-Lehigh Valley Phantoms-



Arena Capacity - Ticket Price Attendance - %
Level 1Level 2
Capacity20001000
Ticket Price4020
Attendance18,5978,216
Attendance PCT77.49%68.47%

Income
Home Games LeftAverage Attendance - %Average Income per GameYear to Date RevenueCapacityTeam Popularity
26 2234 - 74.48% 75,683$908,200$3000100

Expenses
Year To Date ExpensesPlayers Total SalariesPlayers Total Salaries CapCoaches Salaries
926,112$ 1,887,500$ 1,887,500$ 0$
Salary Cap Per DaysSalary Cap To DatePlayers In Salary CapPlayers Out of Salary Cap
0$ 616,462$ 0 0

Estimate
Estimated Season RevenueRemaining Season DaysExpenses Per DaysEstimated Season Expenses
1,967,767$ 160 11,615$ 1,858,400$




San Diego Seagulls Players Stat Leaders (Regular Season)

# Player Name GP G A P +/- PIM HIT HTT SHT SHT% SB MP AMG PPG PPA PPP PPS PKG PKA PKP PKS GW GT FO% HT P/20 PSG PSS

San Diego Seagulls Goalies Stat Leaders (Regular Season)

# Goalie Name GP W L OTL PCT GAA MP PIM SO GA SA SAR A EG PS % PSA

San Diego Seagulls Career Team Stats

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

San Diego Seagulls Players Stat Leaders (Play-Off)

# Player Name GP G A P +/- PIM HIT HTT SHT SHT% SB MP AMG PPG PPA PPP PPS PKG PKA PKP PKS GW GT FO% HT P/20 PSG PSS

San Diego Seagulls Goalies Stat Leaders (Play-Off)

# Goalie Name GP W L OTL PCT GAA MP PIM SO GA SA SAR A EG PS % PSA