Energy Consumption Prediction in Iran: A Hybrid Machine Learning and Genetic Algorithm Method with Sustainable Development Considerations
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DOI: 10.22097/EEER.2022.307251.1224
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Keywords
Energy consumption prediction; Sustainable development; Predictive model; Machine learning; Data mining;All these keywords.
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