Design of linear & nonlinear observers for a turning process with implicit State-Dependent Delay

Aftab Ahmed, Erik I. Verriest
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引用次数: 1

Abstract

Analysis and design of present machining methods used in mechanical engineering are based on Taylor series approximations and linearizations which cause erroneous and anomalous results. High precision machining cannot tolerate such errors. We consider and analyze an exact mathematical model of the turning process without performing any kind of linearization of the model. We give a strategic design of an estimator for the position of a machining tool based on first principles. The system's dynamics are characterized by a nonlinear State-Dependent Delay Differential Equation (SD-DDE). This delay is extremely convoluted with the state by an implicit relation. The central tenet is to use inversion of the delay model and to extract the state vector given the delay. We use our recently developed observation technique referred to as Delay Injection. Both linear asymptotic and nonlinear observers with different architectures are designed for the state estimation of a machine tool based on state-dependent delay measurement. Simulation results are depicted at the end which portray the effectiveness, validity and usefulness of the proposed observer schemes.
具有隐式状态相关延迟的车削过程线性和非线性观测器的设计
目前机械工程中使用的加工方法的分析和设计是基于泰勒级数近似和线性化的,这会导致错误和异常的结果。高精度加工不能容忍这样的误差。我们考虑并分析了车削过程的精确数学模型,而没有对模型进行任何线性化。给出了一种基于第一性原理的机床位置估计器的设计策略。系统动力学用非线性状态相关时滞微分方程(SD-DDE)表征。这种延迟通过隐式关系与状态极其复杂。其核心原则是使用延迟模型的反演并提取给定延迟的状态向量。我们使用我们最近开发的观测技术,称为延迟注入。针对基于状态相关延迟测量的机床状态估计,设计了不同结构的线性渐近观测器和非线性观测器。仿真结果说明了所提观测器方案的有效性、有效性和实用性。
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