• 제목/요약/키워드: production environment

검색결과 5,485건 처리시간 0.036초

환경서비스업과 물류서비스업의 예측 및 인과성 검정 (Prediction and Causality Examination of the Environment Service Industry and Distribution Service Industry)

  • 선일석;이충효
    • 유통과학연구
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    • 제12권6호
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    • pp.49-57
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    • 2014
  • Purpose - The world now recognizes environmental disruption as a serious issue when regarding growth-oriented strategies; therefore, environmental preservation issues become pertinent. Consequently, green distribution is continuously emphasized. However, studying the prediction and association of distribution and the environment is insufficient. Most existing studies about green distribution are about its necessity, detailed operation methods, and political suggestions; it is necessary to study the distribution service industry and environmental service industry together, for green distribution. Research design, data, and methodology - ARIMA (auto-regressive moving average model) was used to predict the environmental service and distribution service industries, and the Granger Causality Test based on VAR (vector auto regressive) was used to analyze the causal relationship. This study used 48 quarters of time-series data, from the 4th quarter in 2001 to the 3rd quarter in 2013, about each business type's production index, and used an unchangeable index. The production index about the business type is classified into the current index and the unchangeable index. The unchangeable index divides the current index into deflators to remove fluctuation. Therefore, it is easy to analyze the actual production index. This study used the unchangeable index. Results - The production index of the distribution service industry and the production index of the environmental service industry consider the autocorrelation coefficient and partial autocorrelation coefficient; therefore, ARIMA(0,0,2)(0,1,1)4 and ARIMA(3,1,0)(0,1,1)4 were established as final prediction models, resulting in the gradual improvement in every production index of both types of business. Regarding the distribution service industry's production index, it is predicted that the 4th quarter in 2014 is 114.35, and the 4th quarter in 2015 is 123.48. Moreover, regarding the environmental service industry's production index, it is predicted that the 4th quarter in 2014 is 110.95, and the 4th quarter in 2015 is 111.67. In a causal relationship analysis, the environmental service industry impacts the distribution service industry, but the distribution service industry does not impact the environmental service industry. Conclusions - This study predicted the distribution service industry and environmental service industry with the ARIMA model, and examined the causal relationship between them through the Granger causality test based on the VAR Model. Prediction reveals the seasonality and gradual increase in the two industries. Moreover, the environmental service industry impacts the distribution service industry, but the distribution service industry does not impact the environmental service industry. This study contributed academically by offering base line data needed in the establishment of a future style of management and policy directions for the two industries through the prediction of the distribution service industry and the environmental service industry, and tested a causal relationship between them, which is insufficient in existing studies. The limitations of this study are that deeper considerations of advanced studies are deficient, and the effect of causality between the two types of industries on the actual industry was not established.

Photosynthesis Monitoring of Rice using SPAR System to Respond to Climate Change

  • Hyeonsoo Jang;Wan-Gyu Sang;Yun-Ho Lee;Hui-woo Lee;Pyeong Shin;Dae-Uk Kim;Jin-Hui Ryu;Jong-Tag Youn
    • 한국작물학회:학술대회논문집
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    • 한국작물학회 2022년도 추계학술대회
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    • pp.169-169
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    • 2022
  • Over the past 100 years, the global average temperature has risen by 0.75 ℃. The Korean Peninsula has risen by 1.8 ℃, more than twice the global average. According to the RCP 8.5 scenario, the CO2 concentration in 2100 will be 940 ppm, about twice as high as current. The National Institute of Crop Science(NICS) is using the SPAR (Soil-Plant Atmosphere Research) facility that can precisely control the environment, such as temperature, humidity, and CO2. A Python-based colony photosynthesis algorithm has been developed, and the carbon and nitrogen absorption rate of rice is evaluated by setting climate change conditions. In this experiment, Oryza Sativa cv. Shindongjin were planted at the SPAR facility on June 10 and cultivated according to the standard cultivation method. The temperature and CO2 settings are high temperature and high CO2 (current temperature+4.7℃ temperature+4.7℃·CO2 800ppm), high temperature single condition (current temperature+4.7℃·CO2 400ppm) according to the RCP8.5 scenario, Current climate is set as (current temperature·CO2400ppm). For colony photosynthesis measurement, a LI-820 CO2 sensor was installed in each chamber for setting the CO2 concentration and for measuring photosynthesis, respectively. The colony photosynthetic rate in the booting stage was greatest in a high temperature and CO2 environment, and the higher the nitrogen fertilization level, the higher the colony photosynthetic rate tends to be. The amount of photosynthesis tended to decrease under high temperature. In the high temperature and high CO2 environment, seed yields, the number of an ear, and 1000 seed weights tended to decrease compared to the current climate. The number of an ear also decreased under the high temperature. But yield tended to increase a little bit under the high temperature and high CO2 condition than under the high temperature. In addition, In addition to this study, it seems necessary to comprehensively consider the relationship between colony photosynthetic ability, metabolite reaction, and rice yield according to climate change.

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환경요인을 적절하게 이용한 경제성 있는 축산조직 -헝가리의 사례연구- (Organization of Profitable Cattle Husbandry Through Exploiting Favourable Environment Factors)

  • ;김종무
    • 한국유기농업학회지
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    • 제7권2호
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    • pp.89-97
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    • 1999
  • 농업과 가축생산에서 상품생산의 원리를 통하여 노동의 공간분배를 관찰할 수 있다. 환경적인 요인에 적응이 잘되면 생산량의 증대와 효과적인 생산을 가져올 수 있다. 농장에서 이윤을 최대화하기 위하여 발생되는 조건에 밀접하게 일치되는 생산을 하도록 노력하여야 한다. 가축생산에서는 이미 잘 알려진 데로 사료생산에 밀접하게 연결되어 있다. 경제연구와 요인분석에 의하여 경제성있는 축산경영을 하는데 두 가지 집단(요인)이 지배적이라는 사실을 발견한다. 첫 번째로, 곡물의 재배지역이다. 그리고 두 번째로, 사료작물 생산형태(사료 및 초지재배지역 및 생산량)이다. 최근에는 환경적인 요인들은 저평가되는 경향이 있다. 중앙집권적인 행정제도의 결과로 인하여 차별화되는 효과는 활동을 못하게 되고, 그리고 동일하다는 개념이 강조되었다. 그와 같은 결과는 오늘날에 관찰될 수 있다. 예를 들어서 초지와 사료작물의 재배가 적당한 지역에 우유와 비육생산은 감소되고 있다. 옥수수와 돼지사육 지역에서도 유사한 현상이 발생되고 있다. 주로 초지경영에서 지역적 환경요인을 이용하지 못하는 현상을 발견할 수 있다. 초지의 합리적인 이용이 축산경영에서 중요하다는 것이다. 그리고 초지의 이용은 경제성있는 생산뿐만 아니라 생태적인 안정성을 유지하기 위하여 가축생산에서 대단히 중요하다.

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