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Cutting Pattern Identification for Coal Mining Shearer through a Swarm Intelligence–Based Variable Translation Wavelet Neural Network

机译:基于群体智能的可变翻译小波神经网络的采煤机采煤模式识别

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摘要

As a sound signal has the advantages of non-contacted measurement, compact structure, and low power consumption, it has resulted in much attention in many fields. In this paper, the sound signal of the coal mining shearer is analyzed to realize the accurate online cutting pattern identification and guarantee the safety quality of the working face. The original acoustic signal is first collected through an industrial microphone and decomposed by adaptive ensemble empirical mode decomposition (EEMD). A 13-dimensional set composed by the normalized energy of each level is extracted as the feature vector in the next step. Then, a swarm intelligence optimization algorithm inspired by bat foraging behavior is applied to determine key parameters of the traditional variable translation wavelet neural network (VTWNN). Moreover, a disturbance coefficient is introduced into the basic bat algorithm (BA) to overcome the disadvantage of easily falling into local extremum and limited exploration ability. The VTWNN optimized by the modified BA (VTWNN-MBA) is used as the cutting pattern recognizer. Finally, a simulation example, with an accuracy of 95.25%, and a series of comparisons are conducted to prove the effectiveness and superiority of the proposed method.
机译:由于声音信号具有非接触式测量,结构紧凑,功耗低的优点,因此引起了很多领域的关注。本文分析了采煤机的声音信号,实现了准确的在线采煤模式识别,保证了工作面的安全质量。最初的声音信号首先通过工业麦克风收集,并通过自适应集成经验模式分解(EEMD)进行分解。在下一步中,提取由每个级别的归一化能量组成的13维集合作为特征向量。然后,将一种受蝙蝠觅食行为启发的群体智能优化算法应用于确定传统变量翻译小波神经网络(VTWNN)的关键参数。此外,将干扰系数引入到基本蝙蝠算法(BA)中,以克服容易掉入局部极值和探测能力有限的缺点。通过修改后的BA优化的VTWNN(VTWNN-MBA)被用作切割模式识别器。最后,以一个精度为95.25%的仿真示例为例,进行了一系列比较,证明了该方法的有效性和优越性。

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