• Title/Summary/Keyword: 가격 예측

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An Error Correction Model for Long Term Forecast of System Marginal Price (전력 계통한계가격 장기예측을 위한 오차수정모형)

  • Shin, Sukha;Yoo, Hanwook
    • Journal of the Korea Academia-Industrial cooperation Society
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    • v.22 no.6
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    • pp.453-459
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    • 2021
  • The system marginal price of electricity is the amount paid to all the generating units, which is an important decision-making factor for the construction and maintenance of an electrical power unit. In this paper, we suggest a long-term forecasting model for calculating the system marginal price based on prices of natural gas and oil. As most variables used in the analysis are nonstationary time series, the long run relationship among the variables should be examined by cointegration tests. The forecasting model is similar to an error correction model which consists of a long run cointegrating equation and another equation for short run dynamics. To mitigate the robustness issue arising from the relatively small data sample, this study employs various testing and estimating methods. Compared to previous studies, this paper considers multiple fuel prices in the forecasting model of system marginal price, and provides greater emphasis on the robustness of analysis. As none of the cointegrating relations associated with system marginal price, natural gas price and oil price are excluded, three error correction models are estimated. Considering the root mean squared error and mean absolute error, the model based on the cointegrating relation between system marginal price and natural gas price performs best in the out-of-sample forecast.

Forecasting Strategy for Hydropower Power Market Price by Power Demand Analysis and Forecast (전력수요 분석과 예측을 통한 수력발전 전력거래가격 전망 전략)

  • Kim, Gie-Tae;Lee, Gyeong-Bae;Choi, In-Seok;Kim, Jong-Gyeum
    • Proceedings of the KIEE Conference
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    • 2011.07a
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    • pp.656-657
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    • 2011
  • 산업사회의 급속한 발전과 생활수준 향상에 따라 전력수요 및 공급전망에 대한 인식이 점차 강조되고 있다. 에너지자원이 부족한 우리나라는 전체 에너지의 약 97%를 수입에 의존하고 있으므로 전력공급의 정확한 수요예측을 통해서 안정적, 경제적으로 전력을 공급해야 한다. 2001년 전력산업구조개편에 따라 전력시장은 발전부문만 시장에 참여하여 경쟁하는 발전경쟁체제로 발전사업자의 입찰량과 전력거래소의 전력수요 예측 결과를 이용하여 시간대별 전력시장가격을 결정하는 가격결정발전 계획을 수립하고 있다. 본 논문에서는 청정 녹색에너지로 피크시간대에 발전하여 주파수 조절을 담당함으로써 전력계통에 크게 기여하고 있는 수력 발전기의 최적 입찰 전략 및 수력발전 사업계획에 활용할 수 있는 전력거래가격 전망 전략을 제시하여 수력발전사업자의 수익 증대와 전력시장 가격 안정화에 기여하고자 한다.

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Modeling for Egg Price Prediction by Using Machine Learning (기계학습을 활용한 계란가격 예측 모델링)

  • Cho, Hohyun;Lee, Daekyeom;Chae, Yeonghun;Chang, Dongil
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2022.05a
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    • pp.15-17
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    • 2022
  • In the aftermath of the avian influenza that occurred from the second half of 2020 to the beginning of 2021, 17.8 million laying hens were slaughtered. Although the government invested more than 100 billion won for egg imports as a measure to stabilize prices, the effort was not that easy. The sharp volatility of egg prices negatively affected both consumers and poultry farmers, so measures were needed to stabilize egg prices. To this end, the egg prices were successfully predicted in this study by using the analysis algorithm of a machine learning regression. For price prediction, a total of 8 independent variables, including monthly broiler chicken production statistics for 2012-2021 of the Korean Poultry Association and the slaughter performance of the national statistics portal (kosis), have been selected to be used. The Root Mean Square Error (RMSE), which indicates the difference between the predicted price and the actual price, is at the level of 103 (won), which can be interpreted as explaining the egg prices relatively well predicted. Accurate prediction of egg prices lead to flexible adjustment of egg production weeks for laying hens, which can help decision-making about stocking of laying hens. This result is expected to help secure egg price stability.

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A Study on the Effect of Macroeconomic Variables on Apartment Rental Housing Prices by Region and the Establishment of Prediction Model (거시경제변수가 지역 별 아파트 전세가격에 미치는 영향 및 예측모델 구축에 관한 연구)

  • Kim, Eun-Mi
    • Journal of Cadastre & Land InformatiX
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    • v.52 no.2
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    • pp.211-231
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    • 2022
  • This study attempted to identify the effects of macroeconomic variables such as the All Industry Production Index, Consumer Price Index, CD Interest Rate, and KOSPI on apartment lease prices divided into nationwide, Seoul, metropolitan, and region, and to present a methodological prediction model of apartment lease prices by region using Long Short Term Memory (LSTM). According to VAR analysis results, the nationwide apartment lease price index and consumer price index in Lag1 and 2 had a significant effect on the nationwide apartment lease price, and likewise, the Seoul apartment lease price index, the consumer price index, and the CD interest rate in Lag1 and 2 affect the apartment lease price in Seoul. In addition, it was confirmed that the wide-area apartment jeonse price index and the consumer price index had a significant effect on Lag1, and the local apartment jeonse price index and the consumer price index had a significant effect on Lag1. As a result of the establishment of the LSTM prediction model, the predictive power was the highest with RMSE 0.008, MAE 0.006, and R-Suared values of 0.999 for the local apartment lease price prediction model. In the future, it is expected that more meaningful results can be obtained by applying an advanced model based on deep learning, including major policy variables

Prediction of Agricultural Prices Using LSTM (LSTM 모델을 이용한 농산물 가격 예측에 관한 연구)

  • Yoo, Dong-wan;Park, Jong-beom
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2022.05a
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    • pp.710-712
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    • 2022
  • Agricultural products take a large part of the wholesale and retail market as a necessity for daily consumption, and the consumption and price of agricultural products affect the supply and demand of agricultural products, consumer spending, and agricultural household income. Therefore, in this study, It was conducted on unit price prediction using LSTM to trade agricultural products, weather observation, import and export performance and fresh food index data. In order to study the supply and demand management of agricultural products and appropriate prices in the wholesale and retail market, unit prices are predicted for garlic, cabbage, and onions with high consumer price index weights among items subject to vegetable price stabilizers.

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Forecasting of Iron Ore Prices using Machine Learning (머신러닝을 이용한 철광석 가격 예측에 대한 연구)

  • Lee, Woo Chang;Kim, Yang Sok;Kim, Jung Min;Lee, Choong Kwon
    • Journal of Korea Society of Industrial Information Systems
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    • v.25 no.2
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    • pp.57-72
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    • 2020
  • The price of iron ore has continued to fluctuate with high demand and supply from many countries and companies. In this business environment, forecasting the price of iron ore has become important. This study developed the machine learning model forecasting the price of iron ore a one month after the trading events. The forecasting model used distributed lag model and deep learning models such as MLP (Multi-layer perceptron), RNN (Recurrent neural network) and LSTM (Long short-term memory). According to the results of comparing individual models through metrics, LSTM showed the lowest predictive error. Also, as a result of comparing the models using the ensemble technique, the distributed lag and LSTM ensemble model showed the lowest prediction.

Treasury Bond Futures Option Prices as.Predictors of Equilibrium Futures Prices (균형(均衡)퓨처가격(價格)(equilibrium futures prices)을 예측하기 위한 재무성(財務省) 장기채권(長期債券)(Treasury bond)의 퓨처옵션가격(價格)(futures option prices)에 대한 연구(硏究))

  • Kim, Won-Kee
    • The Korean Journal of Financial Management
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    • v.8 no.1
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    • pp.199-212
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    • 1991
  • 주식옵션(stock options)에 대한 연구에 비교하여 상품 및 퓨처 옵션(commodity & futures options)에 대한 연구는 선진국에서도 지금 한참 연구를 하고 있는 단계에 있다. 우리나라에서도 이 분야에 대한 이론을 바탕으로 하는 제도를 곧 도입하려는 준비를 하고 있다. 본 연구는 블랙의 '블랙의 컴모디티 옵션의 가격모형(Black commodity option pricing model)'을 이용하여 재무성 장기채권의 퓨처의 균형가격을 예측하는데 있다. 이 블랙모형의 적용가능성을 검증해 본 것이다. 실제퓨처가격(observed futures prices)과는 달리 재무성 장기채권 퓨처 옵션에서의 묵시적 퓨처가격(futures prices implicit)은 시장효율성(market efficiencies)의 전제하에 성립되거나, 아니면 옵션가격모형을 사용하여서는 아니되거나 둘 중의 하나이거나 둘 다 섞이거나 일 것이다. 본 실증적인 연구, 즉 묵시적인 표준편차(implied standard deviations)를 사이멀테니어스(simultaneously)하게 계산한 묵시적인 퓨처가격(implied futures prices)을 사용한 실증적인 연구는 옵션모델에 의하여 퓨처가격을 계산하는 데에 문제가 있음을 발견하였다. 그 이유는 옵션가격결정모형을 이용하여 계산한 재무성 장기채권의 퓨쳐가격은 재무성 장기채권의 미래가격변동의 방향을 제시하는 지표로써 사용할 수 없기 때문일 것이다. 우리나라에서도 이 분야에 대한 이론과 제도를 곧 도입하는 입장에서 선행되는 문헌이 될 것이다.

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석유개발의 경제학

  • Sin, Ui-Sun
    • Environmental and Resource Economics Review
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    • v.4 no.2
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    • pp.383-393
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    • 1995
  • 석유개발사업은 고도의 위험성, 투자자금의 장기회임성, 그리고 대규모 투자자금의 필요성등의 특성을 가지고 있다. 따라서 개발사업에 참여하기에 앞서 개발비용과 향후 유가추이를 면밀히 검토하여야 한다. 국제원유시장은 기본적으로 공급초과 상태에 있으며 앞으로 상당기간동안 가격은 안정추세를 나타낼 것이다. 단기적 등락에도 불구하고 원유가격은 장기적으로 상승할 것이라는 당대의 견해는 이른바 유한고갈성자원의 희소렌트가 이자율과 같은 속도로 상승한다는 '호텔링의 모형'에 이론적 기초를 두고 있다. 그러나 국제원유시장에서의 원유가격은 경쟁가격이 아니라 OPEC카르텔에 의한 담합가격으로 실제적 시장상황에 비해 인위적으로 높게 유지되어 왔다. '카오스 이론'에 따르면 석유시장은 동태적으로 구조변화를 반복하기 때문에 사전적으로 석유가격을 예측한다는 것은 애당초 불가능하다. 따라서 불규칙적으로 변화하는 석유가격을 예측하려고 노력하기보다는 석유시장의 불확실성을 인정하고 선물시장의 활용을 통해 석유개발과 관련된 위험을 줄여나가야 할 것이다.

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