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首页> 外文期刊>Neural Network World >ACCURACY OF ANN BASED DAY-AHEAD LOAD FORECASTING IN TURKISH POWER SYSTEM: DEGRADING AND IMPROVING FACTORS
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ACCURACY OF ANN BASED DAY-AHEAD LOAD FORECASTING IN TURKISH POWER SYSTEM: DEGRADING AND IMPROVING FACTORS

机译:土耳其电力系统中基于人工神经网络的日前负荷预测的准确性:降级和改进因素

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This paper presents development of a day ahead load forecasting (DALF) model for Turkish power system with an artificial neural network (ANN). Effects of special holidays including national and religious days, and hourly random load deviations observed in Turkish power system due to significant arc furnace loads are discussed. Performance of the ANN is investigated in the sense of both DALF performance in terms of both daily mean absolute percentage error (MAPE) and hourly absolute percentage error (APE) and hourly secondary reserves required to ensure supply/demand adequacy of the system. The most sensitive cities to DALF in terms of daily city temperature forecasts are ranked in order to reduce the input of the developed ANN and thereby to improve execution of the model. Candidate cities are determined based on both their placement with respect to climatic zones of the country and their contribution to the system load during peak hours. The results show that, although a well-trained ANN could provide very satisfactory daily MAPEs at non-special days, such as the hourly absolute percentage errors (APE) could be significant due to large random load disturbances, which necessitate special attention during the day ahead allocation of hourly secondary reserves. By limiting the temperature data set with major cities, the input of ANN reduces significantly while not disturbing the MAPEs. Main contributions of the study are; addressing both benefits of the prioritizing the cities in a power system in the sense of their temperature forecast effects on the DALF performance and assessing the performance of DALF in the sense of necessary amount of secondary reserves in power systems which include significant random load deviations (e.g., large arc furnace loads).
机译:本文介绍了使用人工神经网络(ANN)的土耳其电力系统的提前负荷预测(DALF)模型的开发。讨论了特殊假日(包括国家和宗教日)的影响,以及土耳其电力系统中由于电弧炉显着负荷导致的每小时随机负荷偏差。从每日平均绝对百分比误差(MAPE)和每小时绝对百分比误差(APE)以及每小时二次储备的角度来研究ALF的性能,以确保系统的供需充足。就每日城市温度预测而言,对DALF最敏感的城市进行排名,以减少已开发的ANN的输入,从而改善模型的执行。候选城市是根据其在该国气候区中的​​位置以及在高峰时段对系统负荷的贡献来确定的。结果表明,尽管训练有素的人工神经网络可以在非特殊日子提供非常令人满意的每日MAPE,例如,每小时的绝对百分比误差(APE)可能由于较大的随机负载干扰而显着,这需要在白天特别注意提前分配每小时二级储备。通过限制主要城市的温度数据集,ANN的输入将显着减少,而不会影响MAPE。该研究的主要贡献是:从温度对DALF性能的影响方面考虑优先考虑电力系统中的城市的两种好处,并从电力系统中二次储备的必要量(包括显着的随机负载偏差)的角度评估DALF的性能,大的电弧炉负荷)。

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