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Fuzzy inference mechanism for recognition of contact states in intelligent robotic assembly

机译:用于智能机器人装配中接触状态识别的模糊推理机制

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This paper presents a methodology for generating a fuzzy inference mechanism (FIM) for recognizing contact states within robotic part mating using active compliant motion. In the part mating process, significant uncertainties are inherently present. As a result it is pertinent that contact states recognition systems operating in such environment be able to make decisions on the contact state currently present in the process, based on data full of uncertainties and imprecision. In such conditions, implementation of fuzzy logic and interval inference brings significant robustness to the system. As a starting point for FIM generation, we use a quasistatic model of the mating force between objects. By applying Discrete Wavelet Transform to the signal generated using this model, we extract qualitative and representative features for classification into contact states. Thus, the obtained patterns are optimally classified using support vector machines (SVM). We exploit the equivalence of SVM and Takagi-Sugeno fuzzy rules based systems for generation of FIM for classification into contact states. In this way, crisp granulation of the feature space obtained using SVM is replaced by optimal fuzzy granulation and robustness of the recognition system is significantly increased. The information machine for contact states recognition that is designed using the given methodology simultaneously uses the advantages of creation of machine based on the process model and the advantages of application of FIM. Unlike the common methods, our approach for creating a knowledge base for the inference machine is neither heuristic, intuitive nor empirical. The proposed methodology was elaborated and experimentally tested using an example of a cylindrical peg in hole as a typical benchmark test.
机译:本文提出了一种方法,用于生成模糊推理机制(FIM),以使用主动顺应运动来识别机器人零件配合中的接触状态。在零件装配过程中,固有地存在很大的不确定性。结果,相关的是,在这种环境下运行的接触状态识别系统能够基于充满不确定性和不精确性的数据,对过程中当前存在的接触状态做出决策。在这种情况下,模糊逻辑和区间推理的实现为系统带来了显着的鲁棒性。作为生成FIM的起点,我们使用对象之间配合力的准静态模型。通过将离散小波变换应用于使用此模型生成的信号,我们提取了定性和代表性特征,以分类为接触状态。因此,使用支持向量机(SVM)对获得的模式进行最佳分类。我们利用SVM和基于Takagi-Sugeno模糊规则的系统的等效性来生成FIM,以将其分类为接触状态。通过这种方式,使用SVM获得的特征空间的清晰粒度被最佳模糊粒度替代,并且识别系统的鲁棒性大大提高。使用给定方法设计的用于接触状态识别的信息机同时利用了基于过程模型创建机器的优势和FIM应用的优势。与常见方法不同,我们为推理机创建知识库的方法既不是启发式,直观性也不是经验性的。拟议的方法进行了详细的设计和实验测试,使用了一个圆柱孔钉作为典型基准测试的例子。

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