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研究生: 陳弨廣
Chao-Kuang Chen
論文名稱: 基於區間第二類模糊類神經網路之螞蟻群聚最佳化演算法與其在直流馬達之應用
Ant Colony Optimization Algorithms Based on Interval Type-2 Fuzzy-Neural Networks and Its Application in DC Motor
指導教授: 洪欽銘
Hong, Chin-Ming
王偉彥
Wang, Wei-Yen
學位類別: 碩士
Master
系所名稱: 工業教育學系
Department of Industrial Education
論文出版年: 2010
畢業學年度: 98
語文別: 中文
論文頁數: 99
中文關鍵詞: 蟻群最佳化演算法區間第二類模糊類神經網路非線性系統
英文關鍵詞: ant colony optimization algorithm, interval type-2 fuzzy neural networks, nonlinear systems
論文種類: 學術論文
相關次數: 點閱:62下載:3
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  • 本文提出一個使用螞蟻群聚最佳化演算法來調整區間第二類模糊類神經網路的參數,並將其應用於函數近似與非線性系統之適應控制器設計。區間第二類模糊系統涵蓋了第一類模糊系統,使得我們可以掌握更多系統的不確定性。在非線性系統之適應控制過程中,區間第二類模糊類神經控制器的權重値是經由螞蟻群聚最佳化演算法來即時調整,以產生適當的控制輸入。為了即時評估閉迴路系統穩定的趨勢,本文使用李亞普諾夫函數來分析其穩定性。並提出一個能量適應函數於螞蟻群聚最佳化演算法中,藉此獲得較佳的閉迴路系統的穩定度。此外,由於螞蟻群聚最佳化演算法可能在線上即時控制過程中使系統狀態進入不穩定的區域。因此,在控制結構中加入了監督控制,限制系統的狀態在穩定的範圍內。本文藉由電腦模擬結果驗證所提出方法的可行性與效能。最後,將此控制法則應用在直流伺服馬達追蹤控制實驗。

    In this thesis, an ant colony optimization algorithm used to tune the parameters of interval type-2 fuzzy neural networks is proposed for function approximation and adaptive control of nonlinear systems. Type-2 fuzzy sets and systems generalize (type-1) fuzzy sets and systems so that more uncertainty can be handled. In adaptive control procedure for nonlinear systems, the weights of the interval type-2 fuzzy neural controller are online adjusted by the ant colony optimization algorithm in order to generate appropriate control input. For the purpose of on-line evaluating the stability of the closed-loop systems, an energy fitness function derived from Lyapunov function is involved in the ant colony optimization algorithm. In addition, the system states may go into the unstable region if the ant colony optimization algorithm can not instantaneously generate the appropriate weights. In order to guarantee the stability of the closed-loop nonlinear system, a supervisory controller is incorporated into the controller. Finally, some computer simulation examples and a servo motor experiment are provided to demonstrate the feasibility and effectiveness of the proposed method.

    中文摘要 i 英文摘要 iii 誌謝 v 目錄 vi 表目錄 viii 圖目錄 ix 第一章 緒論 1 1.1 研究背景與動機 1 1.2 研究目的 4 1.3 論文架構 5 第二章 螞蟻群聚最佳化演算法之區間第二類模糊類神經網路 6 2.1 模糊類神經網路 6 2.2 區間第二類模糊類神經網路 8 2.3 螞蟻群聚最佳化演算法 15 第三章 基於螞蟻群聚最佳化演算法之區間第二類模糊類神經網路倒階控制應用於不確定之非線性系統 25 3.1 簡介 25 3.2 倒階控制系統 25 3.3 基於螞蟻群聚最佳化演算法之區間第二類模糊類神經網路倒階控制器設計 30 3.4 模擬結果 34 第四章 使用螞蟻群聚最佳化演算法設計區間第二類模糊類神經網路倒階控制器應用於多輸入多輸出非線性系統 43 4.1 多輸入多輸出控制器設計 43 4.2 針對多輸入多輸出非線性系統設計區間第二類模糊類神經網路倒階控制器設計 48 4.3 模擬結果 52 第五章 使用螞蟻群聚最佳化演算法設計區間第二類模糊類神經網路控制器以控制直流伺服馬達 59 5.1 簡介 59 5.2 直流伺服馬達問題描述 59 5.3 模擬結果 59 5.4 硬體結構 61 5.4 實驗結果 69 5.5 實驗比較結果 73 5.6 實驗結論 89 第六章 結論與未來研究方向 91 6.1 結論 91 6.2 未來研究方向 91 參考文獻 93

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