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Predicting Electric Energy Consumption for a Jerky Enterprise

机译:预测生格利企业的电能消耗

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Wholesale and retail markets for electricity and power require consumers to forecast electricity consumption at different time intervals. The study aims to increase economic efficiency of the enterprise through the introduction of algorithm for forecasting electric energy consumption unchanged in technological process. Qualitative forecast allows you to essentially reduce costs of electrical energy, because power cannot be stockpiled. Therefore, when buying excess electrical power, costs can increase either by selling it on the balancing energy market or by maintaining reserve capacity. If the purchased power is insufficient, the costs increase is due to the purchase of additional capacity. This paper illustrates three methods of forecasting electric energy consumption: autoregressive integrated moving average method, artificial neural networks and classification and regression trees. Actual data from consuming of electrical energy was used to make day, week and month ahead prediction. The prediction effect of prediction model was proved in Statistica simulation environment. Analysis of estimation of the economic efficiency of prediction methods demonstrated that the use of the artificial neural networks method for short-term forecast allowed reducing the cost of electricity more efficiently. However, for mid- range predictions, the classification and regression tree was the most efficient method for a Jerky Enterprise. The results indicate that calculation error reduction allows decreases expenses for the purchase of electric energy.
机译:电力和电力的批发和零售市场要求消费者以不同的时间间隔预测电力消耗。该研究旨在通过引入技术过程中不变的预测电能消耗算法来提高企业的经济效率。定性预测允许您基本上降低电能的成本,因为无法储存电力。因此,在购买过多的电力时,成本可以通过在平衡能源市场上销售或维持储备能力来增加。如果购买的权力不足,成本增加是由于购买额外的容量。本文说明了三种预测电能消耗方法:自回归综合移动平均方法,人工神经网络和分类和回归树。消费电能的实际数据用于制作日,周和月份预测。证明了预测模型的预测效果在统计数据模拟环境中。预测方法经济效率估计分析表明,使用人工神经网络用于短期预测方法,允许更有效地降低电力成本。但是,对于中档预测,分类和回归树是一个最有效的生格利企业的方法。结果表明,计算误差减少允许降低购买电能的费用。

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