EFFECTIVE UTILIZATION OF FUZZY LOGIC IN STABILIZE ROAD CONSTRUCTION WITH RBI GRADE-81
Journal: International Journal of Civil Engineering and Technology (IJCIET) (Vol.9, No. 1)Publication Date: 2018-01-27
Authors : T. DHANASEKAR; P. RAJAKUMAR;
Page : 48-55
Keywords : Fuzzy logic algorithm; Road construction; Black cotton soil; RBI grade 81; Modulus of elasticity (ME); Unconfined compressive strength (UCS) and California bearing ratio (CBR).;
Abstract
Obviously, in road construction the fuzzy logic employed for classification of road including RBI grade 81 of black cotton soil. For contracting or swelling due to varying dampness content, black cotton soils are far reaching clays through high potential. The black cotton soils contain stumpy strength and are vulnerable to extreme volume changes, manufacture their utilization for development reasons exceptionally troublesome. RBI Grade 81 congregates the prerequisite for a welldemonstrated, dependable and exceptionally cost-effective method by making solid and irreversible impermeable layer impervious to antagonistic climatic conditions, since high temperatures to permafrost conditions, and obliging every vehicular load. In this proposed work, fuzzy logic model is used for examining road construction fuse adjustment of RBI grade 81 by expansion of black cotton soil. In road construction, fuzzy logic is utilized to classify the outputs in which level the road has been utilized. The result demonstrates that the two noteworthy contemplations are light moving vehicles and heavy moving vehicles. Based on the achievement of three output values the road can be used for both light and heavy moving vehicles. By supporting in this evaluations the durability and reliability is good in road construction.
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