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A Survey on Electric Power Demand Forecasting: Future Trends in Smart Grids, Microgrids and Smart Buildings

机译:电力需求预测调查:智能电网,微电网和智能建筑的未来趋势

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摘要

Recently there has been a significant proliferation in the use of forecasting techniques, mainly due to the increased availability and power of computation systems and, in particular, to the usage of personal computers. This is also true for power network systems, where energy demand forecasting has been an important field in order to allow generation planning and adaptation. Apart from the quantitative progression, there has also been a change in the type of models proposed and used. In the `70s, the usage of non-linear techniques was generally not popular among scientists and engineers. However, in the last two decades they have become very important techniques in solving complex problems which would be very difficult to tackle otherwise. With the recent emergence of smart grids, new environments have appeared capable of integrating demand, generation, and storage. These employ intelligent and adaptive elements that require more advanced techniques for accurate and precise demand and generation forecasting in order to work optimally. This review discusses the most relevant studies on electric demand prediction over the last 40 years, and presents the different models used as well as the future trends. Additionally, it analyzes the latest studies on demand forecasting in the future environments that emerge from the usage of smart grids.
机译:近来,预测技术的使用已经有了显着的增长,这主要是由于计算系统的可用性和功能的提高,尤其是由于个人计算机的使用。对于电网系统来说也是如此,在该系统中,能源需求预测一直是重要的领域,以便进行发电计划和调整。除了定量进展外,建议和使用的模型类型也发生了变化。在20世纪70年代,非线性技术的使用通常在科学家和工程师中并不普遍。但是,在过去的二十年中,它们已成为解决复杂问题的非常重要的技术,否则这些问题将很难解决。随着最近出现的智能电网,出现了能够集成需求,发电和存储的新环境。这些采用智能和自适应元素,需要更先进的技术来实现准确,精确的需求和发电量预测,以实现最佳工作。这篇评论讨论了过去40年中与电力需求预测最相关的研究,并介绍了使用的不同模型以及未来趋势。此外,它还分析了由于使用智能电网而产生的有关未来环境中需求预测的最新研究。

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