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Water Bath Temperature Control by a Recurrent Fuzzy Controller and Its FPGA Implementation

机译:循环模糊控制器控制水浴温度及其FPGA实现

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摘要

A hardware implementation of the Takagi-Sugeno-Kan (TSK)-type recurrent fuzzy network (TRFN-H) for water bath temperature control is proposed in this paper. The TRFN-H is constructed by a series of recurrent fuzzy if-then rules built on-line through concurrent structure and parameter learning. To design TRFN-H for temperature control, the direct inverse control configuration is adopted, and owing to the structure of TRFN-H, no a priori knowledge of the plant order is required, which eases the design process. Due to the powerful learning ability of TRFN-H, a small network is generated, which significantly reduces the hardware implementation cost. After the network is designed, it is realized on a field-programmable gate array (FPGA) chip. Because both the rule and input variable numbers in TRFN-H are small, it is implemented by combinational circuits directly without using any memory. The good performance of the TRFN-H chip is verified from comparisons with computer-based proportional-integral fuzzy (PI) and neural network controllers for different sets of experiments on water bath temperature control.
机译:本文提出了用于水浴温度控制的Takagi-Sugeno-Kan(TSK)型递归模糊网络(TRFN-H)的硬件实现。 TRFN-H由一系列递归模糊if-then规则构造而成,这些规则是通过并发结构和参数学习在线构建的。在设计用于温度控制的TRFN-H时,采用直接逆控制配置,并且由于TRFN-H的结构,不需要先验工厂订单知识,从而简化了设计过程。由于TRFN-H具有强大的学习能力,因此生成了一个小型网络,从而大大降低了硬件实现成本。网络设计完成后,可在现场可编程门阵列(FPGA)芯片上实现。由于TRFN-H中的规则数和输入变量数均很小,因此可以直接通过组合电路来实现,而无需使用任何存储器。通过与基于计算机的比例积分模糊(PI)和神经网络控制器进行水浴温度控制的不同实验进行比较,证明了TRFN-H芯片的良好性能。

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