Aihua Yang, Tianke Fang, Elcid A. Serrano, Bin Liu, Fucai Liu, Zhenxiang Chen
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引用次数: 0
摘要
全球能源结构正在发生转变,新能源汽车正在成为汽车行业的未来。然而,充电桩及相关设施的发展并没有跟上新能源汽车发展的步伐。本研究利用门控递归单元网络和鲸鱼算法构建了一个高性能的充电桩故障预测模型。所提出的模型利用鲸鱼算法防止门控递归单元网络陷入局部最优,提高了预测信息的提取和预测能力。实验验证结果表明,所提出的模型达到了 92.02% 的预测准确率、85.66% 的召回率和 93.87% 的 F1 值。此外,所提出的模型还表现出了出色的计算能力,在两个数据集上的平均运行时间均少于 5 分钟。这一结果大大缩短了对照模型的运行时间。实验结果表明,本研究提出的模型具有很好的预测故障数据的能力。其先进性通过对比测试得到了验证,可为后续研究提供参考。
Charging Pile Fault Prediction Model Based on GRU Network and WOA
The global energy structure is transforming, and new energy vehicles are becoming the future of the automobile industry. However, the development of charging piles and related facilities has not kept pace with the growth of new energy vehicles. This study uses the gated recurrent unit network and the whale algorithm to construct a high-performance charging pile fault prediction model. The proposed model, which utilizes the whale algorithm to prevent the gated recurrent unit network from falling into local optima, demonstrates improved predictive information extraction and prediction ability. The experimentally verified results indicate that the proposed model achieved 92.02% prediction accuracy, 85.66% recall, and 93.87% F1 value. Additionally, the proposed model demonstrates excellent computational ability with an average running time of under 5 minutes on both datasets. This result is a substantial reduction from the control model's running time. The experimental findings show that the study's suggested model has a good ability to anticipate fault data. Its sophistication is verified by comparative tests, which can provide a reference for subsequent research.