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Hyper-parameter Optimization of Multi-attention Recurrent Neural Network for Battery State-of-Charge Forecasting

机译:电池电池级预测多关注经常性神经网络的超参数优化

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In the past years, a rapid deployment of battery energy storage systems for diverse smart grid services has been seen in electric power systems. However, a cost-effective and multi-objective application of these services necessitates a utilization of forecasting methods for a development of efficient capacity allocation and risk management strategies over the uncertainty of battery state-of-charge. The aim of this paper is to assess the tuning efficiency of multi-attention recurrent neural network for multi-step forecasting of battery state-of-charge under provision of primary frequency control. In particular, this paper describes hyper-parameter optimization of the network with a tree-structured parzen estimator and compares such optimization performance with random and manual search on a simulated battery state-of-charge dataset. The experimental results demonstrate that the tree-structured parzen estimator enables 0.6% and 1.5% score improvement for the dataset compared with the random and manual search, respectively.
机译:在过去几年中,在电力系统中,已经看到了用于多样化智能电网服务的电池储能系统的快速部署。然而,对这些服务的成本效益和多目标应用需要利用在不确定的电池充电的不确定性方面开发有效的能力分配和风险管理策略的预测方法。本文的目的是评估多关注经常性神经网络的调整效率,以便在提供初级频率控制下进行电池电量的多步预测。特别是,本文介绍了具有树结构的Parzen估计器的网络的超参数优化,并将这种优化性能与随机电池的充电状态数据集进行了随机和手动搜索。实验结果表明,与随机和手动搜索分别相比,树结构的Parzen估计器能够为数据集进行0.6%和1.5%的分数改进。

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