Study on Mechanical Automation with Noise Characteristic and Control of Blower Room

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The noise of blower room severity exceeds national standards,which affects normal performance of the new pharmaceutical factory,so it is necessary us to control noise. Based on the measured dates of blowers room, it carries out a noise source analysis and a discus of its noise characteristic in this article, then a controlling approach has found from absorbing noise, excluding noise to blockade sound transmission. When the controlling approach could not meet expect, a supplement program will be designed that vibration isolators will be installed under the basement of electric engine and blower, flexible metal tubes will be installed to isolate vibration spread path. After a set utility controlling approach is implemented, the consequence shows that program not only gains good effects but also caters to more advanced criterion of manufacturers demand.

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191-194

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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