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Picture inference system: a new fuzzy inference system on picture fuzzy set

机译:图片推理系统:基于图片模糊集的新型模糊推理系统

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摘要

In this paper, we propose a novel fuzzy inference system on picture fuzzy set called picture inference system (PIS) to enhance inference performance of the traditional fuzzy inference system. In PIS, the positive, neutral and negative degrees of the picture fuzzy set are computed using the membership graph that is the combination of three Gaussian functions with a common center and different widths expressing a visual view of degrees. Then, the positive and negative defuzzification values, synthesized from three degrees of the picture fuzzy set, are used to generate crisp outputs. Learning in PIS including training centers, widths, scales and defuzzification parameters is also discussed. The system is adapted for all architectures such as the Mamdani, the Sugeno and the Tsukamoto fuzzy inferences. Experimental results on benchmark UCI Machine Learning Repository datasets and an example in control theory - the Lorenz system are examined to verify the advantages of PIS.
机译:本文提出了一种基于图片模糊集的新型模糊推理系统,称为图片推理系统(PIS),以增强传统模糊推理系统的推理性能。在PIS中,图片模糊集的正度、中性度和负度是使用隶属图计算的,隶属图是三个高斯函数的组合,具有一个共同的中心和不同的宽度,表示度的视觉视图。然后,利用图片模糊集的三个度合成的正负去模糊化值来生成清晰的输出。还讨论了PIS的学习,包括培训中心,宽度,规模和去模糊参数。该系统适用于所有架构,例如 Mamdani、Sugeno 和 Tsukamoto 模糊推理。研究了基准UCI机器学习存储库数据集的实验结果和控制理论示例-Lorenz系统,以验证PIS的优势。

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