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首页> 外文期刊>International Journal of Electrical Power & Energy Systems >PREDICT - Decision support system for load forecasting and inference: A new undertaking for Brazilian power suppliers
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PREDICT - Decision support system for load forecasting and inference: A new undertaking for Brazilian power suppliers

机译:PREDICT-负荷预测和推断的决策支持系统:巴西电力供应商的新事业

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摘要

One of the most desired aspects for power suppliers is the acquisition/sale of energy for a future demand. However, power consumption forecast is characterized not only by the variables of the power system itself, but also related to social-economic and climatic factors. Hence, it is imperative for the power suppliers to project and correlate these parameters. This paper presents a study of power load forecast for power suppliers, considering the applicability of wavelets, time series analysis methods and artificial neural networks, for both mid and long term forecasts. Both the periods of forecast are of major importance for power suppliers to define the future power consumption of a given region. The paper also studies the establishment of correlations among the variables using Bayesian networks. The results obtained are much more effective when compared to those projected by the power suppliers based on specialist information. The research discussed here is implemented on a decision support system, contributing to the decision making for acquisition/sale of energy at a future demand; also providing them with new ways for inference and analyses with the correlation model presented here.
机译:电力供应商最期望的方面之一是针对未来需求的能源的购买/销售。但是,用电量预测的特征不仅在于电力系统本身的变量,而且还与社会经济和气候因素有关。因此,电力供应商必须计划并关联这些参数。本文考虑了小波,时间序列分析方法和人工神经网络在中长期预测中的适用性,对电力供应商的电力负荷预测进行了研究。这两个预测期对于电力供应商定义给定区域的未来电力消耗至关重要。本文还研究了使用贝叶斯网络建立变量之间相关性的方法。与电源供应商根据专业信息预测的结果相比,所获得的结果要有效得多。此处讨论的研究是在决策支持系统上实施的,有助于为将来需求中的能源购置/销售做出决策;还通过此处介绍的相关模型为他们提供了推理和分析的新方法。

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  • 作者单位

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

    Laboratory of High Performance Networks Planning, Federal University of Para, R. Augusto Correa, 01, 66075-110 Belem, PA, Brazil;

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  • 正文语种 eng
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  • 关键词

    decision support system; power load forecast; time series analysis; wavelets; neural networks; bayesian networks;

    机译:决策支持系统;电力负荷预测;时间序列分析;小波神经网络;贝叶斯网络;

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