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Study on Concrete:A Review

Varun Sharma

Abstract


The ongoing survey targets investigating the introduction of high volume fly garbage (HVFA) concrete at raised temperature revealed upto 100 oC to 200oC for three hours term is analyzed. The mechanical and physical characteristics of high volume fly ash concrete are the primary focus of the study. The test program's variable calls for supplanting concrete with fly debris at temperatures going from 27 degrees Celsius to 200 degrees Celsius for three hours. Remaining compressive strength is one of the concentrated on mechanical and actual properties. The consequences of the test showed that substantial that was utilized as substitutions lost more strength than typical cement.


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References


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Applied Soft Computing, 8(1), 488-


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