Faults diagnosis model based on artificial immunity and its application
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摘要: 提出了一種基于免疫原理的故障檢測及診斷系統模型.通過對檢測對象正常工作狀態下獲得的自己模式串的陰性選擇,隨機產生初始檢測器;利用基于人工免疫的進化學習機制,實現對檢測對象異常工作狀態下獲得的非己模式串進行學習和記憶;利用進化學習結果和系統故障信息庫知識,區分和標記不同故障在狀態空間上對應的區域.將抗原學習過程中抗體集合變異所產生的各代抗體集合看作隨機序列,給出了序列的收斂條件及證明,證明了所提出的動態免疫進化學習算法是概率弱收斂.應用于機床齒輪箱故障檢測和診斷問題的實驗結果表明了所提出方法的有效性.Abstract: A sort of system for faults detection and diagnosis based on the immunology principle was presented. Initial detectors were produced at random combining negative selection of self-patterns which response normal working situation of detecting objects. The learning and memory of non-self-patterns which response abnormal working situation of detecting objects were realized using the mechanism of evolution leaning based on the artificial immune theory. The corresponding zones of different faults on states space were distinguished and marked using the results of evolution learning and information warehouse of faults. Regarding the set of each era antibodys mutated in the system learning as a random series, the condition of convergence of the series and a proof were presented. The algorithm's astringency was proved. Appling the method in detection and diagnosis for faults of gear case of machine tools, the experimental results indicate that the method is effective.
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Key words:
- artificial immunity /
- evolution and learning /
- anomaly detection /
- fault diagnosis
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