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Rapid identification model of mine water inrush sources based on extreme learning machine

机译:基于极限学习机的矿井突水水源快速识别模型

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>In the process of disaster prevention of coal mine water inrush, it is necessary to quickly and accurately identify the types of water inrush sources. Based on the high sensitivity, rapid and accurate monitoring characteristics of laser induced fluorescence technology, the fluorescence spectra of water samples were collected on the experimental platform of water sample detection. After pre-processing spectra and extracting features, the multi-classification learning model is established by the extreme learning machine (ELM) algorithm. In this paper, it determines the sigmoid function as hidden layer activation function, and obtains the optimal number of hidden layer nodes by the method of cross-validation. ELM is compared with the conventional neural network classification model in different part, such as the average time and the average classification accuracy. The average classification accuracy of ELM combined with principal component analysis is about 98% and 93% in the training and testing set respectively. And the classification learning time is greatly improved. Therefore, the model is more suitable for rapid and accurate classification of water inrush sources.
机译:>在煤矿突水的防灾过程中,有必要快速,准确地确定突水水源的类型。基于激光诱导荧光技术的高灵敏度,快速,准确的监测特性,在水样检测实验平台上收集了水样的荧光光谱。在对光谱进行预处理和特征提取后,利用极限学习机(ELM)算法建立了多分类学习模型。本文将S形函数确定为隐藏层激活函数,并通过交叉验证的方法获得最优数目的隐藏层节点。将ELM与传统神经网络分类模型在不同部分进行了比较,例如平均时间和平均分类精度。在训练和测试集中,结合主成分分析的ELM的平均分类准确率分别约为98%和93%。从而大大提高了分类学习时间。因此,该模型更适合快速,准确地分类水源。

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