References
- R. Behera, B. B. Pati, B. P. Panigrahi., “A Long Term Load Forecasting of an Indian Grid for Power System Planning”, Journal of The Institution of Engineers (India): Series B, 2014
- Lin, Ke & Hu, Yonghua & Kong, Guilan.,”Predicting In-hospital Mortality of Patients with Acute Kidney Injury in the ICU Using Random Forest Model”, International Journal of Medical Informatics, 2019.
- B. Islam, Z. Baharudin, Q. Raza, P. Nallagownden. “Hybrid and integrated intelligent system for load demand prediction”, IEEE 7th International Power Engineering and Optimization Conference (PEOCO), 2013
- Khalaj, Gholamreza, Tohid Azimzadegan, Mahdi Khoeini, and Moslem Etaat. “Artificial neural networks application to predict the ultimate tensile strength of X70 pipeline steels”, Neural Computing and Applications, 2013
- Vinayak Balkrishana Kulkarni. “Intelligent air traffic controller simulation using artificial neural networks”, International Conference on Industrial Instrumentation and Control (ICIC), 2015
- K. Pramela kumari, S. R. Anand, V. P. Jagathy Raj, E. A. Jasmin. “Short-term load forecast of a low load factor power system for optimization of merit order dispatch using adaptive learning algorithm”, International Conference on Power, Signals, Controls and Computation, 2012
- G. A. Adepoju, “Application of Neural Network to Load Forecasting in Nigerian Electrical Power System,” The Practical Journal of Science and Technology, vol. volume 8, 2007.
- A. Jain, M. B. Jain, and E. Srinivas, “A novel hybrid method for short term load forecasting using fuzzy logic and particle swarm optimization,” in Power System Technology (POWERCON), 2010 International Conference on, 2010, pp. 1-7.
- Y. Hoseynpoor, T. P. Ashraf, and P. M. Ardabili, “Electrical Load Forecasting Techniques: A Review and Comparison,” Journal of Basic & Applied Scientific Research, 2(2)1860-1868,2012, ISSN 2090-4304.
- Almeshaiei, E., & Soltan, H. (2011). A methodology for Electric Power Load Forecasting. Alexandria Engineering Journal, 50, pp.137–144. doi: 10.1016/j.aej.2011.01.015
- Qianqian Zhang, Shifeng Liu “Urban traffic flow prediction model based on BP artificial neural network in Beijing area” Journal of Discrete Mathematical Sciences and Cryptography, Volume 21, 2018 - Issue 4, pp 849–858 doi: 10.1080/09720529.2018.1479167
- Jyothi Varanasi & M.M. Tripathi “K-means clustering based photo voltaic power forecasting using artificial neural network, particle swarm optimization and support vector regression” Journal of information and optimization sciences, Volume 40, 2019 - Issue 2, pp 309-328 doi: 10.1080/02522667.2019.1578091