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Weighted Time-Variant Slide Fuzzy Time-Series Models for Short-Term Load Forecasting

机译:短期负荷预测的加权时变滑动模糊时间序列模型

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Short-term load forecast plays an important role in the day-to-day operation and scheduling of generating units. Season and temperature are the most important factors that affect the load change, but random factors such as big sport events or popular TV shows can change demand consumption in particular hours, which will lead to sudden load changes. A weighted time-variant slide fuzzy time-series model (WTVS) for short-term load forecasting is proposed to improve forecasting accuracy. The WTVS model is divided into three parts, including the data preprocessing, the trend training and the load forecasting. In the data preprocessing phase, the impact of random factors will be weakened by smoothing the historical data. In the trend training and load forecasting phase, the seasonal factor and the weighted historical data are introduced into the Time-variant Slide Fuzzy Time-series Models (TVS) for short-term load forecasting. The WTVS model is tested on the load of the National Electric Power Company in Jordan. Results show that the proposed WTVS model achieves a significant improvement in load forecasting accuracy as compared to TVS models.
机译:短期负荷预测在发电机组的日常运行和调度中发挥着重要作用。季节和温度是影响负荷变化的最重要因素,但大型体育赛事或热门电视节目等随机因素会在特定小时内改变需求消耗,这将导致负荷突然变化。提出了一种用于短期负荷预测的加权时变滑动模糊时间序列模型(WTVS),以提高预测的准确性。 WTVS模型分为三个部分,包括数据预处理,趋势训练和负荷预测。在数据预处理阶段,将通过平滑历史数据来减弱随机因素的影响。在趋势训练和负荷预测阶段,将季节性因素和加权历史数据引入时变滑动模糊时间序列模型(TVS)中,以进行短期负荷预测。 WTVS模型在约旦国家电力公司的负载上进行了测试。结果表明,与TVS模型相比,所提出的WTVS模型在负荷预测准确性上取得了显着提高。

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