Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc

Artificial neural network (ANN) has been widely used in many applications and has been started to be implemented in embedded system. Recently new platform like Altera DE1-SOC that contains both processor and FPGA had been introduced. When using this type of platform, artificial neural network can be...

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Main Author: Lim, Chun Ming
Format: Monograph
Language:English
Published: Universiti Sains Malaysia 2017
Subjects:
Online Access:http://eprints.usm.my/53150/
http://eprints.usm.my/53150/1/Hardware%20And%20Software%20Implementation%20Of%20Artificial%20Neural%20Network%20In%20Altera%20De1-Soc_Lim%20Chun%20Ming_E3_2017.pdf
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author Lim, Chun Ming
author_facet Lim, Chun Ming
author_sort Lim, Chun Ming
building USM Institutional Repository
collection Online Access
description Artificial neural network (ANN) has been widely used in many applications and has been started to be implemented in embedded system. Recently new platform like Altera DE1-SOC that contains both processor and FPGA had been introduced. When using this type of platform, artificial neural network can be either implemented in processor using software implementation or in FPGA using hardware implementation. Analysis should be done to see whether processor or FPGA is a better choice for the ANN. In this project, framework for implementation of ANN in processor and FPGA of Altera DE1-SOC has been developed and the efficiency of implementation of ANN in processor and FPGA in terms of accuracy, execution time and resources utilization has been studied. Several multilayer perceptron (MLP) models with different number of inputs, number of hidden neurons and types of activation function have first been trained in MATLAB and after that, these trained models have been implemented in both processor and FPGA of Altera DE1-SOC. Experiments have been carried out to test and measure the performance of these MLP models in processor and FPGA. After comparing output result with ANN that run in MATLAB and computing the mean squared error (MSE), results show that the ANN in processor has 100% accuracy and ANN in FPGA has minimum MSE of 7.3 x 10-6. While ANN in FPGA is 20 times faster than ANN in processor. Therefore, if accuracy is main priority and execution time is not so important in a system, ANN is suggested to be implemented in processor. However, if execution time of ANN must be fast like less than microsecond in a system, ANN is suggested to be implemented in FPGA.
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spelling usm-531502022-06-28T03:54:55Z http://eprints.usm.my/53150/ Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc Lim, Chun Ming T Technology TK1-9971 Electrical engineering. Electronics. Nuclear engineering Artificial neural network (ANN) has been widely used in many applications and has been started to be implemented in embedded system. Recently new platform like Altera DE1-SOC that contains both processor and FPGA had been introduced. When using this type of platform, artificial neural network can be either implemented in processor using software implementation or in FPGA using hardware implementation. Analysis should be done to see whether processor or FPGA is a better choice for the ANN. In this project, framework for implementation of ANN in processor and FPGA of Altera DE1-SOC has been developed and the efficiency of implementation of ANN in processor and FPGA in terms of accuracy, execution time and resources utilization has been studied. Several multilayer perceptron (MLP) models with different number of inputs, number of hidden neurons and types of activation function have first been trained in MATLAB and after that, these trained models have been implemented in both processor and FPGA of Altera DE1-SOC. Experiments have been carried out to test and measure the performance of these MLP models in processor and FPGA. After comparing output result with ANN that run in MATLAB and computing the mean squared error (MSE), results show that the ANN in processor has 100% accuracy and ANN in FPGA has minimum MSE of 7.3 x 10-6. While ANN in FPGA is 20 times faster than ANN in processor. Therefore, if accuracy is main priority and execution time is not so important in a system, ANN is suggested to be implemented in processor. However, if execution time of ANN must be fast like less than microsecond in a system, ANN is suggested to be implemented in FPGA. Universiti Sains Malaysia 2017-06-01 Monograph NonPeerReviewed application/pdf en http://eprints.usm.my/53150/1/Hardware%20And%20Software%20Implementation%20Of%20Artificial%20Neural%20Network%20In%20Altera%20De1-Soc_Lim%20Chun%20Ming_E3_2017.pdf Lim, Chun Ming (2017) Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc. Project Report. Universiti Sains Malaysia, Pusat Pengajian Kejuruteraan Elektrik & Elektronik. (Submitted)
spellingShingle T Technology
TK1-9971 Electrical engineering. Electronics. Nuclear engineering
Lim, Chun Ming
Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title_full Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title_fullStr Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title_full_unstemmed Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title_short Hardware And Software Implementation Of Artificial Neural Network In Altera De1-Soc
title_sort hardware and software implementation of artificial neural network in altera de1-soc
topic T Technology
TK1-9971 Electrical engineering. Electronics. Nuclear engineering
url http://eprints.usm.my/53150/
http://eprints.usm.my/53150/1/Hardware%20And%20Software%20Implementation%20Of%20Artificial%20Neural%20Network%20In%20Altera%20De1-Soc_Lim%20Chun%20Ming_E3_2017.pdf