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Acoustic-Based Cutting Pattern Recognition for Shearer through Fuzzy C-Means and a Hybrid Optimization Algorithm

机译:模糊C-均值和混合优化算法的基于声波的采煤机切割模式识别

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As the conventional cutting pattern recognition methods for shearer are huge in size, have low recognition reliability and an inconvenient contacting measurement method, a fast and reliable coal-rock cutting pattern recognition system is always a baffling problem worldwide. However, the recognition rate has a direct relation with the outputs of coal mining and the safety quality of staff. In this paper, a novel cutting pattern identification method through the cutting acoustic signal of the shearer is proposed. The signal is clustering by fuzzy C-means (FCM) and a hybrid optimization algorithm, combining the fruit fly and genetic optimization algorithm (FGOA). Firstly, an industrial microphone is installed on the shearer and the acoustic signal is collected as the source signal due to its obvious advantages of compact size, non-contact measurement and ease of remote transmission. The original sound is decomposed by multi-resolution wavelet packet transform (WPT), and the normalized energy of each node is extracted as a feature vector. Then, FGOA, by introducing a genetic proportion coefficient into the basic fruit fly optimization algorithm (FOA), is applied to overcome the disadvantages of being time-consuming and sensitivity to initial centroids of the traditional FCM. A simulation example, with the accuracy of 95%, and some comparisons prove the effectiveness and superiority of the proposed scheme. Finally, an industrial test validates the practical effect.
机译:由于传统的采煤机的切割模式识别方法尺寸大,识别可靠性低以及接触测量方法不便,因此,快速可靠的煤-岩石切割模式识别系统一直是困扰世界的难题。但是,识别率与煤矿产量和工作人员安全质量有直接关系。提出了一种通过采煤机的切割声信号识别切割模式的新方法。信号通过模糊C均值(FCM)和混合优化算法进行聚类,结合了果蝇和遗传优化算法(FGOA)。首先,由于其紧凑的尺寸,非接触式测量和易于远程传输的明显优势,在剪切机上安装了工业麦克风,并且将声音信号收集为源信号。通过多分辨率小波包变换(WPT)分解原始声音,并提取每个节点的归一化能量作为特征向量。然后,通过将遗传比例系数引入基本的果蝇优化算法(FOA)中,FGOA克服了传统FCM耗时且对初始质心敏感的缺点。一个仿真例子,精度为95%,并进行了一些比较,证明了该方案的有效性和优越性。最后,工业测试验证了实际效果。

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