• 제목/요약/키워드: Meteorological Prediction Data

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2020년 2월 8일 영동지역 강설 사례 시 관측과 수치모의 된 바람 분석 (An Analysis of Observed and Simulated Wind in the Snowfall Event in Yeongdong Region on 8 February 2020)

  • 김해민;남형구;김백조;지준범
    • 대기
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    • 제31권4호
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    • pp.433-443
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    • 2021
  • The wind speed and wind direction in Yeongdong are one of the crucial meteorological factors for forecasting snowfall in this area. To improve the snowfall forecast in Yeongdong region, Yeongdong Extreme Snowfall-Windstorm Experiment, YES-WEX was designed. We examined the wind field variation simulated with Local Data Assimilation and Prediction System (LDAPS) using observed wind field during YES-WEX period. The simulated wind speed was overestimated over the East Sea and especially 2 to 4 times in the coastal line. The vertical wind in Yeongdong region, which is a crucial factor in the snowfall forecast, was not well simulated at the low level (850 hPa~1000 hPa) until 12 hours before the forecast. The snowfall distribution was also not accurately simulated. Three hours after the snowfall on the East Sea coast was observed, the snowfall was simulated. To improve the forecast accuracy of snowfall in Yeongdong region, it is important to understand the weather conditions using the observed and simulated data. In the future, data in the northern part of the East Sea and the mountain slope of Taebaek observed from the meteorological aircraft, ship, and drone would help in understanding the snowfall phenomenon and improving forecasts.

기상 데이터와 대기 환경 데이터 기반 (초)미세먼지 분석과 예측 (Analysis and Prediction of (Ultra) Air Pollution based on Meteorological Data and Atmospheric Environment Data)

  • 박홍진
    • 한국정보전자통신기술학회논문지
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    • 제14권4호
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    • pp.328-337
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    • 2021
  • 석면, 벤젠과 같이 발암물질 1급인 미세먼지는 각종 질병에 원인이 되고 있다. 초 미세먼지 확산은 코로나 바이러스 확산의 중요한 원인중 하나이다. 본 논문은 2015년부터 2019년까지 서울시 평균 기온, 강수량, 평균 풍속등의 기상 데이터와 SO2, NO2, O3,등의 대기 환경 데이터를 기반으로 미세먼지와 초 미세먼지를 분석하고 예측한다. 계절별과 월별로 미세먼지와 초미세먼지 현황을 파악·분석하며 미세먼지를 예측하기 위해 기계학습 모델 중 선형회귀, SVM, 앙상블 모델을 이용하여 비교 분석하였다. 또한 미세먼지와 초 미세먼지 발생에 영향을 미치는 중요한 피쳐(속성)를 파악한다. 본 논문이 파악한 결과 3월에 가장 (초)미세먼지가 높았고, 8월에서 9월까지 (초)미세먼지가 가장 낮았다. 기상 데이터일 경우 (초)미세먼지에 가장 영향을 미치는 데이터가 평균 기온이며, 기상 데이터와 대기 환경 데이터일 경우 NO2가 (초)미세먼지 발생에 가장 크게 작용하였다.

다변량 통계분석을 이용한 서울시 고농도 오존의 예측에 관한 연구 (Prediction of High Level Ozone Concentration in Seoul by Using Multivariate Statistical Analyses)

  • 허정숙;김동술
    • 한국대기환경학회지
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    • 제9권3호
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    • pp.207-215
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    • 1993
  • In order to statistically predict $O_3$ levels in Seoul, the study used the TMS (telemeted air monitoring system) data from the Department of Environment, which have monitored at 20 sites in 1989 and 1990. Each data in each site was characterized by 6 major criteria pollutants ($SO_2, TSP, CO, NO_2, THC, and O_3$) and 2 meteorological parameters, such as wind speed and wind direction. To select proper variables and to determine each pollutant's behavior, univariate statistical analyses were extensively studied in the beginning, and then various applied statistical techniques like cluster analysis, regression analysis, and expert system have been intensively examined. For the initial study of high level $O_3$ prediction, the raw data set in each site was separated into 2 group based on 60 ppb $O_3$ level. A hierarchical cluster analysis was applied to classify the group based on 60 ppb $O_3$ into small calsses. Each class in each site has its own pattern. Next, multiple regression for each class was repeatedly applied to determine an $O_3$ prediction submodel and to determine outliers in each class based on a certain level of standardized redisual. Thus, a prediction submodel for each homogeneous class could be obtained. The study was extended to model $O_3$ prediction for both on-time basis and 1-hr after basis. Finally, an expect system was used to build a unified classification rule based on examples of the homogenous classes for all of sites. Thus, a concept of high level $O_3$ prediction model was developed for one of $O_3$ alert systems.

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데이터를 활용한 태양광 발전 시스템 모듈온도 및 발전량 예측 (Prediction of module temperature and photovoltaic electricity generation by the data of Korea Meteorological Administration)

  • 김용민;문승재
    • 플랜트 저널
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    • 제17권4호
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    • pp.41-52
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    • 2021
  • 본 연구에서는 태양광발전 출력 및 모듈온도 값을 기상청 데이터를 이용하여 예측해보고 실측 데이터와 날씨, 일사량, 주변온도, 풍속별로 비교 분석해보았다. 날씨별 예측정확도는 눈이 오거나, 새벽에 해무가 끼는 날의 데이터를 가장 많이 보유한 맑은날의 데이터의 예측정확도가 가장 낮았다. 일사량에 따른 모듈온도와 발전량의 예측정확도는 일사량이 커질수록 정확도가 떨어졌으며, 주변 온도에 따른 예측정확도는 모듈온도는 주변 온도가 커질수록, 발전량은 주변온도가 낮을수록 예측정확도가 떨어졌다. 풍속은 모듈온도와 발전량 모두 풍속이 높아질수록 예측정확도가 감소하였지만, 풍속이 영향 다른 기상조건에 의한 영향보다 미미하여 그 상관관계를 정의하기가 어려웠다.

기상 자료 미계측 지점의 강우 예보 모형 (A Rainfall Forecasting Model for the Ungaged Point of Meteorological Data)

  • 이재형;전일권
    • 대한토목학회논문집
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    • 제14권2호
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    • pp.307-316
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    • 1994
  • 기상 자료 미계측 지점의 단기 강우 예보 모형을 개발하였다. 본 연구 모형은 강우 모의 모형, 기상학적 동질성, 그리고 기상 변수 예측 및 추정에 관한 몇 가지 가정을 전제로 하였으며 강우의 예보에는 칼만 필터 기법을 사용하였다. 기존 모형의 방정식은 수운적 크기 분포(HSD)가 강우 강도에 종속이므로 강우량에 대하여 비선형이다. 본 연구 모형의 방정식은 HSD를 구름층 저류량의 함수로 구성함으로써 강우량에 대하여 비선형이다. 본 연구 모형의 방정식은 HSD를 구름층 저류량의 함수로 구성함으로써 강우량에 대하여 선형화되었다. 또한 기상 입력 변수는 경험 모형에 의하여 예측되었다. 본 연구 모형을 대청댐 유형의 호우 사상에 적용하였다. 그 결과 예보 및 실측 강우 강도간의 평균 자승 오차는 0.30~1.01 mm/hr이었다. 이 결과로 미루어 볼 때, 본 연구 모형에 수반된 가정은 합리적이며 본 연구 모형은 기상 자료 미계측 지점에서 강우를 단기 예보하는데 유용하다고 판단된다.

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동해안의 복잡지형에서 기상장 개선에 따른 CALPUFF 모델의 평가 (Evaluation of the CALPUFF Model Using Improved Meteorological Fields in Complex Terrain of East Sea Coast)

  • 이종범;김재철
    • 한국대기환경학회지
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    • 제25권1호
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    • pp.15-25
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    • 2009
  • Donghae city is one of the most representative cement industrial city in Korea. The area is faced with the East Sea to the East and with high montane region of Tae-Back mountain range to the West. Many pollutant sources of air pollution are located near the coast, but the largest point sources of the region are located at the bottom of the mountain area in Donghae city. The local wind is highly affected by local topography and plays an important role in transport and dispersion of contaminants from the pollution sources. This study was designed to evaluate enhancement of MM5 predictions by using Four Dimensional Data Assimilation (FDDA), the SONDE data and the national meteorological station, data only. The alternative meteorological fields predicted with and without FDDA were used to simulate spatial and temporal variations of NOx in combined with Atmospheric Dispersion Models (CALPUFF). For the modeling domain, the alternative meteorological fields with 1.1 km spatial resolution were interpolated to the CALMET with 0.5 km resolution. The vertical layers set to have 35 and 12 layers for MM5 and CALPUFF, respectively. MM5 with the FDDA did not resulted in significant improvement of meteorological field prediction in Donghae region, which is primarily because of complex geography and wind scheme. The result of CALPUFF, however, showed reduction of uncertainty errors by using the interpolation scheme of the actual measurement data.

미래 기상정보를 사용하지 않는 LSTM 기반의 피크시간 태양광 발전량 예측 기법 (A LSTM Based Method for Photovoltaic Power Prediction in Peak Times Without Future Meteorological Information)

  • 이동훈;김관호
    • 한국전자거래학회지
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    • 제24권4호
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    • pp.119-133
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    • 2019
  • 최근 태양광 발전량 예측은 태양광 발전량 설비 시스템의 안정적인 작동을 위한 조정 계획, 설비 규격 결정 및 생산 계획 일정을 수립하기 위해 필수적인 요소로 고려된다. 특히, 대부분의 태양광 발전량은 피크시간에 측정되기 때문에, 태양광 시스템 운영자의 이익 최대화와 전력 계통량 안정화를 위해 피크시간의 태양광 발전량 예측은 매우 중요한 요소이다. 또한, 기존 연구들은 광범위한 지역에서 예측된 불확실한 기후 정보들을 이용하여 태양광 발전량을 예측하는 한계점 때문에 일사량, 운량, 온도 등과 기상정보 없이 피크시간의 태양광 발전량을 예측하는 것은 매우 어려운 문제로 고려된다. 따라서 본 논문에서는 피크이전의 기후, 계절 및 관측된 태양광 발전량을 이용하여 미래의 기후 및 계절 정보 없이 피크시간의 태양광 발전량을 예측할 수 있는 LSTM(Long-Shot Term Memory) 기반의 태양광 발전량 예측 기법을 제안한다. 본 연구에서 제안한 모델을 기반으로 실 데이터를 통한 실험 결과, 단기 및 장기적 관점에서 높은 성능을 보였으며, 이는 본 연구에서 목표로 한 피크시간의 태양광 발전량 예측 성능 향상에 긍정적인 영향을 나타내었음을 보여준다.

한반도 참나무 꽃가루 확산예측모델 개발 (Development of a Oak Pollen Emission and Transport Modeling Framework in South Korea)

  • 임윤규;김규랑;조창범;김미진;최호성;한매자;오인보;김백조
    • 대기
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    • 제25권2호
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    • pp.221-233
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    • 2015
  • Pollen is closely related to health issues such as allergenic rhinitis and asthma as well as intensifying atopic syndrome. Information on current and future spatio-temporal distribution of allergenic pollen is needed to address such issues. In this study, the Community Multiscale Air Quality Modeling (CMAQ) was utilized as a base modeling system to forecast pollen dispersal from oak trees. Pollen emission is one of the most important parts in the dispersal modeling system. Areal emission factor was determined from gridded areal fraction of oak trees, which was produced by the analysis of the tree type maps (1:5000) obtained from the Korea Forest Service. Daily total pollen production was estimated by a robust multiple regression model of weather conditions and pollen concentration. Hourly emission factor was determined from wind speed and friction velocity. Hourly pollen emission was then calculated by multiplying areal emission factor, daily total pollen production, and hourly emission factor. Forecast data from the KMA UM LDAPS (Korea Meteorological Administration Unified Model Local Data Assimilation and Prediction System) was utilized as input. For the verification of the model, daily observed pollen concentration from 12 sites in Korea during the pollen season of 2014. Although the model showed a tendency of over-estimation in terms of the seasonal and daily mean concentrations, overall concentration was similar to the observation. Comparison at the hourly output showed distinctive delay of the peak hours by the model at the 'Pocheon' site. It was speculated that the constant release of hourly number of pollen in the modeling framework caused the delay.

중규모 수치 모델 자료를 이용한 2007년 여름철 한반도 인지온도 예보와 검증 (Forecast and verification of perceived temperature using a mesoscale model over the Korean Peninsula during 2007 summer)

  • 변재영;김지영;최병철;최영진
    • 대기
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    • 제18권3호
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    • pp.237-248
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    • 2008
  • A thermal index which considers metabolic heat generation of human body is proposed for operational forecasting. The new thermal index, Perceived Temperature (PT), is forecasted using Weather Research and Forecasting (WRF) mesoscale model and validated. Forecasted PT shows the characteristics of diurnal variation and topographic and latitudinal effect. Statistical skill scores such as correlation, bias, and RMSE are employed for objective verification of PT and input meteorological variables which are used for calculating PT. Verification result indicates that the accuracy of air temperature and wind forecast is higher in the initial forecast time, while relative humidity is improved as the forecast time increases. The forecasted PT during 2007 summer is lower than PT calculated by observation data. The predicted PT has a minimum Root-Mean-Square-Error (RMSE) of $7-8^{\circ}C$ at 9-18 hour forecast. Spatial distribution of PT shows that it is overestimated in western region, while PT in middle-eastern region is underestimated due to strong wind and low temperature forecast. Underestimation of wind speed and overestimation of relative humidity have caused higher PT than observation in southern region. The predicted PT from the mesoscale model gives appropriate information as a thermal index forecast. This study suggests that forecasted PT is applicable to the prediction of health warning based on the relationship between PT and mortality.

인공신경망 모형을 이용한 울산공단지역 일 최고 SO2 농도 예측 (Prediction of Daily Maximum SO2 Concentrations Using Artificial Neural Networks in the Urban-industrial Area of Ulsan)

  • 이소영;김유근;오인보;김정규
    • 한국환경과학회지
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    • 제18권2호
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    • pp.129-139
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    • 2009
  • Development of an artificial neural network model was presented to predict the daily maximum $SO_2$ concentration in the urban-industrial area of Ulsan. The network model was trained during April through September for 2000-2005 using $SO_2$ potential parameters estimated from meteorological and air quality data which are closely related to daily maximum $SO_2$ concentrations. Meteorological data were obtained from regional modeling results, upper air soundings and surface field measurements and were then used to create the $SO_2$ potential parameters such as synoptic conditions, mixing heights, atmospheric stabilities, and surface conditions. In particular, two-stage clustering techniques were used to identify potential index representing major synoptic conditions associated with high $SO_2$ concentration. Two neural network models were developed and tested in different conditions for prediction: the first model was set up to predict daily maximum $SO_2$ at 5 PM on the previous day, and the second was 10 AM for a given forecast day using an additional potential factors related with urban emissions in the early morning. The results showed that the developed models can predict the daily maximum $SO_2$ concentrations with good simulation accuracy of 87% and 96% for the first and second model. respectively, but the limitation of predictive capability was found at a higher or lower concentrations. The increased accuracy for the second model demonstrates that improvements can be made by utilizing more recent air quality data for initialization of the model.