模糊逻辑在机械加工机器人控制中的应用

P. Khoi
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引用次数: 0

摘要

机器人具有灵活性高、工作空间大、重复性高等优点,在机械加工中的应用日益广泛。许多运动自由度赋予机器人执行复杂技术操作的能力,但也正因为如此,基于动态模型的机器人控制方法存在困难。将模糊逻辑应用到机器人控制中,可以部分或完全排除机器人动力学模型的计算,克服整个技术系统的其他不确定性。基于模糊逻辑的控制器的变量和参数以语言形式建模,称为语言变量,并由语言语义值定义。模糊规则是确定控制器控制量的操作性能的重要依据。模糊规则是由自然的人类推理和基于专家智能构建的。应用模糊逻辑控制的主要任务包括“模糊化”,以输入输出数据的模糊集的形式确定模糊参数;“模糊规则和模糊推理机制”进行模糊运算,定义控制量,最后进行“去模糊化”,将控制量从语言值转换为控制器操作的物理值。一般来说,将模糊逻辑应用于机器人控制的研究已经有很多种,但机械加工机器人的模糊控制研究工作所占的比例仍然有限。本文以已发表的关于一般机器人模糊控制和机械加工机器人模糊控制的著作为基础,分析了模糊控制在机械加工机器人中的适用性。本文详细介绍了模糊控制器的设计、输入输出变量的确定、比例映射确定模糊集的个数和对应的隶属函数类型。提出了模糊规则库系统的构建和模糊推理机制,并进行了去模糊化。展望了利用模糊控制方法完善和发展机械加工机器人模糊控制系统的前景。总的来说,本文档中的信息旨在指导基于模糊逻辑的控制器设计的实现,以应用于加工机器人以及一般机器人控制。
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APPLICATION OF FUZZY LOGIC IN THE ROBOT CONTROL FOR MECHANICAL PROCESSING
Robot application in mechanical machining is growing day by day because it has many advantages over conventional machines such as high flexibility, large working space, and high repeatability. Many degrees of freedom of motion give robots the ability to perform complex technological operations, but also because of that, methods of controlling robots based on dynamic models have difficulties. Applying fuzzy logic to robot control can partially or completely exclude the calculation of the robot's dynamic model as well as overcome other uncertainties of the whole technological system. The variables and parameters of the fuzzy logic-based controller are modeled in a linguistic form, called linguistic variables, and are defined by the linguistic semantic values. Fuzzy rules are an important basis for the performance of operations defining the control quantities of the controller. Fuzzy rules are constructed by natural human inference and are based on expert intelligence. The main tasks of applying fuzzy logic control include “Fuzzification” to determine fuzzy parameters in the form of fuzzy sets of input-output data; “Fuzzy Rules and Fuzzy Inference Mechanism” to perform fuzzy operations defining control quantities, and finally “Defuzzification” to convert control quantities from linguistic values to physical values for controller operation. There have been many types of research on applying fuzzy logic to control robots in general, but the percentage of fuzzy control research work for mechanical machining robots is still limited. The article is based on published works on fuzzy control for robots in general and mechanical processing robots to analyze the applicability of fuzzy control for mechanical machining robots. The article provides detailed information on fuzzy controller design, on determining input and output variables, proportional mapping to determine the number of fuzzy sets and the corresponding type of membership function. The construction of fuzzy rule base system and fuzzy inference mechanism is presented, and finally defuzzification. Prospects for the use of methods to perfect and develop fuzzy control systems for mechanical machining robots are also presented. Collectively, the information in this document is intended to guide the implementation of fuzzy logic-based controller designs for application to machining robots, as well as to general robot control.
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