Please use this identifier to cite or link to this item: http://dspace.dtu.ac.in:8080/jspui/handle/repository/15959
Title: FUZZY LOGIC APPROACH IN DETERMINATION OF STRENGTH IN CONCRETE
Authors: GUPTA, AMAN
Keywords: COMPRESSIVE STRENGTH
FLY ASH CONCRETE
MEMBERSHIP FUNCTION
FUZZY LOGIC
Issue Date: Jul-2017
Series/Report no.: TD-2940;
Abstract: The aim of this thesis is to address capabilities in prediction of compressive strength of concrete to affect quality control in construction. To comprehend this, a compressive strength predicting model using the principles of fuzzy logic set theory had been employed. MATLAB software had been used to create an intuitive Graphical User Interface. The model put into use ‘fuzzy logic’ as a tool to predict the compressive strength of concrete at a given day. A fuzzy logic prediction model for the 28-day compressive strength of cement mortar under standard curing conditions was created. Data collected from previous researches and laboratory work had been put into use in the model construction and testing. The input variables of water/binder ratio, cement content, water content, and fly ash percentage and the output variable of 28-day cement compressive strength were fuzzified by the use of triangular membership functions and Gaussian membership functions which were deployed for the fuzzy subsets. The Mamdani fuzzy rules relating the input variables to the output variables were created by the fuzzy model and were laid out in the If–Then format. Product (prod) inference operator and the centre of gravity (COG; centroid) defuzzification methods had been put to use. The prediction of the 28-day cement strength data by the developed fuzzy model proved to be quite satisfactory. The training and testing of 4 different models was done. The Minimum average percentage error levels in the fuzzy model were seen to be as low as (3%) in case of Model 3. Comparative study of the different models (all 3 Triangular and 1 Gaussian) had been done. The results indicated that the application of fuzzy logic algorithm was quite satisfactory when triangular membership function with decreased subset range was used. The outputs of Triangular and Gaussian model were almost similar.
URI: http://dspace.dtu.ac.in:8080/jspui/handle/repository/15959
Appears in Collections:M.E./M.Tech. Civil Engineering

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