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The Comparison Study of Short-Term Prediction Methods to Enhance the Model Predictive Controller Applied to Microgrid Energy Management

机译:增强模型预测控制器在微电网能源管理中的短期预测方法的比较研究

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Electricity load forecasting, optimal power system operation and energy management play key roles that can bring significant operational advantages to microgrids. This paper studies how methods based on time series and neural networks can be used to predict energy demand and production, allowing them to be combined with model predictive control. Comparisons of different prediction methods and different optimum energy distribution scenarios are provided, permitting us to determine when short-term energy prediction models should be used. The proposed prediction models in addition to the model predictive control strategy appear as a promising solution to energy management in microgrids. The controller has the task of performing the management of electricity purchase and sale to the power grid, maximizing the use of renewable energy sources and managing the use of the energy storage system. Simulations were performed with different weather conditions of solar irradiation. The obtained results are encouraging for future practical implementation.
机译:电力负荷预测,最佳电力系统运行和能源管理起着关键作用,可以为微电网带来巨大的运行优势。本文研究了如何将基于时间序列和神经网络的方法用于预测能源需求和生产,并将其与模型预测控制相结合。提供了不同预测方法和不同最佳能量分配方案的比较,使我们能够确定何时应使用短期能量预测模型。除模型预测控制策略外,所提出的预测模型似乎是微电网能源管理的有前途的解决方案。控制器的任务是执行对电网购电和售电的管理,最大程度地利用可再生能源并管理储能系统的使用。在不同的太阳辐射天气条件下进行了模拟。获得的结果对于将来的实际实施是令人鼓舞的。

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