Application of Neural Network for Long-Term Correction of Wind Data

Similar documents
Uncertainty in wind climate parameters and the consequence for fatigue load assessment

Wind Resource Assessment Practical Guidance for Developing A Successful Wind Project

Validation n 1 of the Wind Data Generator (WDG) software performance. Comparison with measured mast data - Complex site in Southern France

Integration of WindSim s Forecasting Module into an Existing Multi-Asset Forecasting Framework

Needs for Flexibility Caused by the Variability and Uncertainty in Wind and Solar Generation in 2020, 2030 and 2050 Scenarios

FORECASTING: A REVIEW OF STATUS AND CHALLENGES. Eric Grimit and Kristin Larson 3TIER, Inc. Pacific Northwest Weather Workshop March 5-6, 2010

1 Introduction. Station Type No. Synoptic/GTS 17 Principal 172 Ordinary 546 Precipitation

COMPARISON OF CLEAR-SKY MODELS FOR EVALUATING SOLAR FORECASTING SKILL

Optimum Neural Network Architecture for Precipitation Prediction of Myanmar

Kommerciel arbejde med WAsP

MCP and long term wind speed predictions Frank Klintø, Wiebke Langreder Wind&Site Global Competence Centre

Generating Virtual Wind Climatologies through the Direct Downscaling of MERRA Reanalysis Data using WindSim

th Hawaii International Conference on System Sciences

Reading, UK 1 2 Abstract

Overview of Met Office Intercomparison of Vaisala RS92 and RS41 Radiosondes

DNV GL s empirical icing map of Sweden and methodology for estimating annual icing losses

Modelling residual wind farm variability using HMMs

CHAPTER 5 DEVELOPMENT OF WIND POWER FORECASTING MODELS

The document was not produced by the CAISO and therefore does not necessarily reflect its views or opinion.

Application and verification of ECMWF products 2010

Prashant Pant 1, Achal Garg 2 1,2 Engineer, Keppel Offshore and Marine Engineering India Pvt. Ltd, Mumbai. IJRASET 2013: All Rights are Reserved 356

CustomWeather Statistical Forecasting (MOS)

URBAN HEAT ISLAND IN SEOUL

Current best practice of uncertainty forecast for wind energy

A Support Vector Regression Model for Forecasting Rainfall

WASA WP1:Mesoscale modeling UCT (CSAG) & DTU Wind Energy Oct March 2014

Multi-Plant Photovoltaic Energy Forecasting Challenge: Second place solution

Data and prognosis for renewable energy

WASA Project Team. 13 March 2012, Cape Town, South Africa

Assessing the Likelihood of Hail Impact Damage on Wind Turbine Blades

ECE 592 Topics in Data Science

A Novel Method for Predicting the Power Output of Distributed Renewable Energy Resources

New Intensity-Frequency- Duration (IFD) Design Rainfalls Estimates

EUROPEAN EXPERIENCE: Large-scale cross-country forecasting with the help of Ensemble Forecasts

Use of Ultrasonic Wind sensors in Norway

Task 36 Forecasting for Wind Power

A TEST OF THE PRECIPITATION AMOUNT AND INTENSITY MEASUREMENTS WITH THE OTT PLUVIO

EWEA 2016 Methods for Detection of Icing Losses in Scada Data. Staffan Asplund, Christian Granlund Etha Wind Oy Teppo Hilakivi, Puhuri Oy

EVALUATION OF OPERATIONAL DATA IN RESPECT TO PRODUCTION LOSSES DUE TO ICING

WeatherHawk Weather Station Protocol

152 STATISTICAL PREDICTION OF WATERSPOUT PROBABILITY FOR THE FLORIDA KEYS

A Hybrid ARIMA and Neural Network Model to Forecast Particulate. Matter Concentration in Changsha, China

Notice on a Case Study on the Utilization of Wind Energy Potential on a Remote and Isolated Small Wastewater Treatment Plant

SHORT TERM LOAD FORECASTING

Integrated Electricity Demand and Price Forecasting

Solar radiation analysis and regression coefficients for the Vhembe Region, Limpopo Province, South Africa

STORM SURGE PREDICTION USING ARTIFICIAL NEURAL NETWORK MODEL AND CLUSTER ANALYSIS

TRENDS IN DIRECT NORMAL SOLAR IRRADIANCE IN OREGON FROM

Evaluation of Global Horizontal Irradiance Derived from CLAVR-x Model and COMS Imagery Over the Korean Peninsula

DEVELOPMENT OF ROAD SURFACE TEMPERATURE PREDICTION MODEL

Wind power prediction risk indices based on numerical weather prediction ensembles

Development of Weather Characteristics Analysis System for Dam Construction Area

An evaluation of wind indices for KVT Meso, MERRA and MERRA2

Descripiton of method used for wind estimates in StormGeo

Temporal global solar radiation forecasting using artificial neural network in Tunisian climate

Improved the Forecasting of ANN-ARIMA Model Performance: A Case Study of Water Quality at the Offshore Kuala Terengganu, Terengganu, Malaysia

Application of Artificial Neural Networks in Evaluation and Identification of Electrical Loss in Transformers According to the Energy Consumption

SuperPack North America

Recommendations from COST 713 UVB Forecasting

CS 229: Final Paper Wind Prediction: Physical model improvement through support vector regression Daniel Bejarano

About Nnergix +2, More than 2,5 GW forecasted. Forecasting in 5 countries. 4 predictive technologies. More than power facilities

Ground-based temperature and humidity profiling using microwave radiometer retrievals at Sydney Airport.

Advanced analysis and modelling tools for spatial environmental data. Case study: indoor radon data in Switzerland

ANN and Statistical Theory Based Forecasting and Analysis of Power System Variables

WIND FARM PERFORMANCE MONITORING WITH ADVANCED WAKE MODELS

MAIN ATTRIBUTES OF THE PRECIPITATION PRODUCTS DEVELOPED BY THE HYDROLOGY SAF PROJECT RESULTS OF THE VALIDATION IN HUNGARY

P1.3 EVALUATION OF WINTER WEATHER CONDITIONS FROM THE WINTER ROAD MAINTENANCE POINT OF VIEW PRINCIPLES AND EXPERIENCES

Model Output Statistics (MOS)

Vindkraftmeteorologi - metoder, målinger og data, kort, WAsP, WaSPEngineering,

A Comparative Study of virtual and operational met mast data

FORECASTING OF WIND GENERATION The wind power of tomorrow on your screen today!

Gefördert auf Grund eines Beschlusses des Deutschen Bundestages

Henrik Aalborg Nielsen 1, Henrik Madsen 1, Torben Skov Nielsen 1, Jake Badger 2, Gregor Giebel 2, Lars Landberg 2 Kai Sattler 3, Henrik Feddersen 3

CHAPTER 6 CONCLUSION AND FUTURE SCOPE

Wind Rules and Forecasting Project Update Market Issues Working Group 12/14/2007

wind power forecasts

Probabilistic Energy Forecasting

Preliminary results obtained following the intercomparison of the meteorological parameters provided by automatic and classical stations in Romania

OPTIMISING THE TEMPORAL AVERAGING PERIOD OF POINT SURFACE SOLAR RESOURCE MEASUREMENTS FOR CORRELATION WITH AREAL SATELLITE ESTIMATES

GL Garrad Hassan Short term power forecasts for large offshore wind turbine arrays

CAP 437 Offshore Meteorological Observer Training

UniResearch Ltd, University of Bergen, Bergen, Norway WinSim Ltd., Tonsberg, Norway {catherine,

THE AUSTRALIAN TEMPERATURE RECORD - THE BIG PICTURE. by Ken Stewart

Tracking Atmospheric Plumes Using Stand-off Sensor Data

Orbital Insight Energy: Oil Storage v5.1 Methodologies & Data Documentation

PowerPredict Wind Power Forecasting September 2011

Short-term wind forecasting using artificial neural networks (ANNs)

Comparative analysis of neural network and regression based condition monitoring approaches for wind turbine fault detection

What is the Right Answer?

Verification of wind forecasts of ramping events

Short term PM 10 forecasting: a survey of possible input variables

Challenges from Urban Drainage. Jesper Ellerbæk Nielsen Aalborg University, Denmark Department of Civil Engineering

Climate Variables for Energy: WP2

Advanced Software for Integrated Probabilistic Damage Tolerance Analysis Including Residual Stress Effects

The Model Building Process Part I: Checking Model Assumptions Best Practice

Machine Learning of Environmental Spatial Data Mikhail Kanevski 1, Alexei Pozdnoukhov 2, Vasily Demyanov 3

BERMAD Irrigation. BIC2000 Weather Station SYSTEM GUIDE VERSIONS : BIC ; PC 4.90

VALIDATION RESULTS OF THE OPERATIONAL LSA-SAF SNOW COVER MAPPING

A State Space Model for Wind Forecast Correction

Operational Applications of Awos Network in Turkey

Transcription:

Application of Neural Network for Long-Term Correction of Wind Data [2008-12-WD-004] Application of Neural Network for Long-Term Correction of Wind Data Franz Vaas and Hyun-Goo Kim*, ** Abstract Wind farm development project contains high business risks because that a wind farm, which is to be operating for 20 years, has to be designed and assessed only relying on a year or little more in-situ wind data. Accordingly, long-term correction of short-term measurement data is one of most important process in wind resource assessment for project feasibility investigation. This paper shows comparison of general Measure-Correlate-Prediction models and neural network, and presents new method using neural network for increasing prediction accuracy by accommodating multiple reference data. The proposed method would be interim step to complete long-term correction methodology for Korea, complicated Monsoon country where seasonal and diurnal variation of local meteorology is very wide. Key words Long-Term Correction( 장기간보정 ), Measure-Correlate-Predict(MCP; 측정 - 상관 - 예측 ), Neural Network( 신경망회로 ) ( 접수일 2008. 11. 17, 수정일 2008. 11. 19, 게재확정일 2008. 11. 20) *, ** Korea Institute of Energy Research E-mail : hyungoo@kier.re.kr Tel : (042)860-3376 Fax : (042)860-3543 Abbreviations AWS : Automatic Weather System BIAS : Average Error over the whole evaluation period IOA : Index of Agreement KMA : Korea Meteorological Administration MAE : Mean Absolute Error MCP : Measure-Correlate-Predict NN : Neural Network RMSE : Root Mean Square Error 1. Introduction Wind farm development project contains high risks because that a wind farm, which is to be operating for 20 years, has to be designed only relying on a year or sometimes wind measurement data fractal due to sensor failure or lightning damage. In general, short-term measurement saying a year or little more data collection is preferred in order to fit financial and time limitations. However, wind characteristics vary significant for years so that the question may occur: will it be the same for the next 20 years? Accordingly, long-term wind resource assessment would be one of most important process in a feasibility assessment in wind farm development to reduce uncertainty of project design. For long-term correction, traditional Measure-Correlate- Predict (MCP) is used which extends short-term in-situ measurement data at the designated site to long-term wind data by applying nearby weather observation station s 2008. 12 Vol.4, No.4 23

past multiple-year dataset. It is noted that the in-situ data acquired by erecting a tall met-mast at the representative location in terms of meteorological and geographical point of view, where will be developed as a wind farm, is called site data while reference data stands for the wind data of nearby weather station. In this paper, long-term wind data were generated using different MCP methods as well as artificial neural networks. The key issue of the paper is addressed to demonstrate the possibility and quality of prediction using neural network. Thereto this paper compares the prediction accuracy of different MCP models and neural networks for reconstructing long-term wind data with various statistical indices. As the site data, the 70 m-high met-mast measurement at Waljeong New & Renewable Energy Center of Korea Institute of Energy Research near the potential location of an offshore wind farm in Jejudo is employed. As for reference data, two weather stations were chosen. To compare the prediction accuracy of each method, various statistical indices like IOA, BIAS, MAE, RMSE and also mean wind speed were used. Chapter 2 gives backgrounds about the used data, followed by long-term wind data reconstruction in chapter 3. In Chapter 4, the prediction results are compared statistically. At the end of this paper, we drew a short conclusion and a summary of the results. 2. Backgrounds The reference data in the studied time period from the nearby weather stations (KMA184, AWS781) are almost complete. They are recorded as a 10 minutes average value. For reference, KMA184 is the Jejudo weather observation station located in Jeju-si apart about 23 km from Waljeong-ri and AWS781 is the Gujwa automatic weather station apart from 9 km approximately. Fig. 1 Met-mast dataset split into a training and a test period. Figure 1 shows the site data from the 70 m metmast erected at Waljeong-ri beach, north-eastern region in Jejudo. This data is also recorded as a 10 minutes average, but the data is fragmentary and only available over short intervals as shown in the figure. The data should be split into two datasets, a training dataset and a test dataset, to guarantee a validation with unused dataset. All in all there are over 34000 measuring points available. This is enough for training neural network training and also for testing. 3. Long-Term Correction 3.1 Regression MCP The regression MCP finds meteorological correlation between site data and reference data as a linear or higher order function, whichever fits best between datasets. In case MCP models embedded in WindPro software (1,2), a linear regression fitting is used to create the longterm data. Because that every traditional MCP model is only possible to use single reference dataset, we created two different predictions, one for each reference dataset; KMA184 and AWS781. Therefore only wind speed data from the measurement stations with more than 1 m/s were used to generate the regression line for the different wind direction bins (or sectors) as shown in Figure 2. 24 신재생에너지

Application of Neural Network for Long-Term Correction of Wind Data Fig. 3 Trigonometric decomposition of wind vector Fig. 2 Linear regression of a wind directional bin. 3.2 Matrix MCP The matrix MCP correlates wind datasets considering each wind direction bins so that N by N correlation matrix is constructed, where N is the number of wind directional bins. If only diagonal terms of the correlation matrix is used, it is the same that the regression MCP model. Two different predictions were made with the matrix MCP, too. The data is arranged in 10 degree wind direction bins. Wind speeds under 1 m/s were skipped as a calm case. There are two more MCP models in WindPro software: the wind index and the Weibull MCP methods. Regarding the relatively poor performance reported by McKenzie et al. (3), these models were not used in our study. 3.3 Neural Network To generate long-term wind data with a neural network, Alyuda NeuroIntelligence software (4) was employed. Generally, the more input information to neural network, the better result gets. At the same time, it is also necessary to exclude wrong data like outliers, typhoon period, etc. Contrary to general MCPs, neural Fig. 4 Neural network layer and node design 5-6-1 (8-6-1). WD represents wind direction data, S stands for weather station. network can accommodate multiple data sets as input, so in this case the data of both stations datasets were considered at once. More over, not only wind speed but also wind direction and clock time information were considered in neural network as a trigonometric function. Note that wind direction and clock time are both cyclic quantity so that r V = V (sinα,cosα) (see the convention in Figure 3). As for a neural network model, feed forward model and the 5-6-1 (8-6-1) layer & node design shown in Figure 4 were chosen as an optimum. 4. Results and Discussion In order to investigate the prediction trend visually, 2008. 12 Vol.4, No.4 25

Table 1. Statistical comparison of wind speed predictions by MCP models and neural network. (The best value for the RMSE, BIAS and the MAE would be 0. The best IOA index is 1. The mean wind speed of observation is 6.8 m/s) Index Method RMSE IOA KMA 184 MWS [m/s] BIAS [m/s] MAE [m/s] Reg. 4.14 0.69 6.58-0.22 3.25 Matrix 3.93 0.71 6.68-0.12 3.03 AWS 781 Reg. 3.42 0.79 6.60-0.20 2.61 Matrix 3.18 0.82 6.72-0.08 2.41 Neural Network (NN) 2.21 0.90 6.62-0.18 1.64 NN + clock time 2.14 0.90 6.61-0.19 1.58 NN only with AWS781 2.45 0.86 6.49-0.31 1.82 the predicted wind speed versus the observation is plotted in Figures 5 to 7 and 10. The thick solid lines show the best possible result. 4.1 Regression and Matrix MCP Both regression and matrix MCPs showed better prediction with AWS781 dataset, the closer reference station, rather than KMA184. As listed in Table 1. BIAS error of matrix MCP, which represents the average deviation of the prediction from the wind speed, has even the best value of all methods. Fig. 5 Scatter plot between the linear regression MCP and KMA184 dataset. Fig. 6 Result of the Matrix MCP for the AWS781 data. Figure 5 shows the scatter plot of the prediction with KMA184 dataset by linear regression MCP and the observation, where we can see a wide dispersion. Figure 6 shows the better agreement between the matrix MCP with KMA781 dataset. As we can see, the dispersion from the best fit line is getting narrower compared to the former case, Figure 5. Also the number of the outliers is fewer. The allocation of the results is constant for all wind speeds. 4.2 Neural Network Several layer and node designs were tested until finding a best combination. A 5-6-1 design with all input data (wind speed, wind direction of both stations combined with clock time) offers the best prediction. Hereto Figure 7 shows the predicted wind speed versus the observation. Comparing the Indices in Table 1, neural network seems to be the best choice for regenerating long-term wind data in our case. However, the distribution of the results of neural network (Figure 7) is much better than the matrix MCP prediction (Figure 6). By contrast a weakness of neural network is that the quality of the prediction results varies for different wind speed ranges. For low wind speed range of the 26 신재생에너지

Application of Neural Network for Long-Term Correction of Wind Data observation (less than 2 m/s), the predicted result shows over prediction while under prediction in higher wind speed range. This fact is very important in respect to wind power generation because that wind power is proportional to cubic of wind speed, i.e., P V 3. So for the sensitivity in wind power prediction, accurate prediction in higher wind speed range would be deterministic rather than low wind speed range. This trend can be found from BIAS error and that of neural network is quite higher than the others. In Figure 8, wind speed time-series of the measurement and the prediction are drawn together starting from 13 th February 2007 and contains about 1400 data rows. The graph shows good correspondence but we can find overshooting trend in low wind speed ranges (day 2.5 and 5.7). To get an overview where prediction error dominates, Figure 9 shows the mean error distribution in dependence of the wind speed and the wind direction. The biggest error is found between wind speed range of 17 to 22 m/s. In Figure 9, the same trend of Figure 7 is shown, i.e., error increases for higher wind speed. We get good results with a mean error about 1 m/s for wind speed between 3 to 10 m/s in all wind directions. For lower wind speed, mean error increases to 3 m/s for all wind directions. In Table 2 the influence of the individual input data elements on the output of the best neutral network design (Figure 7) is shown. Comparing the input influences, we see that the wind speed at the AWS781 weather station is the most important for the result. But also wind directions of both measurement stations have some influence to the result file and contribution of KMA184 Fig. 7 MCP prediction of the neural network with 5-6-1 layer and node design. Fig. 9 Prediction error depended of wind speed and wind direction. Table 2. Contribution of each dataset to long-term prediction Fig. 8 Comparison of wind speed time-series between the neural network prediction and the observation. Dataset Contribution Wind Speed KMA184 5% Wind Speed AWS781 79% Wind Direction KMA184 9% Wind Direction AWS781 5% Time 2% 2008. 12 Vol.4, No.4 27

Fig. 10 Result of the Neural Network using data of only one measurement station. like shown in Table 1. The values of MAE, RMSE and IOA are better than those of the traditional MCP methods which are linear regression and matrix MCPs. In a comparison only BIAS error is worse. A weakness of neural network is the unbalanced distribution of the result in wind speed ranges compared to the measurement as displayed in Figure 7. This seems to be a problem in the point of evaluation of AEP (Annual Production of Electricity) in wind resource assessment. Further investigation is to be conducted on this topic. As good as the results of neural network might look it is always necessary to verify the results. is higher on the contrary. The clock time of the day has only little influence to the result. For the same condition comparison for neural network and the MCP models, neural network prediction only with single reference dataset was made. The best result was obtained with a 3-11-1 layer and node design (wind speed, wind direction and clock time). Figure 10 shows the result of this Neural Network with data of only one measurement station. Comparing statistical indices in Table 1, the result of single dataset prediction of neural network shows better result than the traditional MCPs. However, there is again the problem with wind speed range less than 3 m/s. 5. Conclusion Reliable and accurate methods for regenerating longterm wind data are highly needed in feasibility assessment of wind farm development. This paper shows a possibility of applying neural network for long-term correction of wind data. The results of our research demonstrate that neural network is in the area of aberration very accurate, Acknowledgements This study was supported by Korea Institute of Energy Research (KIER) and International Association for the Exchange of Students for Technical Experience (IAESTE) Korea KU. References [1] EMD, 2008, WindPro v2.6 User Guide. [2] Morten Lybech Thøgersen, Maurizio Motta Thomas Sørensen & Per Nielsen; Measure-Correlate-Predict Methods, Case Studies and Software Implementation; EMD Int l A/S [3] McKenzie, J., Clive, P., Bulte, H., Chindurzam I., 2008, Considering the Correlate in Measure-Correlate-Predict Techniques, Renewable Energy 2008, Busan BEXCO. [4] Alyuda, 2007, NeuroIntelligence User Manual and Software. [5] Madson, H., Kariniotakis, G., Nielsen, H.A., Nielsen, T.S., Pinson, P., 2005, A Protocol for Standardizing the Performance Evaluation of Short-Term Wind Power Prediction Models, Technical University of Denmark. 28 신재생에너지

Application of Neural Network for Long-Term Correction of Wind Data Franz Vaas 김현구 2009 년독일 University of Stuttgart Dipl.-Ing. (Candidate) 2008 년한국에너지기술연구원인턴쉽 (IAESTE) 1997 년포항공과대학교기계공학과공학박사 1998 년미국아이오와대학교 IIHR 연구원 2000 년포항산업과학연구원책임연구원 2005 년한국에너지기술연구원선임연구원 현재독일스투트가르트대학교기계공학부대학원 (E-mail : FranzVaas@gmx.de) 현재한국에너지기술연구원풍력발전연구단 (E-mail : hyungoo@kier.re.kr) 2008. 12 Vol.4, No.4 29