Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle

Customer requirements are vital information prior to the early stage of autonomous vehicle (AV) development processes. In the development process of AV many decisions have been made concerning customer requirements at the first stage. The development of AV that meets customer requirements will incre...

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Главные авторы: Hao, Wang, Asrul, Adam, Fengrong, Han
Формат: Статья
Язык:English
Опубликовано: University of Bahrain
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Online-ссылка:http://umpir.ump.edu.my/id/eprint/35173/1/IJCDS_120121_1570767667.pdf
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author Hao, Wang
Asrul, Adam
Fengrong, Han
author_facet Hao, Wang
Asrul, Adam
Fengrong, Han
author_sort Hao, Wang
collection UMP
description Customer requirements are vital information prior to the early stage of autonomous vehicle (AV) development processes. In the development process of AV many decisions have been made concerning customer requirements at the first stage. The development of AV that meets customer requirements will increase the global consumer and remain competitive. Safety and regulation are one of crucial aspect for customers that requires to be concerned and evaluated at the early stage of AV development. If safety and regulation related requirements did not well identified, AV developer could not develop the safest vehicles due to the huge compensation of accidents. To efficiently classify customer requirements, this study proposed an approach based on natural language processing method. For classification purpose, the customer requirements are divided into six categories that the concept are come from the quality management system (QMS) standard. These categories will be as input for the next process development in making the best decision. Most of conventional algorithms, such as, Naive Bayes, MAXENT, and support vector machine (SVM), only use limited human engineered features and their accuracy for customized corpus in sentences classification are proven low which is less than 50 percent. However, in literature, convolution neural networks (CNN) have been described efficiently to overcome the customized corpus of sentence classification problems. Therefore, this study implements CNN architecture in customized corpus classification operations. As the results, the accuracy of CNN classification has improved at least 6 percent compared to the conventional algorithms.
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spelling UMPir351732022-09-13T06:34:09Z http://umpir.ump.edu.my/id/eprint/35173/ Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle Hao, Wang Asrul, Adam Fengrong, Han QA Mathematics QA75 Electronic computers. Computer science TK Electrical engineering. Electronics Nuclear engineering Customer requirements are vital information prior to the early stage of autonomous vehicle (AV) development processes. In the development process of AV many decisions have been made concerning customer requirements at the first stage. The development of AV that meets customer requirements will increase the global consumer and remain competitive. Safety and regulation are one of crucial aspect for customers that requires to be concerned and evaluated at the early stage of AV development. If safety and regulation related requirements did not well identified, AV developer could not develop the safest vehicles due to the huge compensation of accidents. To efficiently classify customer requirements, this study proposed an approach based on natural language processing method. For classification purpose, the customer requirements are divided into six categories that the concept are come from the quality management system (QMS) standard. These categories will be as input for the next process development in making the best decision. Most of conventional algorithms, such as, Naive Bayes, MAXENT, and support vector machine (SVM), only use limited human engineered features and their accuracy for customized corpus in sentences classification are proven low which is less than 50 percent. However, in literature, convolution neural networks (CNN) have been described efficiently to overcome the customized corpus of sentence classification problems. Therefore, this study implements CNN architecture in customized corpus classification operations. As the results, the accuracy of CNN classification has improved at least 6 percent compared to the conventional algorithms. University of Bahrain Article PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/35173/1/IJCDS_120121_1570767667.pdf Hao, Wang and Asrul, Adam and Fengrong, Han Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle. International Journal of Computing and Digital Systems, 12 (1). pp. 237-243. ISSN 2210-142X. (Published) https://dx.doi.org/10.12785/ijcds/120121 https://dx.doi.org/10.12785/ijcds/120121
spellingShingle QA Mathematics
QA75 Electronic computers. Computer science
TK Electrical engineering. Electronics Nuclear engineering
Hao, Wang
Asrul, Adam
Fengrong, Han
Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title_full Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title_fullStr Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title_full_unstemmed Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title_short Using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
title_sort using convolution neural networks for improving customer requirements classification performance of autonomous vehicle
topic QA Mathematics
QA75 Electronic computers. Computer science
TK Electrical engineering. Electronics Nuclear engineering
url http://umpir.ump.edu.my/id/eprint/35173/1/IJCDS_120121_1570767667.pdf
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AT fengronghan usingconvolutionneuralnetworksforimprovingcustomerrequirementsclassificationperformanceofautonomousvehicle