Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria

The study presents a preliminary design of a classification system to detect the presence of sulfate-reducing bacteria (SRB). The thesis focuses on the development of artificial neural network (ANN) model 10 recognize the presence of SRB in a sample based on the sensors responses. Two sensors are...

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Main Author: Tan, Earn Tzeh
Format: Thesis
Language:English
Published: 2014
Subjects:
Online Access:http://eprints.usm.my/61074/1/24%20Pages%20from%2000001779827.pdf
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author Tan, Earn Tzeh
author_facet Tan, Earn Tzeh
author_sort Tan, Earn Tzeh
collection USM
description The study presents a preliminary design of a classification system to detect the presence of sulfate-reducing bacteria (SRB). The thesis focuses on the development of artificial neural network (ANN) model 10 recognize the presence of SRB in a sample based on the sensors responses. Two sensors are implemented in this study, TGS 825 and SI-IT 75. The sensors responses from preliminary experimental works show that presence of SRI) in a sample give a significant effect on the concentration level of hydrogen sulphide (1-I2S) and temperature. The statements are proved by the two-sample T-test analysis, where the null hypotheses are rejected. The data collected data from the experiments form the training dataset of ANN. The ANN is trained with back propagation algorithm in Matlab and the classification results show that the ANN model promises a good performance with 100% prediction accuracy to classify a sample into two groups, either with SRB or without SRB.
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spelling usm.eprints-610742024-09-09T04:11:48Z http://eprints.usm.my/61074/ Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria Tan, Earn Tzeh TK1-9971 Electrical engineering. Electronics. Nuclear engineering The study presents a preliminary design of a classification system to detect the presence of sulfate-reducing bacteria (SRB). The thesis focuses on the development of artificial neural network (ANN) model 10 recognize the presence of SRB in a sample based on the sensors responses. Two sensors are implemented in this study, TGS 825 and SI-IT 75. The sensors responses from preliminary experimental works show that presence of SRI) in a sample give a significant effect on the concentration level of hydrogen sulphide (1-I2S) and temperature. The statements are proved by the two-sample T-test analysis, where the null hypotheses are rejected. The data collected data from the experiments form the training dataset of ANN. The ANN is trained with back propagation algorithm in Matlab and the classification results show that the ANN model promises a good performance with 100% prediction accuracy to classify a sample into two groups, either with SRB or without SRB. 2014-03 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/61074/1/24%20Pages%20from%2000001779827.pdf Tan, Earn Tzeh (2014) Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria. Masters thesis, Perpustakaan Hamzah Sendut.
spellingShingle TK1-9971 Electrical engineering. Electronics. Nuclear engineering
Tan, Earn Tzeh
Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title_full Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title_fullStr Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title_full_unstemmed Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title_short Hardware Implementation Of Artificial Neural Network On FPGA For Sulfate-Reducing Bacteria
title_sort hardware implementation of artificial neural network on fpga for sulfate reducing bacteria
topic TK1-9971 Electrical engineering. Electronics. Nuclear engineering
url http://eprints.usm.my/61074/1/24%20Pages%20from%2000001779827.pdf
work_keys_str_mv AT tanearntzeh hardwareimplementationofartificialneuralnetworkonfpgaforsulfatereducingbacteria