Artificial intelligence-based forecasting models for integrated energy system management planning: An exploration of the prospects for South Africa

被引:2
作者
Krishnamurthy, Senthil [1 ]
Adewuyi, Oludamilare Bode [1 ]
Luwaca, Emmanuel [1 ]
Ratshitanga, Mukovhe [1 ]
Moodley, Prathaban [2 ]
机构
[1] Cape Peninsula Univ Technol, Dept Elect Elect & Comp Engn, ZA-7535 Bellville, South Africa
[2] South African Natl Energy Dev Inst, Appl Energy R&D & Innovat Unit, ZA-2146 Sandton, South Africa
关键词
Energy resource management; Load and generation forecasting; Artificial intelligence-based predictive analytics; Machine learning and deep learning algorithms; Demand-side management; DEMAND-SIDE MANAGEMENT; POWER-GENERATION; NEURAL-NETWORKS; RANDOM FOREST; BOX-JENKINS; REGRESSION; DECOMPOSITION; OPTIMIZATION; CHALLENGES; LSTM;
D O I
10.1016/j.ecmx.2024.100772
中图分类号
O414.1 [热力学];
学科分类号
摘要
The regional energy demand for Southern Africa has been predicted to increase by ten to fourteen times between the years 2010 and 2070. Thus, to address the proliferation of energy demand, South Africa's integrated resource plan, which includes using renewable energy sources to increase the electricity supply and reduce the country's carbon footprint, has been formulated. However, integrating renewable power into the power grid brings different dynamics for the system operators, as renewable power sources are variable and uncertain. Thus, accurate demand and generation forecasting become critical to the safe operation and ensuring continuity of supply, as consumers require. Due to the complexity of the earth's atmosphere, weather forecasting uncertainty, and region-specific criteria, traditional forecasting models are limited. Thus, Machine Learning, Deep Learning, and other artificial intelligence techniques are attractive possibilities for improving classical forecasting models. This study comprehensively reviewed relevant works on AI-based models for generation potential and load demand forecasting toward intelligent energy resource management and planning. The approach involved searching research databases and other sources for studies, reports, and publications on location-specific energy resource management using criteria such as demography, policy, and sociotechnical information. Consequently, the review study has highlighted how AI predictive analytics can enhance long-term energy resource potential and load forecasting toward improving electricity sector performance and promoting integrated energy system management implementation in South Africa.
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页数:21
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