Viktor Lapshin, Ilya Turkin, Valeriya Gvindzhiliya, Ilya Dudinov, Denis Gamaleev
Department of Automation of Production Processes, Don State Technical University, Gagarina Str. 1, Rostov-on-Don 344090, Russia.
Sensors (Basel). 2024 Nov 20;24(22):7403. doi: 10.3390/s24227403.
This article discusses the issue of the joint use of neural network algorithms for data processing and deterministic mathematical models. The use of a new approach is proposed, to determine the discrepancy between data from a vibration monitoring system of the cutting process and the calculated data obtained by modeling mathematical models of the digital twin system of the cutting process. This approach is justified by the fact that some coordinates for the state of the cutting process cannot be measured, and the vibration signals measured by the vibration monitoring system (the vibration acceleration of the tip of the cutting tool) are subject to external disturbing influences. Both the experimental method and the Matlab 2022b simulation method were used as research methods. The experimental research method is based on the widespread use of modern analog vibration transducers, the signals from which undergo the process of digitalization and further processing in order to identify arrays of additional information required for virtual digital twin models. The results obtained allow us to formulate a new conceptual approach to the construction of systems for determining the degree of cutting tool wear, based on the joint use of computational virtual models of the digital twin system and data obtained from the vibration monitoring system of the cutting process.
本文讨论了将神经网络算法用于数据处理和确定性数学模型的联合使用问题。提出了一种新方法,用于确定切削过程振动监测系统的数据与通过切削过程数字孪生系统数学模型建模获得的计算数据之间的差异。这种方法的合理性在于,切削过程状态的某些坐标无法测量,并且振动监测系统测量的振动信号(切削刀具刀尖的振动加速度)会受到外部干扰影响。实验方法和Matlab 2022b仿真方法都被用作研究方法。实验研究方法基于现代模拟振动传感器的广泛使用,其信号经过数字化和进一步处理过程,以识别虚拟数字孪生模型所需的附加信息阵列。所获得的结果使我们能够基于数字孪生系统的计算虚拟模型与切削过程振动监测系统获得的数据的联合使用,制定一种用于构建确定刀具磨损程度系统的新概念方法。