基于灰色系统理论的热误差补偿ANFIS建模新方法

Ali M. Abdulshahed, A. Longstaff, S. Fletcher
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引用次数: 9

摘要

快速准确地建模加工过程中的热误差是实现热误差补偿的一个重要方面。提出了一种新的数控机床热误差补偿建模方法。该方法将自适应神经模糊推理系统(ANFIS)与灰色系统理论相结合,对加工过程中的热误差进行预测。与传统的利用原始数据模式构建ANFIS模型的方法不同,本文提出利用积累生成操作(AGO)来简化建模过程。利用灰色系统理论的基础AGO来揭示一种发展趋势,从而充分揭示混沌原始数据中隐藏的集成特征和规律。AGO的特性使所提出的模型更容易设计和预测。仿真结果表明,在训练样本数量较少的情况下,该模型比标准ANFIS模型具有更强的预测能力。
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A novel approach for ANFIS modelling based on Grey system theory for thermal error compensation
The fast and accurate modelling of thermal errors in machining is an important aspect for the implementation of thermal error compensation. This paper presents a novel modelling approach for thermal error compensation on CNC machine tools. The method combines the Adaptive Neuro Fuzzy Inference System (ANFIS) and Grey system theory to predict thermal errors in machining. Instead of following a traditional approach, which utilises original data patterns to construct the ANFIS model, this paper proposes to exploit Accumulation Generation Operation (AGO) to simplify the modelling procedures. AGO, a basis of the Grey system theory, is used to uncover a development tendency so that the features and laws of integration hidden in the chaotic raw data can be sufficiently revealed. AGO properties make it easier for the proposed model to design and predict. According to the simulation results, the proposed model demonstrates stronger prediction power than standard ANFIS model only with minimum number of training samples.
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