• 제목/요약/키워드: Water Level Forecast

검색결과 90건 처리시간 0.026초

수치 예보를 이용한 구름 예보 (Cloud Forecast using Numerical Weather Prediction)

  • 김영철
    • 한국항공운항학회지
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    • 제15권3호
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    • pp.57-62
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    • 2007
  • In this paper, we attempted to produce the cloud forecast that use the numerical weather prediction(NWP) MM5 for objective cloud forecast. We presented two methods for cloud forecast. One of them used total cloud mixing ratio registered to sum(synthesis) of cloud-water and cloud-ice grain mixing ratio those are variables related to cloud among NWP result data and the other method that used relative humidity. An experiment was carried out period from 23th to 24th July 2004. According to the sequence of comparing the derived cloud forecast data with the observed value, it was indicated that both of those have a practical use possibility as cloud forecast method. Specially in this Case study, cloud forecast method that use total cloud mixing ratio indicated good forecast availability to forecast of the low level clouds as well as middle and high level clouds.

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Error Forecasting Using Linear Regression Model

  • Ler, Lian Guey;Kim, Byung-Sik;Choi, Gye-Woon;Kang, Byung-Hwa;Kwang, Jung-Jae
    • 한국습지학회지
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    • 제13권1호
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    • pp.13-23
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    • 2011
  • In this study, Mike11 will be used as the numerical model where a data assimilation method will be applied to it. This paper aims to gain an insight and understanding of data assimilation in flood forecasting models. It will start with a general discussion of data assimilation, followed by a description of the methodology and discussion of the statistical error forecast model used, which in this case is the linear regression. This error forecast model is applied to the water level forecast simulated by MIKE11 to produced improved forecast and validated against real measurements. It is found that there exists a phase error in the improved forecasts. Hence, 2 general formula are used to account for this phase error and they have shown improvement to the accuracy of the forecasts, where one improved the immediate forecast of up to 5 hours while the other improved the estimation of the peak discharge.

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.

Recurrent Neural Network with Multiple Hidden Layers for Water Level Forecasting near UNESCO World Heritage Site "Hahoe Village"

  • Oh, Sang-Hoon
    • International Journal of Contents
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    • 제14권4호
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    • pp.57-64
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    • 2018
  • Among many UNESCO world heritage sites in Korea, "Historic Village: Hahoe" is adjacent to Nakdong River and it is imperative to monitor the water level near the village in a bid to forecast floods and prevent disasters resulting from floods.. In this paper, we propose a recurrent neural network with multiple hidden layers to predict the water level near the village. For training purposes on the proposed model, we adopt the sixth-order error function to improve learning for rare events as well as to prevent overspecialization to abundant events. Multiple hidden layers with recurrent and crosstalk links are helpful in acquiring the time dynamics of the relationship between rainfalls and water levels. In addition, we chose hidden nodes with linear rectifier activation functions for training on multiple hidden layers. Through simulations, we verified that the proposed model precisely predicts the water level with high peaks during the rainy season and attains better performance than the conventional multi-layer perceptron.

GloSea5 장기예측 강수량과 K-DRUM 강우-유출모형을 활용한 물관리 의사결정지원시스템 개발 (Development of decision support system for water resources management using GloSea5 long-term rainfall forecasts and K-DRUM rainfall-runoff model)

  • 송정현;조영현;김일석;이종혁
    • 한국위성정보통신학회논문지
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    • 제12권3호
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    • pp.22-34
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    • 2017
  • K-water의 분포형 강우-유출모형인 K-DRUM(K-water hydrologic & hydraulic Distributed RUnoff Model)은 단기예측 강수자료를 통해 댐의 예측 유출량 및 수위를 산출하는 모형으로, 장기적인 수문기상정보를 획득하기 위해서는 장기예측 강수자료를 입력자료로 사용할 필요가 있다. 본 연구에서는 2014년 국내에 도입된 기상청의 계절예측시스템인 GloSea5(Global Seasonal Forecast System version 5) 예측 강수량 앙상블을 K-DRUM의 입력자료로 사용하는 프로그램을 개발하였으며, 이를 통해 산출된 예측 유출량 앙상블 자료를 기반으로 댐 운영자에게 수문기상정보를 제공하는 웹 기반 확률장기예보 활용 물관리 의사결정지원시스템을 함께 구축하였다. GloSea5의 예측 결과를 입력자료로 사용하기 위하여 대상 댐 유역에 대해 전처리 과정을 수행한 후 편의보정기법을 적용하여 예측 강수 앙상블 자료를 산출하였으며, 이를 K-DRUM에 입력하여 수행하여 예측 유출량을 산출하였다. 이 과정에서 편의보정된 강수량과 강우-유출모형에서 산정된 예측 유출량은 그래프와 테이블로 함께 표출할 수 있도록 하였다. 본 연구의 결과를 통해 시스템의 사용자는 예측 강수량과 유출량을 토대로 댐의 방류량을 조정함으로써 댐 수위 모의 운영을 수행할 수 있게 되어 장기적인 물관리 의사결정에 도움이 될 것으로 기대된다.

농업가뭄대응을 위한 가뭄기상시나리오 모델 개발 및 적용 (Developing Model of Drought Climate Scenarios for Agricultural Drought Mitigation)

  • 유승환;최진용;남원호;김태곤;고광돈
    • 한국농공학회논문집
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    • 제54권2호
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    • pp.67-75
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    • 2012
  • Different from other natural hazards including floods, drought advances slowly and spreads widely, so that the preparedness is quite important and effective to mitigate the impacts from drought. Evaluation and forecast the status of drought for the present and future utilizing the meteorological scenario for agricultural drought can be useful to set a plan for agricultural drought mitigation in agriculture water resource management. In this study, drought climate scenario model on the basis of historical drought records for preparing agricultural drought mitigation was developed. To consider dependency and correlation between various climate variables, this model was utilized the historical climate pattern using reference year setting of four drought levels. The reference year for drought level was determined based on the frequency analysis result of monthly effective rainfall. On the basis of this model, drought climate scenarios at Suwon and Icheon station were set up and these scenarios were applied on the water balance simulation of reservoir water storage for Madun reservoir as well as the soil moisture model for Gosam reservoir watershed. The results showed that drought climate scenarios in this study could be more useful for long-term forecast of longer than 2~3 months period rather than short-term forecast of below one month.

청계천 실시간 홍수예보를 위한 Flow Nomograph 개발 및 평가 (Development and Assessment of Flow Nomograph for the Real-time Flood Forecasting in Cheonggye Stream)

  • 배덕효;심재범;윤성심
    • 한국수자원학회논문집
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    • 제45권11호
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    • pp.1107-1119
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    • 2012
  • 본 연구의 목적은 도시하천으로 복원된 청계천유역의 실시간 홍수예보를 위한 flow nomograph를 개발하고, 실측자료를 통해 flow nomograph의 적용성을 검토하는데 있다. 본 연구의 적용대상 지역인 청계천 유역은 높은 불투수율, 짧은 도달시간 및 복잡한 수문학적 특성을 갖고 있어 기존 강우-유출 모형에 의한 홍수예측 방법의 선행시간 확보 측면에서 실효성을 거두지 못하고 있는 실정이다. 이에 본 연구에서는 홍수예보 선행시간을 확보하기 위해 강우정보만으로도 홍수예보가 가능한 flow nomograph를 개발하였다. Flow nomograph는 강우강도, 강우지속시간 등의 강우변수와 유량, 수위간의 상관관계를 구한 것이다. 본 연구에서는 Flow nomograph 개발과정에서 예보 기준 설정을 위해 홍수예보 지점을 선정하여 지점별 기준 홍수위를 산정하였으며, 다양한 홍수사상을 반영하기 위해 가상 강우시나리오를 설정하여 강우조건별 강우강도와 강우지속시간을 산정하였다. 또한 수위-유량관계 곡선식을 이용하여 기준 홍수위에 따라 홍수량 범위를 결정하고, SWMM모형을 이용하여 강우조건에 따른 지점별 홍수량을 산정하여 예보지점별로 기준홍수 위에 따른 홍수량을 산정하였다. 산정된 강우 시나리오에 따른 강우정보와 기준 홍수위에 따른 홍수량을 이용하여 flow nomograph를 개발하였으며, 이를 실제 홍수사상에 적용하여 평가하였다. 평가 결과 청계천 유역에 대해 flow nomograph의 적용성이 높은 것으로 나타났다. 향후 청계천과 같은 도시하천유역의 홍수예측 방법으로 활용도가 높을 것으로 판단된다.

EFDC 수질모델을 이용한 영산강 수계 수질 예측 (Operational Water Quality Forecast for the Yeongsan River Using EFDC Model)

  • 신창민;민중혁;박수영;최정규;박종환;송용식;김경현
    • 한국물환경학회지
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    • 제33권2호
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    • pp.219-229
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    • 2017
  • A watershed-river linked modeling system was developed to forecast the water quality, particularly weekly changes in chlorophyll-a concentration, of the Yeongsan River, Korea. Hydrological Simulation Program-Fortran (HSPF) and Environmental Fluid Dynamics Code (EFDC) were adopted as the basic model framework. In this study, the EFDC model was modified to effectively simulate the operational condition and flow of multi-functional weirs constructed in the main channel of rivers. The model was tested against hydrologic, water quality and algal data collected at the right upstream sites of two weirs in 2014. The mean absolute errors (MAEs) of the model calibration on the annual variations of river stage, TN, TP, and algal concentration are 0.03 ~ 0.10 m, 0.65 ~ 0.67 mg/L, 0.03 ~ 0.04 mg/L, and $9.7{\sim}10.8mg/m^3$, respectively. On the other hand, the MAE values of forecasting results for chlorophyll-a level at the same sites in 2015 range from 18.7 to $22.4mg/m^3$, which are higher than those of model calibration. The increased errors in forecasting are mainly attributed to the higher uncertainties of weather forecasting data compared to the observed data used in model calibration.

하천(河川)의 수질예측(水質豫測)을 위한 수치모형(數値模型)에 관한 연구(硏究) (-A Study on a Mathematical Model for Water Quality Prediction for Rivers-)

  • 김성순;이양규;김갑진
    • 상하수도학회지
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    • 제9권4호
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    • pp.73-86
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    • 1995
  • The propriety of the numerical model application was examined on Paldang resevoir and its inflow tributaries located in the center of the Korean peninsula and the long term water quality forecast of the oxygen profile was carried out in this syduy. The input data of the model was the capacity of the reservoir, catchment area, percolation, diffusion rate, vertical mixing rate, dissolution rate from the bottom of the reservoir, outflow of the resevoir, water quality measurement and meteorology data of the drainage basin, and the output result was the annual estimation value of the dissolved oxygen concentration and the biochemical oxygen demand. The modeling method is based on the measured or calculated boundary condition dividing the water area into several blocks from the macorscopic aspect and considering the mass balance in these blocks. As the result of the water quality forecast, it was expected that the water quality in Northern Han River and Paldang reservoir would maintain the recent level, but that the water quality in the Southern Han River and its inflow tributary would worsen below the grade 4 of the life environmental standard from around 2000 owing to the decrease of DO concentration and the increase of BOD concentration.

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River Water Level Prediction Method based on LSTM Neural Network

  • Le, Xuan Hien;Lee, Giha
    • 한국수자원학회:학술대회논문집
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    • 한국수자원학회 2018년도 학술발표회
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    • pp.147-147
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    • 2018
  • In this article, we use an open source software library: TensorFlow, developed for the purposes of conducting very complex machine learning and deep neural network applications. However, the system is general enough to be applicable in a wide variety of other domains as well. The proposed model based on a deep neural network model, LSTM (Long Short-Term Memory) to predict the river water level at Okcheon Station of the Guem River without utilization of rainfall - forecast information. For LSTM modeling, the input data is hourly water level data for 15 years from 2002 to 2016 at 4 stations includes 3 upstream stations (Sutong, Hotan, and Songcheon) and the forecasting-target station (Okcheon). The data are subdivided into three purposes: a training data set, a testing data set and a validation data set. The model was formulated to predict Okcheon Station water level for many cases from 3 hours to 12 hours of lead time. Although the model does not require many input data such as climate, geography, land-use for rainfall-runoff simulation, the prediction is very stable and reliable up to 9 hours of lead time with the Nash - Sutcliffe efficiency (NSE) is higher than 0.90 and the root mean square error (RMSE) is lower than 12cm. The result indicated that the method is able to produce the river water level time series and be applicable to the practical flood forecasting instead of hydrologic modeling approaches.

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