主动标记辅助半监督安全评估与任务相关的未知场景

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Chang Liu;Xiao He;Minyue Li;Yi Zhang;Zhongjun Ding
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引用次数: 0

摘要

开放环境对动态系统的在线安全评估提出了一个具有挑战性的问题,这意味着未知场景可能会意外出现。这些未知的场景可能与任务相关,并导致类内分布不匹配。在半监督安全评估任务中,未标记的训练数据包含与任务相关的未知场景,尚未探索解决这一挑战。本文对这一新的半监督安全评价问题进行了研究。提出了一种新的主动标记辅助半监督学习方案,以解决标记和未标记训练数据在类内分布不匹配的问题。该方案首先通过为每个类别构建深度支持向量数据描述网络来检测分布外的未标记数据。随后,引入了一种同时考虑分布不匹配程度和样本代表性的主动标记方法及其核扩展。所提出的主动标注方法可以与任何半监督学习算法无缝集成,以提高其处理与任务相关的未知场景的性能。基于某深海载人潜水器的方位数据和实际操作数据,验证了该方法的有效性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active Labeling Aided Semi-Supervised Safety Assessment With Task-Related Unknown Scenarios
The open environment presents a challenging issue for the online safety assessment of dynamic systems, which means that unknown scenarios may arise unexpectedly. These unknown scenarios can be task-related and result in the within-class distribution mismatch. Addressing this challenge in the semi-supervised safety assessment task, where unlabeled training data contain task-related unknown scenarios, has not been explored. This article investigates this new semi-supervised safety assessment problem. A novel active-labeling-aided semi-supervised learning scheme is proposed to tackle the within-class distribution mismatch between labeled and unlabeled training data. The proposed scheme begins by detecting out-of-distribution unlabeled data through the construction of a deep support vector data description network for each class. Subsequently, an active labeling approach along with its kernel extension is introduced, taking into account both distribution mismatch degree and sample representativeness. The proposed active labeling approach can be seamlessly integrated with any semi-supervised learning algorithm to enhance its performance in handling task-related unknown scenarios. The effectiveness and applicability of the proposed method are demonstrated through case studies based on a bearing dataset and operation data from an actual deep-sea manned submersible.
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来源期刊
IEEE Transactions on Reliability
IEEE Transactions on Reliability 工程技术-工程:电子与电气
CiteScore
12.20
自引率
8.50%
发文量
153
审稿时长
7.5 months
期刊介绍: IEEE Transactions on Reliability is a refereed journal for the reliability and allied disciplines including, but not limited to, maintainability, physics of failure, life testing, prognostics, design and manufacture for reliability, reliability for systems of systems, network availability, mission success, warranty, safety, and various measures of effectiveness. Topics eligible for publication range from hardware to software, from materials to systems, from consumer and industrial devices to manufacturing plants, from individual items to networks, from techniques for making things better to ways of predicting and measuring behavior in the field. As an engineering subject that supports new and existing technologies, we constantly expand into new areas of the assurance sciences.
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