• 제목/요약/키워드: Temperature forecast

검색결과 390건 처리시간 0.021초

기상청 GloSea의 위성관측 기반 토양수분(SMAP) 동화: 예비 실험 분석 (Assimilation of Satellite-Based Soil Moisture (SMAP) in KMA GloSea6: The Results of the First Preliminary Experiment)

  • 지희숙;황승언;이조한;현유경;류영;부경온
    • 대기
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    • 제32권4호
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    • pp.395-409
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    • 2022
  • A new soil moisture initialization scheme is applied to the Korea Meteorological Administration (KMA) Global Seasonal forecasting system version 6 (GloSea6). It is designed to ingest the microwave soil moisture retrievals from Soil Moisture Active Passive (SMAP) radiometer using the Local Ensemble Transform Kalman Filter (LETKF). In this technical note, we describe the procedure of the newly-adopted initialization scheme, the change of soil moisture states by assimilation, and the forecast skill differences for the surface temperature and precipitation by GloSea6 simulation from two preliminary experiments. Based on a 4-year analysis experiment, the soil moisture from the land-surface model of current operational GloSea6 is found to be drier generally comparing to SMAP observation. LETKF data assimilation shows a tendency toward being wet globally, especially in arid area such as deserts and Tibetan Plateau. Also, it increases soil moisture analysis increments in most soil levels of wetness in land than current operation. The other experiment of GloSea6 forecast with application of the new initialization system for the heat wave case in 2020 summer shows that the memory of soil moisture anomalies obtained by the new initialization system is persistent throughout the entire forecast period of three months. However, averaged forecast improvements are not substantial and mixed over Eurasia during the period of forecast: forecast skill for the precipitation improved slightly but for the surface air temperature rather degraded. Our preliminary results suggest that additional elaborate developments in the soil moisture initialization are still required to improve overall forecast skills.

겨울철 동아시아 지역 기온의 계절 예측에 눈깊이 초기화가 미치는 영향 (Impact of Snow Depth Initialization on Seasonal Prediction of Surface Air Temperature over East Asia for Winter Season)

  • 우성호;정지훈;김백민;김성중
    • 대기
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    • 제22권1호
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    • pp.117-128
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    • 2012
  • Does snow depth initialization have a quantitative impact on sub-seasonal to seasonal prediction skill? To answer this question, a snow depth initialization technique for seasonal forecast system has been implemented and the impact of the initialization on the seasonal forecast of surface air temperature during the wintertime is examined. Since the snow depth observation can not be directly used in the model simulation due to the large systematic bias and much smaller model variability, an anomaly rescaling method to the snow depth initialization is applied. Snow depth in the model is initialized by adding a rescaled snow depth observation anomaly to the model snow depth climatology. A suite of seasonal forecast is performed for each year in recent 12 years (1999-2010) with and without the snow depth initialization to evaluate the performance of the developed technique. The results show that the seasonal forecast of surface air temperature over East Asian region sensitively depends on the initial snow depth anomaly over the region. However, the sensitivity shows large differences for different timing of the initialization and forecast lead time. Especially, the snow depth anomaly initialized in the late winter (Mar. 1) is the most effective in modulating the surface air temperature anomaly after one month. The real predictability gained by the snow depth initialization is also examined from the comparison with observation. The gain of the real predictability is generally small except for the forecasting experiment in the early winter (Nov. 1), which shows some skillful forecasts. Implications of these results and future directions for further development are discussed.

태풍 발생 인접 주말의 수요예측 오차 감소 방안 (A Scheme for Reducing Load Forecast Error During Weekends Near Typhoon Hit)

  • 박정도;송경빈
    • 전기학회논문지
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    • 제58권9호
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    • pp.1700-1705
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    • 2009
  • In general, short term load forecasting is based on the periodical load pattern during a day or a week. Therefore, the conventional methods do not expose stable performance to every day during a year. Especially for anomalous weather conditions such as typhoons, the methods have a tendency to show the conspicuous accuracy deterioration. Furthermore, the tendency raises the reliability and stability problems of the conventional load forecast. In this study, a new load forecasting method is proposed in order to increase the accuracy of the forecast result in case of anomalous weather conditions such as typhoons. For irregular weather conditions, the sensitivity between temperature and daily load is used to improve the accuracy of the load forecast. The proposed method was tested with the actual load profiles during 14 years, which shows that the suggested scheme considerably improves the accuracy of the load forecast results.

외기에 면한 초고층 아파트 발코니 천정 내부결로 예측 (Forecast on Internal Condensation at Balcony Ceiling of Super-high Apartment Building Faced with Open Air)

  • 최윤기;안재봉
    • 한국건설관리학회논문집
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    • 제4권4호
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    • pp.155-163
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    • 2003
  • 최근 들어 주거공간의 기능만족과 효율성 확보를 위해 외기측에 면한 발코니 부위를 확장하는 사례가 늘어나고 있으며 특히, 최상층에 위치한 확장형 주거공간의 경우 외벽에 설치된 AL Curtain wall상부 외벽복합 Panel 이 완전 기밀하지 않음으로 인해 천정 상부측으로 낮은 외기온의 이동에 의한 실온과의 온도차에 의해 내부결로의 발생 가능성을 전혀 배제할 수는 없는 상황이다. 본 연구는 외기에 면한 초고층 아파트 최상층부의 발코니 천장내부에 있는 H-Beam(내화피복+단열재 구성)파 Parapet부위 내부결로 발생가능성에 대한 예측을 해 봄으로써 해당 공간거주자의 쾌적한 환경 만족 및 불안을 해소하는데 그 목적이 있다. 외주부를 구성하고 있는 Curtain wall Stone panel 또는 슬래브 바닥하부 등의 열적 취약공간에 대해 2차원 정상상태(온도평형) 열전도해석 Program을 이용, 온도예측과 온도분포해석을 통해 해당부위의 수증기압 분포에 따른 내부결로 예측을 실시하였다.

1979~2011년, 북극진동지수 측면에서의 겨울철 남한지역 신적설과 최저 온도 특성 (A Characteristic of Wintertime Snowfall and Minimum Temperature with Respect to Arctic Oscillation in South Korea During 1979~2011)

  • 노준우;이용희;최규용;이희춘
    • 대기
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    • 제24권1호
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    • pp.29-38
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    • 2014
  • A characteristic of snowfall and minimum temperature variability in South Korea with respect to the variability of Arctic Oscillation (AO) was investigated. The climatic snowfall regions of South Korea based on daily new fresh snowfall data of 59 Korea Meteorological Administration (KMA) stations data corresponding to the sign of AO index during December to February 1979~2011 were classified. Especially, the differences between snowfalls of eastern regions and that of western regions in South Korea were seen by each mean 1000hPa geopotential height fields, which is one of physical structure, for the selected cases over the East Asia including the Korean Peninsula. Daily minimum temperature variability of 59 KMA station data and daily AO index during the same period were investigated using Cyclo-stationary empirical orthogonal function (CSEOF) analysis. The first CSEOF of wintertime daily AO index and that of minimum temperature of 59 KMA stations explain 33% and 66% of total variability, respectively. Correlation between principal component time series corresponding to the first CSEOF of AO index and that of temperature at the period of 1990s is over about -0.7 when that of AO index leads about 40 days.

제주계통의 기온변화 민감도를 반영한 주말 전력수요예측 (A Study on the Weekend Load Forecasting of Jeju System by using Temperature Changes Sensitivity)

  • 정희원;구본희;차준민
    • 전기학회논문지
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    • 제65권5호
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    • pp.718-723
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    • 2016
  • The temperature changes are very important in improving the accuracy of the load forecasting during the summer. It is because the cooling load in summer contribute to the increasing of the load. This paper proposes a weekend load forecasting algorithm using the temperature change characteristic in a summer of Jeju. The days before and after weekends in Jeju, when the load curves are quite different from those of normal weekdays. The temperature change characteristic are obtained by using weekends peak load and high temperature data. And load forecasted based on the sensitivity between unit temperature changes and load variations. Load forecast data with better accuracy are obtained by using the proposed temperature changes than by using the ordinary daily peak load forecasting. The method can be used to reduce the error rate of load forecast.

역전층이 강릉시 주변 해륙풍 순환에 미치는 영향 연구 (The Effect of Inversion Layer on the Land and Sea Breeze Circulations near the Gangneung)

  • 남궁지연;유재훈;김남원;최만규;함동주;김훈상;장유정;최은경
    • 대기
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    • 제15권4호
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    • pp.229-239
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    • 2005
  • The effect of inversion layer on the land and sea breeze near the Gangneung city was investigated. The land and sea breeze occurrence days were selected, and the height and the intensity of inversion layer were calculated with the upper air observational data of the Sokcho Station. The relationships between the temperature variation near the Gangneung and the inflow time, inland penetration and the inflow depth of the land and sea breeze were also analyzed. And the Gangwon Short-range prediction system was verified with the comparison of surface stream line by the Gangwon short-range prediction system with the AWS wind vector data. It was revealed that the inversion layer tended to block the sea breeze, shorten the inland penetration distance and lower the inflow depth, causing the temperature rise. The comparison and analysis of surface steam line by the Gangwon short-range prediction system and the AWS wind vector showed that the system quite well simulated the sea breeze, thus the system could be well utilized in the prediction of land and sea breeze.

1개월 기온 예측자료의 오차 특성 분석 및 보정 기법 연구 (Error Characteristic Analysis and Correction Technique Study for One-month Temperature Forecast Data)

  • 김용석;허지나;김응섭;심교문;조세라;강민구
    • 한국농림기상학회지
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    • 제25권4호
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    • pp.368-375
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    • 2023
  • 본 연구에서는 농촌진흥청과 홍콩과학기술대학교의 공동 개발로 생산된 1개월 예측 자료의 오차를 분석하고, 통계적 보정 기법을 활용한 오차 개선 효과를 살펴보고자 하였다. 이를 위해 2013년부터 2021년까지의 과거 예측(hindcast) 자료, 기상관측자료, 다양한 환경정보들을 수집하고 다양한 환경 조건에서의 오차 특성을 분석하였다. 최고기온과 최저기온의 경우, 해발고도와 위도가 높을 수록 예측 오차가 더 크게 나타났다. 평균적으로, 선형회귀모형과 XGBoost로 보정한 예측자료는 보정 전 예측자료보다 각각 0.203, 0.438(최고기온) 및 0.069, 0.390(최저기온) 정도의 RMSE가 감소했으며, 높은 고도와 위도에서의 오차 개선이 더 크게 나타났다. 모든 분석 조건에서 XGBoost가 선형회귀모형보다 우수한 오차 개선 효과를 나타냈다. 본 연구를 통해 예측 자료의 오차가 지형적 조건에 영향을 받는다는 사실을 확인하였고, XGBoost와 같은 기계학습법이 다양한 환경인자들을 고려하여 효과적으로 오차를 개선할 수 있다는 것을 확인하였다.

인공 신경망을 이용한 채소 단수 예측 모형 개발: 고추를 중심으로 (Development of Yield Forecast Models for Vegetables Using Artificial Neural Networks: the Case of Chilli Pepper)

  • 이춘수;양성범
    • 한국유기농업학회지
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    • 제25권3호
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    • pp.555-567
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    • 2017
  • This study suggests the yield forecast model for chilli pepper using artificial neural network. For this, we select the most suitable network models for chilli pepper's yield and compare the predictive power with adaptive expectation model and panel model. The results show that the predictive power of artificial neural network with 5 weather input variables (temperature, precipitation, temperature range, humidity, sunshine amount) is higher than the alternative models. Implications for forecasting of yields are suggested at the end of this study.

GIS-based Meteorological Data Processing Technology for Forest Fire Danger Rating Forecast System of China

  • Zhao, Yinghui;Zhen, Zhen;Li, Fengri
    • 한국산림과학회지
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    • 제99권2호
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    • pp.197-203
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    • 2010
  • The data of average temperature, average relative humidity, precipitation and average wind speed were collected from 674 meteorological stations in China. A specific procedure that processes original data into a new data format needed in forest fire danger rating forecast system of China was introduced systematically, and the feasibility of this method was validated in this paper. In addition, a set of meteorological data processing software was constructed by the secondary development of GIS in order to realize automation of processing data for the system. Results showed that the approach preformed well in handling temperature, average relative humidity and average wind speed, and the processing effect of precipitation was acceptable. Moreover, the automated procedure could be achieved by GIS and the working efficiency was about 3 times as much as that of manual handling. The informationization level of processing meteorological data was greatly enhanced.