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Published in: Peer-to-Peer Networking and Applications 3/2021

02-07-2020

Surface and high-altitude combined rainfall forecasting using convolutional neural network

Authors: Pengcheng Zhang, Wennan Cao, Wenrui Li

Published in: Peer-to-Peer Networking and Applications | Issue 3/2021

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Abstract

Rainfall forecasting can guide human production and life. However, the existing methods usually have a poor prediction accuracy in short-term rainfall forecasting. Machine learning methods ignore the influence of the geographical characteristics of the rainfall area. The regional characteristics of surface and high-altitude make the prediction accuracy always fluctuate in different regions. To improve the prediction accuracy of short-term rainfall forecasting, a surface and high-Altitude Combined Rainfall Forecasting model (ACRF) is proposed. First, the weighted k-means clustering method is used to select the meteorological data of the surrounding stations related to the target station. Second, the high-altitude shear value of the target station is calculated by using the meteorological factors of the surrounding stations. Third, the principal component analysis method is used to reduce dimensions of the high-altitude shear value and the surface factors. Finally, a convolutional neural network is used to forecast rainfall. We use ACRF to test 92 meteorology stations in China. The results show that ACRF is superior to existing methods in threat rating (TS) and mean square error (MSE).

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Literature
1.
go back to reference Gupta D, Ghose U (2015) A comparative study of classification algorithms for forecasting rainfall. In: 4th International Conference on Reliability, Infocom Technologies and Optimization (ICRITO) (Trends and Future Directions) Gupta D, Ghose U (2015) A comparative study of classification algorithms for forecasting rainfall. In: 4th International Conference on Reliability, Infocom Technologies and Optimization (ICRITO) (Trends and Future Directions)
2.
go back to reference Nayak D, Mahapatra A, Mishra P (2013) A survey on rainfall prediction using artificial neural network. Int J Comput Appl 72:32–40 Nayak D, Mahapatra A, Mishra P (2013) A survey on rainfall prediction using artificial neural network. Int J Comput Appl 72:32–40
3.
go back to reference Connolley WM, Harangozo SA (2001) A comparison of five numerical weather prediction analysis climatologies in southern high latitudes. J Clim 14:30–44CrossRef Connolley WM, Harangozo SA (2001) A comparison of five numerical weather prediction analysis climatologies in southern high latitudes. J Clim 14:30–44CrossRef
4.
go back to reference Lin GF, Chang MJ, Wu JT (2016) A hybrid statistical downscaling method based on the classification of rainfall patterns. Water Resour Manag 31:1–25 Lin GF, Chang MJ, Wu JT (2016) A hybrid statistical downscaling method based on the classification of rainfall patterns. Water Resour Manag 31:1–25
5.
go back to reference Luk KC, Ball J, Sharma A (2001) An application of artificial neural networks for rainfall forecasting. Math Comput Model 33:683–693CrossRef Luk KC, Ball J, Sharma A (2001) An application of artificial neural networks for rainfall forecasting. Math Comput Model 33:683–693CrossRef
6.
go back to reference Appel KW, Gilliam RC, Davis N, Zubrow A, Howard SC (2011) Overview of the atmospheric model evaluation tool (amet) v1.1 for evaluating meteorological and air quality models. Environ Model Softw 26:434–443CrossRef Appel KW, Gilliam RC, Davis N, Zubrow A, Howard SC (2011) Overview of the atmospheric model evaluation tool (amet) v1.1 for evaluating meteorological and air quality models. Environ Model Softw 26:434–443CrossRef
7.
go back to reference Abbot J, Marohasy J (2012) Application of artificial neural networks to rainfall forecasting in Queensland, Australia. Adv Atmos Sci 29:73–86CrossRef Abbot J, Marohasy J (2012) Application of artificial neural networks to rainfall forecasting in Queensland, Australia. Adv Atmos Sci 29:73–86CrossRef
8.
go back to reference Shi XJ, Yeung DY (2018) Machine learning for spatiotemporal sequence forecasting: a survey. In: arXiv, preprint arXiv:180806865 Shi XJ, Yeung DY (2018) Machine learning for spatiotemporal sequence forecasting: a survey. In: arXiv, preprint arXiv:180806865
9.
go back to reference Singh P, Borah B (2013) Indian summer monsoon rainfall prediction using artificial neural network. Stochastic environmental research and risk assessment, vol 27. Springer, Heidelberg, pp 1585–1599 Singh P, Borah B (2013) Indian summer monsoon rainfall prediction using artificial neural network. Stochastic environmental research and risk assessment, vol 27. Springer, Heidelberg, pp 1585–1599
10.
go back to reference Bartoletti N, Casagli F, Marsili-Libelli S, Nardi A, Palandri L (2018) Data-driven rainfall-runoff modelling based on a neuro-fuzzy inference system. Environ Model Softw 106:35–47. Elsevier, AmsterdamCrossRef Bartoletti N, Casagli F, Marsili-Libelli S, Nardi A, Palandri L (2018) Data-driven rainfall-runoff modelling based on a neuro-fuzzy inference system. Environ Model Softw 106:35–47. Elsevier, AmsterdamCrossRef
11.
go back to reference Cozzi L (2013) Weather models as virtual sensors to data driven rainfall predictions in urban watersheds. European Geosciences Union, Munich Cozzi L (2013) Weather models as virtual sensors to data driven rainfall predictions in urban watersheds. European Geosciences Union, Munich
12.
go back to reference Boehm J, Werl B, Schuh H (2006) Troposphere mapping functions for gps and very long baseline interferometry from european centre for medium-range weather forecasts operational analysis data. In: Journal of geophysical research: solid earth, vol. 111. Wiley, New Jersey Boehm J, Werl B, Schuh H (2006) Troposphere mapping functions for gps and very long baseline interferometry from european centre for medium-range weather forecasts operational analysis data. In: Journal of geophysical research: solid earth, vol. 111. Wiley, New Jersey
13.
go back to reference Xue M, Droegemeier KK, Wong V (2000) The advanced regional prediction system (arps)–a multi-scale nonhydrostatic atmospheric simulation and prediction model. part I: Model dynamics and verification. Meteorol Andatmos Physics 75:161–193. Springer, HeidelbergCrossRef Xue M, Droegemeier KK, Wong V (2000) The advanced regional prediction system (arps)–a multi-scale nonhydrostatic atmospheric simulation and prediction model. part I: Model dynamics and verification. Meteorol Andatmos Physics 75:161–193. Springer, HeidelbergCrossRef
14.
go back to reference Honda Y, Nishijima M, Koizumi K, Ohta Y, Tamiya K, Kawabata T, Tsuyuki T (2005) A pre-operational variational data assimilation system for a non-hydrostatic model at the japan meteorological agency: Formulation and preliminary results. Q J R Meteorol Soc 131:3465–3475. Wiley, New JerseyCrossRef Honda Y, Nishijima M, Koizumi K, Ohta Y, Tamiya K, Kawabata T, Tsuyuki T (2005) A pre-operational variational data assimilation system for a non-hydrostatic model at the japan meteorological agency: Formulation and preliminary results. Q J R Meteorol Soc 131:3465–3475. Wiley, New JerseyCrossRef
15.
go back to reference Yu W, Nakakita E, Kim S, Yamaguchi K (2018) Assessment of ensemble flood forecasting with numerical weather prediction by considering spatial shift of rainfall fields. J Civ Eng 22:3686–3696. Springer, Heidelberg Yu W, Nakakita E, Kim S, Yamaguchi K (2018) Assessment of ensemble flood forecasting with numerical weather prediction by considering spatial shift of rainfall fields. J Civ Eng 22:3686–3696. Springer, Heidelberg
16.
go back to reference Li K, Kan GY, Ding LQ, Dong QJ, Liu KX, Liang LL (2018) A novel flood forecasting method based on initial state variable correction. Water 10:12. Multidisciplinary Digital Publishing Institute, SwitzerlandCrossRef Li K, Kan GY, Ding LQ, Dong QJ, Liu KX, Liang LL (2018) A novel flood forecasting method based on initial state variable correction. Water 10:12. Multidisciplinary Digital Publishing Institute, SwitzerlandCrossRef
17.
go back to reference Lin YH, Chiu CC, Lin YJ, Lee PC (2013) Rainfall prediction using innovative grey model with the dynamic index. J Mar Sci Technol 21:63–75. National Taiwan Ocean University Lin YH, Chiu CC, Lin YJ, Lee PC (2013) Rainfall prediction using innovative grey model with the dynamic index. J Mar Sci Technol 21:63–75. National Taiwan Ocean University
18.
go back to reference Lin YJ, Lee PC, Ma KC, Chiu CC (2019) A hybrid grey model to forecast the annual maximum daily rainfall. J Civ Eng 23:4933–4948. Springer, Heidelberg Lin YJ, Lee PC, Ma KC, Chiu CC (2019) A hybrid grey model to forecast the annual maximum daily rainfall. J Civ Eng 23:4933–4948. Springer, Heidelberg
19.
go back to reference Somvanshi V, Pandey O, Agrawal P, Kalanker N, Prakash MR, Chand R (2006) Modeling and prediction of rainfall using artificial neural network and Arima techniques. J Ind Geophys Union 10:141–151 Somvanshi V, Pandey O, Agrawal P, Kalanker N, Prakash MR, Chand R (2006) Modeling and prediction of rainfall using artificial neural network and Arima techniques. J Ind Geophys Union 10:141–151
20.
go back to reference Zhang GP (2003) Time series forecasting using a hybrid arima and neural network model. Neurocomputing 50:159–175. Elsevier, AmsterdamCrossRef Zhang GP (2003) Time series forecasting using a hybrid arima and neural network model. Neurocomputing 50:159–175. Elsevier, AmsterdamCrossRef
21.
go back to reference Lin GF, Chen GR, Wu MC, Chou YC (2009) Effective forecasting of hourly typhoon rainfall using support vector machines. Water Resour Res 45 Wiley, New Jersey Lin GF, Chen GR, Wu MC, Chou YC (2009) Effective forecasting of hourly typhoon rainfall using support vector machines. Water Resour Res 45 Wiley, New Jersey
22.
go back to reference Mislan M, Haviluddin H, Hardwinarto S, Sumaryono S, Aipassa M (2015) Rainfall monthly prediction based on artificial neural network: a case study in Tenggarong station, East Kalimantan-Indonesia. The International Conference on Computer Science and Computational, Elsevier, Amsterdam Mislan M, Haviluddin H, Hardwinarto S, Sumaryono S, Aipassa M (2015) Rainfall monthly prediction based on artificial neural network: a case study in Tenggarong station, East Kalimantan-Indonesia. The International Conference on Computer Science and Computational, Elsevier, Amsterdam
23.
go back to reference Shoaib M, Shamseldin AY, Melville BW (2014) Comparative study of different wavelet based neural network models for rainfall–runoff modeling. J Hydrol 515:47–58. Elsevier, AmsterdamCrossRef Shoaib M, Shamseldin AY, Melville BW (2014) Comparative study of different wavelet based neural network models for rainfall–runoff modeling. J Hydrol 515:47–58. Elsevier, AmsterdamCrossRef
24.
go back to reference Meng JG (2016) Model of medium-long-term precipitation forecasting in arid areas based on pso and ls-svm methods. J Yangtze River Sci Res Instit Meng JG (2016) Model of medium-long-term precipitation forecasting in arid areas based on pso and ls-svm methods. J Yangtze River Sci Res Instit
25.
go back to reference Farajzadeh J, Fard AF, Lotfi S (2014) Modeling of monthly rainfall and runoff of urmia lake basin using feed-forward neural network and time series analysis model. Water Resour Industry 7:38–48. Elsevier, AmsterdamCrossRef Farajzadeh J, Fard AF, Lotfi S (2014) Modeling of monthly rainfall and runoff of urmia lake basin using feed-forward neural network and time series analysis model. Water Resour Industry 7:38–48. Elsevier, AmsterdamCrossRef
26.
go back to reference Abbot J, Marohasy J (2014) Input selection and optimisation for monthly rainfall forecasting in queensland, australia, using artificial neural networks. Atmos Res 138:166–178. Elsevier, AmsterdamCrossRef Abbot J, Marohasy J (2014) Input selection and optimisation for monthly rainfall forecasting in queensland, australia, using artificial neural networks. Atmos Res 138:166–178. Elsevier, AmsterdamCrossRef
27.
go back to reference Abhishek K, Kumar A, Ranjan R, Kumar S (2012) A rainfall prediction model using artificial neural network. In: 2012 IEEE Control and System Graduate Research Colloquium, pp. 82–87. IEEE Press, New York Abhishek K, Kumar A, Ranjan R, Kumar S (2012) A rainfall prediction model using artificial neural network. In: 2012 IEEE Control and System Graduate Research Colloquium, pp. 82–87. IEEE Press, New York
28.
go back to reference Sangiorgio M, Barindelli S, Biondi R, Solazzo E, Realini E, Venuti G, Guariso G (2019) Improved extreme rainfall events forecasting using neural networks and water vapor measures. In: 6th International conference on Time Series and Forecasting, pp. 820–826. Multidisciplinary Digital Publishing Institute, Switzerland Sangiorgio M, Barindelli S, Biondi R, Solazzo E, Realini E, Venuti G, Guariso G (2019) Improved extreme rainfall events forecasting using neural networks and water vapor measures. In: 6th International conference on Time Series and Forecasting, pp. 820–826. Multidisciplinary Digital Publishing Institute, Switzerland
29.
go back to reference Hernández E, Sanchez-Anguix V, Julian V, Palanca J, Duque N (2016) Rainfall prediction: A deep learning approach. In: International Conference on Hybrid Artificial Intelligence Systems, pp. 151–162. Springer, Heidelberg Hernández E, Sanchez-Anguix V, Julian V, Palanca J, Duque N (2016) Rainfall prediction: A deep learning approach. In: International Conference on Hybrid Artificial Intelligence Systems, pp. 151–162. Springer, Heidelberg
30.
go back to reference Onyari EK, Ilunga F (2013) Application of mlp neural network and m5p model tree in predicting streamflow: A case study of luvuvhu catchment, south africa. Int J Innov Manag Technol 4:11. IACSIT Press Onyari EK, Ilunga F (2013) Application of mlp neural network and m5p model tree in predicting streamflow: A case study of luvuvhu catchment, south africa. Int J Innov Manag Technol 4:11. IACSIT Press
31.
go back to reference Li XL, Du ZL, Song GM (2018) A method of rainfall runoff forecasting based on deep convolution neural networks. In: Sixth International Conference on Advanced Cloud and Big Data (CBD), pp. 304–310. IEEE Press, New York Li XL, Du ZL, Song GM (2018) A method of rainfall runoff forecasting based on deep convolution neural networks. In: Sixth International Conference on Advanced Cloud and Big Data (CBD), pp. 304–310. IEEE Press, New York
32.
go back to reference Kratzert F, Klotz D, Brenner C, Schulz K, Herrnegger M (2018) Rainfall–runoff modelling using long short-term memory (LSTM) networks. Hydrol Earth Syst Sci 22:6005–6022. Copernicus GmbHCrossRef Kratzert F, Klotz D, Brenner C, Schulz K, Herrnegger M (2018) Rainfall–runoff modelling using long short-term memory (LSTM) networks. Hydrol Earth Syst Sci 22:6005–6022. Copernicus GmbHCrossRef
33.
go back to reference Zhang PC, Zhang L, Leung H, Wang JM (2017) A deep-learning based precipitation forecasting approach using multiple environmental factors. In: IEEE International Congress on Big Data (BigData Congress), pp. 193–200. IEEE Press, New York Zhang PC, Zhang L, Leung H, Wang JM (2017) A deep-learning based precipitation forecasting approach using multiple environmental factors. In: IEEE International Congress on Big Data (BigData Congress), pp. 193–200. IEEE Press, New York
34.
go back to reference Zhang PC, Jia YY, Gao J, Song W, Leung H (2018) Short-term rainfall forecasting using multi-layer perceptron. IEEE Transact Big Data 6:93–106. IEEE Press, New YorkCrossRef Zhang PC, Jia YY, Gao J, Song W, Leung H (2018) Short-term rainfall forecasting using multi-layer perceptron. IEEE Transact Big Data 6:93–106. IEEE Press, New YorkCrossRef
35.
go back to reference Mekanik F, Imteaz M, Gato-Trinidad S, Elmahdi A (2013) Multiple regression and artificial neural network for long-term rainfall forecasting using large scale climate modes. J Hydrol 503:11–21. Elsevier, AmsterdamCrossRef Mekanik F, Imteaz M, Gato-Trinidad S, Elmahdi A (2013) Multiple regression and artificial neural network for long-term rainfall forecasting using large scale climate modes. J Hydrol 503:11–21. Elsevier, AmsterdamCrossRef
36.
go back to reference Zhu Y, Zhang W, Chen Y, Gao H (2019) A novel approach to workload prediction using attention-based lstm encoder-decoder network in cloud environment. EURASIP J Wirel Commun Netw 2019:1–18 Springer, HeidelbergCrossRef Zhu Y, Zhang W, Chen Y, Gao H (2019) A novel approach to workload prediction using attention-based lstm encoder-decoder network in cloud environment. EURASIP J Wirel Commun Netw 2019:1–18 Springer, HeidelbergCrossRef
37.
go back to reference Shi XJ, Chen ZR, Wang H, Yeung DY, Wong WK, Woo WC (2015) Convolutional LSTM network: A machine learning approach for precipitation nowcasting. In: Advances in neural information processing systems, pp. 802–810. MIT Press, Massachusetts Shi XJ, Chen ZR, Wang H, Yeung DY, Wong WK, Woo WC (2015) Convolutional LSTM network: A machine learning approach for precipitation nowcasting. In: Advances in neural information processing systems, pp. 802–810. MIT Press, Massachusetts
38.
go back to reference George A, Vidyapeetham A (2012) Anomaly detection based on machine learning: dimensionality reduction using PCA and classification using SVM. Int J Comput Appl 47:5–8. Citeseer George A, Vidyapeetham A (2012) Anomaly detection based on machine learning: dimensionality reduction using PCA and classification using SVM. Int J Comput Appl 47:5–8. Citeseer
40.
go back to reference Zhang YW, Zhou YY, Wang FT, Sun Z, He Q (2018) Service recommendation based on quotient space granularity analysis and covering algorithm on Spark. Knowl-Based Syst 147:25–35. Elsevier, AmsterdamCrossRef Zhang YW, Zhou YY, Wang FT, Sun Z, He Q (2018) Service recommendation based on quotient space granularity analysis and covering algorithm on Spark. Knowl-Based Syst 147:25–35. Elsevier, AmsterdamCrossRef
41.
go back to reference Yu J, Hong CQ, Rui Y, Tao DC (2017) Multi-task autoencoder model for recovering human poses. In: IEEE Transactions on Industrial Electronics, pp. 1–1. IEEE Press, New York Yu J, Hong CQ, Rui Y, Tao DC (2017) Multi-task autoencoder model for recovering human poses. In: IEEE Transactions on Industrial Electronics, pp. 1–1. IEEE Press, New York
42.
go back to reference Yin YY, Chen L, Xu YS, Wan J, Zhang H, Mai ZD (2019) Qos prediction for service recommendation with deep feature learning in edge computing environment. In: Mobile Networks and Applications, pp. 1–11. Springer, Heidelberg Yin YY, Chen L, Xu YS, Wan J, Zhang H, Mai ZD (2019) Qos prediction for service recommendation with deep feature learning in edge computing environment. In: Mobile Networks and Applications, pp. 1–11. Springer, Heidelberg
43.
go back to reference Hu MB, Xiao WJ (2010) Preliminary study on analysis method of wind shear using wind profiler. Meteorol Sci 30:510–515 Hu MB, Xiao WJ (2010) Preliminary study on analysis method of wind shear using wind profiler. Meteorol Sci 30:510–515
Metadata
Title
Surface and high-altitude combined rainfall forecasting using convolutional neural network
Authors
Pengcheng Zhang
Wennan Cao
Wenrui Li
Publication date
02-07-2020
Publisher
Springer US
Published in
Peer-to-Peer Networking and Applications / Issue 3/2021
Print ISSN: 1936-6442
Electronic ISSN: 1936-6450
DOI
https://doi.org/10.1007/s12083-020-00938-x

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