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Real-Time Stochastic Optimization of Energy Storage Management Using Deep Learning-Based Forecasts for Residential PV Applications

机译:基于深入学习的预测预测的储能管理实时随机优化

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摘要

A computationally proficient real-time energy management method with stochastic optimization is presented for a residential photovoltaic (PV)-storage hybrid system comprised of a solar PV generation and a battery energy storage (BES). Existing offline energy management approaches for day-ahead scheduling of BES suffer from energy loss in real time due to the stochastic nature of load and solar generation. On the other hand, typical online algorithms do not offer optimal solutions for minimizing electricity purchase costs to the owners. To overcome these limitations, we propose an integrated energy management framework consisting of an offline optimization model concurrent with a real-time rule-based controller. The optimization is performed in receding horizon with load and solar generation forecast profiles using deep learning-based long short term memory method in rolling horizon to reduce the daily electricity purchase costs. The optimization model is formulated as a multistage stochastic program where we use the stochastic dual dynamic programming algorithm in the receding horizon to update the optimal set point for BES dispatch at a fixed interval. To prevent loss of energy during optimal solution update intervals, we introduce a rule-based controller underneath the optimization layer in finer time resolution at the power electronics converter control level. The proposed framework is evaluated using a real-time controller-hardware-in-the-loop test platform in an OPAL-RT simulator. The proposed real-time method is effective in reducing the net electricity purchase cost compared to other existing energy management methods.
机译:提供了一种具有随机优化的计算良好的实时能量管理方法,用于包括太阳能光伏生电(PV)和电池储能(BES)组成的居住光伏(PV)-Storage混合系统。由于负载和太阳能发电的随机性质,BES的现有离线能源管理方法遭受了实时损失的能量损失。另一方面,典型的在线算法不提供最佳解决方案,以最大限度地减少给业主的电力购买成本。为了克服这些限制,我们提出了由离线优化模型同时具有实时基于规则的控制器集成能源管理框架。在滚动地平线中使用深度学习的长短期内存方法来对滚动和太阳能预测曲线进行负载和太阳能预测谱进行的优化进行了优化,以降低日常电力购买成本。优化模型作为多级随机程序配制,我们在后退地平线中使用了随机双动脉编程算法,以在固定间隔内更新BES调度的最佳设定点。为了防止在最佳解决方案的更新间隔能量损失,我们将介绍在电力电子变换器的控制水平更细的时间分辨率优化层下方的基于规则的控制器。在Opal-RT模拟器中使用实时控制器 - 硬件在循环测试平台进行评估所提出的框架。与其他现有的能源管理方法相比,所提出的实时方法可有效地降低净电力购买成本。

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