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Inventor profile of:

Michael Perrone

City:

Seaford, New York

Country:

United States

Published Applications:

9

Last publication date:

2017-01-05

Recent patent applications by Perrone Michael

Michael Perrone from Seaford, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2017-01-05
US20170004734A1
Physics

Simulated forcible entry of doors using battering rams

#2 | 2017-01-05
US20170004733A1
Physics

Simulated forcible entry of padlocks

#3 | 2016-05-19
US20160139017A1
Physics

Device and method for testing pressure of hydraulic tools

#4 | 2015-09-10
US20150251032A1
Human necessities

FORCIBLE ENTRY TRAINING DOOR SYSTEM

#5 | 2014-06-12
US20140157885A1
Physics

Device and method for testing pressure of hydraulic tools

#6 | 2013-08-29
US20130224701A1
Physics

Forcible entry training door system

#7 | 2013-08-29
US20130224700A1
Human necessities

Forcible entry training door system

#8 | 2012-08-16
US20120208154A1
Physics

Forcible entry training door system

#9 | 2011-09-15
US20110223569A1
Human necessities

Forcible entry training door system

InventorID:

414718 ⎘

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