• 제목/요약/키워드: Wind speed estimation and prediction

검색결과 31건 처리시간 0.024초

Condition Assessment for Wind Turbines with Doubly Fed Induction Generators Based on SCADA Data

  • Sun, Peng;Li, Jian;Wang, Caisheng;Yan, Yonglong
    • Journal of Electrical Engineering and Technology
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    • 제12권2호
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    • pp.689-700
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    • 2017
  • This paper presents an effective approach for wind turbine (WT) condition assessment based on the data collected from wind farm supervisory control and data acquisition (SCADA) system. Three types of assessment indices are determined based on the monitoring parameters obtained from the SCADA system. Neural Networks (NNs) are used to establish prediction models for the assessment indices that are dependent on environmental conditions such as ambient temperature and wind speed. An abnormal level index (ALI) is defined to quantify the abnormal level of the proposed indices. Prediction errors of the prediction models follow a normal distribution. Thus, the ALIs can be calculated based on the probability density function of normal distribution. For other assessment indices, the ALIs are calculated by the nonparametric estimation based cumulative probability density function. A Back-Propagation NN (BPNN) algorithm is used for the overall WT condition assessment. The inputs to the BPNN are the ALIs of the proposed indices. The network structure and the number of nodes in the hidden layer are carefully chosen when the BPNN model is being trained. The condition assessment method has been used for real 1.5 MW WTs with doubly fed induction generators. Results show that the proposed assessment method could effectively predict the change of operating conditions prior to fault occurrences and provide early alarming of the developing faults of WTs.

Applicability of the Wind Erosion Prediction System for prediction of soil loss by wind in arable land

  • Lee, Kyo-Suk;Seo, Il-Hwan;Lee, Sang-Phil;Lim, Chul-Soon;Lee, Dong-Sung;Min, Se-Won;Jung, Hyun-Gyu;Yang, Jae-Eui;Chung, Doug-Young
    • 농업과학연구
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    • 제47권4호
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    • pp.845-857
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    • 2020
  • The precise estimation of accelerated soil wind erosion that can cause severe economic and environmental impacts still has not been achieved to date. The objectives of this investigation were to verify the applicability of a Wind Erosion Prediction System (WEPS) that expressed the soil loss as mass per area for specific areas of interest on a daily basis for a single event in arable lands. To this end, we selected and evaluated the results published by Hagen in 2004 and the soil depth converted from the mass of soil losses obtained by using the WEPS. Hagen's results obtained from the WEPS model followed the 1 : 1 line between predicted and measured value for soil losses with only less than 2 kg·m-2 whereas the values between the measured and predicted loss did not show any correlation for the given field conditions due to the initial field surface condition although the model provided reasonable estimates of soil loss. Calculated soil depths of the soil loss by wind for both the observed and predicted ones ranged from 0.004 to 3.113 cm·10 a-1 and from 0 to 2.013 cm·10 a-1, respectively. Comparison of the soil depths between the observed and predicted ones did not show any good relationship, and there was no soil loss in the predicted one while slight soil loss was measured in the observed one. Therefore, varying the essential model inputs and factors related to wind speed and soil properties are needed to accurately estimate soil loss for a given field in arable land.

다중회귀분석에 의한 실선의 표류력 추정 (Estimation of drift force by real ship using multiple regression analysis)

  • 안장영;김광일;김민선;이창헌
    • 수산해양기술연구
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    • 제57권3호
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    • pp.236-245
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    • 2021
  • In this study, a drifting test using a experimental vessel (2,966 tons) in the northern waters of Jeju was carried out for the first time in order to obtain the fundamental data for drift. During the test, it was shown that the average leeway speed and direction by GPS position were 0.362 m/s and 155.54° respectively and the leeway rate for wind speed was 8.80%. The analysis of linear regression modes about leeway speed and direction of the experimental vessel indicated that wind or current (i.e. explanatory variable) had a greater influence upon response variable (e.g. leeway speed or direction) with the speed of the wind and current rather than their directions. On the other hand, the result of multiple regression model analysis was able to predict that the direction was negative, and it was demonstrated that predicted values of leeway speed and direction using an experimental vessel is to be more influential by current than wind while the leeway speed through variance and covariance was positive. In terms of the leeway direction of the experimental vessel, the same result of the leeway speed appeared except for a possibility of the existence of multi-collinearity. Then, it can be interpreted that the explanatory variables were less descriptive in the predicted values of the leeway direction. As a result, the prediction of leeway speed and direction can be demonstrated as following equations. Ŷ1= 0.4031-0.0032X1+0.0631X2-0.0010X3+0.4110X4 Ŷ2= 0.4031-0.6662X1+27.1955X2-0.6787X3-420.4833X4 However, many drift tests using actual vessels and various drifting objects will provide reasonable estimations, so that they can help search and rescue fishing gears as well.

외력에 의한 채낚기 어선의 표류 추정 (Estimation of leeway of jigging fishing vessels by external factors)

  • 이창헌;김광일;김주성;유상록
    • 수산해양기술연구
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    • 제58권4호
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    • pp.299-309
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    • 2022
  • Among the fishing vessels operating in the coastal waters, jigging fishing vessels were considered representative vessels engaged only by wind, sea, tide, and external force. Then, a fishing vessel with a length of shorter than 10 m from July 1, 2018 to August 5, 2019 was studied to obtain a drift prediction model by multiple regression analysis. In the correlation analysis between variables for leeway of speed and direction, the speed and direction of tidal seem to be the most affected in coastal waters. Therefore, it should be considered an explanatory variable when conducting drift tests. As a result of multiple regression analysis on the predicted equations of leeway speed and direction due to the external force on the drift of the fishing vessel, p < 0.000 was considered significant in the F-test, but the coefficient of determination was 55.2% and 37.8%. The effect on the predicted leeway speed was in the order of the tidal speed and current speed. In addition, the impact on the predicted leeway direction was in the order of the tidal speed and current speed. ŷ(m/s) = - 0.0011(x1) + 0.9206(x2) + 0.0001(x3) + 0.0002(x4) + 0.0050(x5) + 0.0529(x6) + 0.2457 ŷ(degree) = 0.6672(x1) + 93.1699(x2) + 0.0585(x3) - 0.0244(x4) - 1.2217(x5) + 4.6378(x6) - 0.0837

지하공동구 터널내 풍속 변화에 따른 열특성에 관한 수치 해석적 연구 (A numerical study of the effects of the ventilation velocity on the thermal characteristics in underground utility tunnel)

  • 유지오;김진수;라광훈
    • 한국터널지하공간학회 논문집
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    • 제19권1호
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    • pp.29-39
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    • 2017
  • 본 연구에서는 3면이 지중과 접하는 형태의 전력구에서 온도상승을 방지하기 위한 환기시스템 설계에 필요한 벽면에서 열전달계수 등 열설계 자료를 수치해석적인 방법으로 검토하였다. 수치해석 모델은 터널 벽체에서의 열전달을 고려하기 위해서 전력구의 터널의 라이닝을 포함하는 것으로 모델링하였으며, 전력구에 설치되는 전력케이블의 발열량(117~468 kW/km), 전력구내 풍속(0.5~4.0 m/s)에 따른 터널내 공기온도 및 벽체온도, 벽체를 통한 발열량을 CFD시뮬레이션에 의해서 구하였다. 또한 해석결과로부터 벽체열전달계수를 계산하고 환기구간의 터널내 공기온도를 유지하기 위한 한계거리를 검토하였다. 벽체표면에서 대류열전달계수는 입구영역에서는 불안정한 변화를 보이나 약 100 m정도의 이후에는 일정한 값에 수렴한다. 터널벽체열전달계수는 풍속에 따라 $3.1{\sim}9.16W/m^2^{\circ}C$정도이며, 이를 무차원식으로 표현하면 $Nu=1.081Re^{0.4927}({\mu}/{\mu}_w)^{0.14}$이 된다. 열저항 해석기법에 의해서 터널내 온도 예측방법을 제시하였으며, 약 3%이내의 편차로 예측이 가능한 것으로 평가되었다.

Auto-detection of Halo CME Parameters as the Initial Condition of Solar Wind Propagation

  • Choi, Kyu-Cheol;Park, Mi-Young;Kim, Jae-Hun
    • Journal of Astronomy and Space Sciences
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    • 제34권4호
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    • pp.315-330
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    • 2017
  • Halo coronal mass ejections (CMEs) originating from solar activities give rise to geomagnetic storms when they reach the Earth. Variations in the geomagnetic field during a geomagnetic storm can damage satellites, communication systems, electrical power grids, and power systems, and induce currents. Therefore, automated techniques for detecting and analyzing halo CMEs have been eliciting increasing attention for the monitoring and prediction of the space weather environment. In this study, we developed an algorithm to sense and detect halo CMEs using large angle and spectrometric coronagraph (LASCO) C3 coronagraph images from the solar and heliospheric observatory (SOHO) satellite. In addition, we developed an image processing technique to derive the morphological and dynamical characteristics of halo CMEs, namely, the source location, width, actual CME speed, and arrival time at a 21.5 solar radius. The proposed halo CME automatic analysis model was validated using a model of the past three halo CME events. As a result, a solar event that occurred at 03:38 UT on Mar. 23, 2014 was predicted to arrive at Earth at 23:00 UT on Mar. 25, whereas the actual arrival time was at 04:30 UT on Mar. 26, which is a difference of 5 hr and 30 min. In addition, a solar event that occurred at 12:55 UT on Apr. 18, 2014 was estimated to arrive at Earth at 16:00 UT on Apr. 20, which is 4 hr ahead of the actual arrival time of 20:00 UT on the same day. However, the estimation error was reduced significantly compared to the ENLIL model. As a further study, the model will be applied to many more events for validation and testing, and after such tests are completed, on-line service will be provided at the Korean Space Weather Center to detect halo CMEs and derive the model parameters.

An Attempt of Estimation of Annual Fog Frequency over Gyeongsangbuk-do of Korea Using Weather Generator MM5

  • Kim, Do-Yong;Oh, Jai-Ho;Kim, Jin-Young;Sen, Pumendranath;Kim, Tae-Kook
    • Environmental Engineering Research
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    • 제14권2호
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    • pp.88-94
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    • 2009
  • In this study an attempt has been made to predict the annual foggy days over Gyeongsangbuk-do of Korea, using the regional mesoscale model (MM5). The annual meteorological conditions are simulated, and the annual and seasonal foggy days are predicted from the simulated results based on the seasonal and spatial information of the observed meteorological characteristics for fog occurrence such as wind speed, relative humidity, and temperature. Most of observed inland fog over Gyeongsangbuk-do occurs in autumn under the meteorological conditions such as a cairn, a high temperature range (above $10^{\circ}C$), and a high relative humidity (above 85%). The predicted results show the various foggy days, about 10${\sim}$60 days, depending on the season and the site locations. The predicted annual foggy days at inland sites are about 30${\sim}$60 days, but at coastal sites, about 10${\sim}$20 days. Also, a higher frequency of fog occurrence at inland sites is shown in autumn (about 60% of the annual foggy days). Otherwise, a higher frequency of fog occurrence at coastal sites is shown in summer (about 60% of the annual foggy days), unlike the inland. These annual foggy days and their seasonal variations agree reasonably well with the observed values. It can be concluded that it is possible to predict the occurrence of annual or seasonal foggy days by MM5.

태양광 발전소 건설부지 평가 및 선정을 위한 선형회귀분석 기반 태양광 발전량 추정 모델 (Multiple Linear Regression Analysis of PV Power Forecasting for Evaluation and Selection of Suitable PV Sites)

  • 허재;박범수;김병일;한상욱
    • 한국건설관리학회논문집
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    • 제20권6호
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    • pp.126-131
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    • 2019
  • 최근 태양광의 발전 효율성과 경제성이 높은 발전소 부지를 확보하기 위해 특정 지역을 대상으로 태양광 발전량을 정확히 예측하기 위한 연구들이 수행되었다. 하지만 국내의 경우 기존 발전량 데이터가 부족함에 따라 정확한 발전량 추정에 문제가 발생할 수 있으며, 우리나라 기준으로 어떠한 기상조건을 나타내는 변수가 태양광발전에 어느 정도의 영향을 미치는지에 대한 연구가 부족한 실정이다. 따라서 본 연구는 지형 효과를 충분히 고려하여 제작된 태양복사에너지 지도와 미세먼지와 같은 기상조건을 추가하여 태양광 발전량 추정 회귀모델을 제시하고, 추정된 발전량과 실제 발전량을 비교 분석하였다. 그 결과, 습도를 제외한 태양복사에너지, 온도, 풍속, 운량, 강수량, 일조시간, 미세먼지가 발전 효율에 통계적으로 유의미한 영향을 미치는 것으로 나타났으며, 회귀 분석모델을 통해 추정된 발전량과 실제 발전량을 비교 분석하여 RMSE는 48.261(h), nRMSE는 1.592(%), MAPE는 11.696(%), 그리고 는 0.979이 도출되었다. 이러한 결과는 국내 태양광 발전 부지를 평가함에 있어서 고려해야 하는 중요한 기상 조건 등 태양광 발전량 추정 모델을 설계하는데 활용할 수 있으며, 이를 바탕으로 태양광 발전소 건설 부지를 선정함에 있어 중요한 지표인 발전량을 정확히 추정하는데 기여할 것으로 사료된다.

기계학습을 통한 여름철 노면상태 추정 알고리즘 개발 (Estimation of Road Surface Condition during Summer Season Using Machine Learning)

  • 여지호;이주영;김강화;장기태
    • 한국ITS학회 논문지
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    • 제17권6호
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    • pp.121-132
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    • 2018
  • 기상은 교통흐름, 운전자의 주행패턴, 교통사고 등 여러 방면에서 도로교통에 영향을 미치는 중요한 요인이다. 본 연구는 기상상황과 노면상태 사이의 관계에 초점을 맞추어 기계학습을 통해 도로의 노면상태를 추정하는 모델을 개발하였다. 노면 상태의 수집을 위해 실험 차량에 노면센서를 부착하여 '건조', '습윤', '젖음', 3가지 범주로 구분된 노면상태 정보를 수집하였고, 이를 추정하기 위한 변수로 도로의 기하구조 정보(곡률, 구배), 교통정보(교통량), 기상정보(강우량, 습도, 온도, 풍속)를 활용하였다. 노면 상태를 예측하기 위한 알고리즘으로는 다양한 기계학습 알고리즘이 검토되었으며, 그 중 가장 높은 정확도를 보인 'Random forest'를 기반으로 한 2단계 분류모형을 구축하였다. 총 16일의 실측 데이터 중 14일의 데이터를 모델을 학습하는 데 활용하였고, 2일의 데이터를 모형의 정확도를 검증하기 위해 사용하였다. 그 결과 81.74%의 검증 정확도를 가지는 노면상태 예측 모델을 구축하였다. 본 연구의 결과는 기상청에서 관측하는 기상정보로 도로의 노면상태를 추정할 수 있다는 가능성을 보여주며, 새로운 장비나 센서를 설치하지 않고도 기존의 기상 관측 정보와 교통정보 등을 활용하여 노면의 상태를 추정할 수 있음을 시사한다.

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.