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A renewable energy forecasting and control approach to secured edge-level efficiency in a distributed micro-grid

机译:一种可再生能源预测和控制分布式微电网边缘级效率的控制方法

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Energy forecasting using Renewable energy sources (RESs) is gradually gaining weight in the research field due to the benefits it presents to the modern-day environment. Not only does energy forecasting using renewable energy sources help mitigate the greenhouse effect, it also helps to conserve energy for future use. Over the years, several methods for energy forecasting have been proposed, all of which were more concerned with the accuracy of the prediction models with little or no considerations to the operating environment. This research, however, proposes the uses of Deep Neural Network (DNN) for energy forecasting on mobile devices at the edge of the network. This ensures low latency and communication overhead for all energy forecasting operations since they are carried out at the network periphery. Nevertheless, the cloud would be used as a support for the mobile devices by providing permanent storage for the locally generated data and a platform for offloading resource-intensive computations that exceed the capabilities of the local mobile devices as well as security for them. Electrical network topology was proposed which allows seamless incorporation of multiple RESs into the distributed renewable energy source (D-RES) network. Moreover, a novel grid control algorithm that uses the forecasting model to administer a well-coordinated and effective control for renewable energy sources (RESs) in the electrical network is designed. The electrical network was simulated with two RESs and a DNN model was used to create a forecasting model for the simulated network. The model was trained using a dataset from a solar power generation company in Belgium (elis) and was experimented with a different number of layers to determine the optimum architecture for performing the forecasting operations. The performance of each architecture was evaluated using the mean square error (MSE) and the r-square.
机译:由于其呈现给现代环境的好处,使用可再生能源(RESS)的能量预测逐渐增加了研究领域的重量。不仅使用可再生能源的能量预测有助于减轻温室效应,它还有助于节省能源以供将来使用。多年来,已经提出了几种能源预测方法,所有这些方法都更加关注预测模型的准确性,几乎没有考虑操作环境。然而,本研究提出了深度神经网络(DNN)用于网络边缘的移动设备的能量预测的用途。这确保了所有能量预测操作的低延迟和通信开销,因为它们是在网络外围进行的。然而,通过为本地生成的数据和用于卸载超出本地移动设备的能力以及它们的安全性的卸载资源密集型计算的平台来使用永久存储来作为移动设备的支持。提出了电气网络拓扑,其允许将多个RES内的无缝融入分布式可再生能源(D-RES)网络。此外,设计了一种新颖的网格控制算法,它设计了预测模型来管理电网中可再生能源(RESS)的协调和有效控制的良好协调和有效控制。用两个RES模拟电网,使用DNN模型来为模拟网络创建预测模型。该模型使用比利时(ELIS)的太阳能发电公司的数据集进行培训,并用不同数量的层进行实验,以确定用于执行预测运营的最佳架构。使用均方误差(MSE)和R-Square评估每个架构的性能。

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