• 제목/요약/키워드: Production Forecasting

검색결과 223건 처리시간 0.029초

한국 동해 생태계의 어획강도 변화에 따른 자원량 예측 연구 (A study on the forecasting biomass according to the changes in fishing intensity in the Korean waters of the East Sea)

  • 임정현;서영일;장창익
    • 수산해양기술연구
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    • 제54권3호
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    • pp.217-223
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    • 2018
  • Overfishing capacity has become a global issue due to over-exploitation of fisheries resources, which result from excessive fishing intensity since the 1980s. In the case of Korea, the fishing effort has been quantified and used as an quantified index of fishing intensity. Fisheries resources of coastal fisheries in the Korean waters of the East Sea tend to decrease productivity due to deterioration in the quality of ecosystem, which result from the excessive overfishing activities according to the development of fishing gear and engine performance of vessels. In order to manage sustainable and reasonable fisheries resources, it is important to understand the fluctuation of biomass and predict the future biomass. Therefore, in this study, we forecasted biomass in the Korean waters of the East Sea for the next two decades (2017~2036) according to the changes in fishing intensity using four fishing effort scenarios; $f_{current}$, $f_{PY}$, $0.5{\times}f_{current}$ and $1.5{\times}f_{current}$. For forecasting biomass in the Korean waters of the East Sea, parameters such as exploitable carrying capacity (ECC), intrinsic rate of natural increase (r) and catchability (q) estimated by maximum entropy (ME) model was utilized and logistic function was used. In addition, coefficient of variation (CV) by the Jackknife re-sampling method was used for estimation of coefficient of variation about exploitable carrying capacity ($CV_{ECC}$). As a result, future biomass can be fluctuated below the $B_{PY}$ level when the current level of fishing effort in 2016 maintains. The results of this study are expected to be utilized as useful data to suggest direction of establishment of fisheries resources management plan for sustainable use of fisheries resources in the future.

인천항의 수출 적컨테이너화물 물동량 추정에 관한 연구 (Forecasting Export Loaded Container Throughput of Incheon Port)

  • 고용기;김은지;신정용;김태호
    • 한국항만경제학회지
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    • 제24권3호
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    • pp.57-77
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    • 2008
  • 본 연구에서는 기존의 물동량 전망에 적용한 방법론이 아닌 개별 항만별 예측방법을 적용하여 인천항에서 경유하는 수출 화물 물동량을 전망하였다. 물동량 전망에 있어 기존의 통계적, 계량경제학적인 분석 대신 시스템 분석을 적용하였다. 대부분의 기존연구에서 적용하였던 총량적 접근방법은 전국의 총 화물물동량을 각 품목별 특성에 따른 계량모형을 통해 추정한다. 이는 전국권역을 기반으로 항만 O/D에 따라 향후 권역별 항만 개발계획 및 개별입지변화를 반영하여 체계적인 방법으로 배분함으로써 전국 항만의 물동량을 도출했다. 본 연구에서는 이러한 기존방법론이 아닌 개별항만의 주변상창이나 직접적인 영향을 미치는 산업단지의 현황을 토대로 물동량을 도출해 내는 방법이다. 본 연구에 있어 기초자료는 인천항을 배후권역으로 하는 수출 화물의 기종점인 배후산업단지의 소요면적에 대한 자료를 토대로 조사하였다. 이는 수출의 대부분을 창출하는 산업단지의 소요면적을 파악하여 이에 원단위를 적용함으로써 산단별 입출되는 물량을 도출할 수 있다. 여기에 산단별 분양률, 업종비중, 가동률, 그리고 산단별 수출 비중을 적용하여 인천항의 수출 화물 물동량을 전망하였다. 본 연구는 기존의 전망치와 비교를 함으로써 연구방법론의 다양화와 비교연구를 수행하는 연구성과를 거두었다.

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경종작물분야의 델파이 기술예측조사 (Survey for Technology Forecasting for Crop Production using Delphi Method)

  • 이종인;조근태;채영암;김재한
    • 한국작물학회지
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    • 제49권3호
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    • pp.261-270
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    • 2004
  • 델파이법을 이용한 본 연구는 한국농업의 미래 유망기술을 예측$.$도출하기 위하여 시도되었다. 이 미래유망기술을 토대로 우리나라의 농업은 고부가가치를 지닌 2떼기의 핵심전략산업으로 성장하게 할 것이다. 델파이법을 이용하여 경종작물 분야의 전문가에게 각 기술의 전문도, 중요도, 실현시기(국내 및 세계), 연구개발수준, 실현시기의 확신도, 기술적으로 가장 앞선 국가, 연구개발 추진주체, 유효한 정책수단 등을 질문하였다. 이 조사의 대상은 경종작물분야의 전문가로 한정하였다. 미래유망기술로는 44개의 기술이 도출되었고, 이 조사에 응답한 전문가는 39명이었다.

양파 출하시기 도매가격 예측모형 연구 (A Study on Onion Wholesale Price Forecasting Model)

  • 남국현;최영찬
    • 농촌지도와개발
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    • 제22권4호
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    • pp.423-434
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    • 2015
  • This paper predicts the onion's cultivation areas, yields per unit area, and wholesale prices during ship dates by using wholesale price data from the Korea Agro-Fisheries & Food Trade Corporation, the production data from the Statistics Korea, and the weather data from the Korea Meteorological Administration with an ARDL model. By analyzing the data of wholesale price, rural household income and rural total earnings, onion cultivation areas in 2015 are estimated to be 21,035, 17,774 and 20,557(ha). In addition, onion yields per unit area of South Jeolla Province, North Gyeongsang Province, South Gyeongsang Province, Jeju Island, and the whole country in 2015 are estimated to be 5,980, 6,493, 6,543, 6,614, 6,139 (kg/10a) respectively. By using onion production's predictive value found from onion's cultivation areas and yields per unit area in 2015, the onion's wholesale prices in June are estimated to be 780 won, 1,100 won, and 820 won for each model. Predicted monthly price after the onion's ship dates is analyzed to exceed 1,000 won after August.

Price Forecasting on a Large Scale Data Set using Time Series and Neural Network Models

  • Preetha, KG;Remesh Babu, KR;Sangeetha, U;Thomas, Rinta Susan;Saigopika, Saigopika;Walter, Shalon;Thomas, Swapna
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권12호
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    • pp.3923-3942
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    • 2022
  • Environment, price, regulation, and other factors influence the price of agricultural products, which is a social signal of product supply and demand. The price of many agricultural products fluctuates greatly due to the asymmetry between production and marketing details. Horticultural goods are particularly price sensitive because they cannot be stored for long periods of time. It is very important and helpful to forecast the price of horticultural products which is crucial in designing a cropping plan. The proposed method guides the farmers in agricultural product production and harvesting plans. Farmers can benefit from long-term forecasting since it helps them plan their planting and harvesting schedules. Customers can also profit from daily average price estimates for the short term. This paper study the time series models such as ARIMA, SARIMA, and neural network models such as BPN, LSTM and are used for wheat cost prediction in India. A large scale available data set is collected and tested. The results shows that since ARIMA and SARIMA models are well suited for small-scale, continuous, and periodic data, the BPN and LSTM provide more accurate and faster results for predicting well weekly and monthly trends of price fluctuation.

양식 넙치의 가격변동 및 예측에 관한 연구 (A Study on the Price Fluctuation and Forecasting of Aquacultural Flatfish in Korea)

  • 옥영수;김상태;고봉현
    • 수산경영론집
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    • 제38권2호
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    • pp.41-62
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    • 2007
  • The Fish aquacultural Industry has been developed rapidly since 1990s in Korea. The total production of fish aquaculture was 5,000ton in the beginning of 1990s, but it was an excess of 80,000ton in 2005. In the beginning of 1990s, the percentage of flatfish yield was 80% of the fish aquaculture in the respect of production. And it has been maintained 50% level in 2005. In this point of view, flatfish aquaculture played the role of leader in the development of fish aquaculture. Rapid increasing of production was not only caused to decreasing in price basically, but also it threatened the management of producer into insecure price for aquacultural flatfish. Therefore, it needs the policy for stabilizing in price, but it is difficult to choose the method because the basic study was not accomplished plentifully. This study analyzed about price structure of aquacultural flatfish. A period of analysis was from January 2000 to December 2005, and a data was used monthly data for price. The principal result of this study is substantially as follows. 1) The price of producing and consuming district is closely connected. 2) A gap between producing district price and consuming district price is decreasing recently, It seems to be correlated with outlook business of aquacultural flatfish. 3) Trend line of the price was declining until 2002, but it turned up after that. The other side, circulated fluctuation was being showed typically. 4) The circle of circulated fluctuation was growing longer, so it seems that the producer was doing a sensible productive activity to cope with changing price. As a result, government's policy needs to be turned into price policy from policy of increased production for aquacultural flatfish. It seems that the best policy is price stabilization polices. And also, government needs to invest in outlook business for aquaculture constantly.

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수요예측에 오차를 고려한 신뢰도 지수 산정에 관한 연구 (A STUDY ON THE GENERATING SYSTEM RELIABILITY INDEX EVALUATION WITH CONSIDERING THE LOAD FORECASTING UNCERTAINTY)

  • 송길영;김용하;차준;오광해
    • 대한전기학회:학술대회논문집
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    • 대한전기학회 1991년도 하계학술대회 논문집
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    • pp.402-405
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    • 1991
  • This paper represents a new method for computing reliability indices by using Large Deviation method which is one of the probabilistic production cost simulations. The reliability measures are based on the models used for the loads and for the generating unit failure states. In computing these measures it has been tacitly assumed that the values of all parameters in the models are precisely known. In fact, however, some of these values must often be chosen with a considerable degree of uncertainty involved. This is particularly true for the forecast peak loads in the load model, where there is an inherent uncertainty in the method of forecasting, which are frequently based on insufficient statistics. In this paper, the effect of load forecasting uncertainty on the LOLP(Loss of Load Probability), is investigated. By applying the Large Deviation method to the IEEE Rilability Test System, it is verified that the proposed method is generally very accurate and very fast for computing system reliability indices.

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데이터마이닝 알고리즘을 이용한 제품수명주기 예측 : 의류산업 적용사례 (Prediction of Product Life Cycle Using Data Mining Algorithms : A Case Study of Clothing Industry)

  • 이슬기;강지훈;이한규;주태우;오시연;박성욱;김성범
    • 대한산업공학회지
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    • 제40권3호
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    • pp.291-298
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    • 2014
  • Demand forecasting plays a key role in overall business activities such as production planning, distribution management, and inventory management. Especially, for a fast-changing environment of the clothing industry, logical forecasting techniques are required. In this study, we propose a procedure to predict product life cycle using data mining algorithms. The proposed procedure involves three steps : extracting key variables from profiles, clustering, and classification. The effectiveness and applicability of the proposed procedure were demonstrated through a real data from a leading clothing company in Korea.

Seaweed Cultivation in Indonesia: Recent Status

  • Pambudi, Lilik Teguh;Meinita, Maria Dyah Nur;Ariyati, Restiana Wisnu
    • 한국해양바이오학회지
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    • 제4권1호
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    • pp.6-10
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    • 2010
  • Indonesia is well-known as biggest producer of seaweed especially for Eucheuma and Gracilaria and also has huge potential resources and capability to develop seaweed cultivation and product. There are several provinces which have potential resources and have been contributing on seaweed production. The next challenge about seaweed production is using integrated system on brackishwater and marine aquaculture. Furthermore, about 2,000,000 ton of potential seaweed production is not explored yet. This article also tries to figure out some related aspects which are technical, economical and forecasting aspect. There is a disease which named "ice-ice" is one of the main problem and giving a new challenge in developing of problem solving for seaweed cultivation method. Economical parameters are also main important key to find out the feasibility of seaweed cultivation industry. In addition, the seaweed cultivation and production in Indonesia also have potential performance on biofuel resources as a part for solving the world problem on energy demand.

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에너지불변특성을 이용한 Mixture of Cumulants Approximation 방법에 의한 발전시뮬레이션에 관한 연구 - 수요예측의 오차를 고려한 경우 - (A STUDY ON THE GENERATION SIMULATION USING ENERGY INVARIANCE PROPERTY BY MIXTURE OF CUMULANTS APPROXIMATION METHOD WITH CONSIDERING THE LOAD FORECASTING UNCERTAINTY)

  • 송길영;김용하;오광해;오기봉
    • 대한전기학회:학술대회논문집
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    • 대한전기학회 1991년도 추계학술대회 논문집 학회본부
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    • pp.59-62
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    • 1991
  • This paper describes an effective algorithm for evaluating the reliability indices and calculating the production cost for generation system with thermal, hydro and pumped storage plants. Using the Energy Invariance property, this algorithm doesn't need deconvolution process which gives large burden in computing time. In order to consider an adaptable load model, we consider the system load with forecasting uncertainty. The proposed algorithm is applied to the KEPCO system and its result shows high accuracy and less computing time.

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