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Long Term Electricity Load Forecast Based on Machine Learning for Cameroon's Power System
2022
Energy and Environment Research
A reliable power supply has long been identified as an important economic growth parameter. Electricity load forecasts predict the future behavior of the electricity load. Carrying out a forecast is important for real-time dispatching of power, grid maintenance scheduling, grid expansion planning, and generation planning depending on the forecasting horizon. Most of the methods used in long-term load forecasting are regressions and are limited to predicting peak loads of a yearly or monthly
doi:10.5539/eer.v12n1p45
fatcat:jz2wdqyo65e4tfer3ngcvu4zwe