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after LOR i've kept blogging on youtube


"why not accelerate two black holes places opposite to each other to the
near-light-speed? this black holes would gain mass- and if the whole
system is in motion before the acceleration- we could travel through it!?
 
accelerate two micro black hole system (~2x25mg) to 299792457,999997m/s
(~99,9999% speed of light) it raise mass to 355kg. if we put a duplicate
system to it and accelerate it again (2x355kg) to 299792457,9999997m/s
it gains mass to 15882431146kg... and so on...we get a system of micro
black holes which became heavy trough the speed-up and with it a stretch
of room-time with the power of petawatts...
 
https://jumk.de/formeln/kinetische-energie.shtml
https://www.hilfreiche-rechner.de/relativistische-masse.html

"

that was the originally massage on youtube

it base on a wiki-article about cern's production of temporary mini black holes, which can be stable with bigger mass, what need more powerful accelerator to achieve

...if two this type of black holes can be produced and were put in a dual black holes system...the further gain of mass and speed could be possible with it

now i saw a vlog-post based on the same principle

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