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Microgrid Energy Management Systems Design by Computational Intelligence Techniques

机译:微电网能源管理系统通过计算智能技术设计

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With the capillary spread of multi-energy systems such as microgrids, nanogrids, smart homes and hybrid electric vehicles, the design of a suitable Energy Management System (EMS) able to schedule the local energy flows in real time has a key role for the development of Renewable Energy Sources (RESs) and for reducing pollutant emissions. In the literature, most EMSs proposed are based on the implementation of energy systems prediction which enable to run a specific optimization algorithm. Such strategy, known as Rolling Time Horizon (RTH), demonstrated very effective when the supporting prediction system performs well. However, it is featured by high operational times. In this work, different lightweight EMS models synthesized through machine learning algorithms have been compared considering six different simulation scenarios. Results shows that an RTH-based EMS owns the best overall performances. However, in some case studies, also other EMSs show competitive results, especially those based on Adaptive Neuro Fuzzy Inference Systems (ANFIS) trained by clustering, which in one case outperform RTH EMSs, and in other 3 cases (out of 6) yields performances close to RTH EMSs within 5%. A second contribution concerns the RTH EMS implementation on a small micro-controller, highlighting the high computational effort which can range in the order of minutes. Conversely, the ANFIS EMS shows always almost negligible computational costs (less than one second) and therefore can be used in realistic scenarios on cheap devices at run time. The paper also proposed a novel graphic tool to better represent, observe and analyze microgrid energy flows in each time slot or along the overall considered dataset.
机译:随着微电网,纳米格栅,智能家庭和混合动力电动车的多能量系统的毛细管扩散,能够在实时安排当地能量流量的合适能源管理系统(EMS)的设计对开发具有关键作用可再生能源(RESS)和减少污染物排放。在文献中,提出的大多数EMS都基于能量系统预测的实现,该预测能够运行特定的优化算法。当支撑预测系统表现良好时,这种策略称为滚动时间范围(Rth),非常有效地证明了非常有效。但是,它具有高的操作时间。在这项工作中,考虑到六种不同的仿真方案,比较了通过机器学习算法合成的不同轻量级EMS模型。结果表明,基于RTH的EMS拥有最佳整体表演。然而,在某种程度上研究中,其他EMS也表现出竞争结果,特别是基于聚类培训的自适应神经模糊推理系统(ANFIS)的竞争结果,其中在一个案例中优于Rth EMS,并且在其他3例(6例中)产生的性能靠近Rth EMS在5%以内。第二款贡献涉及Rth EMS在小型微控制器上的实施,突出了可以按分钟数范围的高计算工作。相反,ANFIS EMS始终显示几乎可忽略不计的计算成本(不到一秒),因此可以在运行时的廉价设备上的现实方案中使用。本文还提出了一种新颖的图形工具,可以更好地代表,观察和分析每个时隙或沿整个考虑的数据集中的微电网能量流。

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