Wahana Teknik Sipil: Jurnal Pengembangan Teknik Sipil
Vol 21, No 02 (2016): WAHANA Teknik Sipil

MODEL PREDIKSI SLUMP BETON DENGAN ARTIFICIAL NEURAL NETWORKS- BACKPROPAGATION

STEFANUS SANTOSA Dr. Drs, M.Kom. (Unknown)
BASUKI SETIYO BUDI S.T., M.T. (Unknown)
JUNAIDI S.T., M.Eng. (Unknown)
TJOKRO HADI SST., M.T. (Unknown)



Article Info

Publish Date
01 Dec 2016

Abstract

The design value of slump is often done manually by calculating the value of cement water factor in order to obtain the desired slump value. But these designs often unreliable. This study proposes a model prediction of concrete slump design for a variety of quality concrete with variables that are more complex than other studies. From a series of experiments with various models using Artificial Neural Network- Backpropagation (BPNN), the smallest RMSE values obtained models that can be achieved is by 0.004294661. Best Setting model parameters are Training Cycles: = 100,000, Learning Rate = 0.001, Momentum: = 0.2, Hidden Layer Size: = 10, and Number of Hidden layer: = 1.Kata kunci : prediction, concrete slump, artificial neural network, backpropagation.

Copyrights © 2016






Journal Info

Abbrev

wahana

Publisher

Subject

Civil Engineering, Building, Construction & Architecture Earth & Planetary Sciences Engineering Transportation

Description

Wahana Teknik Sipil: Jurnal Pengembangan Teknik Sipil or Civil Engineering Forum: Journal of Civil Engineering Development is a medium of communication and dissemination of research results, case studies, and scientific reviews (applied) to scientists and practitioners in the field of Civil ...