Fueled by increasing data availability and the rise of technological advances for data processing and communication, business analytics is a key driver for smart manufacturing. However, due to the multitude of different local advances as well as its multidisciplinary complexity, both researchers and practitioners struggle to keep track of the progress and acquire new knowledge within the field, as there is a lack of a holistic conceptualization. To address this issue, we performed an extensive structured literature review, yielding 904 relevant hits, to develop a quadripartite taxonomy as well as to derive archetypes of business analytics in smart manufacturing. The taxonomy comprises the following meta-characteristics: application domain, orientation as the objective of the analysis, data origins, and analysis techniques. Collectively, they comprise eight dimensions with a total of 52 distinct characteristics. Using a cluster analysis, we found six archetypes that represent a synthesis of existing knowledge on planning, maintenance (reactive, offline, and online predictive), monitoring, and quality management. A temporal analysis highlights the push beyond predictive approaches and confirms that deep learning already dominates novel applications. Our results constitute an entry point to the field but can also serve as a reference work and a guide with which to assess the adequacy of one's own instruments.
翻译:通过增加数据处理和通信数据的可用性和技术进步的提高,商业分析成为了智能制造的关键驱动力,然而,由于当地各种不同进步及其多学科的复杂性,研究人员和从业者都努力跟踪进展并在外地获得新知识,因为缺乏整体概念化。为了解决这一问题,我们进行了广泛的结构化文献审查,产生了904次相关点击,以发展四方分类,并得出智能制造业商业分析的古型。分类学包括以下元特征:应用领域、方向作为分析、数据来源和分析技术的目标。它们共同包含八个方面,共有52个不同特点。我们通过分组分析发现六种类型,这些类型代表了规划、维护(动态、离线和在线预测)、监测和质量管理方面的现有知识的合成。时间分析强调超越预测性方法的推力,并确认深度学习已经主宰了新应用。我们的成果构成了一个进入实地的工具的切入点,同时也可以用来评估是否充分性。