A multi-hierarchical aggregation-based graph convolutional network for industrial knowledge graph embedding towards cognitive intelligent manufacturing
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引用次数: 0
Abstract
The rapid development and widespread applications of cognitive computing technologies have led to a paradigm shift towards cognitive intelligent development in manufacturing, where knowledge plays an increasingly important role in enabling higher levels of cognition. Knowledge graph (KG) has emerged as one of the essential tools in cognitive intelligent manufacturing and its completion would significantly impact the quality of knowledge. To facilitate effective knowledge management, KG embedding has proven to be an effective approach for KG completion. However, existing models have deficiencies in achieving relation-specific transformations, differentiating the neighbor nodes, and exploiting the intermediate information generated during the KG embedding learning process, which is prone to limit model performance and hinder successful applications. To address these limitations, this paper proposes a new multi-hierarchical aggregation-based graph convolutional network (GCN), consisting of relation-aware, entity-aware, and across-block aggregation. A parallel relation and entity-aware aggregation (PREA) block is established to simultaneously perform relation-specific transformations and entity-differentiated learning. Additionally, an across-block aggregation is constructed to efficiently integrate extracted information from the intermediate stacked block. To demonstrate the effectiveness and superiority of the proposed approach, 3D printing KG is constructed, which is a representative knowledge-intensive industry linking to a variety of aspects like raw materials, adhesion, usages, etc. Extensive experiments are conducted based on the link prediction task. Illustrative examples are provided to reveal the practical implementation of the proposed method, along with technical details and insightful opinions, exhibiting its promising applications.
认知计算技术的快速发展和广泛应用导致了制造业向认知智能发展的范式转变,知识在实现更高层次的认知方面发挥着越来越重要的作用。知识图谱(KG)已成为认知智能制造的重要工具之一,它的完善将极大地影响知识的质量。为了促进有效的知识管理,KG 嵌入已被证明是完成 KG 的有效方法。然而,现有模型在实现特定关系转换、区分相邻节点、利用 KG 嵌入学习过程中产生的中间信息等方面存在不足,容易限制模型性能,阻碍成功应用。针对这些局限性,本文提出了一种新的基于多层聚合的图卷积网络(GCN),由关系感知、实体感知和跨块聚合组成。本文建立了一个并行的关系和实体感知聚合(PREA)块,以同时执行特定关系转换和实体差异学习。此外,还构建了跨块聚合,以有效整合从中间堆叠块中提取的信息。为了证明所提方法的有效性和优越性,我们构建了一个具有代表性的知识密集型行业--3D 打印 KG,该行业涉及原材料、附着力、用途等多个方面。在链接预测任务的基础上进行了广泛的实验。通过举例说明,揭示了所提方法的实际应用,并提供了技术细节和独到见解,展示了其广阔的应用前景。
期刊介绍:
The Journal of Manufacturing Systems is dedicated to showcasing cutting-edge fundamental and applied research in manufacturing at the systems level. Encompassing products, equipment, people, information, control, and support functions, manufacturing systems play a pivotal role in the economical and competitive development, production, delivery, and total lifecycle of products, meeting market and societal needs.
With a commitment to publishing archival scholarly literature, the journal strives to advance the state of the art in manufacturing systems and foster innovation in crafting efficient, robust, and sustainable manufacturing systems. The focus extends from equipment-level considerations to the broader scope of the extended enterprise. The Journal welcomes research addressing challenges across various scales, including nano, micro, and macro-scale manufacturing, and spanning diverse sectors such as aerospace, automotive, energy, and medical device manufacturing.