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Assessment of rib spalling hazard degree in mining face based on background subtraction algorithm and support vector machine

机译:基于背景减法算法和支持向量机的采矿面肋骨剥落危险度评估

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摘要

Rib spalling is one of the common hazards in a fully mechanized mining face. In order to accurately assess the hazard degree, this study proposes a new method based on background subtraction algorithm and support vector machine (SVM). First, the architecture diagram of rib spalling feature analysis is constructed, and the rib spalling feature indices are determined, including the duration area, height and the centre of ribs spalling height. Then, the specific feature analysis process of rib spalling is performed using the background subtraction algorithm. Furthermore, some virtual 3D rib spalling animations are generated using 3D Studio Max (3Ds Max) software to verify the reasonability of extracted features. Thereafter, the assessment model of rib spalling hazard degree is established based on SVM. Three assessment models based on SVM, back propagation neural network (BP-NN) and artificial immune (AI) algorithm have been developed. The assessment accuracy of SVM (reaching 85%) is obviously higher than that of BP-NN (75%) and AI (70%) algorithm. The results indicate the feasibility and superiority of the proposed method in the assessment of rib spalling hazard degree.
机译:罗纹剥落是一种综合机械化矿面中的共同危险之一。为了准确评估危险程度,本研究提出了一种基于背景减法算法和支持向量机(SVM)的新方法。首先,构造肋穗特征分析的架构图,确定肋骨剥落特征指数,包括持续时间,高度和肋骨倒置高度的中心。然后,使用背景减法算法执行肋穗的特定特征分析过程。此外,使用3D Studio Max(3ds Max)软件生成一些虚拟3D肋型动画,以验证提取功能的合理性。此后,基于SVM建立肋骨剥落危险度的评估模型。已经开发了基于SVM,回到传播神经网络(BP-NN)和人工免疫(AI)算法的三种评估模型。 SVM评估准确性(达到85%)明显高于BP-NN(75%)和AI(70%)算法的准确性。结果表明,在评估肋骨剥落危险程度中提出的方法的可行性和优越性。

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