Gas Analysis by In Situ Combustion in Heavy-Oil Recovery Process: Experimental and Modeling Studies
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R. Kharrat | Mohammad-Ali Ahmadi | Amir H. Mohammadi | Mohammad Masumi | M. Ahmadi | R. Kharrat | A. Mohammadi | Riyaz Kharrat | Mohammad Masumi
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