Almost Complete Separation of A Fluid Component from Mixture Using the Burgers' Networks of Mic

来源 :第八届工业与应用数学国际大会 | 被引量 : 0次 | 上传用户:asdfghjka
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  Two types of networks consisting of micro-separators are proposed which can separate the target component from fluid mixture almost completely.Each separator outputs into two outlets mixtures with slightly higher and lower concentrations,respectively.
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