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Generative adversarial nets in laser-induced fluorescence spectrum image recognition of mine water inrush

机译:生成对抗网络在矿井突水激光诱导荧光光谱图像识别中的应用

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Water inrush occurred in mines, threatens the safety of working miners which triggers severe accidents in China. To make full use of existing distinctive hydro chemical and physical characteristics of different aquifers and different water sources, this article proposes a new water source discrimination method using laser-induced fluorescence technology and generative adversarial nets. The fluorescence spectrum from the water sample is stimulated by 405-nm lasers and improved by recursive mean filtering method to alleviate interference and auto-correlation to enhance the feature difference. Based on generative adversarial nets framework and improved spectra features, the article proposes a novel water source discrimination-generative adversarial nets model in mines to solve the problem of data limitation and improve the discrimination ability. The results show that the proposed method is an effective method to distinguish water inrush types. It provides a new idea to discriminate the sources of water inrush in mines timely and accurately.
机译:矿井中发生突水事故,威胁到矿工的安全,在中国引发了严重事故。为了充分利用不同含水层和不同水源的现有独特的水化学和物理特性,本文提出了一种利用激光诱导荧光技术和生成对抗网络的水源判别新方法。 405 nm激光激发水样品的荧光光谱,并通过递归均值滤波方法进行改善,以减轻干扰和自相关,从而增强特征差异。基于生成对抗网络框架和改进的频谱特征,提出了一种新的矿井水源判别-生成对抗网络模型,以解决数据局限性问题,提高判别能力。结果表明,该方法是一种有效的区分突水类型的方法。它提供了一种新思路,可以及时,准确地识别矿井中的突水来源。

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