Rock hardness identification based on optimized PNN and multi-source data fusion

IF 1.7 4区 工程技术 Q3 ENGINEERING, MECHANICAL
Ying He, Muqin Tian, Jiancheng Song, Junling Feng
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引用次数: 1

Abstract

To solve the problem that it is difficult to identify the cutting rock wall hardness of the roadheader in coal mine, a recognition method of cutting rock wall hardness is proposed based on multi-source data fusion and optimized probabilistic neural network. In this method, all kinds of cutting signals (the vibration signal of cutting arm, the pressure signal of hydraulic cylinders and current signal of cutting motor) are analyzed by wavelet packet to extract the feature vector, and the multi feature signal sample database of rock cutting with different hardness is established. To solve the problems of uncertain spread and complex network structure of probabilistic neural network (PNN), a PNN optimization method based on differential evolution algorithm (DE) and QR decomposition was proposed, and the rock hardness was identified based on multi-source data fusion by optimizing PNN. Then, based on the ground test monitoring data of a heavy longitudinal roadheader, the method is applied to recognize the cutting rock hardness, and compared with other common pattern recognition methods. The experimental results show that the cutting rock hardness recognition based on multi-source data fusion and optimized PNN has higher recognition accuracy, and the overall recognition error is reduced to 6.8%. The recognition of random cutting rock hardness is highly close to the actual. The method provides theoretical basis and technical premise for realizing automatic and intelligent cutting of heading face.
基于优化PNN和多源数据融合的岩石硬度识别
针对煤矿掘进机截岩壁硬度难以识别的问题,提出了一种基于多源数据融合和优化概率神经网络的截岩壁硬度识别方法。该方法利用小波包对各种切削信号(切削臂振动信号、液压缸压力信号和切削电机电流信号)进行分析,提取特征向量,建立不同硬度岩石切削的多特征信号样本库。针对概率神经网络(PNN)传播不确定、网络结构复杂等问题,提出了一种基于差分进化算法(DE)和QR分解的概率神经网络优化方法,通过优化PNN,实现了基于多源数据融合的岩石硬度识别。然后,以某重型纵断面掘进机地面试验监测数据为基础,将该方法应用于切削岩硬度的识别,并与其他常用模式识别方法进行比较。实验结果表明,基于多源数据融合和优化PNN的切削岩硬度识别具有较高的识别精度,整体识别误差降至6.8%。随机切削岩石硬度的识别与实际高度接近。该方法为实现掘进工作面自动智能切割提供了理论依据和技术前提。
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来源期刊
CiteScore
3.80
自引率
10.00%
发文量
625
审稿时长
4.3 months
期刊介绍: The Journal of Mechanical Engineering Science advances the understanding of both the fundamentals of engineering science and its application to the solution of challenges and problems in engineering.
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