MonstersCleveland Monsters
19-32-8, 46pts · 11th in Eastern Conference
Roster
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 # POS CON CK FG DI SK ST EN DU PH FO PA SC DF PS EX LD PO MO OV AGE CONTRACT
Connor McClennon (R)0RW99.00421896796280828264737853765252831767211,250,000$/2yrs
Isaac Ratcliffe0LW98.0077376873807795766960726651555561386724695,000$/1yrs
Nate Danielson (R)0C99.0053288374698285756866715575404090286418925,000$/3yrs
Riley Nash0C/RW99.0054139977707194595758536585767758286334875,000$/2yrs
Vasily Ponomaryov (R)0C100.0071458573657173648059656362444490386221925,000$/3yrs
Victor Stjernborg (R)0C/LW100.0049269273706565736965675371484887286220925,000$/2yrs
Gleb Trikozov (R)0LW100.0059398469826775666955655870414189386119925,000$/2yrs
Filip Mesar (R)0RW100.0043159474597785686366574760404090386019925,000$/3yrs
Gracyn Sawchyn (R)0C100.0050216875577885686368555158404090386018925,000$/3yrs
Sam Harris (R)0LW100.0054286972657685635850655268404090385919925,000$/3yrs
Anders Bjork0LW/RW100.003319983716757602162584745666643335927685,000$/1yrs
Sam Lafferty0C/LW/RW100.0050317769738171588059533154636342195728685,000$/1yrs
Joey Keane0D98.0068346075737395542555447346555577386524925,000$/1yrs
Brennan Menell0D100.0047219969719387531954367338696943256426875,000$/3yrs
Darren Raddysh65D99.00513099687692875025434074416666433864271,000,000$/2yrs
Dmitry Kuzmin (R)0D100.0057316071657680622565487850404090286320925,000$/3yrs
Simon Kubicek (R)0D100.0069306967747295542531487850444486386321685,000$/1yrs
Andrew Nielsen0D100.0068445373847767422534336737727234346226975,000$/1yrs
Artem Guryev (R)0D100.0076624863825977472348378339424293146220925,000$/2yrs
Scratches
Tanner Kero0C94.9660319375698771678163665562585860306431685,000$/1yrs
Jake Bischoff0D100.0054289971738480442535367038636339206129685,000$/1yrs
Dylan Samberg0D100.00472897687454685025583269355252802058241,000,000$/2yrs
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 # CON SK DU EN SZ AG RB SC HS RT PH PS EX LD PO MO OV AGE CONTRACT
Andrew Shortridge098.007067637168788287806970727257537228950,000$/1yrs
Michal Neuvirth0100.007250787776666466636869727372466351,000,000$/3yrs
Scratches
Garret Sparks0100.006461748374595762716245575751386430685,000$/1yrs
Coaches Name PH DF OF PD EX LD PO CNT Age Contract Salary
Don Granato43436668454652USA595500,000$
General Manager
Player Stats
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 Name# POS GP G A P +/- PIM PIM5 HIT SHT OSB OSM SHT% SB AMG PPG PPA PPP PPM PKG PKA PKP PKM GW GT FO% FOT GA TA EG HT P/20 PSG PSS
1Isaac RatcliffeMonstersMonsters (CBJ)LW59252853-53401332226614411.26%3120.7191120911121094251.43%1405423000.8712
2Victor StjernborgMonstersMonsters (CBJ)C/LW59212546-1660591965910810.71%2018.7167137600081250.93%1614314010.8314
3Connor McClennonMonstersMonsters (CBJ)RW51191938-184048179599310.61%2018.41471178000301154.95%1114313010.8112
4Tanner KeroMonstersMonsters (CBJ)C58142034-331208915937998.81%3621.936814880111221054.05%4573819010.5311
5Vasily PonomaryovMonstersMonsters (CBJ)C5912172910807913546858.89%2417.4722479101832156.01%6073625000.5614
6Filip MesarMonstersMonsters (CBJ)RW59111728-110028107287010.28%1515.58000500002138.10%422614000.6101
7Riley NashMonstersMonsters (CBJ)C/RW59101727-23406310332619.71%2218.39381188101751146.94%6692319010.5003
8Gracyn SawchynMonstersMonsters (CBJ)C59101525-133808010638889.43%1414.90011400082043.08%7732017000.5700
9Nate DanielsonMonstersMonsters (CBJ)C5961117-19120287623487.89%810.5435830000130137.14%35145000.5502
10Simon KubicekMonstersMonsters (CBJ)D5931316-2160554019167.50%6418.02279100022116000.00%0641000.3000
11Joey KeaneMonstersMonsters (CBJ)D593912-229401005138215.88%6822.993038701196100.00%01441000.1800
12Gleb TrikozovMonstersMonsters (CBJ)LW5964105605257163910.53%1413.45000000021052.00%2589000.2501
13Brennan MenellMonstersMonsters (CBJ)D55189-1920164219162.38%5520.03011300070000.00%11144000.1600
14Dmitry KuzminMonstersMonsters (CBJ)D57189-52203223564.35%3511.171122400012100.00%0227000.2800
15Darren RaddyshMonstersMonsters (CBJ)D59189-1920285926341.69%8423.8611288000141100.00%0647000.1300
16Andrew NielsenMonstersMonsters (CBJ)D47033-93404514590.00%3113.68000280001000.00%0124000.0900
17Sam HarrisMonstersMonsters (CBJ)LW59202-200971228.57%33.530008000290066.67%332000.1901
18Artem GuryevMonstersMonsters (CBJ)D1600000000000.00%00.0600000000000.00%000000.0000
19Anders BjorkMonstersMonsters (CBJ)LW/RW47000-10002000.00%01.2700000000000.00%001000.0000
20Sam LaffertyMonstersMonsters (CBJ)C/LW/RW9000-10000000.00%00.71000000000075.00%400000.0000
Team Total or Average1048145222367-203294094415785179399.19%54415.6040599988435892318949.41%3028348385040.45521
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
1Andrew ShortridgeMonsters (CBJ)59193280.8873.303473001911694791140.65020590212
2Garret SparksMonsters (CBJ)20000.8403.00800042514000.0000023000
3Michal NeuvirthMonsters (CBJ)10001.0000.0016000114000.0000036000
Team Total or Average62193280.8873.283570001951730809140.650205959212
Team Stats
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
# VS Team 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 GF% SH% SV% PDO PDOBRK
1MonstersHeat2110000022020.50023500254974729396583636454015845500.00%4175.00%0565114449.39%673128452.41%39777751.09%11135411240590122159966.7%6.9%95.0%101.9DULL
2MonstersReign2020000027-500.000246002549747653965836364561251836100.00%9188.89%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%3.1%88.5%91.6Unlucky
3MonstersCondors2110000076120.500711180025497475839658363645662110486350.00%50100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159940.0%12.1%90.9%103.0FUN
4MonstersComets2010010049-510.25046100025497475739658363645731912484125.00%6183.33%0565114449.39%673128452.41%39777751.09%11135411240590122159927.3%7.0%87.7%94.7Unlucky
5MonstersWolves2200000083541.0008142200254974758396583636455614103810330.00%5180.00%1565114449.39%673128452.41%39777751.09%11135411240590122159971.4%13.8%94.6%108.4LUCKY
6MonstersEagles2110000056-120.500591400254974755396583636454817631300.00%3166.67%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%9.1%87.5%96.6FUN
7MonstersStars2010010025-310.250235002549747523965836364553111235000.00%6183.33%0565114449.39%673128452.41%39777751.09%11135411240590122159933.3%3.8%90.6%94.4Unlucky
8MonstersRampage2010001078-120.50071118102549747643965836364578296485120.00%330.00%0565114449.39%673128452.41%39777751.09%11135411240590122159954.5%10.9%89.7%100.7FUN
9MonstersMoose30300000311-800.0003581025497477339658363645663416429222.22%8362.50%0565114449.39%673128452.41%39777751.09%11135411240590122159911.1%4.1%83.3%87.4Unlucky
10MonstersRoadrunners1010000002-200.0000000025497471139658363645125415400.00%20100.00%0565114449.39%673128452.41%39777751.09%1113541124059012215990.0%0.0%83.3%83.3Unlucky
11MonstersGulls2100000185330.750812200025497475739658363645532112358337.50%60100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%14.0%90.6%104.6FUN
12MonstersRocket422000001311240.5001320330025497471173965836364510941128510550.00%60100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159942.1%11.1%89.9%101.0FUN
13MonstersSenators1000100054121.000571200254974744396583636453515414200.00%20100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159955.6%11.4%88.6%99.9FUN
14MonstersWild2110000058-320.5005813002549747593965836364571211421300.00%7442.86%0565114449.39%673128452.41%39777751.09%11135411240590122159955.6%8.5%88.7%97.2Unlucky
15MonstersMarlies622010011721-470.58317244100254974717139658363645212634611013646.15%23482.61%1565114449.39%673128452.41%39777751.09%11135411240590122159939.3%9.9%90.1%100.0FUN
16MonstersWolf Pack30200100514-910.167581300254974791396583636451164814439111.11%7271.43%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%5.5%87.9%93.4Unlucky
17MonstersAmericans523000001319-640.4001321341025497471323965836364516157327215640.00%16381.25%0565114449.39%673128452.41%39777751.09%11135411240590122159930.4%9.8%88.2%98.0FUN
18MonstersGriffins1010000014-300.000112002549747263965836364529141412000.00%7185.71%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%3.8%86.2%90.1Unlucky
19MonstersPhantoms41200001913-430.3759142300254974795396583636451044122708225.00%11281.82%0565114449.39%673128452.41%39777751.09%11135411240590122159938.9%9.5%87.5%97.0FUN
20MonstersCrunch513001001923-430.300192847002549747158396583636451434540987342.86%201050.00%1565114449.39%673128452.41%39777751.09%11135411240590122159955.2%12.0%83.9%95.9FUN
21MonstersThunderbirds2020000037-400.000347002549747483965836364551191432100.00%7442.86%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%6.3%86.3%92.5Unlucky
22MonstersDevils412001001314-130.375132336102549747119396583636459735264816531.25%13376.92%0565114449.39%673128452.41%39777751.09%11135411240590122159942.1%10.9%85.6%96.5FUN
_Vs Division12612012012240-18170.708223658202549747314396583636453281175819224312.50%291258.62%0565114449.39%673128452.41%39777751.09%11135411240590122159940.4%7.0%87.8%94.8Unlucky
_Vs Conference389220140299142-43260.342991532523025497471061396583636451132402234648923133.70%1173272.65%2565114449.39%673128452.41%39777751.09%11135411240590122159938.2%9.3%87.5%96.8FUN
_Since Last GM Reset59163202513151202-51460.390151236387402549747163939658363645173461035210261394129.50%1764574.43%3565114449.39%673128452.41%39777751.09%11135411240590122159941.2%9.2%88.4%97.6FUN
Total59163202513151202-51460.390151236387402549747163939658363645173461035210261394129.50%1764574.43%3565114449.39%673128452.41%39777751.09%11135411240590122159941.2%9.2%88.4%97.6FUN

Puck Time
Offensive Zone 18
Neutral Zone 20
Defensive Zone 21
Puck Time
Offensive Zone Start 1144
Neutral Zone Start 777
Defensive Zone Start 1284
Puck Time
With Puck 29
Without Puck 31
Faceoffs
Faceoffs Won 1635
Faceoffs Lost 1570
Team Average Shots after League Average Shots after
1st Period 6.79.57
2nd Period 16.620.31
3rd Period 27.430.68
Overtime 28.131.4
Goals in Team Average Goals after League Average Goals after
1st Period 0.40.64
2nd Period 1.31.65
3rd Period 2.52.67
Overtime 2.62.83
Even Strenght Goal 103
PP Goal 41
PK Goal 3
Empty Net Goal 4
Home Away
Win 109
Lost 1715
Overtime Lost 44
PP Attempt 139
PP Goal 41
PK Attempt 176
PK Goal Against 45
Home
Shots For 27.8
Shots Against 29.4
Goals For 2.6
Goals Against 3.4
Hits 17.4
Shots Blocked 10.3
Pim 6.0
Salary
Player Name POS Age Cap Hit 2017-18 2018-19 2019-20 2020-21 2021-22 2022-23 2023-24 2024-25
Anders Bjork LW/RW27685,000$685,000$
Andrew Nielsen D26975,000$975,000$
Andrew Shortridge G28950,000$950,000$
Artem Guryev D20925,000$925,000$ 925,000$
Brennan Menell D26875,000$875,000$ 875,000$ 875,000$
Connor McClennon RW211,250,000$1,250,000$ 1,250,000$
Darren Raddysh D271,000,000$1,000,000$ 1,000,000$
Dmitry Kuzmin D20925,000$925,000$ 925,000$ 925,000$
Dylan Samberg D241,000,000$1,000,000$ 1,000,000$
Filip Mesar RW19925,000$925,000$ 925,000$ 925,000$
Garret Sparks G30685,000$685,000$
Gleb Trikozov LW19925,000$925,000$ 925,000$
Gracyn Sawchyn C18925,000$925,000$ 925,000$ 925,000$
Isaac Ratcliffe LW24695,000$695,000$
Jake Bischoff D29685,000$685,000$
Joey Keane D24925,000$925,000$
Michal Neuvirth G351,000,000$1,000,000$ 1,000,000$ 1,000,000$
Nate Danielson C18925,000$925,000$ 925,000$ 925,000$
Riley Nash C/RW34875,000$875,000$ 875,000$
Sam Harris LW19925,000$925,000$ 925,000$ 925,000$
Sam Lafferty C/LW/RW28685,000$685,000$
Simon Kubicek D21685,000$685,000$
Tanner Kero C31685,000$685,000$
Vasily Ponomaryov C21925,000$925,000$ 925,000$ 925,000$
Victor Stjernborg C/LW20925,000$925,000$ 925,000$

Lines
Forward Lines


# - Victor Stjernborg


# - Gracyn Sawchyn


# - Filip Mesar


# - Connor McClennon


# - Riley Nash


# - Nate Danielson


# - Isaac Ratcliffe


# - Vasily Ponomaryov


# - Gleb Trikozov


# - Nate Danielson


# - Connor McClennon


# - Isaac Ratcliffe

Defensive Pairings


# - Brennan Menell


# - Dmitry Kuzmin


# - Darren Raddysh


# - Joey Keane


# - Andrew Nielsen


# - Simon Kubicek

1st Power Play Unit


# - Connor McClennon


# - Victor Stjernborg


# - Vasily Ponomaryov


# - Simon Kubicek


# - Andrew Nielsen

2nd Power Play Unit


# - Nate Danielson


# - Isaac Ratcliffe


# - Riley Nash


# - Darren Raddysh


# - Joey Keane

Goalies


# - Andrew Shortridge


# - Michal Neuvirth

Team Stats
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
# VS Team 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 GF% SH% SV% PDO PDOBRK
1MonstersHeat2110000022020.50023500254974729396583636454015845500.00%4175.00%0565114449.39%673128452.41%39777751.09%11135411240590122159966.7%6.9%95.0%101.9DULL
2MonstersReign2020000027-500.000246002549747653965836364561251836100.00%9188.89%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%3.1%88.5%91.6Unlucky
3MonstersCondors2110000076120.500711180025497475839658363645662110486350.00%50100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159940.0%12.1%90.9%103.0FUN
4MonstersComets2010010049-510.25046100025497475739658363645731912484125.00%6183.33%0565114449.39%673128452.41%39777751.09%11135411240590122159927.3%7.0%87.7%94.7Unlucky
5MonstersWolves2200000083541.0008142200254974758396583636455614103810330.00%5180.00%1565114449.39%673128452.41%39777751.09%11135411240590122159971.4%13.8%94.6%108.4LUCKY
6MonstersEagles2110000056-120.500591400254974755396583636454817631300.00%3166.67%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%9.1%87.5%96.6FUN
7MonstersStars2010010025-310.250235002549747523965836364553111235000.00%6183.33%0565114449.39%673128452.41%39777751.09%11135411240590122159933.3%3.8%90.6%94.4Unlucky
8MonstersRampage2010001078-120.50071118102549747643965836364578296485120.00%330.00%0565114449.39%673128452.41%39777751.09%11135411240590122159954.5%10.9%89.7%100.7FUN
9MonstersMoose30300000311-800.0003581025497477339658363645663416429222.22%8362.50%0565114449.39%673128452.41%39777751.09%11135411240590122159911.1%4.1%83.3%87.4Unlucky
10MonstersRoadrunners1010000002-200.0000000025497471139658363645125415400.00%20100.00%0565114449.39%673128452.41%39777751.09%1113541124059012215990.0%0.0%83.3%83.3Unlucky
11MonstersGulls2100000185330.750812200025497475739658363645532112358337.50%60100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%14.0%90.6%104.6FUN
12MonstersRocket422000001311240.5001320330025497471173965836364510941128510550.00%60100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159942.1%11.1%89.9%101.0FUN
13MonstersSenators1000100054121.000571200254974744396583636453515414200.00%20100.00%0565114449.39%673128452.41%39777751.09%11135411240590122159955.6%11.4%88.6%99.9FUN
14MonstersWild2110000058-320.5005813002549747593965836364571211421300.00%7442.86%0565114449.39%673128452.41%39777751.09%11135411240590122159955.6%8.5%88.7%97.2Unlucky
15MonstersMarlies622010011721-470.58317244100254974717139658363645212634611013646.15%23482.61%1565114449.39%673128452.41%39777751.09%11135411240590122159939.3%9.9%90.1%100.0FUN
16MonstersWolf Pack30200100514-910.167581300254974791396583636451164814439111.11%7271.43%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%5.5%87.9%93.4Unlucky
17MonstersAmericans523000001319-640.4001321341025497471323965836364516157327215640.00%16381.25%0565114449.39%673128452.41%39777751.09%11135411240590122159930.4%9.8%88.2%98.0FUN
18MonstersGriffins1010000014-300.000112002549747263965836364529141412000.00%7185.71%0565114449.39%673128452.41%39777751.09%11135411240590122159925.0%3.8%86.2%90.1Unlucky
19MonstersPhantoms41200001913-430.3759142300254974795396583636451044122708225.00%11281.82%0565114449.39%673128452.41%39777751.09%11135411240590122159938.9%9.5%87.5%97.0FUN
20MonstersCrunch513001001923-430.300192847002549747158396583636451434540987342.86%201050.00%1565114449.39%673128452.41%39777751.09%11135411240590122159955.2%12.0%83.9%95.9FUN
21MonstersThunderbirds2020000037-400.000347002549747483965836364551191432100.00%7442.86%0565114449.39%673128452.41%39777751.09%11135411240590122159950.0%6.3%86.3%92.5Unlucky
22MonstersDevils412001001314-130.375132336102549747119396583636459735264816531.25%13376.92%0565114449.39%673128452.41%39777751.09%11135411240590122159942.1%10.9%85.6%96.5FUN
_Vs Division12612012012240-18170.708223658202549747314396583636453281175819224312.50%291258.62%0565114449.39%673128452.41%39777751.09%11135411240590122159940.4%7.0%87.8%94.8Unlucky
_Vs Conference389220140299142-43260.342991532523025497471061396583636451132402234648923133.70%1173272.65%2565114449.39%673128452.41%39777751.09%11135411240590122159938.2%9.3%87.5%96.8FUN
_Since Last GM Reset59163202513151202-51460.390151236387402549747163939658363645173461035210261394129.50%1764574.43%3565114449.39%673128452.41%39777751.09%11135411240590122159941.2%9.2%88.4%97.6FUN
Total59163202513151202-51460.390151236387402549747163939658363645173461035210261394129.50%1764574.43%3565114449.39%673128452.41%39777751.09%11135411240590122159941.2%9.2%88.4%97.6FUN

Puck Time
Offensive Zone 18
Neutral Zone 20
Defensive Zone 21
Puck Time
Offensive Zone Start 1144
Neutral Zone Start 777
Defensive Zone Start 1284
Puck Time
With Puck 29
Without Puck 31
Faceoffs
Faceoffs Won 1635
Faceoffs Lost 1570
Team Average Shots after League Average Shots after
1st Period 6.79.57
2nd Period 16.620.31
3rd Period 27.430.68
Overtime 28.131.4
Goals in Team Average Goals after League Average Goals after
1st Period 0.40.64
2nd Period 1.31.65
3rd Period 2.52.67
Overtime 2.62.83
Even Strenght Goal 103
PP Goal 41
PK Goal 3
Empty Net Goal 4
Home Away
Win 109
Lost 1715
Overtime Lost 44
PP Attempt 139
PP Goal 41
PK Attempt 176
PK Goal Against 45
Home
Shots For 27.8
Shots Against 29.4
Goals For 2.6
Goals Against 3.4
Hits 17.4
Shots Blocked 10.3
Pim 6.0
Schedule
DateMatchup Result Detail
2023-09-27MonstersMonsters@MonstersCrunchMonsters0,Crunch2RECAP
2023-09-29MonstersPhantoms@MonstersMonstersPhantoms2,Monsters4RECAP
2023-09-30MonstersAmericans@MonstersMonstersAmericans3,Monsters1RECAP
2023-10-02MonstersDevils@MonstersMonstersDevils4,Monsters3RECAP
2023-10-04MonstersMonsters@MonstersMarliesMonsters1,Marlies5RECAP
2023-10-06MonstersAmericans@MonstersMonstersAmericans5,Monsters2RECAP
2023-10-08MonstersMonsters@MonstersPhantomsMonsters1,Phantoms4RECAP
2023-10-10MonstersMonsters@MonstersAmericansMonsters3,Americans2RECAP
2023-10-12MonstersMonsters@MonstersPhantomsMonsters3,Phantoms4 (SO)RECAP
2023-10-14MonstersCrunch@MonstersMonstersCrunch6,Monsters5 (OT)RECAP
2023-10-16MonstersMonsters@MonstersDevilsMonsters2,Devils3 (OT)RECAP
2023-10-18MonstersWild@MonstersMonstersWild5,Monsters1RECAP
2023-10-20MonstersMarlies@MonstersMonstersMarlies1,Monsters4RECAP
2023-10-22MonstersMonsters@MonstersMarliesMonsters3,Marlies2RECAP
2023-10-24MonstersAmericans@MonstersMonstersAmericans6,Monsters2RECAP
2023-10-26MonstersMonsters@MonstersGullsMonsters3,Gulls4 (SO)RECAP
2023-10-28MonstersMarlies@MonstersMonstersMarlies2,Monsters3 (OT)RECAP
2023-10-30MonstersMonsters@MonstersAmericansMonsters5,Americans3RECAP
2023-11-01MonstersCrunch@MonstersMonstersCrunch6,Monsters5RECAP
2023-11-03MonstersMonsters@MonstersRampageMonsters3,Rampage5RECAP
2023-11-04MonstersMonsters@MonstersMarliesMonsters3,Marlies7RECAP
2023-11-06MonstersGulls@MonstersMonstersGulls1,Monsters5RECAP
2023-11-08MonstersPhantoms@MonstersMonstersPhantoms3,Monsters1RECAP
2023-11-09MonstersMonsters@MonstersReignMonsters1,Reign4RECAP
2023-11-12MonstersComets@MonstersMonstersComets5,Monsters4 (OT)RECAP
2023-11-13MonstersRocket@MonstersMonstersRocket2,Monsters6RECAP
2023-11-14MonstersMonsters@MonstersMooseMonsters2,Moose4RECAP
2023-11-16MonstersMoose@MonstersMonstersMoose3,Monsters0RECAP
2023-11-18MonstersMonsters@MonstersWolvesMonsters4,Wolves2RECAP
2023-11-19MonstersHeat@MonstersMonstersHeat1,Monsters2RECAP
2023-11-21MonstersMonsters@MonstersEaglesMonsters3,Eagles1RECAP
2023-11-22MonstersEagles@MonstersMonstersEagles5,Monsters2RECAP
2023-11-24MonstersGriffins@MonstersMonstersGriffins4,Monsters1RECAP
2023-11-26MonstersMonsters@MonstersMooseMonsters1,Moose4RECAP
2023-11-28MonstersMonsters@MonstersRocketMonsters3,Rocket2RECAP
2023-11-30MonstersRampage@MonstersMonstersRampage3,Monsters4 (SO)RECAP
2023-12-02MonstersMonsters@MonstersSenatorsMonsters5,Senators4 (OT)RECAP
2023-12-04MonstersThunderbirds@MonstersMonstersThunderbirds3,Monsters2RECAP
2023-12-07MonstersMonsters@MonstersCometsMonsters0,Comets4RECAP
2023-12-08MonstersCrunch@MonstersMonstersCrunch3,Monsters2RECAP
2023-12-11MonstersWolves@MonstersMonstersWolves1,Monsters4RECAP
2023-12-13MonstersMonsters@MonstersCondorsMonsters3,Condors4RECAP
2023-12-14MonstersMonsters@MonstersCrunchMonsters7,Crunch6RECAP
2023-12-16MonstersCondors@MonstersMonstersCondors2,Monsters4RECAP
2023-12-18MonstersMonsters@MonstersDevilsMonsters3,Devils5RECAP
2023-12-19MonstersWolf Pack@MonstersMonstersWolf Pack5,Monsters1RECAP
2023-12-22MonstersWolf Pack@MonstersMonstersWolf Pack5,Monsters1RECAP
2023-12-23MonstersMonsters@MonstersWolf PackMonsters3,Wolf Pack4 (OT)RECAP
2023-12-25MonstersMonsters@MonstersStarsMonsters1,Stars3RECAP
2023-12-27MonstersStars@MonstersMonstersStars2,Monsters1 (OT)RECAP
2023-12-29MonstersRocket@MonstersMonstersRocket2,Monsters1RECAP
2023-12-30MonstersMonsters@MonstersHeatMonsters0,Heat1RECAP
2024-01-01MonstersReign@MonstersMonstersReign3,Monsters1RECAP
2024-01-03MonstersMonsters@MonstersWildMonsters4,Wild3RECAP
2024-01-04MonstersDevils@MonstersMonstersDevils2,Monsters5RECAP
2024-01-06MonstersMonsters@MonstersThunderbirdsMonsters1,Thunderbirds4RECAP
2024-01-07MonstersRoadrunners@MonstersMonstersRoadrunners2,Monsters0RECAP
2024-01-09MonstersMonsters@MonstersRocketMonsters3,Rocket5RECAP
2024-01-10MonstersMarlies@MonstersMonstersMarlies4,Monsters3 (SO)RECAP
2024-01-12MonstersMonsters@MonstersThunderbirds
2024-01-13MonstersDevils@MonstersMonsters
2024-01-16MonstersMonsters@MonstersComets
2024-01-17MonstersPhantoms@MonstersMonsters
2024-01-19MonstersMonsters@MonstersPhantoms
2024-01-20MonstersRocket@MonstersMonsters
Trade Deadline --- Trades can’t be done after this day is simulated!
2024-01-22MonstersThunderbirds@MonstersMonsters
2024-01-24MonstersMonsters@MonstersCrunch
2024-01-26MonstersMonsters@MonstersBruins
2024-01-27MonstersMoose@MonstersMonsters
2024-01-29MonstersMonsters@MonstersMoose
2024-01-30MonstersComets@MonstersMonsters
2024-02-01MonstersMoose@MonstersMonsters
2024-02-03MonstersMonsters@MonstersAmericans
2024-02-04MonstersSenators@MonstersMonsters
2024-02-05MonstersMonsters@MonstersRoadrunners
2024-02-06MonstersMonsters@MonstersWolf Pack
2024-02-08MonstersBruins@MonstersMonsters
2024-02-09MonstersMonsters@MonstersDevils
2024-02-12MonstersMonsters@MonstersGriffins
2024-02-14MonstersMonsters@MonstersBruins
2024-02-15MonstersMonsters@MonstersRocket
2024-02-16MonstersBruins@MonstersMonsters

Finance
Salary Cap
Players Total SalariesRetained SalaryTotal Cap HitEstimated Cap Space
2,198,000$ 0$ 0$ 75,000,000$

ArenaAbout us
Name
CityCleveland
Capacity3000
Season Ticket Holders50%

Arena Capacity - Ticket Price Attendance - %
Arena Capacity20001000
Ticket Price200$100$$$$
Attendance4634622822
Attendance PCT74.75%73.62%0.00%0.00%0.00%

Income
Home Games LeftAverage Attendance - %Average Income per GameYear to Date RevenueArena CapacityTeam Popularity
10 2231 - 74.37% 372,626$11,551,400$3000100

Expenses
Players Total Salaries Players Total Average SalariesCoaches SalariesSpecial Salary Cap Value
2,198,000$ 2,198,000$ 0$ 0$
Year To Date ExpensesSalary Cap Per DaysSalary Cap To DateLuxury Taxe Total
2,005,967$ 14,586$ 1,637,030$ 0$

Estimate
Estimated Season RevenueRemaining Season Days Expenses Per DaysEstimated Season Expenses
3,726,258$ 41 18,479$ 720,681$

Team Total Estimate
Estimated Season ExpensesEstimated Season Salary CapCurrent Bank AccountProjected Bank Account
720,681$ 0$ 0$ 0$

Sponsors
TV RightsPrimary SponsorSecondary SponsorSecondary Sponsor
Depth Chart RookieInjured Cold Streak Hot Streak
Left WingCenterRight Wing

Defense #1Defense #2Goalie

Transactions



Injuries
Tanner Kero is out for 1 days because of a Right Knee Injury.

Game Center

Monsters19-32-8, 46pts35Final
Rocket19-31-10, 48pts

Marlies39-16-5, 83pts43Final
Monsters19-32-8, 46pts

Marlies39-16-5, 83ptsThu, Jan 11
Monsters19-32-8, 46pts

Phantoms34-22-5, 73ptsSat, Sep 30
Monsters19-32-8, 46pts

Americans15-35-10, 40ptsSun, Oct 01
Monsters19-32-8, 46pts

TRANSACTIONS



 

Team Info

Monsters
Head CoachDon Granato
DivisionNorth
CityCleveland
Stadium Capacity3,000

Monsters Affiliation

Monsters
General ManagerDanielle Cook
Head CoachJohn Tortorella
StadiumNationwide Arena
Capacity18,000

Team Leaders


GOALS
Isaac Ratcliffe
MonstersMonsters
25
GOALS
POINTS
Isaac Ratcliffe
MonstersMonsters
53
POINTS
WINS
Andrew Shortridge
MonstersMonsters
19
WINS
Expanded Player Leaderboard

Team Stats


Goals For
151
2.56 GFG
Goals Against
202
3.42 GAA
Power Play Percentage
29.5%
41 GF
Penalty Kill Percentage
74.4%
45 GA
Expanded Team Stats

Team Captain - Alternate Captains

CaptainAlternate CaptainAlternate Captain