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Dynamic system modeling using a recurrent interval-valued fuzzy neural network and its hardware implementation

机译:基于递归区间值模糊神经网络的动态系统建模及其硬件实现

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This paper first proposes a new recurrent interval-valued fuzzy neural network (RIFNN) for dynamic system modeling. A new hardware implementation technique for the RIFNN using a field-programmable gate array (FPGA) chip is then proposed. The antecedent and consequent parts in an RIFNN use interval-valued fuzzy sets in order to increase the network noise resistance ability. A new recurrent structure is proposed in RIFNN, with the recurrent loops enabling it to handle dynamic system processing problems. An RIFNN is constructed from structure and parameter learning. For hardware implementation of the RIFNN, the pipeline technique and a new circuit for type-reduction operation are proposed to improve the chip performance. Simulations and comparisons with various feedforward and recurrent fuzzy neural networks verify the performance of the RIFNN under noisy conditions.
机译:本文首先提出了一种用于动态系统建模的新的递归区间值模糊神经网络(RIFNN)。然后,提出了一种使用现场可编程门阵列(FPGA)芯片的RIFNN新硬件实现技术。 RIFNN的前期和后续部分使用区间值模糊集,以提高网络抗噪声能力。在RIFNN中提出了一种新的递归结构,该递归循环使其能够处理动态系统处理问题。 RIFNN是通过结构和参数学习构造的。对于RIFNN的硬件实现,提出了流水线技术和一种用于类型减少操作的新电路,以提高芯片性能。与各种前馈和递归模糊神经网络的仿真和比较证明了RIFNN在嘈杂条件下的性能。

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