• 제목/요약/키워드: Variation of range

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광섬유 접속부의 환경 변화에 따른 손실변화 연구 (A Study on the Optical Loss Variation of Optical Fiber Splicing Part due to Environment)

  • 유강희;김영호
    • 한국정보통신학회논문지
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    • 제11권2호
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    • pp.349-357
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    • 2007
  • 광섬유 케이블 포설 후 전송특성 변화에 가장 민감한 부분인 광섬유 심선 접속부의 환경변화에 따른 전송 손실의 변화를 측정하기 위하여 구부림, 온도변화, 물 침투 후의 온도변화와 진동시험 을 수행하였다. 실험결과, 구부림 시험에서는 구부림 반경이 30mm 이하에서 손실이 급격하게 증가함을 확인하였으며 $-30^{\circ}C$에서 $60^{\circ}C$범위의 온도변화에 대하여 최대 0.02dB의 손실 변화가 발생함을 확인하였다. 그러나 물이 침투한 상태에서는 훨씬 민감한 손실변화 특성을 보였으며 $-40^{\circ}C$에서 $80^{\circ}C$ 사이의 온도변화에 대하여 최대 0.2dB까지 광섬유 접속부의 손실이 증가함을 확인하였다. 또한 1mm 정도의 미세한 진동에 대해서는 광 손실의 증가가 거의 발생하지 않았다. 본 논문의 실험결과는 향후 환경변화에 따른 광섬유 접속부 손실의 변화를 제거하기 위한 광 케이블 접속함 설계에 참고자료로 사용될 수 있을 것이다.

MCP방법을 이용한 장기간 풍속 및 풍력에너지 변동 특성 분석 (Variability Characteristics Analysis of the Long-term Wind and Wind Energy Using the MCP Method)

  • 현승건;장문석;고석환
    • 한국태양에너지학회 논문집
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    • 제33권5호
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    • pp.1-8
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    • 2013
  • Wind resource data of short-term period has to be corrected a long-term period by using MCP method that Is a statistical method to predict the long-term wind resource at target site data with a reference site data. Because the field measurement for wind assessment is limited to a short period by various constraints. In this study, 2 different MCP methods such as Linear regression and Matrix method were chosen to compare the predictive accuracy between the methods. Finally long-term wind speed, wind power density and capacity factor at the target site for 20 years were estimated for the variability of wind and wind energy. As a result, for 20 years annual average wind speed, Yellow sea off shore wind farm was estimated to have 4.29% for coefficient of variation, CV, and -9.57%~9.53% for range of variation, RV. It was predicted that the annual wind speed at Yellow sea offshore wind farm varied within ${\pm}10%$.

SVM-인공신경망 알고리즘을 이용한 고도 변화에 따른 가스터빈 엔진의 결함 진단 연구 (Defect Diagnostics of Gas Turbine with Altitude Variation Using Hybrid SVM-Artificial Neural Network)

  • 이상명;최원준;노태성;최동환
    • 한국추진공학회지
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    • 제11권1호
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    • pp.43-50
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    • 2007
  • 본 논문에서는 고도 변화만을 고려한 탈설계 영역에서 항공기용 터보 축 엔진의 결함 진단을 위해 지지 벡터 장치(SVM)과 인공신경망(ANN)을 Hybrid로 사용한 분할 학습 알고리즘을 사용하였다. 지상 정지 상태에서보다 학습 데이터와 테스트 데이터 수가 크게 증가하지만, 분할 학습 알고리즘을 이용한 가스터빈 엔진의 결함 진단이 고도 변화를 고려한 탈설계 영역에서도 높은 결함 예측 정확성을 가짐을 확인하였다.

대기배경지역 에어로졸의 입경별 수농도 연속 측정 (Continuous Measurements of Size Separated Atmospheric Aerosol Number Concentration in Background Area)

  • 강창희;허철구
    • 한국환경과학회지
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    • 제21권4호
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    • pp.535-543
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    • 2012
  • The aerosol number concentration have measured with an aerodynamic particle sizer spectrometer(APS) at Gosan site, which is known as background area in Korea, from January to September 2011. The temporal variation and the size distribution of aerosol number concentration have been investigated. The entire averaged aerosol number concentration in the size range 0.25~32.0 ${\mu}m$ is about 252 particles/$cm^3$. The number concentration in small size ranges(${\leq}0.5{\mu}m$) are very higher than those in large size ranges, such as, the number concentration in range of larger than 6.5 ${\mu}m$ are almost zero particles/$cm^3$. The contributions of the number concentration to PM10 and/or PM2.5 are about 34%, 20.1% and 20.4% in the size range 0.25~0.28 ${\mu}m$, 0.28~0.30 ${\mu}m$ and 0.30~0.35 ${\mu}m$, respectively, however, the contributions are below 1% in range of larger than 0.58 ${\mu}m$. The monthly variations in the number concentration in smaller size range(<1.0 ${\mu}m$) are evidently different from the variations in range of larger than 1.0 ${\mu}m$, but the variations are appeared similar patterns in smaller size range(<1.0 ${\mu}m$), also the variations in range of larger than 1.0 ${\mu}m$ are similar too. The diurnal variations in the number concentration for smaller particle(<1.0 ${\mu}m$) are not much, but the variations for larger particle are very evident. Size-fractioned aerosol number concentrations are dramatically decreased with increased particle size. The monthly differences in the size-fractioned number concentrations for smaller size range(<0.7 ${\mu}m$) are not observed, however, the remarkable monthly differences are observed for larger size than 0.7 ${\mu}m$.

자외선 영역의 에어로졸 광학 깊이의 계절 분포 및 불확실도의 계산 (Seasonal Variation and Measurement Uncertainty of UV Aerosol Optical Depth Measured at Gwangju, Korea)

  • 김정은;김영준
    • 한국대기환경학회지
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    • 제21권6호
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    • pp.631-637
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    • 2005
  • A UV-MFRSR instrument was used to measure the global and diffuse irradiances in 7 narrowband channels in the UV range 299.4, 304.4, 310.9, 317.3. 324.5, 331.3 and 367.4 nm at Gwangju ($35^{circ}\;13'N\;126^{circ}\;50'E$), Korea. Spectral UV-AOD was retrieved using the Langley plot method for data collected from April 2002 to July 2004. Temporal variation of AOD at 367.4 nm ($AOD_{367nm}$) showed a maximum in June ($0.95\pm0.43$) and a minimum in February ($0.31\pm0.14$). Clear seasonal variation of $AOD_{367nm}$ was observed with average values of $0.68\pm0.29,\;0.82\pm0.41,\;0.48\pm0.22\;and\;0.42\pm0.21$ in spring, summer, fall and winter, respectively, Average Angstrom exponent for the entire monitoring period was $2.03\pm0.75$ in the UV-A ($324.5\∼367.4$ nm) range. Seasonal variation of the Angstrom exponent showed a maximum in spring and a minimum in summer. The lowest Angstrom exponent in summer might be due to hygroscopic growth of particles under conditions of high relative humidity. UV-AOD changes under different atmospheric conditions were also analyzed. Uncertainty in retrieving spectral UV-AOD was also estimated to range between $\pm0.218\;at\;304.4\;nm\;and\;\pm0.135\;at\;367.4\;nm$. Major causes of uncertainty were total column ozone retrieval and extraterrestrial irradiance retrieval at shorter and longer wavelengths, respectively.

Relationship between Phenological Stages and Cumulative Air Temperature in Spring Time at Namsan

  • Min, Byeong-Mee;Yi, Dong-Hoon;Jeong, Sang-Jin
    • Journal of Ecology and Environment
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    • 제30권2호
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    • pp.143-149
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    • 2007
  • To certify predictability for the times of phenological stages from cumulative air temperature in springtime, the first times of budding, leafing, flower budding, flowering and deflowering for 14 woody plants were monitored and air temperature was measured from 2005 to 2006 at Namsan. Year day index (YDI) and Nuttonson's Index (Tn) were calculated from daily mean air temperature. Of the 14 woody species, mean coefficient of variation was 0.04 in Robinia pseudo-acacia and 0.09 in Alnus hirsuta. However, mean coefficient of variation was 0.30 in Forsythia koreana and Stephanandra incisa and 0.32 in Zanthoxylum schinifolium. Therefore, the times of each phenological stage could be predicted in the former two species but not in latter three species by two indices. Of the five phenological stages, mean coefficient of variation was the smallest at deflowering time and the largest at budding time. In five phenological stages, mean coefficient of variation of YDI was in the range of $0.11{\sim}0.21$ but that of Tn was in the range of $0.15{\sim}0.26$. Therefore, the former was a better index than the latter. Of the species-phenological stage pair, coefficient of variation of YDI was 0.01 in Acer pseudo-sieboldianum - flower budding and below 0.05 in 11 pairs, whereas the YDIs over 0.40 were 4 pairs comprising of Prunus leveilleana - budding (0.51). Coefficient of variation of Tn was 0.01 in A. hirsuta - budding and below 0.05 in 8 pairs. The Tns over 0.40 were 5 pairs comprising of F. koreana - flower budding (0.66).

다측정 공정능력지수의 특성분석 (Analysis of Process Capability Index for Multiple Measurements)

  • 이도경
    • 산업경영시스템학회지
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    • 제39권1호
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    • pp.91-97
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    • 2016
  • This study is concerned about the process capability index in single process. Previous process capability indices have been developed for the consistency with the nonconforming rate due to the process target value and skewness. These indices calculate the process capability by measuring one spot in an item. But the only one datum in an item reduces the representativeness of the item. In addition to the lack of representativeness, there are many cases that the uniformity of the item such as flatness of panel is absolutely important. In these cases, we have to measure several spots in an item. Also the nonconforming judgment to an item is mainly due to the range not due to the standard variation or the shift from the specifications. To imply the uniformity concept to the process capability index, we should consider only the variation in an item. It is the within subgroup variation. When the universe is composed of several subgroups, the sample standard deviation is the sum of the within subgroup variation and the between subgroup variation. So the range R which represents only the within subgroup variation is the much better measure than that of the sample standard deviation. In general, a subgroup contains a couple of individual items. But in our cases, a subgroup is an item and R is the difference between the maximum and the minimum among the measured data in an item. Even though our object is a single process index, causing by the subgroups, its analytic structure looks like a system process capability index. In this paper we propose a new process capability index considering the representativeness and uniformity.

Effects of Human Activities on Home Range Size and Habitat use of the Tsushima leopard Cat Prionailurus bengalensis euptilurus in a Suburban Area on the Tsushima Islands, Japan

  • Oh, Dae-Hyun;Moteki, Shusaku;Nakanish, Nozomi;Izawa, Masako
    • Journal of Ecology and Environment
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    • 제33권1호
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    • pp.3-13
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    • 2010
  • The Tsushima leopard cat, Prionailurus bengalensis euptilurus, a small felid, inhabits only the Tsushima Islands in Japan. Previous studies of the Tsushima leopard cat revealed that natural factors; including sex, reproductive activity, season, and prey distribution and abundance affect leopard cat home range variation and habitat use. In this study, we focused on clarifying how anthropogenic factors influenced home range variation and habitat use of a male Tsushima leopard cat living near a suburban area in January, March, May and September 2005 using radio-tracking. The home range size (100% MCP) of this cat was $0.78\;{\pm}\;0.26\;km^2$ (mean ${\pm}$ SD, n = 4 tracking sessions) across the whole study period. However, the cat did not use all parts of its home range uniformly; rather it used some habitat types selectively. The cat avoided agriculture areas and residential areas in all of the tracking-sessions. On the other hand, the cat showed a weak preference for artificial structures and a strong preference for baiting sites in January and March, while it avoided them in May, and no baiting site was included in its home range in September. These results suggest that anthropogenic factors influenced the ranging patterns and habitat use of the leopard cat living near a suburban area. Artificial structures might provided good resting spaces for the cat in bad weather. When the density of its main prey was low in the winter, the cat tended to rely on artificial prey and had a small home range size.

On the Diurnal, Annual, and Solar Cycle Variations of Slant Total Electron Content in the Korean Peninsula

  • Yoon, Woong-Jun;Park, Kwan-Dong
    • Journal of Positioning, Navigation, and Timing
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    • 제5권2호
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    • pp.87-96
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    • 2016
  • The ionospheric error, which is one of many error elements considered during the Global Navigation Satellite System (GNSS) positioning, is hard to be predicted due to the influence of geomagnetic activity and irregular solar activities. Thus, the present study analyzed a change pattern in the ionosphere through Global Ionosphere Map (GIM) data for 12 years from 2003 to 2014 and a variation in the Slant Total Electron Content (STEC) between Sinuiju and Busan which was the longest range in the southeastern direction of the Korean Peninsula. The variation in the STEC verified the diurnal, annual, and solar cycle variations due to the influence of solar activity. The diurnal variation was characterized that the variation in the STEC started to increase from 6-7 am and reached the maximum at 13-14 pm followed by being decreased. The seasonal variation was characterized that the variation in the STEC was high in spring and autumn whereas it was low in summer and winter. The solar cycle variation revealed that the variation in the STEC increased during solar maximum and decreased during solar minimum. The variation in the STEC was up to 20 Total Electron Content Unit (TECU) during the solar minimum and up to 60 TECU during solar maximum.