通知與聲明 的英文怎麼說
中文拼音 [tōngzhīyǔshēngmíng]
通知與聲明
英文
announcement notice anddeclaration-
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您明確理解和同意,中國經濟門戶網不對因下述任一情況而發生的任何損害賠償承擔責任,包括但不限於利潤、商譽、使用、數據等方面的損失或其他無形損失的損害賠償(無論中國經濟門戶網是否已被告知該等損害賠償的可能性) : ( i )使用或未能使用「服務」 ; ( ii )因通過或從「服務」購買或獲取任何貨物、樣品、數據、資料或服務,或通過或從「服務」接收任何信息或締結任何交易所產生的獲取替代貨物和服務的費用; ( iii )未經批準接入或更改您的傳輸資料或數據; ( iv )任何第三者對「服務」的聲明或關于「服務」的行為;或( v )因任何原因而引起的與「服務」有關的任何其他事宜,包括疏忽。Abstract : on the basis of the analysis about noise sources of the air compressor, it shows that air dynamic noise is primary one. according to the theory of fluid mechanics, the mathematics model of the air compreesor air dynamic noise is found, which shows the relationship between the sound power level and other parameters. the knowing noise of the air compressor " s air dynamic is of low frequencies. the reliable data is provided for the noise and vibration control
文摘:通過對空壓機噪聲源的分析,確認空壓機噪聲源中的空氣動力性噪聲為最強;由流體流場的聲學理論,建立空壓機動力性噪聲源的力學模型,它表明聲功率與其它參數的關系;並知空壓機的空氣動力性噪聲呈低頻特性,這為噪聲及振動控制提供了可靠的依據The simulation results indicate that the parallel robot control can achieve much better effect than the traditional method by means of fuzzy control only if the abundant control experience and correct inference rules are available. as the simulation result showing, the anfis achieves the same satisfying effect with successful fuzzy control without requiring any control experience. the anfis can adjust the parameters of fuzzy inference system automatically and eliminate the influence of interfere signal on the base of adequate training samples
在缺乏實驗條件的情況下,通過對不同控制策略的模擬比較研究,說明了在具備系統的先驗知識和成熟的模糊規則的基礎上,對並聯機器人採取模糊控制能取得比採取傳統控制要好得多的效果,而anfis則能在毫無經驗的情況下,通過自動調整隸屬函數參數,自動建立符合系統變量特徵的控制模型和模糊推理規則,並能夠排除噪聲等干擾信號的影響,取得了與依賴專家知識進行控制一樣的效果,這也是模糊神經網路控制的優勢所在。
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