评估物联网数据的完整性:一种新颖的概率方法

IF 7.9 3区 管理学 Q1 Computer Science
Mathias Klier, Lars Moestue, Andreas Obermeier, Torben Widmann
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引用次数: 0

摘要

物联网(IoT)是工业 4.0 的驱动力之一,具有改善整个价值链的潜力,尤其是在工业制造领域。然而,只有保持高水平的数据质量,从物联网数据中得出的结果才是可行的。因此,数据的完整性尤为重要,因为不完整的数据是物联网中最常见、成本最高的数据质量缺陷之一。然而,评估物联网数据完整性的现有方法适用性有限,因为它们假定现实世界实体的数量已知,或者现实世界实体以规则模式出现。因此,它们无法处理物联网环境中通常存在的真实世界实体数量的不确定性。在此背景下,本文提出了一种基于概率的新型度量方法,以解决这些问题,并提供可解释的度量值,代表物联网数据库完整的概率。该概率的评估基于对现实世界实体估计数量与数字实体数量之间偏差的异常值的检测。利用一家德国汽车制造商的物联网数据进行的评估表明,所提供的度量值非常有用,信息量大,可以很好地区分完整和不完整的物联网数据。该指标有可能降低与不完整物联网数据相关的成本、时间和精力,从而在实际应用中带来切实的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Assessing Completeness of IoT Data: A Novel Probabilistic Approach

Assessing Completeness of IoT Data: A Novel Probabilistic Approach

The Internet of Things (IoT) is one of the driving forces behind Industry 4.0 and has the potential to improve the entire value chain, especially in the context of industrial manufacturing. However, results derived from IoT data are only viable if a high level of data quality is maintained. Thereby, completeness is especially critical, as incomplete data is one of the most common and costly data quality defects in the IoT context. Nevertheless, existing approaches for assessing the completeness of IoT data are limited in their applicability because they assume a known number of real-world entities or that the real-world entities appear in regular patterns. Thus, they cannot handle the uncertainty regarding the number of real-world entities typically present in the IoT context. Against this background, the paper proposes a novel, probability-based metric that addresses these issues and provides interpretable metric values representing the probability that an IoT database is complete. This probability is assessed based on the detection of outliers regarding the deviation between the estimated number of real-world entities and the number of digital entities. The evaluation with IoT data from a German car manufacturer demonstrates that the provided metric values are useful and informative and can discriminate well between complete and incomplete IoT data. The metric has the potential to reduce the cost, time, and effort associated with incomplete IoT data, providing tangible benefits in real-world applications.

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来源期刊
Business & Information Systems Engineering
Business & Information Systems Engineering 工程技术-计算机:信息系统
CiteScore
11.30
自引率
7.60%
发文量
44
审稿时长
3.0 months
期刊介绍: BISE (Business & Information Systems Engineering) is an international scholarly journal that undergoes double-blind peer review. It publishes scientific research on the effective and efficient design and utilization of information systems by individuals, groups, enterprises, and society to enhance social welfare. Information systems are viewed as socio-technical systems involving tasks, people, and technology. Research in the journal addresses issues in the analysis, design, implementation, and management of information systems.
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