Strength of Concrete with Different Aggregates Through ANN : A Review

Authors

  • Rahul Bhargava P. G. Scholar, Department of Civil Engineering, RGPM, Bhopal, Madhya Pradesh, India Author
  • Nadish Pandey Assistant Professor, Technocrats Institute of Technology, Excellence, Madhya Pradesh, India Author
  • Rajesh Joshi Head of Department, Rajiv Gandhi Proudyogiki Mahavidyalaya Bhopal, Madhya Pradesh, India Author

DOI:

https://doi.org/10.32628/IJSRCE

Keywords:

Concrete, ANN, Network, Strength, Review, Analysis

Abstract

Concrete is a fusion of cement, coarse aggregate, fine aggregates and water. Its success lies in its adaptability as can be designed to resist cruel environments although taking on the most inspirational forms. Scientists and Engineers are further aiming to enhance its limits with the help of novel admixtures and various waste alternate materials (WAMs).
Previously WAMs comprises of readily available materials, natural like diatomaceous earth or volcanic ash. The engineering marvels like Roman aqueducts, the Coliseum are examples of this practice used by Romans and Greeks. Currently, the majority concrete mixture consists ACMs which are mainly by-product or waste materials from other industrial processes.
From the perspective of economy in cement requirement for given w/c ratio rounded aggregates are more preferred than angular aggregates. Flat particles in concrete are having unpleasant effect over the workability of concrete, cement requirement, strength and durability. In common high content of flaky aggregates formed low quality concrete.
In th paper we are preenting review of literature related to our study on concrete utilizing ANN technique.
              

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References

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Published

05-03-2022

Issue

Section

Research Articles

How to Cite

Rahul Bhargava, Nadish Pandey, & Rajesh Joshi. (2022). Strength of Concrete with Different Aggregates Through ANN : A Review . International Journal of Scientific Research in Civil Engineering, 6(2), 01-08. https://doi.org/10.32628/IJSRCE

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