• 제목/요약/키워드: Forecast lead time

검색결과 94건 처리시간 0.024초

Satellite-based Drought Forecasting: Research Trends, Challenges, and Future Directions

  • Son, Bokyung;Im, Jungho;Park, Sumin;Lee, Jaese
    • 대한원격탐사학회지
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    • 제37권4호
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    • pp.815-831
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    • 2021
  • Drought forecasting is crucial to minimize the damage to food security and water resources caused by drought. Satellite-based drought research has been conducted since 1980s, which includes drought monitoring, assessment, and prediction. Unlike numerous studies on drought monitoring and assessment for the past few decades, satellite-based drought forecasting has gained popularity in recent years. For successful drought forecasting, it is necessary to carefully identify the relationships between drought factors and drought conditions by drought type and lead time. This paper aims to provide an overview of recent research trends and challenges for satellite-based drought forecasts focusing on lead times. Based on the recent literature survey during the past decade, the satellite-based drought forecasting studies were divided into three groups by lead time (i.e., short-term, sub-seasonal, and seasonal) and reviewed with the characteristics of the predictors (i.e., drought factors) and predictands (i.e., drought indices). Then, three major challenges-difficulty in model generalization, model resolution and feature selection, and saturation of forecasting skill improvement-were discussed, which led to provide several future research directions of satellite-based drought forecasting.

Monthly rainfall forecast of Bangladesh using autoregressive integrated moving average method

  • Mahmud, Ishtiak;Bari, Sheikh Hefzul;Rahman, M. Tauhid Ur
    • Environmental Engineering Research
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    • 제22권2호
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    • pp.162-168
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    • 2017
  • Rainfall is one of the most important phenomena of the natural system. In Bangladesh, agriculture largely depends on the intensity and variability of rainfall. Therefore, an early indication of possible rainfall can help to solve several problems related to agriculture, climate change and natural hazards like flood and drought. Rainfall forecasting could play a significant role in the planning and management of water resource systems also. In this study, univariate Seasonal Autoregressive Integrated Moving Average (SARIMA) model was used to forecast monthly rainfall for twelve months lead-time for thirty rainfall stations of Bangladesh. The best SARIMA model was chosen based on the RMSE and normalized BIC criteria. A validation check for each station was performed on residual series. Residuals were found white noise at almost all stations. Besides, lack of fit test and normalized BIC confirms all the models were fitted satisfactorily. The predicted results from the selected models were compared with the observed data to determine prediction precision. We found that selected models predicted monthly rainfall with a reasonable accuracy. Therefore, year-long rainfall can be forecasted using these models.

Quantitative Flood Forecasting Using Remotely-Sensed Data and Neural Networks

  • Kim, Gwangseob
    • 한국수자원학회:학술대회논문집
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    • 한국수자원학회 2002년도 학술발표회 논문집(I)
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    • pp.43-50
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    • 2002
  • Accurate quantitative forecasting of rainfall for basins with a short response time is essential to predict streamflow and flash floods. Previously, neural networks were used to develop a Quantitative Precipitation Forecasting (QPF) model that highly improved forecasting skill at specific locations in Pennsylvania, using both Numerical Weather Prediction (NWP) output and rainfall and radiosonde data. The objective of this study was to improve an existing artificial neural network model and incorporate the evolving structure and frequency of intense weather systems in the mid-Atlantic region of the United States for improved flood forecasting. Besides using radiosonde and rainfall data, the model also used the satellite-derived characteristics of storm systems such as tropical cyclones, mesoscale convective complex systems and convective cloud clusters as input. The convective classification and tracking system (CCATS) was used to identify and quantify storm properties such as life time, area, eccentricity, and track. As in standard expert prediction systems, the fundamental structure of the neural network model was learned from the hydroclimatology of the relationships between weather system, rainfall production and streamflow response in the study area. The new Quantitative Flood Forecasting (QFF) model was applied to predict streamflow peaks with lead-times of 18 and 24 hours over a five year period in 4 watersheds on the leeward side of the Appalachian mountains in the mid-Atlantic region. Threat scores consistently above .6 and close to 0.8 ∼ 0.9 were obtained fur 18 hour lead-time forecasts, and skill scores of at least 4% and up to 6% were attained for the 24 hour lead-time forecasts. This work demonstrates that multisensor data cast into an expert information system such as neural networks, if built upon scientific understanding of regional hydrometeorology, can lead to significant gains in the forecast skill of extreme rainfall and associated floods. In particular, this study validates our hypothesis that accurate and extended flood forecast lead-times can be attained by taking into consideration the synoptic evolution of atmospheric conditions extracted from the analysis of large-area remotely sensed imagery While physically-based numerical weather prediction and river routing models cannot accurately depict complex natural non-linear processes, and thus have difficulty in simulating extreme events such as heavy rainfall and floods, data-driven approaches should be viewed as a strong alternative in operational hydrology. This is especially more pertinent at a time when the diversity of sensors in satellites and ground-based operational weather monitoring systems provide large volumes of data on a real-time basis.

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현업 국지모델기반 2018년 여름철 기상 1호 특별 고층관측자료의 관측 민감도 실험 (Observing Sensitivity Experiment Based on Convective Scale Model for Upper-air Observation Data on GISANG 1 (KMA Research Vessel) in Summer 2018)

  • 최다영;황윤정;이용희
    • 대기
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    • 제30권1호
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    • pp.17-30
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    • 2020
  • KMA performed the special observation program to provide information about severe weather and to monitor typhoon PRAPIROON using the ship which called the Gisang 1 from 29 June 2018 to 4 July 2018 (UTC). For this period, upper-air was observed 21 times with 6 hour intervals using rawinsonde in the Gisang 1. We investigated the impact of upper-air observation data from the Gisang 1 on the performance of the operational convective scale model (we called LDAPS). We conducted two experiments that used all observation data including upper-air observation data from the Gisang 1 (OPER) and without it (EXPR). For a typhoon PRAPIROON case, track forecast error of OPER was lower than EXPR until forecast 24 hours. The intensity forecast error of OPER for minimum sea level pressure was lower than EXPR until forecast 12 hours. The intensity forecast error of OPER for maximum wind speed was mostly lower than EXPR until forecast 30 hours. OPER showed good performance for typhoon forecast compared with EXPR at the early lead time. Two precipitation cases occurred in the south of the Korean peninsula due to the impact of Changma on 1 July and typhoon on 3 July. The location of main precipitation band predicted from OPER was closer to observations. As assimilating upper-air data observed in the Gisang 1 to model, it showed positive results in typhoon and precipitation cases.

원격상관 기후지수를 활용한 1개월 선행 댐유입량 예측 (One-month lead dam inflow forecast using climate indices based on tele-connection)

  • 조재필;정일원;김철겸;김태국
    • 한국수자원학회논문집
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    • 제49권5호
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    • pp.361-372
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    • 2016
  • 신뢰성 있는 댐유입량의 장기예측은 효율적인 댐운영에 필수적이다. 2000년대 이후 엘리뇨-남방진동(ENSO) 등의 전구기후지수와 지역수문기후와의 원격상관성이 규명되면서, 이를 활용한 미래의 수문조건을 예측하기 위한 연구가 활발히 시도되고 있다. 본 연구에서는 안동댐유역을 대상으로 미국 NOAA에서 제공하는 40개 전구기후지수의 원격상관을 분석하고, 이를 기반으로 1개월 선행 댐유입량의 예측성능 및 활용성을 평가하였다. 본 연구에서는 1) 원격상관을 통해 강수와 기온을 예측하고 SWAT 모델을 이용하여 예측 댐유입량을 산정하는 방법(SWAT-Forecasted), 직접 댐유입량을 예측하는 기법(CIR-Forecasted), 예측시점의 관측값이 과거자료에서 해당하는 순위(rank)에 근거한 방법(Rank-Observed)을 비교하였다. 결과적으로 통계적 방법으로 댐유입량을 직접 예측하는 접근 방식(CIR-Forecasted)이 12월을 제외하고는 다른 방법에 비해 우수한 예측성을 보였다. 이것은 강수량 및 기온 예측정보를 일단위로 상세화하는 가정과 유출모델링과정에서 발생하는 불확실성이 예측결과에 포함되지 않기 때문인 것으로 판단된다. 본 연구결과는 원격상관기반의 1개월 선행 댐유입량 예측이 안동댐 운영에 유용한 정보를 제공할 수 있는 것을 시사하였다.

낙동강유역 하천유량 예측모형 구축 (Streamflow Forecast Model on Nakdong River Basin)

  • 이병주;배덕효
    • 한국수자원학회논문집
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    • 제44권11호
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    • pp.853-861
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    • 2011
  • 본 연구는 연속형 강우-유출모형과 관측유량 자료동화기법으로 앙상블 칼만필터 기법을 연계한 SURF 모형을 낙동강유역에 적용하여 하천유량예측의 적용성을 평가하고자 하는데 그 목적이 있다. 낙동강유역을 43개 소유역으로 구분하고 2006년과 2007년의 홍수기간 동안 12개 평가지점에 대해 유출모의를 수행하였다. 관측유량 자료동화 효과로 인해 예측유량의 정확도가 향상되며 1~5시간의 예측선행시간별 유효성지수를 분석한 결과 자료동화로 인해 46.2~30.1%의 모의유량의 정확도가 개선되는 것으로 나타났다. 또한 관측강우의 50%를 적용하여 자료동화 전 후의 모의 첨두유량에 대한 평균정상절대오차를 비교하였으며 자료동화로 인해 40% 이상의 정확도가 향상됨을 확인하였다. 이상의 결과로부터 SURF 모형은 낙동강유역의 실시간 하천유량예측에 활용될 수 있을 것으로 판단된다.

한-일 단기 수치예보자료를 이용한 강우 및 홍수 예측 성능 비교 (Performance comparison of rainfall and flood forecasts using short-term numerical weather prediction data from Korea and Japan)

  • 유완식;윤성심;최미경;정관수
    • 한국수자원학회논문집
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    • 제50권8호
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    • pp.537-549
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    • 2017
  • 본 연구에서는 기상청에서 제공하는 국지예보모델(LDAPS)과 일본 기상청의 중규모모델(Meso-Scale Model, MSM)을 이용하여 태풍 및 정체전선 등 3개의 강우사상과 남강댐 유역 내 산청 유역에 대해 강우 및 홍수 예측 정확도를 평가하고 비교 검토하였다. 강우예측 정확도 평가 결과, LDAPS와 MSM 모두 태풍 사상과 같은 광역적인 예측에 대해서는 예측 정확도가 높은 것으로 나타났으나, 정체전선과 같이 국지적으로 발생하는 강우사상의 경우 예측 오차가 많이 발생하는 것으로 나타났다. 홍수예측 정확도 평가 결과, 선행시간이 증가함에 따라 점점 예측 정확도가 향상되는 것을 확인할 수 있었으며, LDAPS와 MSM 모두 기상 및 수자원간의 연계를 통하여 강우 및 홍수 예측 분야에서의 활용 가능성을 확인할 수 있었다.

평판 디스플레이 제조 라인의 반복 프로세스 성능 평가를 위한 시뮬레이션 시스템 개발 (Development of Simulation System for Evaluating Performance of the Flat Display Manufacturing Line with Repetitive Process)

  • 이경근;최성길;류시욱
    • 한국정보시스템학회지:정보시스템연구
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    • 제17권4호
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    • pp.301-319
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    • 2008
  • The display market has been replaced by the FPD (Flat Panel Display) from the CRT (Cathode-Ray Tube) since the late 1990s. In the FPD production line, the most equipment has high price. Thus, when the equipment has multi-function, the repetitive process is arranged for the equipment. However, such disposition of equipment results in more complicated process flow owing to repetitive operations. This reduces the production capacity and increases lead-time in turn. In this paper, we develop an AutoMod simulation system that derives to information about the quantity, production lead-time, utilities of facilities, and occupation rates of racks. In this simulation system, we consider the situation where the equipment might be broken and suspended randomly. For the developed system, we first evaluate a production plan with current layout and then, propose a revised alternative plan. Using the same simulation scheme, we investigate comparing the production quantity and lead-time with the two plans. In addition, for a proposed alternative, we try to forecast the most adequate rule between the two job dispatching rules which are FOR (Fewest Operation Remaining) and FCFS (First Come First Serve) through simulation.

해양플랜트 의장품 조달관리를 위한 배관 공정 리드타임 예측 모델에 관한 연구 (A Study of Piping Leadtime Forecast in Offshore Plant’s Outfittings Procurement Management)

  • 함동균;백명기;박중구;우종훈
    • 대한조선학회논문집
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    • 제53권1호
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    • pp.29-36
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    • 2016
  • In shipbuilding and offshore plant construction, pipe-stools of various types are installed. Moreover, these are many quantities but they must be installed in a successive manner. Due to these characteristics the pipe-stool installation processes easily tends to cause the schedule delays in the overall production processes. In order to reduce delay, the goal of this study is to predicts production’s lead time before manufacturing. Through this predictions it’s expected to reduce total production’s lead time by improving it's process. First of all, we made MLR(Multiple Linear Regression) and PLSR(Partial Least Square Regression) model to predict pipe-spool's lead time and then compared predictability of MLR and PLSR model. If a explanatory variable is added, it will be possible to predict results precisely.

신경망 모델을 이용한 적도 태평양 표층 수온 예측 (Forecasting the Sea Surface Temperature in the Tropical Pacific by Neural Network Model)

  • 장유순;이다운;서장원;윤용훈
    • 한국지구과학회지
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    • 제26권3호
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    • pp.268-275
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    • 2005
  • 대표적인 엘니뇨 지수인 태평양 Nino 해역의 표층 수온을 예측하기 위해 비선형 통계모델 중의 하나인 신경망 기법을 적용하였다. 신경망 모델 학습 과정의 입력 자료로 1951년부터 1993년까지의 태평양 해역$(120^{\circ}\;E,\;20^{\circ}\;S-20^{\circ}\;N)$ NCEP/NCAR의 재분석 표층 수온 편차의 경험적 직교함수 7개 주모드를 사용하였고, 그 중 1994년부터 2003년까지의 10년 결과를 분석하였다. 모든 해역에서의 9개월까지의 신경망 모델의 예측력은 비교적 우수하였으며, 특히 1997년과 1998년의 강한 엘니뇨의 발달 및 소멸도 잘 예측함을 확인할 수 있었다. 해역별로는 Nino3 지역의 예측성능이 가장 높았으며, 9개월 이후부터는 그 예측력이 급격히 감소하였다. 한편 지역적인 영향이 커 예측력이 낮은 동태평양 연안의 Nino1+2 지역은 9개월 이후에도 예측력의 감소가 관찰되지 않았다.