Long-term Electrical load forecasting based on economic and demographic data for Turkey

N. Çetinkaya
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引用次数: 16

Abstract

Load forecasting is very important to operate the electric power systems. One of the primary tasks of an electric utility accurately predicts load demand requirements at all times, especially for long-term. Long term load forecasting (LTLF) is in need to plan and carry on future energy demand and investment such as size of energy plant. LTLF is affected by energy consumption data, national incoming, urbanization rate, population increasing rate and as well as other economic parameters. Artificial Neural Network (ANN) and Artificial Neural Fuzzy Inference System (ANFIS) are the famous artificial intelligence methods and have widely used to solve forecasting problems in literature. In this study, artificial intelligence methods and mathematical modeling (MM) are used to forecast long term energy consumption and peak load for Turkey. The four different input data are used to obtain two different outputs in all three methods. Using the four different variables especially in mathematical modeling has been a novelty for Turkey case study. The results obtained from ANFIS, ANN and MM are compared to show availability. In order to show error levels mean absolute percentage error (MAPE) and mean absolute error (MAE) are used.
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基于土耳其经济和人口数据的长期电力负荷预测
负荷预测对电力系统的运行具有重要意义。电力公司的主要任务之一是始终准确预测负荷需求,特别是长期负荷需求。长期负荷预测(LTLF)是对未来能源需求和能源工厂规模等投资进行规划和进行的必要手段。LTLF受能源消耗数据、国民收入、城市化率、人口增长率以及其他经济参数的影响。人工神经网络(ANN)和人工神经模糊推理系统(ANFIS)是著名的人工智能方法,在文献中被广泛用于解决预测问题。在本研究中,采用人工智能方法和数学建模(MM)来预测土耳其的长期能源消耗和峰值负荷。在所有三种方法中,四个不同的输入数据用于获得两个不同的输出。使用这四个不同的变量,特别是在数学建模中,对于土耳其的案例研究来说是一种新颖的方法。比较了ANFIS、ANN和MM方法的结果,证明了其有效性。为了显示误差水平,使用平均绝对百分比误差(MAPE)和平均绝对误差(MAE)。
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