Data-driven decision making is becoming an integral part of manufacturing companies. Data is collected and commonly used to improve efficiency and produce high quality items for the customers. IoT-based and other forms of object tracking are an emerging tool for collecting movement data of objects/entities (e.g. human workers, moving vehicles, trolleys etc.) over space and time. Movement data can provide valuable insights like process bottlenecks, resource utilization, effective working time etc. that can be used for decision making and improving efficiency. Turning movement data into valuable information for industrial management and decision making requires analysis methods. We refer to this process as movement analytics. The purpose of this document is to review the current state of work for movement analytics both in manufacturing and more broadly. We survey relevant work from both a theoretical perspective and an application perspective. From the theoretical perspective, we put an emphasis on useful methods from two research areas: machine learning, and logic-based knowledge representation. We also review their combinations in view of movement analytics, and we discuss promising areas for future development and application. Furthermore, we touch on constraint optimization. From an application perspective, we review applications of these methods to movement analytics in a general sense and across various industries. We also describe currently available commercial off-the-shelf products for tracking in manufacturing, and we overview main concepts of digital twins and their applications.
翻译:以数据为动力的决策正在成为制造公司的一个组成部分。数据被收集和普遍用来提高效率,为客户提供高质量的产品。基于互联网和其他形式天体跟踪是一种新兴工具,用于收集在空间和时间范围内物体/实体(例如,工人、移动车辆、电车等)的移动数据。移动数据可以提供宝贵的见解,例如程序瓶颈、资源利用、有效的工作时间等,可用于决策和提高效率。将移动数据转化为宝贵的工业管理和决策信息需要分析方法。我们将此进程称为流动分析。我们把这一进程称为流动分析。本文件的目的是审查制造业和更广泛范围内的移动分析工作现状。我们从理论角度和应用角度对相关工作进行调查。从理论角度,我们强调两个研究领域的有用方法:机器学习和基于逻辑的知识代表。我们还从运动分析的角度审查其组合,并讨论未来发展和应用的有希望的领域。我们从应用角度审视了当前在制造业和更广泛应用的制约性优化。我们从应用角度审视了相关工作,还审视了这些产品在商业上的应用情况。我们从现有各种工具的横向动态,并审视了在制造业中的各种动态上的应用。