• Title/Summary/Keyword: 낮과 밤

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잠 못 이루는 당신에게 편안한 휴식을 불면증, 한방으로 다스리는 법

  • 조홍건
    • 가정의 벗
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    • v.37 no.3 s.427
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    • pp.14-15
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    • 2004
  • 사람이 낮에 깨고 밤에 자는 것은 낮과 밤이라는 자연의 주기와 리듬에 우리 몸이 맞추어져 있기 때문이다. 이 리듬이 깨질 때 가장 먼저 나타나는 증상이 불면증이다. 잠을 이루지 못하는 불면증은 원인에 따라 다르게 나타나는데 한방에서 다스리는 법을 알아보도록 한다.

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농업기술 - 환절기를 대비한 가축위생관리

  • Ryu, Il-Seon
    • 농업기술회보
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    • v.46 no.6
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    • pp.34-35
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    • 2009
  • 무더운 여름 날씨가 끝나면 낮과 밤의 일교차가 큰 환절기인 가을철을 맞이하게 된다. 특히 면역능력과 체력이 낮은 어린 가축들은 환경(온도, 풍속, 습도 등)의 변화에 의한 대사불균형 스트레스를 받기 때문에 각별한 관리를 통해 생산성 저하와 질병을 예방해야 한다. 아침 저녁으로 바깥의 찬 공기에 노출되지 않도록 차단하며, 낮에는 충분히 환기를 해주고, 밤에는 보온이 되도록 한다.

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A Study on Information Spillover Effects from Nasdaq to Kosdaq and Jasdaq (나스닥시장의 코스닥 및 자스닥시장에 대한 정보이전효과에 관한 연구)

  • Kim, Chan-Wung;Moon, Gyu-Hyun;Hong, Jung-Hyo
    • The Korean Journal of Financial Management
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    • v.20 no.1
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    • pp.163-190
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    • 2003
  • This study tests the hypothesis of market efficiency through the information spillover effects over price and volatility across countries by using open-to-close(daytime) returns and close-to-open(overnight) returns of NASDAQ, KOSDAQ and JASDAQ data from January 3, 1997 to December 21, 2000. Based on Granger-causality and time-varying AR(1)-GARCH(1, 1)-M models we document that the evidence of statistically significant conditional mean and volatility spillovers effects from the daytime returns and volatility of NASDAQ to the overnight returns and volatility of KOSDAQ is observed both before and after the IMF foreign currency crisis but not to the close-to-open return before the IMF foreign currency crisis. We can understand the information spillover effect from NASDAQ to KOSDAQ on the overnight rather than the daytime grows more significantly after the IMF foreign currency crisis. We also find the interactive information spillover effect between NASDAQ and JASDAQ both before and after the IMF financial crisis, in particular, to close-to-open return. In addition, the market efficiency between KOSDAQ and NASDAQ is on an increasing trend through IMF foreign currency crisis.

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Color Analyses on Digital Photos Using Machine Learning and KSCA - Focusing on Korean Natural Daytime/nighttime Scenery - (머신러닝과 KSCA를 활용한 디지털 사진의 색 분석 -한국 자연 풍경 낮과 밤 사진을 중심으로-)

  • Gwon, Huieun;KOO, Ja Joon
    • Trans-
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    • v.12
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    • pp.51-79
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    • 2022
  • This study investigates the methods for deriving colors which can serve as a reference to users such as designers and or contents creators who search for online images from the web portal sites using specific words for color planning and more. Two experiments were conducted in order to accomplish this. Digital scenery photos within the geographic scope of Korea were downloaded from web portal sites, and those photos were studied to find out what colors were used to describe daytime and nighttime. Machine learning was used as the study methodology to classify colors in daytime and nighttime, and KSCA was used to derive the color frequency of daytime and nighttime photos and to compare and analyze the two results. The results of classifying the colors of daytime and nighttime photos using machine learning show that, when classifying the colors by 51~100%, the area of daytime colors was approximately 2.45 times greater than that of nighttime colors. The colors of the daytime class were distributed by brightness with white as its center, while that of the nighttime class was distributed with black as its center. Colors that accounted for over 70% of the daytime class were 647, those over 70% of the nighttime class were 252, and the rest (31-69%) were 101. The number of colors in the middle area was low, while other colors were classified relatively clearly into day and night. The resulting color distributions in the daytime and nighttime classes were able to provide the borderline color values of the two classes that are classified by brightness. As a result of analyzing the frequency of digital photos using KSCA, colors around yellow were expressed in generally bright daytime photos, while colors around blue value were expressed in dark night photos. For frequency of daytime photos, colors on the upper 40% had low chroma, almost being achromatic. Also, colors that are close to white and black showed the highest frequency, indicating a large difference in brightness. Meanwhile, for colors with frequency from top 5 to 10, yellow green was expressed darkly, and navy blue was expressed brightly, partially composing a complex harmony. When examining the color band, various colors, brightness, and chroma including light blue, achromatic colors, and warm colors were shown, failing to compose a generally harmonious arrangement of colors. For the frequency of nighttime photos, colors in approximately the upper 50% are dark colors with a brightness value of 2 (Munsell signal). In comparison, the brightness of middle frequency (50-80%) is relatively higher (brightness values of 3-4), and the brightness difference of various colors was large in the lower 20%. Colors that are not cool colors could be found intermittently in the lower 8% of frequency. When examining the color band, there was a general harmonious arrangement of colors centered on navy blue. As the results of conducting the experiment using two methods in this study, machine learning could classify colors into two or more classes, and could evaluate how close an image was with certain colors to a certain class. This method cannot be used if an image cannot be classified into a certain class. The result of such color distribution would serve as a reference when determining how close a certain color is to one of the two classes when the color is used as a dominant color in the base or background color of a certain design. Also, when dividing the analyzed images into several classes, even colors that have not been used in the analyzed image can be determined to find out how close they are to a certain class according to the color distribution properties of each class. Nevertheless, the results cannot be used to find out whether a specific color was used in the class and by how much it was used. To investigate such an issue, frequency analysis was conducted using KSCA. The color frequency could be measured within the range of images used in the experiment. The resulting values of color distribution and frequency from this study would serve as references for color planning of digital design regarding natural scenery in the geographic scope of Korea. Also, the two experiments are meaningful attempts for searching the methods for deriving colors that can be a useful reference among numerous images for content creator users of the relevant field.

Polluted Fish`s Motion Analysis Using Self-Organizing Feature Maps (자기조직화 형상지도를 이용한 오염 물고기 움직임 분석)

  • 강민경;김도현;차의영;곽인실
    • Proceedings of the Korean Information Science Society Conference
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    • 2001.10b
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    • pp.316-318
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    • 2001
  • 본 논문에서는 자기조직화 형상지도(Self-organizing Feature Maps)를 사용하여 움직이는 물체에 대해 움직임의 특성을 자동으로 분석하였다. Kohonen Network는 자기조직을 형성하는 unsupervised learning 알고리즘으로서, 이 논문에서는 생태계에서의 데이터를 Patternizing하고, Clustering 하는데 사용한다. 본 논문에서 Kohonen 신경망의 학습에 사용한 데이터는 CCD 카메라로 물고기의 움직임을 추적한 좌표 데이터이며, diazinon 0.1 ppm을 처리한 물고기 점 데이터와 처리하지 않은 점 데이터를 각각 낮.밤 약 10시간동안 수집하여, \circled1처리전 낮 데이터 \circled2처리전 밤 데이터 \circled3처리전 낮 데이터 \circled4처리후 밤 데이터 각각 4개의 group으로 분류한 후, Kohonen Network을 사용하여 물고기의 행동 차이를 분석하였다.

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The Germination Characteristics of Seeds by Temperature Conditions in Artemisa annua L. (온도 조건에 따른 개똥쑥(Artemisa annua L.) 종자의 발아특성)

  • JunHyeok Kim;Chae Sun Na;Chung Youl Park;Un Seop Shin;Young Ho Jung;Cho Hee Park
    • Proceedings of the Plant Resources Society of Korea Conference
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    • 2020.12a
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    • pp.53-53
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    • 2020
  • 본 실험은 다양한 생리활성이 보고되어 약용으로 널리 쓰이는 개똥쑥(Artemisia annua L.) 종자의 온도에 따른 발아 특성을 조사하기 위해 진행하였다. 미세온도구배 발아기를 이용하여 낮과 밤의 온도를 각각 5 ~ 35℃ 범위에서 낮과 밤의 시간을 12시간으로 고정하고, 낮 온도가 밤 온도보다 크거나 같은 조건을 설정하여 총 27개의 온도조건으로 개똥쑥 종자의 최종 발아율 및 발아율과의 관계를 분석하였다. 실험결과, 개똥쑥 종자는 실험에 사용한 모든 온도조건에서 발아가 가능한 것으로 나타났으며, 25/10℃(낮/밤) 조건에서 90%로 가장 높게 조사되었다. 또한, 발아율 조사결과를 통해 일평균온도뿐만 아니라 일교차온도도 발아율에 영향을 미치는 것으로 판단되어 일평균온도와 일교차온도로 나누어 발아율과의 관계를 분석하였다. 온도조건과 발아율과의 연속적인 발아특성을 분석하기 위해 다중회귀분석과 비선형 회귀분석을 이용하여 온도 조건과 상대적 발아율의 관계를 수식으로 표현하였다. 일평균온도를 기준으로 발아율과의 관계를 분석한 결과, 5 ~ 35℃의 모든 일평균 온도범위에서 유의성이 나타났으며 5, 7.5, 32.5, 35℃는 상대적인 음의 영향력을, 나머지 조건에서는 상대적인 양의 영향력을 가진 것으로 분석되었다. 일교차온도를 기준으로 발아율과의 관계를 분석한 결과, 0 ~ 25℃의 모든 일교차 온도범위에서 양의 영향력을 가진 것으로 분석되었다. 일평균온도는 19.3℃에 가까울수록, 일교차온도는 14.9℃에 가까울수록 발아에 대한 영향력이 큰 것으로 조사되었다. 각 수식을 통해 도출된 수치화된 온도에 따른 개똥쑥 종자의 일일누적 온도 영향력을 temperature score(TS)로 설정하였다. 본 연구에서 도출된 수식을 통해 누적 TS를 계산한 결과, 14.9 TS가 누적되었을 때 발아율이 85% 이상으로 나타날 것으로 예측되었다.

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PHOTOTAXIS OF FISH (1) - CYPRINUS CARPIO - (어류의 주광성에 관한 연구(1) - 잉어 -)

  • YANG Yong-Rhim
    • Korean Journal of Fisheries and Aquatic Sciences
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    • v.12 no.2
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    • pp.79-86
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    • 1979
  • The phototaxis of common carp Cyprinus carpio was studied tinder laboratory conditions to find out distributional pattern of the fish under light gradient and to find the light intensity which causes the maximum gathering rate. The optimum light intensities were determined, The fish tended to escape from tile light source when the light intensity was stronger or weaker than a certain optimum value. The mean illumination intensity which caused the maximum gathering rate was 3.813lux (2.99-4.76 lux) in the daytime and 6.292 lux (5.0-7.89 lux) at night. The gathering rate of the fish could be divided into two types: reflex gathering rate and equilibrium gathering rate. The reflex gathering rate appeared quickly soon after lighting and gradually changed as time elapsed, while the equilibrium gathering rate was almost always constant.

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낮 과 밤

  • Korea Industrial Health Association
    • 산업보건소식
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    • no.23
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    • pp.3-5
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    • 1985
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