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Implementation of efficient real-time industrial wireless interference identification algorithms with fuzzified neural networks

机译:用模糊神经网络实现高效的实时工业无线干扰识别算法

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Real-time industrial wireless systems sharing a crowded spectrum band require active coexistence management measures. Identification of wireless interference is a key issue for this purpose. We propose an efficient implementation of a wireless interference identification (WII) approach called neuro-fuzzy signal classifier (NFSC). The implementation in Matlab / SIMULINK is based upon the wideband software defined radio Ettus USRP N210. The implementation is evaluated in six selected heterogeneous and harsh industrial scenarios within the license-free 2.4-GHz-ISM radio band with variously combined standard wireless technologies IEEE 802.11g-based WLAN and Bluetooth. The evaluation of the NFSC was performed with a binary classification test with the statistical measurement metrics sensitivity and specificity.
机译:共享拥挤频谱的实时工业无线系统需要积极的共存管理措施。为此目的,无线干扰的识别是一个关键问题。我们提出了一种称为神经模糊信号分类器(NFSC)的无线干扰识别(WII)方法的有效实现。 Matlab / SIMULINK中的实现基于宽带软件定义的无线电Ettus USRP N210。在免许可的2.4-GHz-ISM无线电频段内,结合基于IEEE 802.11g的WLAN和蓝牙的各种组合标准无线技术,在六个选定的异构和苛刻的工业场景中评估了该实现。 NFSC的评估是通过具有统计测量指标敏感性和特异性的二元分类测试进行的。

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