The research paper introduces a novel technique for forecasting electricity usage by utilizing the Developed human evolutionary optimization (DHEO) algorithm and the Xception Neural Network (Xception-NN) model. The Xception-NN model, which is a modified deep learning framework, processes time-series data and incorporates various factors such as weather conditions, demographic insights, and economic indicators. By refining the model's parameters, the DHEO algorithm, inspired by human evolutionary principles, enables a more accurate capture of intricate dependencies and patterns in electricity consumption data. This approach provides energy companies and utilities with a means to enhance their predictions, optimize energy production, and effectively anticipate future demand. Additionally, the study investigates electricity consumption under two scenarios: Base Line (BL) and Energy Conservation (EC), with a focus on the volume of electricity consumed across different sectors. The EC scenario leads to a notable 6.54% reduction in electricity consumption, with the industry sector experiencing the most significant decline.
Electricity usage prediction using developed human evolutionary optimization algorithm and Xception neural network.
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作者:Yu Dongxian, Wu Di, Liao Chongyang, Cao Zaihui, Pouramini Somayeh
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2025 | 起止号: | 2025 Jul 9; 15(1):24785 |
| doi: | 10.1038/s41598-025-10557-2 | ||
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