Robotic Excavator Identification Model Based on Recursive Least Squares Algorithm with Forgetting Factor

Hao Feng, C. Yin, Hongfu Yu, Donghui Cao
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引用次数: 2

Abstract

In order to establish the electro-hydraulic proportional system model of the robotic excavator quickly and accurately, an identification algorithm based on recursive least squares algorithm with forgetting factor is proposed. The basic the mathematical model of the electro-hydraulic proportional system are analyzed. Based on the theoretical models, the transfer function of the control system is obtained by recursive least square identification method. The improved recursive least squares algorithm with forgetting factor method overcomes the contradiction between the steady-state accuracy and tracking ability of the fixed forgetting factor algorithm, and makes the identification process have both higher dynamic response and higher identification accuracy. The experimental results show that the identification results are credible, which lays a foundation for system design, control characteristic analysis and intelligent control algorithm research.
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基于遗忘因子递归最小二乘算法的机器人挖掘机识别模型
为了快速准确地建立挖掘机机器人电液比例系统模型,提出了一种基于带遗忘因子的递推最小二乘算法的辨识算法。分析了电液比例控制系统的基本数学模型。在理论模型的基础上,采用递推最小二乘辨识法得到了控制系统的传递函数。改进的遗忘因子法递推最小二乘算法克服了固定遗忘因子算法稳态精度与跟踪能力的矛盾,使识别过程具有更高的动态响应和更高的识别精度。实验结果表明,辨识结果可信,为系统设计、控制特性分析和智能控制算法研究奠定了基础。
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