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Derivation and application of nonlinear analytical redundancy techniques with applications to robotics.

机译:非线性分析冗余技术的推导和应用及其在机器人技术中的应用。

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摘要

Fault detection is important in many robotic applications. Failures of powerful robots, high velocity robots, or robots in hazardous environments are quite capable of causing significant and possibly irreparable havoc if they are not detected promptly and appropriate action taken. As robots are commonly used because power, speed, or resistances to environmental factors need to exceed human capabilities, fault detection is a common and serious concern in the robotics arena.; Analytical redundancy (AR) is a fault-detection method that allows us to explicitly derive the maximum possible number of linearly independent control model-based consistency tests for a system. Using a linear model of the system of interest, analytical redundancy exploits the null-space of the state space control observability matrix to allow the creation of a set of test residuals. These tests use sensor data histories and known control inputs to detect any deviation from the static or dynamic behaviors of the model in real time.; The standard analytical redundancy fault detection technique is limited mathematically to linear systems. Since analytical redundancy is a model-based technique, it is extremely sensitive to differences between the nominal model behavior and the actual system behavior. A system model with strong nonlinear characteristics, such as a multi-joint robot manipulator, changes significantly in behavior when linearized. Often a linearized model is no longer an accurate description of the system behavior. This makes effective implementation of the analytical redundancy technique difficult, as modeling errors will generate significant false error signals when linear analytical redundancy is applied. To solve this problem we have used nonlinear control theory to extend the analytical redundancy principle into the nonlinear realm. Our nonlinear analytical redundancy (NLAR) technique is applicable to systems described by nonlinear ordinary differential equations and preserves the important formal guarantees of linear analytical redundancy. Nonlinear analytical redundancy generates considerable improvement in performance over linear analytical redundancy when performing fault detection on nonlinear systems, as it removes all of the extraneous residual signal generated by the modeling inaccuracies introduced by linearization, allowing for lower threshold.
机译:故障检测在许多机器人应用中都很重要。如果无法及时检测到故障并采取适当的措施,那么功能强大的机器人,高速机器人或危险环境中的机器人的故障很可能造成严重的破坏,并且可能造成无法弥补的破坏。由于通常使用机器人是因为功率,速度或对环境因素的抵抗力必须超出人类的能力,因此故障检测是机器人领域中常见且严重的问题。解析冗余(AR)是一种故障检测方法,可让我们明确得出系统可能的最大数量的基于线性独立控制模型的一致性测试。使用目标系统的线性模型,分析冗余利用状态空间控制可观察性矩阵的零空间来允许创建一组测试残差。这些测试使用传感器数据历史记录和已知的控制输入来实时检测与模型的静态或动态行为的任何偏差。标准分析冗余故障检测技术在数学上仅限于线性系统。由于分析冗余是一种基于模型的技术,因此它对标称模型行为与实际系统行为之间的差异极为敏感。具有强非线性特性的系统模型(例如多关节机器人操纵器)在线性化时的行为会发生显着变化。通常,线性化模型不再是对系统行为的准确描述。这使得有效实施分析冗余技术变得困难,因为当应用线性分析冗余时,建模错误将产生明显的错误信号。为了解决这个问题,我们使用非线性控制理论将分析冗余原理扩展到非线性领域。我们的非线性分析冗余(NLAR)技术适用于由非线性常微分方程描述的系统,并且保留了线性分析冗余的重要形式保证。在非线性系统上执行故障检测时,非线性分析冗余相对于线性分析冗余在性能上有相当大的提高,因为它消除了线性化引入的建模误差所产生的所有无关信号,从而降低了阈值。

著录项

  • 作者

    Leuschen, Martin L.;

  • 作者单位

    Rice University.;

  • 授予单位 Rice University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 188 p.
  • 总页数 188
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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