Short term load forecasting using artificial intelligence

Qiniso W. Luthuli, K. Folly
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引用次数: 21

Abstract

This paper presents a comparative study of short-term load forecasting using Artificial Intelligence (AI) and the conventional approach. A feed-forward, multilayer artificial neural network (ANN) was employed to provide a 24-hour load demand forecast. In this model, historical data, weather information, day types and special calendar days were considered. The forecasted results using AI were compared with those of conventional method. From the simulations it is found that the maximum forecasting percentage error for AI is approximately 5.5% as opposed to 15.96% for the conventional approach.
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利用人工智能进行短期负荷预测
本文对利用人工智能(AI)和传统方法进行短期负荷预测进行了比较研究。采用前馈多层人工神经网络(ANN)进行24小时负荷需求预测。在该模型中,考虑了历史数据、天气信息、日类型和特殊日历日。并将人工智能预测结果与常规方法进行了比较。从模拟中发现,人工智能的最大预测百分比误差约为5.5%,而传统方法的预测百分比误差为15.96%。
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