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Inventor profile of:

Anders Goran HOFSTEDT

City:

Linkoping

Country:

Sweden

Published Applications:

5

Last publication date:

2017-11-16

Recent patent applications by HOFSTEDT Anders Goran

Anders Goran HOFSTEDT from Linkoping, SE has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2017-11-16
US20170327770A1
Chemistry; metallurgy

METHOD AND SYSTEM FOR WASHING OF CRUDE TALL OIL SOAP

#2 | 2017-08-31
US20170246646A1
Performing operations; transporting

Method and device for separating two phases

#3 | 2016-09-29
US20160281028A1
Chemistry; metallurgy

Method and arrangement for the separation of tall oil products from black liquor

#4 | 2016-05-26
US20160146720A1
Physics

Method for measuring soap content in black liquor and an analytical container

#5 | 2012-11-22
US20120296066A1
Chemistry; metallurgy

Method Of Separating, From A Mixture Of Black Liquor And Tall Oil Soap Product, Concentrated Portions Of Tall Oil Soap Product And Arrangements For Said Concentrated Tall Oil Soap Product And/Or Separated Black Liquor

InventorID:

1541551 ⎘

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