基于深度迁移学习的复杂环境下油气管道周界入侵事件识别
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TP391.4TH865

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国家自然科学基金(51475407,51605419,61701429)、河北省自然科学基金(E2018203433,F2018203137)、河北省引进留学人员项目(C201827)、天津市重点研发计划(19YFSLQY00080)资助项目


Perimeter intrusion event identification of oil and gas pipelines under complex conditions based on deep transfer learning
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    摘要:

    长输油气管道沿途运行环境复杂,传统方法中假设的标准样本与实际样本分布一致的前提遭到破坏,导致单一的识别模型在不同环境下对入侵事件识别准确率降低。为了改善识别模型偏差问题,提出一种基于域不变特征深度迁移学习的管道入侵事件识别方法,通过堆叠稀疏自编码网络实现不同环境条件下的入侵事件自适应特征提取,并引入迁移学习实现复杂环境中入侵事件的准确识别。该方法通过场景差异性评测,缩小复杂真实场景与典型场景间分布差异,获得有效的域不变模型。实验结果表明,所提方法能明显改善复杂环境下油气管道入侵事件识别效果,提高识别准确率。

    Abstract:

    The operating conditions along longdistance oil and gas pipeline are completed, and the premise that the distribution of actual samples is consistent with that of standard samples in traditional method is destroyed. This situation results in the low identification accuracy of intrusion event for single identification model under different conditions. In order to improve the identification model deviation, this paper proposes a pipeline intrusion event identification method based on the deep transfer learning for domain invariant feature. The stacked sparse autoencoder network is utilized to adaptively extract the domaininvariant features for the intrusion events under different working conditions. Then, the transfer learning is introduced to achieve the accurate identification of pipeline intrusion events under complex conditions. The proposed method reduces the distribution difference between complex real scenes and typical scenes through scene difference evaluation, and obtains an effective domain invariant model. The experiment results show that the proposed method can obviously improve the recognition results of oil and gas pipeline intrusion events under complex conditions, and enhance the identification accuracy.

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温江涛,王涛,孙洁娣,付磊,李刚,杨文明.基于深度迁移学习的复杂环境下油气管道周界入侵事件识别[J].仪器仪表学报,2019,40(8):12-19

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  • 在线发布日期: 2022-02-22
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