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A new method for identifying the ball screw degradation level based on the multiple classifier system

机译:一种基于多分类系统识别滚珠丝杠劣化水平的新方法

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摘要

The ball screw is one of the essential components of a machine tool and identifying its degradation level is therefore critical for the health management of the entire machine tool. This paper proposes a new method to automatically and reliably discriminate the defect level of the ball screw. In this method the multiple classifier system (MCS), rather than the single classifier system, is used for severity differentiation in order to enhance the classification accuracy. We adopt the dynamic classifier selection (DCS) strategy for the MCS and design a novel local class accuracy technique (N-LCA) to replace the conventional local class accuracy technique (LCA) for DCS, so that the performance of the DCS strategy can be significantly improved. Since the LCA selects the most suited classifier for a testing object by estimating each classifier's competence in the sample's neighborhood, how to define such a neighborhood has a direct influence on the performance of the LCA. In the N-LCA, the neighborhood components analysis algorithm is introduced to adaptively and accurately determine the neighborhood for better tackling the difficulty in a reliable local accuracy evaluation. Eventually, a new MCS is constructed with the N-LCA to better discriminate the ball screw degradation severity, and its effectiveness is verified by our experimental results. (C) 2018 Elsevier Ltd. All rights reserved.
机译:滚珠丝杠是机床的主要部件之一,并识别其降低水平对于整个机床的健康管理至关重要。本文提出了一种自动可靠地区分滚珠丝杠缺陷水平的新方法。在此方法中,多分类器系统(MCS),而不是单分类器系统,用于严重性差异,以提高分类精度。我们采用MCS的动态分类器选择(DCS)策略,并设计一种新型本地类精度技术(N-LCA)来取代DCS的传统本地课堂精度技术(LCA),从而可以进行DCS策略的性能显着改善。由于LCA通过估计每个分类器在样本的邻域中的能力来选择最适合测试对象的分类器,因此如何定义这样的邻域对LCA的性能有直接影响。在N-LCA中,引入邻域分量分析算法以自适应,准确地确定邻域,以便更好地解决可靠的局部精度评估中的难度。最终,使用N-LCA构建新的MCS以更好地区分球螺杆降解严重程度,并且通过我们的实验结果验证其有效性。 (c)2018年elestvier有限公司保留所有权利。

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