Evaluation of Neural Network Linearization in Identification and Control

碩士 === 逢甲大學 === 自動控制工程所 === 91 === The purpose of this thesis is to evaluate the possibility of neural network linearization in identification and control. For the system identification, the linearized transfer function is more comprehensive and analyzable than the original neural network model; Fur...

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Main Authors: chen-ming chiou, 邱振銘
Other Authors: Thong-Shing Hwang
Format: Others
Language:zh-TW
Published: 2003
Online Access:http://ndltd.ncl.edu.tw/handle/fatr2d
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spelling ndltd-TW-091FCU051460222018-06-25T06:06:38Z http://ndltd.ncl.edu.tw/handle/fatr2d Evaluation of Neural Network Linearization in Identification and Control 類神經網路之線性化及其在識別與控制上之評估 chen-ming chiou 邱振銘 碩士 逢甲大學 自動控制工程所 91 The purpose of this thesis is to evaluate the possibility of neural network linearization in identification and control. For the system identification, the linearized transfer function is more comprehensive and analyzable than the original neural network model; Further, it can be applied to system control design. Most of industrial PID controller design will depend on experiences of engineer and trial and error approach to tune controller parameters. In this paper, first, we try to construct the architecture of the PID parameter-learning network. Secondly, the capability of the auto tuning in neural network is adopted to accomplish the tracking control for the reference model. Thong-Shing Hwang 黃榮興 2003 學位論文 ; thesis 61 zh-TW
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description 碩士 === 逢甲大學 === 自動控制工程所 === 91 === The purpose of this thesis is to evaluate the possibility of neural network linearization in identification and control. For the system identification, the linearized transfer function is more comprehensive and analyzable than the original neural network model; Further, it can be applied to system control design. Most of industrial PID controller design will depend on experiences of engineer and trial and error approach to tune controller parameters. In this paper, first, we try to construct the architecture of the PID parameter-learning network. Secondly, the capability of the auto tuning in neural network is adopted to accomplish the tracking control for the reference model.
author2 Thong-Shing Hwang
author_facet Thong-Shing Hwang
chen-ming chiou
邱振銘
author chen-ming chiou
邱振銘
spellingShingle chen-ming chiou
邱振銘
Evaluation of Neural Network Linearization in Identification and Control
author_sort chen-ming chiou
title Evaluation of Neural Network Linearization in Identification and Control
title_short Evaluation of Neural Network Linearization in Identification and Control
title_full Evaluation of Neural Network Linearization in Identification and Control
title_fullStr Evaluation of Neural Network Linearization in Identification and Control
title_full_unstemmed Evaluation of Neural Network Linearization in Identification and Control
title_sort evaluation of neural network linearization in identification and control
publishDate 2003
url http://ndltd.ncl.edu.tw/handle/fatr2d
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