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arXiv 提交日期: 2026-04-15
📄 Abstract - A Dynamic-Growing Fuzzy-Neuro Controller, Application to a 3PSP Parallel Robot

To date, various paradigms of soft-Computing have been used to solve many modern problems. Among them, a self organizing combination of fuzzy systems and neural networks can make a powerful decision making system. Here, a Dynamic Growing Fuzzy Neural Controller (DGFNC) is combined with an adaptive strategy and applied to a 3PSP parallel robot position control problem. Specifically, the dynamic growing mechanism is considered in more detail. In contrast to other self-organizing methods, DGFNC adds new rules more conservatively; hence the pruning mechanism is omitted. Instead, the adaptive strategy 'adapts' the control system to parameter variation. Furthermore, a sliding mode-based nonlinear controller ensures system stability. The resulting general control strategy aims to achieve faster response with less computation while maintaining overall stability. Finally, the 3PSP is chosen due to its complex dynamics and the utility of such approaches in modern industrial systems. Several simulations support the merits of the proposed DGFNC strategy as applied to the 3PSP robot.

顶级标签: robotics systems machine learning
详细标签: fuzzy neural control parallel robot adaptive control sliding mode control dynamic growing mechanism 或 搜索:

一种动态增长的模糊神经控制器及其在3PSP并联机器人上的应用 / A Dynamic-Growing Fuzzy-Neuro Controller, Application to a 3PSP Parallel Robot


1️⃣ 一句话总结

这篇论文提出了一种结合自适应策略的动态增长模糊神经控制器,用于精确控制结构复杂的3PSP并联机器人,该方法通过保守地增加新规则和省略剪枝机制,在保证系统稳定的同时实现了更快的响应速度和更低的计算量。

源自 arXiv: 2604.13763