Denkena Berend, Klemme Heinrich, Stiehl Tobias H
Institute of Production Engineering and Machine Tools, Leibniz Universität Hannover, 30823 Garbsen, Germany.
Data Brief. 2023 Sep 14;50:109574. doi: 10.1016/j.dib.2023.109574. eCollection 2023 Oct.
Machining is an essential part of modern manufacturing. During machining, the wear of cutting tools increases, eventually impairing product quality and process stability. Determining when to change a tool to avoid these consequences, while still utilizing most of a tool's lifetime is challenging, as the tool lifetime can vary by more than 100% despite constant process parameters [1]. To account for these variations, all tools are usually changed after a predefined period of time. However, this strategy wastes a significant proportion of the remaining lifetime of most tools. By monitoring the wear of tools, all tools can potentially be used until their individual end of life. Research, development, and assessment of such monitoring methods require large amounts of data. Nevertheless, only very few datasets are publicly available. The presented dataset provides labeled, multivariate time series data of milling processes with varying tool wear and for varying machine tools. The width of the flank wear land VB is used as a degradation metric. A total of nine end milling cutters were worn from an unused state to end of life (VB ≈ 150 µm) in 3-axis shoulder milling of cast iron 600-3/S. The tools were of the same model (solid carbide end milling cutter, 4 edges, coated with TiN-TiAlN) but from different batches. Experiments were conducted on three different 5-axis milling centers of a similar size. Workpieces, experimental setups, and process parameters were identical on all of the machine tools. The process forces were recorded with a dynamometer with a sample rate of 25 kHz. The force or torque of the spindle and feed drives, as well as the position control deviation of feed drives, were recorded from the machine tool controls with a sample rate of 500 Hz. The dataset holds a total of 6,418 files labeled with the wear (VB), machine tool (M), tool (T), run (R), and cumulated tool contact time (C). This data could be used to identify signal features that are sensitive to wear, to investigate methods for tool wear estimation and tool life prediction, or to examine transfer learning strategies. The data thereby facilitates research in tool condition monitoring and predictive maintenance in the domain of production technology.
机械加工是现代制造业的重要组成部分。在机械加工过程中,刀具的磨损会加剧,最终影响产品质量和加工过程的稳定性。尽管加工参数不变,但刀具寿命的变化可能超过100%[1],因此确定何时更换刀具以避免这些后果,同时仍能充分利用刀具的大部分使用寿命,具有挑战性。为了考虑这些变化,通常在预定义的时间段后更换所有刀具。然而,这种策略浪费了大多数刀具剩余寿命的很大一部分。通过监测刀具的磨损情况,所有刀具都有可能一直使用到其各自的使用寿命结束。对此类监测方法的研究、开发和评估需要大量数据。然而,公开可用的数据集却非常少。本文所提供的数据集包含了具有不同刀具磨损情况和不同机床的铣削加工的带标签多变量时间序列数据。后刀面磨损带宽度VB被用作退化指标。在对铸铁600-3/S进行三轴侧铣时,总共9个立铣刀从未使用状态磨损至使用寿命结束(VB≈150μm)。这些刀具型号相同(整体硬质合金立铣刀,4刃,涂有TiN-TiAlN涂层),但批次不同。实验在三个尺寸相近的不同五轴铣削中心进行。所有机床上的工件、实验装置和加工参数均相同。使用测力计以25kHz的采样率记录加工力。从机床控制系统以500Hz的采样率记录主轴和进给驱动的力或扭矩以及进给驱动的位置控制偏差。该数据集总共包含6418个文件,标签包括磨损情况(VB)、机床(M)、刀具(T)、运行次数(R)和刀具累计接触时间(C)。这些数据可用于识别对磨损敏感的信号特征,研究刀具磨损估计和刀具寿命预测方法,或检验迁移学习策略。因此,这些数据有助于生产技术领域中刀具状态监测和预测性维护的研究。