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An improved signal processing method for the laser displacement sensor in mechanical systems

机译:机械系统中激光位移传感器的一种改进的信号处理方法

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摘要

In recent years, the laser displacement sensor (LDS) has been widely applied to a multitude of fields such as precision measurement and reverse engineering. However, the accuracy of the LDS applied to these industries is severely restricted by signal processing methods including signal compensation and signal reconstruction. In view of this, a B-spline curve approximation is used to realize high-precise and efficient reconstruction of noisy signals of the LDS and an improved elitist clonal selection algorithm (ECSA) is proposed to address the multi-objective, continuous and nonlinear optimization problem in the B-spline curve approximation process, namely the knot adjustment problem. Additionally, an adaptive chaotic mutation operator is designed to improve the algorithm search efficiency, increase the population diversity and avoid the prematurity. And an antibody reselection strategy based on the antibody concentration and the antigen affinity vectorial moment is proposed. Subsequently, the Hannan-Quinn information criterion (HQIC) is used as an affinity measurement to judge and weigh the goodness of fit and computational complexity and to automatically and accurately calculate the number and location of internal knots, thereby reconstructing noisy signals with different features. Simulation results evidence that the improved algorithm can not only realize the automatic B-spline curve reconstruction of the noisy signals featuring continuity, discontinuity and sharp points but also surpass existing studies in the global convergence and convergence rate. And both the on-machine measurement experiment for API threads and the comparison experiments for measured thread parameters validate the excellent and powerful performance of the proposed method in processing LDS signals. (C) 2018 Elsevier Ltd. All rights reserved.
机译:近年来,激光位移传感器(LDS)已广泛应用于许多领域,例如精度测量和逆向工程。但是,应用于这些行业的LDS的精度受到信号处理方法(包括信号补偿和信号重建)的严格限制。有鉴于此,采用B样条曲线逼近实现LDS噪声信号的高精度高效重构,并提出了一种改进的精英克隆选择算法(ECSA)来解决多目标,连续和非线性优化问题。 B样条曲线逼近过程中的问题,即结调整问题。此外,设计了一种自适应混沌突变算子,以提高算法搜索效率,增加种群多样性并避免过早发生。提出了一种基于抗体浓度和抗原亲和矢量矩的抗体重选策略。随后,将Hannan-Quinn信息标准(HQIC)用作亲和力度量,以判断和权衡拟合优度和计算复杂度,并自动准确地计算内部结的数量和位置,从而重建具有不同特征的嘈杂信号。仿真结果表明,改进算法不仅可以实现具有连续性,不连续性和尖锐点的噪声信号的自动B样条曲线重构,而且在全局收敛性和收敛速度方面都超过了已有研究。 API线程的在线测量实验和测量的线程参数的比较实验都验证了该方法在处理LDS信号方面的出色性能。 (C)2018 Elsevier Ltd.保留所有权利。

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