【摘 要】
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In recent years,there is increasing interest in the development and application of advanced computational techniques for interface problems,problem with fre
【机 构】
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North Carolina State Univ.
论文部分内容阅读
In recent years,there is increasing interest in the development and application of advanced computational techniques for interface problems,problem with free boundary and moving interface,fluid-structure interactions driven by applications in physiology,fluid mechanics,material sciences,porous media flow,and biology.
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