• 沒有找到結果。

第六章 結論

6.2 未來展望

在本論文的第五章已經證實能達到系統異常預判的能力,但如果要做對 稱高速雙主軸研磨機的即時監測系統的話,則是需要再進行更多實際加工的 資料收集,才能建立起資料庫做為系統異常偵測的健康指標,並在整合線上 監測系統達到即時監測系統的建康指標,以便在系統發生異常時能對加工參 數進行調整,來達到真正的系統管理與成本管制。

64

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