期刊
JOURNAL OF MARINE SCIENCE AND ENGINEERING
卷 9, 期 11, 页码 -出版社
MDPI
DOI: 10.3390/jmse9111213
关键词
grinding device; ballast water; pretreatment filtration device; high-turbidity condition; ballast water management system
资金
- Ministry Oceans and Fisheries, Korea [20180035]
The study found that the grinding device (GD) had a removal efficiency of 100% for organisms larger than 100μm, and 93% and 87% for organisms smaller than 100μm in the PT and FST, respectively. The removal efficiency did not significantly change within 2 hours of passing through the GD, but remained above 99% for samples stored for 120 hours. Further research is needed to determine additional removal efficiency based on storage period after passing through the GD, but it may be used as a pretreatment device for ballast water management system.
To investigate the removal efficiency of the grinding device (GD) as a potential replacement for the pretreatment filtration device of ballast water, solid grinding and viability experiment were conducted according to a treatment flow rate of 5 tons (Pilot test, PT), and 200 tons (Full-scale test, FST) per h. The solid grinding effect was observed in the particle size of & GE;25 mu m. Under the high-turbidity conditions (> 300 mg L-1), no change in pressure (0.98 kgf/cm(2)) or stoppage in the GD were observed. The removal efficiency of the GD for > 100 mu m organism was determined to be 100% in both PT and FST, whereas the removal efficiency was determined to be 93% and 87% in the PT and FST, respectively, for the < 100 mu m organism. There was no statistically significant change in the removal efficiency stored within 2 h after passing through the GD, while the removal efficiency was determined to be & GE;99% in the sample stored for 120 h. Future study is necessary to determine the additional removal efficiency according to the storage period after passing through the GD, but the GD might be utilized as the pretreatment device for the ballast water management system.
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