Due the voluminous number of all research articles, please wait for a moment.

Penelusuran Banjir (Flood Routing) Terhadap Muka Air Sungai Dengan Metode Jaringan Saraf Tiruan (Studi Kasus DAS Kampar Dan DAS Siak)

date_range 2014
person
Author Rico Ardiansyah Amri; Manyuk Fauzi; Siswanto Siswanto
description
Abstract River water level data forecasting Qn to Qn+1 by using Artificial Neural Network model approach Backpropagation algorithm produces good value if the value of the correlation between upstream and downstream AWLR good enough, it can be seen from the process of training, testing and validation of the neural network that generates the value correlation learning high enough. Where in the wake of the artificial neural network model Backporagation algorithms using MATLAB programs, such as for this parameter is Epoch = 2000, Ir = 0.1, mc = 0.9. Data Variation 70 (training) and 30 (Tests), it is proven in testing the artificial neural network model is applied to predict water levels in 2012. So this data can be a flood early warning system in the downstream areas of the river.Keyword : neural network, the back propagation algorithm, face high water forecasting
article
DOI
language
Journal Jurnal Online Mahasiswa (JOM) Bidang Teknik dan Sains Vol 1, No 2 (2014): Wisuda Oktober Tahun 2014
description
Source Portal Garuda

Submit your feedback

CARI! has performed crawling, tagging, and other data processing to produce this page. If you find an error or have feedback for this page, please fill out the form below. Thank You.
How to correct
  • Name and Email are required!
  • One of the location fields (prov, district, or sub-district) must be filled in
  • Fields other than those mentioned above are optional