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Remote sensing submission process
2022-07-19 01:58:00 【Chubby Zhu】
My thesis is about planetary target detection , It belongs to remote sensing .
2021.8.1 contribute , Status is under review
8.2 Status is under review, Received email , Assigned to editor
8.3 There's a little problem , Let's modify the author information .( Because the mailbox of my registered account on the official website is inconsistent with the mailbox provided by the paper , Remind people of , Try to be consistent )
……( A long wait , about 37 God )
9.9 pending minor revisions
9.14 Editor's reminder , The application is delayed by two days , Postponed to 16 Number
It should be noted that , A total of two reviewers' comments have been received , One of them 7 strip , the other one 36 strip . It's about Xiao Xiu , however 36 One of the reviewers' opinions , All data should be counted again according to the new standard , This requires replacing the statistical charts and conclusions of all results .
in addition , Editors are required to adjust and expand chapters according to the format of periodicals , I used to be 14 page , It is required to expand to 18 page . This is equivalent to crushing and reorganizing the whole paper , The requirements of periodicals have also been added “Discussion” Chapter content .
therefore 5 Days' time is not finished , Applied for delayed submission .( The editor is very good , If you have questions, you can communicate , I was also worried about causing trouble or bad impression to the editor , Never dared to send email , Later, it is found that necessary communication is also effective .)
9.16 Submit the revised paper Pevised version review
9.17 Receive the received email from the editor pending English
9.18 English correction done Soon become author proofreading
9.19 Submit the final version
9.20 pending conversion->conversion skipped->online
But it can only be found on the journal website , Cannot retrieve . Overall , It's about 51 God , Two months , It's fast .( Compared with one of my classmates who received comments from reviewers in two weeks , Finish it in a week , The third weekly issue . I really admire !)
Add :10 month 14 No. was successfully retrieved in the school library , But in sci-hub I still can't find it on . I'm not sure when it can be retrieved .
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