• 제목/요약/키워드: Temperature forecast

검색결과 390건 처리시간 0.022초

위성자료가 기상청 전지구 통합 분석 예측 시스템에 미치는 효과 (The Impact of Satellite Observations on the UM-4DVar Analysis and Prediction System at KMA)

  • 이주원;이승우;한상옥;이승재;장동언
    • 대기
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    • 제21권1호
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    • pp.85-93
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    • 2011
  • UK Met Office Unified Model (UM) is a grid model applicable for both global and regional model configurations. The Met Office has developed a 4D-Var data assimilation system, which was implemented in the global forecast system on 5 October 2004. In an effort to improve its Numerical Weather Prediction (NWP) system, Korea Meteorological Administration (KMA) has adopted the UM system since 2008. The aim of this study is to provide the basic information on the effects of satellite data assimilation on UM performance by conducting global satellite data denial experiments. Advanced Tiros Operational Vertical Sounder (ATOVS), Infrared Atmospheric Sounding Interferometer (IASI), Special Sensor Microwave Imager Sounder (SSMIS) data, Global Positioning System Radio Occultation (GPSRO) data, Air Craft (CRAFT) data, Atmospheric Infrared Sounder (AIRS) data were assimilated in the UM global system. The contributions of assimilation of each kind of satellite data to improvements in UM performance were evaluated using analysis data of basic variables; geopotential height at 500 hPa, wind speed and temperature at 850 hPa and mean sea level pressure. The statistical verification using Root Mean Square Error (RMSE) showed that most of the satellite data have positive impacts on UM global analysis and forecasts.

기상예보시스템을 이용한 가공송전선의 단기간 동적송전용량 예측 (Short-Term Dynamic Line Rating Prediction in Overhead Transmission Lines Using Weather Forecast System)

  • 김성덕;이승수;장태인;장지원;이동일
    • 조명전기설비학회논문지
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    • 제18권6호
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    • pp.158-169
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    • 2004
  • 본 논문에서는 실시간 기상예보데이터를 사용하여 가공송전선의 단시간 송전용량을 예측하기 위한 방법을 제안한다. 기상청에서 제공되는 예보기온, 풍속등급 및 날씨코드와 같은 3시간 예보요소들을 분석하여 기상예보데이터와 실제 측정데이터 사이의 상관성이 분석되었다. 동적송전용량을 결정하는데 사용하기 위하여 이러한 요소들은 적당한 수치로 변환되었다. 또한 풍속과 일사량에 대한 신뢰도를 개선하기 위하여 적응뉴로퍼지시스템이 설계되었다. 기상예보데이터가 송전용량을 신뢰성을 갖도록 추정하는데 사용될 수 있음을 밝혔다. 그 결과 제안된 예측시스템이 단시간 용량예측에 효율적으로 실용화될 수 있을 것이다.

전처리 방법과 인공지능 모델 차이에 따른 대전과 부산의 태양광 발전량 예측성능 비교: 기상관측자료와 예보자료를 이용하여 (Comparison of Solar Power Generation Forecasting Performance in Daejeon and Busan Based on Preprocessing Methods and Artificial Intelligence Techniques: Using Meteorological Observation and Forecast Data)

  • 심채연;백경민;박현수;박종연
    • 대기
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    • 제34권2호
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    • pp.177-185
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    • 2024
  • As increasing global interest in renewable energy due to the ongoing climate crisis, there is a growing need for efficient technologies to manage such resources. This study focuses on the predictive skill of daily solar power generation using weather observation and forecast data. Meteorological data from the Korea Meteorological Administration and solar power generation data from the Korea Power Exchange were utilized for the period from January 2017 to May 2023, considering both inland (Daejeon) and coastal (Busan) regions. Temperature, wind speed, relative humidity, and precipitation were selected as relevant meteorological variables for solar power prediction. All data was preprocessed by removing their systematic components to use only their residuals and the residual of solar data were further processed with weighted adjustments for homoscedasticity. Four models, MLR (Multiple Linear Regression), RF (Random Forest), DNN (Deep Neural Network), and RNN (Recurrent Neural Network), were employed for solar power prediction and their performances were evaluated based on predicted values utilizing observed meteorological data (used as a reference), 1-day-ahead forecast data (referred to as fore1), and 2-day-ahead forecast data (fore2). DNN-based prediction model exhibits superior performance in both regions, with RNN performing the least effectively. However, MLR and RF demonstrate competitive performance comparable to DNN. The disparities in the performance of the four different models are less pronounced than anticipated, underscoring the pivotal role of fitting models using residuals. This emphasizes that the utilized preprocessing approach, specifically leveraging residuals, is poised to play a crucial role in the future of solar power generation forecasting.

고고도 장기체공무인기 운영고도에서 해양 총가강수량 추정 (Estimation of Oceanic Total Precipitable Water from HALE UAV)

  • 조영준;장현성;하종철;최규용;김기훈;임은하;윤종환;이재일;성지인
    • 대기
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    • 제27권3호
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    • pp.359-370
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    • 2017
  • In this study, the oceanic Total Precipitable Water (TPW) retrieval algorithm at 16 km altitude of High Altitude Long Endurance Unmanned Aerial Vehicle (HALE UAV) is described. Empirical equation based on Wentz method (1995) that uses the 18.7 and 22.235 GHz channels is developed using the simulated brightness temperature and SeeBor training dataset. To do radiative simulation, Satellite Data Simulator Unit (SDSU) Radiative Transfer Model (RTM) is used. The data of 60% (523) and 40% (349) in the SeeBor training dataset are used to develop and validate the TPW retrieval algorithm, respectively. The range of coefficients for the TPW retrieval at the altitude of 3~18 km with 3 km interval were 153.69~199.87 (${\alpha}$), 54.330~58.468 (${\beta}$), and 84.519~93.484 (${\gamma}$). The bias and RMSE at each altitude were found to be about $-0.81kg\;m^{-2}$ and $2.17kg\;m^{-2}$, respectively. Correlation coefficients were more than 0.9. Radiosonde observation has been generally operated over land. To validate the accuracy of the oceanic TPW retrieval algorithm, observation data from the Korea Meteorological Administration (KMA) Gisang 1 research vessel about six clear sky cases representing spring, autumn, and summer season is used. Difference between retrieved and observed TPW at 16 km altitude were in the range of $0.53{\sim}1.87kg\;m^{-2}$, which is reasonable for most applications. Difference in TPW between retrieval and observation at each altitude (3~15 km) is also presented. Differences of TPW at altitudes more than 6 km were $0.3{\sim}1.9kg\;m^{-2}$. Retrieved TPW at 3 km altitude was smaller than upper level with a difference of $-0.25{\sim}0.75kg\;m^{-2}$ compared to the observed TPW.

ICE-POP 2018 기간 드롭존데 자료를 활용한 강설 구름의 열역학적 특성 (Thermodynamic Characteristics of Snowfall Clouds using Dropsonde Data During ICE-POP 2018)

  • 정승필;이철규;김지형;양효진;윤종환;고희종;홍성은;김승범
    • 대기
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    • 제30권1호
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    • pp.31-46
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    • 2020
  • The aircraft observation campaign was performed to investigate thermodynamic conditions of snowfall cloud over the East Sea of Korean peninsula from 2 February to 16 March 2018. During this period, four snowfall events occurred in the Yeongdong region and three cases were analyzed using dropsonde data. Snowfall cases were associated with the passage of southern low-pressure (maritime warm air mass) and expansion of northern high-pressure (continental polar air mass). Case 1 and Case 2a were related to low-pressure systems, and Case 2b and Case 3 were connected with high-pressure systems, respectively. And their thermodynamic properties and horizontal distribution of snowfall cloud were differed according to the influence of the synoptic condition. In Case 1 and Case 2a, atmospheric layers between sea surface and 350 hPa contained moisture more than 15 mm of TPW with multiple inversion layers detected by dropsonde data, while the vertical atmosphere of Case 2b and Case 3 were dry as TPW 5 mm or less with a single inversion inversion layer around 750~850 hPa. However, the vertical distributions of equivalent potential temperature (θe) were similar as moist-adiabatically neutral condition regardless of the case. But, their values below 900 hPa were about 10 K higher in Case 1 and Case 2a (285~290 K) than in Case 2b and Case 3 (275~280 K). The difference in these values is related to the characteristics of the incoming air mass and the location of the snowfall cloud.

기온 데이터를 반영한 전력수요 예측 딥러닝 모델 (Electric Power Demand Prediction Using Deep Learning Model with Temperature Data)

  • 윤협상;정석봉
    • 정보처리학회논문지:소프트웨어 및 데이터공학
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    • 제11권7호
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    • pp.307-314
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    • 2022
  • 최근 전력수요를 예측하기 위해 통계기반 시계열 분석 기법을 대체하기 위해 딥러닝 기법을 활용한 연구가 활발히 진행되고 있다. 딥러닝 기반 전력수요 예측 연구 결과를 분석한 결과, LSTM 기반 예측 모델의 성능이 우수한 것으로 규명되었으나 장기간의 지역 범위 전력수요 예측에 대해 LSTM 기반 모델의 성능이 충분하지 않음을 확인할 수 있다. 본 연구에서는 기온 데이터를 반영하여 24시간 이전에 전력수요를 예측하는 WaveNet 기반 딥러닝 모델을 개발하여, 실제 사용하고 있는 통계적 시계열 예측 기법의 정확도(MAPE 값 2%)보다 우수한 예측 성능을 달성하는 모델을 개발하고자 한다. 먼저 WaveNet의 핵심 구조인 팽창인과 1차원 합성곱 신경망 구조를 소개하고, 전력수요와 기온 데이터를 입력값으로 모델에 주입하기 위한 데이터 전처리 과정을 제시한다. 다음으로, 개선된 WaveNet 모델을 학습하고 검증하는 방법을 제시한다. 성능 비교 결과, WaveNet 기반 모델에 기온 데이터를 반영한 방법은 전체 검증데이터에 대해 MAPE 값 1.33%를 달성하였고, 동일한 구조의 모델에서 기온 데이터를 반영하지 않는 것(MAPE 값 2.31%)보다 우수한 전력수요 예측 결과를 나타내고 있음을 확인할 수 있다.

기상청 국지기상예측시스템을 이용한 서울의 도시열섬강도 예측 평가 (Evaluation of the Urban Heat Island Intensity in Seoul Predicted from KMA Local Analysis and Prediction System)

  • 변재영;홍선옥;박영산;김연희
    • 한국지구과학회지
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    • 제42권2호
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    • pp.135-148
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    • 2021
  • 본 연구는 기상청 현업모델(LDAPS)로부터 예측된 서울의 도시열섬 강도와 지상 기온을 AWS 관측과 비교 평가하였다. 관측된 서울의 열섬 강도는 봄과 겨울동안 증가하며 여름동안 감소한다. 열섬 강도의 시간적 변동 경향은 새벽 시간 최대, 오후에 최소를 보인다. 기상청 국지기상예측시스템(LDAPS)으로부터 예측된 열섬 강도는 여름철 과대모의, 겨울철 과소모의 특징을 보인다. 특히 여름철은 주간에 과대 모의 경향이 증가하며, 겨울은 새벽 시간 과소 모의 오차가 크게 나타난다. LDAPS에서 예측된 지면 기온의 오차는 여름철 감소하며 겨울철 증가한다. 겨울철 열섬 강도의 과소 모의는 도시 기온의 과소 모의와 관련되었으며, 여름철 열섬 강도의 과대 모의는 교외 지역 기온의 과소 모의로부터 기인하는것으로 판단된다. 도시 열섬강도 예측성 개선을 위하여 도시효과를 고려하는 도시캐노피모델을 LDAPS와 결합하여 2017년 여름 기간동안 모의하였다. 도시캐노피모델 적용 후 도시의 지면 기온의 오차는 개선되었다. 특히 오전시간 과소모의되는 기온의 오차 개선 효과가 뚜렷하였다. 도시캐노피모델은 여름동안 과대 모의하는 도시열섬강도를 약화시키는 개선 효과를 보였다.

2012년 겨울철 특별관측자료를 이용한 강수현상 시 대기 연직구조와 민감도 실험 (Vertical Atmospheric Structure and Sensitivity Experiments of Precipitation Events Using Winter Intensive Observation Data in 2012)

  • 이상민;심재관;황윤정;김연희;하종철;이용희;정관영
    • 대기
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    • 제23권2호
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    • pp.187-204
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    • 2013
  • This study analyzed the synoptic distribution and vertical structure about four cases of precipitation occurrences using NCEP/NCAR reanalysis data and upper level data of winter intensive observation to be performed by National Institute of Meteorological Research at Bukgangneung, Incheon, Boseong during 63days from 4 JAN to 6 MAR in 2012, and Observing System Experiment (OSE) using 3DVAR-WRF system was conducted to examine the precipitation predictability of upper level data at western and southern coastal regions. The synoptic characteristics of selected precipitation occurrences were investigated as causes for 1) rainfall events with effect of moisture convergence owing to low pressure passing through south sea on 19 JAN, 2) snowfall events due to moisture inflowing from yellow sea with propagation of Siberian high pressure after low pressure passage over middle northern region on 31 JAN, 3) rainfall event with effect of weak pressure trough in west low and east high pressure system on 25 FEB, 4) rainfall event due to moisture inflow according to low pressures over Bohai bay and south eastern sea on 5 MAR. However, it is identified that vertical structure of atmosphere had different characteristics with heavy rainfall system in summer. Firstly, depth of convection was narrow due to absence of moisture convergence and strong ascending air current in middle layer. Secondly, warm air advection by veering wind with height only existed in low layer. Thirdly, unstable layer was limited in the narrow depth due to low surface temperature although it formed, and also values of instability indices were not high. Fourthly, total water vapor amounts containing into atmosphere was small due to low temperature distribution so that precipitable water vapor could be little amounts. As result of OSE conducting with upper level data of Incheon and Boseong station, 12 hours accumulated precipitation distributions of control experiment and experiments with additional upper level data were similar with ones of observation data at 610 stations. Although Equitable Threat Scores (ETS) were different according to cases and thresholds, it was verified positive influence of upper level data for precipitation predictability as resulting with high improvement rates of 33.3% in experiment with upper level data of Incheon (INC_EXP), 85.7% in experiment with upper level data of Boseong (BOS_EXP), and 142.9% in experiment with upper level data of both Incheon and Boseong (INC_BOS_EXP) about accumulated precipitation more than 5 mm / 12 hours on 31 January 2012.

수도권과 지방권 수요예측모형을 통한 전국 도시가스수요전망의 예측력 향상 (Improving Forecast Accuracy of City Gas Demand in Korea by Aggregating the Forecasts from the Demand Models of Seoul Metropolitan and the Other Local Areas)

  • 이성로
    • 자원ㆍ환경경제연구
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    • 제26권4호
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    • pp.519-547
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    • 2017
  • 본 연구는 지역 단위 도시가스 수요예측모형을 이용하여 전국 도시가스수요예측의 정확도를 향상할 수 있는지 여부를 살펴봤다. 지역별 수요예측모형을 구축하게 된 배경은 용도별 도시가스 수요의 행태가 분화되는 상황에서 자료의 제한으로 용도별 수요예측모형을 구축하기 어렵다는 것에 있다. 지역별 수요예측모형은 전국수요를 수도권과 지방으로 구분하여 별도의 예측모형을 구성하는 것으로, 시간변동계수를 갖는 공적분모형을 이용하였다. 지역모형에서 전국 도시가스수요예측은 지역별 수요전망치를 합산하여 산출하였다. 2013~2016년의 4년간 예측력 평가결과, 지역별 모형을 통한 전국 도시가스수요 예측이 전국단위 예측모형에 비하여 예측력이 전반적으로 우수한 것으로 나타났다. 지역모형에서는 수도권과 지방권 모형을 별도로 구축함으로써 해당 지역 수요의 특성을 반영한 예측모형이 가능했다. 수도권수요는 가정용수요 비중이 높아 기온에 보다 민감하게 반응하고, 전력수요와 경쟁관계가 있다. 이에 반해 지방권은 산업용수요 비중이 높아 전반적인 경기상황에 따른 수요변동이 크고, 수도권과 달리 벙커씨유와 LPG와 같은 산업용 연료와 대체관계를 보였다. 상기 결과는 성숙기에 접어든 도시가스산업에서 지역별 수요에 대한 세부적인 분석을 통해 전국 단위 수요예측의 정확도를 향상시킬 수 있다는 것을 보여주고, 이와 더불어 용도별 도시가수요 분석에도 유용한 정보를 제공할 것으로 기대한다.

WRF 모델에서 모의된 2005년 장마 기간 강수의 동조성 연구 (A Study on the Coherence of the Precipitation Simulated by the WRF Model during a Changma Period in 2005)

  • 변재영;원혜영;조천호;최영진
    • 대기
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    • 제17권2호
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    • pp.115-123
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    • 2007
  • The present study uses the GOES IR brightness temperature to examine the temporal and spatial variability of cloud activity over the region $25^{\circ}N-45^{\circ}N$, $105^{\circ}E-135^{\circ}E$ and analyzes the coherence of eastern Asian summer season rainfall in Weather Research and Forecast (WRF) model. Time-longitude diagram of the time period from June to July 2005 shows a signal of eastward propagation in the WRF model and convective index derived from GOES IR data. The rain streaks in time-latitude diagram reveal coherence during the experiment period. Diurnal and synoptic scales are evident in the power spectrum of the time series of convective index and WRF rainfall. The diurnal cycle of early morning rainfall in the WRF model agrees with GOES IR data in the Korean Peninsula, but the afternoon convection observed by satellite observation in China is not consistent with the WRF rainfall which is represented at the dawn. Although there are errors in strength and timing of convection, the model predicts a coherent tendency of rainfall occurrence during summer season.