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Enhancing semantic belief function to handle decision conflicts in SoS using k-means clustering

机译:增强语义信念功能以处理SOS中的决策冲突使用K-means群集

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Background The endeavouring to offer complex special functions from individual systems gave rise to what is known as the System of Systems (SoS). SoS co-integrating systems together while allowing for absorbing more systems in the future. SoS as an integrated system simplifies operations, reduces costs, and ensures efficiency. However, conflict may result while co-integrating systems, violating the main benefits of SoS. This paper is concerned with enhancing the time required to detect and solve such conflicts. Methods We adopted the k-means clustering technique to enhance the detection and solving of conflict resulting while co-integrating new systems into an existing SoS. Instead of dealing with SoS as a single entity, we partition it into clusters. Each cluster contains nearby systems according to pre-specified criteria. We can consider each cluster a Sub SoS (S-SoS). By doing so, the conflict that may arise while co-integrating new systems can be detected and solved in a shorter time. We propose the Smart Semantic Belief Function Clustered System of Systems (SSBFCSoS), which is an enhancement of the Ontology Belief Function System of Systems (OBFSoS). Results The proposed method proved the ability to rapidly detect and resolve conflicts. It showed the ability to accommodate more systems as well, therefore achieving the objectives of SoS. In order to test the applicability of the SSBFCSoS and compare its performance with other approaches, two datasets were employed. They are (Glest & StarCraft Brood War). With each dataset, 15 test cases were examined. We achieved, on average, 89% in solving the conflict compared to 77% for other approaches. Moreover, it showed an acceleration of up to proportionality over previous approaches for about 16% in solving conflicts as well. Besides, it reduced the frequency of the same conflicts by approximately 23% better than the other method, not only in the same cluster but even while combining different clusters.
机译:背景技术从各个系统提供复杂的特殊功能的努力会产生所谓的系统系统(SOS)。 SOS共同集成系统,同时允许将来吸收更多系统。作为集成系统的SOS简化了操作,降低了成本,并确保效率。但是,冲突可能会在共同集成系统时产生,违反SOS的主要好处。本文涉及增强检测和解决此类冲突所需的时间。方法采用K-Means聚类技术来增强冲突的检测和解决,同时将新系统共集成到现有的SOS中。我们将其分组为集群,而不是处理SOS。每个群集根据预先指定标准包含附近的系统。我们可以考虑每个群集一个子SOS(S-SOS)。通过这样做,可以在共同集成新系统的同时出现的冲突并在较短的时间内被检测和解决。我们提出了智能语义信念群体集群系统(SSBFCSOS),这是系统的增强系统(OBFSOS)的增强。结果提出的方法证明了快速检测和解决冲突的能力。它表明还有能力容纳更多系统,因此实现了SOS的目标。为了测试SSBFCSOS的适用性并将其性能与其他方法进行比较,采用了两个数据集。它们(glest&星际争霸育龄战)。使用每个数据集,检查15个测试用例。我们平均实现了89%的冲突,而其他方法相比为77%。此外,它表明,在解决冲突中,在先前的方法上增加了大约16%的比例。此外,它比其他方法更低的相同冲突的频率缩短了大约23%,而不仅在相同的群集中,而且甚至在组合不同的集群时。

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