TY - JOUR AU - 오재응 DA - 2015/03 PY - 2015 UR - http://www.sciencedirect.com/science/article/pii/S0003682X14002667 UR - http://hdl.handle.net/20.500.11754/22979 AB - In this study, the flow inside an air purifier was visualized using computational fluid dynamics (CFD), and the noise caused by airflow was predicted using computational aero-acoustics (CAA). With the obtained results, the causes of blade passage frequency (BPF) noise and turbulent flow noise that dominate the operating noise of the air purifier were investigated. The relationship between design parameters and BPF noise was subsequently derived by the kriging metamodel, and the optimum fan blade dimensions that minimize operating noise were acquired by an evolutionary algorithm (EA). The relationship between BPF noise and design parameters mentioned was intended to be used as a design guide during the early stage of fan blade design. In addition, in this study was designed to be able to estimate the origin of noise intuitively by visualizing internal flow. Lastly, the low-noise performance of the air purifier was verified through analytical and experimental methods, including the fabrication and testing of a physical mockup. Compared to the initial model, the fan blade operating noise decreased by 4.5 dB(A) in the main range. (C) 2014 Elsevier Ltd. All rights reserved. PB - ELSEVIER SCI LTD KW - Computational aero-acoustics (CAA) KW - Computational fluid dynamics (CFD) KW - Design of experiments (DOE) KW - Evolutionary algorithm (EA) KW - Kriging metamodel KW - Sirocco fan TI - Optimization of sirocco fan blade to reduce noise of air purifier using a metamodel and evolutionary algorithm VL - 89 DO - 10.1016/j.apacoust.2014.10.005 T2 - APPLIED ACOUSTICS ER -