In recent years, the usage of indoor positioning systems for manufacturing processes became increasingly popular. Typically, the production hall is equipped with satellites which receive position data of sensors that can be pinned on components, load carriers or industrial trucks. This enables a company e.g. to reduce search efforts and to optimize individual system processes. In our research context, a sensor only sends position information when it is moved. However, various circumstances frequently affect that data is undesirably sent, e.g. due to disrupting factors nearby. This has a negative impact on the data quality, the energy consumption, and the reliability of the whole system. Motivated by this, we aim to distinguish between actual movements and signals that were undesirably sent which is in particular challenging due to the susceptibility of indoor systems in terms of noise and measuring errors. Therefore, we propose two novel unsupervised classification algorithms suitable for this task. Depending on the question of interest, they rely either on a distance-based or on a time-based criterion, which allows to make use of all essential information. Furthermore, we propose an approach to combine both classifications and to aggregate them on spatial production areas. This enables us to generate a comprehensive map of the underlying production hall with the sole usage of the position data. Aside from the analysis and detection of the underlying movement structure, the user benefits from a better understanding of own system processes and from the detection of problematic system areas which leads to a more efficient usage of positioning systems. Since all our approaches are constructed with unsupervised techniques, they are handily applicable in practice and do not require more information than the output data of the positioning system.
翻译:近年来,室内定位系统在制造过程中的使用越来越受欢迎。通常,生产大厅配备卫星,接收能够固定在部件、装载载货机或工业卡车上的传感器的位置数据。这让公司能够减少搜索努力,优化单个系统程序。在我们的研究背景下,传感器只在移动时发出定位信息;然而,各种情况经常影响数据发送不理想,例如,由于附近的干扰因素,这对整个系统的数据质量、能源消耗和可靠性有负面影响。为此,我们力求区分实际移动和发送的信号,这些不可取的信号尤其具有挑战性,因为室内系统在噪音和测量错误方面的易感性。因此,我们建议两种新的、不受监督的分类算法适合这项任务。根据兴趣问题,它们依赖于远程或基于时间的标准,从而能够使用所有基本信息。我们建议一种方法,将分类和不易应用的信号组合在空间生产区域的实际移动和信号之间,由于室内系统的易变异性变化,因此我们能够产生一种更精确的、更精确的分类方法,从内部的测算出一个更精确的、更精确的测算系统,因此,从内部的测算系统需要更精确的测算出一个更精确的测算和测算系统的系统,从而能够产生更精确的测测算和测算系统。