Particle swarm optimization support vector machine-based coal and rock cutting tool load spectrum identification method

Ruohan Liu, Lan Lyu, Sunbao Wang, Zhiqiang Chai
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Abstract

The goal of this research is to achieve safe and efficient excavation of coal and rock tunnels with complex geological structures, and to enhance the self-sensing ability of coal and rock cutting equipment and tools. Particle swarm optimization support vector machine is used to identify the cutting state of disc cutting tools. EDEM finite element analysis software is used to analyze cutting process characteristics of the disc cutting tool when used to cut through coal and rock with different compressive strengths. Empirical mode decomposition is used to decompose the load spectrum characteristics; for this purpose, the first-order and seventh-order intrinsic mode functions containing all the feature information of the original signal of the load spectrum are selected. The sample entropy is calculated as the feature input vector. The extracted feature vector is input into the trained support vector machine model and the particle swarm optimization support vector machine model. By extracting the sample entropy of the load spectrum of the disc cutter as the feature vector, the particle swarm optimization support vector model is used to identify the cutting state of the coal and rock. The recognition accuracy of the support vector machine model before and after the improvement is compared and analyzed. The results show that compared to the unoptimized support vector machine, the support vector machine optimized by particle swarm optimization can identify the load spectrum of the coal more quickly and accurately. The recognition accuracy is 96,82%, which verifies the effectiveness of the particle swarm optimization support vector machine model in identifying the load spectrum of the coal and rock disc cutter.
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基于粒子群优化支持向量机的煤炭和岩石切割工具载荷谱识别方法
本研究的目标是实现复杂地质结构煤岩隧道的安全高效开挖,提高煤岩切割设备和工具的自感应能力。采用粒子群优化支持向量机来识别圆盘切割工具的切割状态。使用 EDEM 有限元分析软件分析圆盘截割工具在截割不同抗压强度的煤炭和岩石时的截割过程特性。采用经验模态分解法分解载荷频谱特征;为此,选择了包含载荷频谱原始信号所有特征信息的一阶和七阶本征模态函数。计算样本熵作为特征输入向量。提取的特征向量被输入到经过训练的支持向量机模型和粒子群优化支持向量机模型中。通过提取圆盘截割机载荷谱的样本熵作为特征向量,粒子群优化支持向量机模型可用于识别煤炭和岩石的截割状态。对比分析了改进前后支持向量机模型的识别精度。结果表明,与未优化的支持向量机相比,经粒子群优化的支持向量机能更快、更准确地识别煤的载荷谱。识别准确率为 96.82%,验证了粒子群优化支持向量机模型在识别煤炭和岩石圆盘截割机载荷谱方面的有效性。
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