Literature Study on the Development of Neural Networks For Weather Forecasting
DOI:
https://doi.org/10.34151/jurtek.v17i1.4637Keywords:
Artificial Neural Network, Convolutional Neural Network, Weather forecastingAbstract
Weather prediction has always been crucial for individuals to make informed decisions and protect themselves from potential hazards. Achieving accurate weather forecasts has historically been a significant challenge. Modern weather forecasting has evolved to integrate sophisticated computer models, data from atmospheric balloons and satellites, and insights from local observations. These methods have resulted in fairly precise predictions. Most forecasting models depend on complex mathematical formulas, but Artificial Neural Networks (ANN) offer a dynamic alternative, adapting their structure based on incoming data. This research aimed to thoroughly evaluate the effectiveness of ANNs in weather prediction. It explored the advantages of ANNs over traditional models, reviewed a range of methodologies, and documented the latest advancements in the field. The ultimate goal was to consolidate research findings to highlight the strides made in enhancing weather forecasting through ANNs.
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Abdalwahid, S. M. J., Kareem, S. W., & Yousif, R. Z. (2020). An approach for enhancing data confidentiality in Hadoop. Indonesian Journal of Electrical Engineering and Computer Science, 20(3), 1547-1555.
Abhishek, K., Singh, M., Ghosh, S., & Anand, A. (2012). Weather forecasting model using artificial neural network. Procedia Technology, 4, 311-318.
Al-Jumur, S. M. R. K., Kareem, S. W., & Kareem, R. Z. Y. (2021). Predicting temperature of Erbil city applying deep learning and neural network. Indonesian Journal of Electrical Engineering and Computer Science, 22(2), 944-952.
Amarasinghe, K., Marino, D. L., & Manic, M. (2017). Deep neural networks for energy load forecasting. In IEEE.
Avanzato, R., & Beritelli, F. J. I. (2020). An innovative acoustic rain gauge based on convolutional neural networks. p. 183, November 4.
Balsamo, G., Salgado, R., Dutra, E., Boussetta, S., Stockdale, T., & Potes, M. (2012). On the contribution of lakes in predicting near-surface temperature in a global weather forecasting model. Tellus A: Dynamic Meteorology and Oceanography, 64(1).
Bou-Rabee, M., Lodi, K. A., Ali, M., Ansari, M. F., Tariq, M., & Sulaiman, S. A. J. I. A. (2020). One-Month-Ahead Wind Speed Forecasting Using Hybrid AI Model for Coastal Locations. pp. 198482-198493, August.
Chaabani, H., Werghi, N., Kamoun, F., Taha, B., & Outay, F. J. (2018). Estimating meteorological visibility range under foggy weather conditions: A deep learning approach. Procedia Computer Science, 141, 478-483
Deo, R. C., & Şahin, M. (2015). Application of the artificial neural network model for prediction of monthly standardized precipitation and evapotranspiration index using hydrometeorological parameters and climate indices in eastern Australia. Atmospheric Research, 161-162, 65-81.
Elhoseiny, M., Huang, S., & Elgammal, A. (2015). Weather classification with deep convolutional neural networks. In IEEE International Conference on Image Processing (ICIP), 3349-3353.
Floor, L., Batina, L., & Larson, M. (2020). Ensemble Learning with small machine learning algorithms for Network Intrusion Detection. 2020.
Hasan, M., Ullah, S., Khan, M. J., & Khurshid, K. J. (2019). Comparative analysis of SVM, ANN, and CNN for classifying vegetation species using hyperspectral thermal infrared data. Journal of the International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences.
Ismael, R. S., Youail, R. S., & Kareem, S. W. (2014). Image encryption by using RC4 algorithm. European Academic Research, 4(2), 5833-5839.
Ismael, S. H., Kareem, S. W., & Almukhtar, F. H. (2020). Medical Image Classification Using Different Machine Learning Algorithms. AL-Rafidain Journal of Computer Sciences and Mathematics, 14(1), 135-147.
Johari, D., Rahman, T. K. A., & Musirin, I. (2007). Artificial neural network based technique for lightning prediction. In 5th Student Conference on Research and Development. IEEE, 1-5.
Kakar, S. A., Sheikh, N., Naseem, A., Iqbal, S., Rehman, A., Kakar, A. U., ... & Khan, B. (2018). Artificial neural network based weather prediction using Back Propagation Technique. International Journal of Advanced Computer Science and Applications, 9(8), 462-470.
Kareem, S. W., & Okur, M. C. (2018). Bayesian Network Structure Learning Using Hybrid Bee Optimization and Greedy Search. Çukurova University, Adana, Turkey.
Kareem, S. W., & Okur, M. C. (2019). Pigeon Inspired Optimization of Bayesian Network Structure Learning and a Comparative Evaluation. Journal of Cognitive Science, 20(4), 535-552.
Kareem, S. W., & Okur, M. C. (2020). Structure Learning of Bayesian Networks Using Elephant Swarm Water Search Algorithm. International Journal of Swarm Intelligence Research, 11(2), 19-30.
Kişi, Ö. (2007). Streamflow forecasting using different artificial neural network algorithms. Journal of Hydrologic Engineering, 12(5), 532-539.
Kumar, A., Rizwan, M., & Nangia, U. (2018). Artificial neural network based model for short term solar radiation forecasting considering aerosol index. In 2nd IEEE International Conference on Power Electronics, Intelligent Control and Energy Systems (ICPEIES), 212-217.
LeCun, Y., Bengio, Y., & Hinton, G. (1995). Convolutional networks for images, speech, and time series. The Handbook of Brain Theory and Neural Networks, 3361(10).
LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep learning. Nature, 521(7553), 436-444.
Liu, Y., et al. (2016). Application of deep convolutional neural networks for detecting extreme weather in climate datasets. In International Conference on Advances in Big Data Analytics, 81-88.
Luk, K.C., Ball, J., & Sharma, A. (2001). An application of artificial neural networks for rainfall forecasting. Mathematical and Computer Modelling, 33(6-7), 683-693.
Maqsood, I., Khan, M. R., & Abraham, A. (2004). An ensemble of neural networks for weather forecasting. Neural Computing & Applications, 13(2), 112-122.
Mohammed, A. S., Kareem, S. W., Al azzawi, A. K., & Sivaram, M. (2018). Time Series Prediction Using SRE- NAR and SRE- ADALINE. Journal of Advanced Research in Dynamical & Control Systems, 10(12).
Moradi, M., & Zulkernine, M. (2004). A neural network based system for intrusion detection and classification of attacks. In IEEE.
Morid, S., Smakhtin, V., & Bagherzadeh, K. J. (2007). Drought forecasting using artificial neural networks and time series of drought indices. Journal of Climate, 27(15), 2103-2111.
Narvekar, M., & Fargose, P. (2015). Daily Weather Forecasting using Artificial Neural Network. International Journal of Computer Applications, 9-13, December 2015.
Okur, M. C., & Kareem, S. W. (2020). An Evaluation Algorithms for Classifying Leukocytes Images. In 7th International Engineering Conference Research & Innovation amid Global Pandemic (IEC2021) Erbil, Iraq, 67-72.
Rahul, G. K., Singh, S., & Dubey, S. (2020). Weather Forecasting Using Artificial Neural Networks. In IEEE.
Şahin, M. J. (2012). Modelling of air temperature using remote sensing and artificial neural network in Turkey. Journal of Atmospheric and Solar-Terrestrial Physics, 50(7), 973-985.
Shank, D., & McClendon, R. (2008). Dewpoint temperature prediction using artificial neural networks. Journal of Applied Meteorology and Climatology, 47(6), 1757-1769.
Shereef, S. S. B., & Shereef, I. K. (2010). An efficient weather forecasting system using artificial neural network. International Journal of Environment Science & Development, 1(4), 321.
Shi, E., Li, Q., Gu, D., & Zhao, Z. (2018). A method of weather radar echo extrapolation based on convolutional neural networks. In International Conference on Multimedia Modeling, Springer, 16-28.
Trebing, K., & Mehrkanoon, S. (2020). Wind speed prediction using multidimensional convolutional neural networks. In IEEE.
Weyn, J. A., Durran, D. R., & Caruana, R. J. (2020). Improving Data‐Driven Global Weather Prediction Using Deep Convolutional Neural Networks on a Cubed Sphere. December 9.
Yadav, A. K., & Malik, H. (2019). Short-term wind speed forecasting for power generation in Hamirpur, Himachal Pradesh, India, using artificial neural networks. In Applications of Artificial Intelligence Techniques in Engineering: Springer, 263-271.
Yadav, A., Sahay, A., Yadav, M. R., Bhandari, S., Yadav, A., & Sahay, K. B. (2018). One hour Ahead Short-Term Electricity Price Forecasting Using ANN Algorithms. In International Conference and Utility Exhibition on Green Energy for Sustainable Development. IEEE, 1-4.
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