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首页> 外文期刊>Applied thermal engineering: Design, processes, equipment, economics >Intelligent identification of steam jet condensation regime in water pipe flow system by wavelet multiresolution analysis of pressure oscillation and artificial neural network
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Intelligent identification of steam jet condensation regime in water pipe flow system by wavelet multiresolution analysis of pressure oscillation and artificial neural network

机译:用压力振荡和人工神经网络小波多分辨率分析水管流动系统蒸汽喷射凝结制度智能识别

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On-line recognition of condensation regime of vapor jet in pipe flow systems is a promising approach for flow assurance and intellectualization of industrial processes. However, the selection of distinguishable characteristics from pressure signals associated strongly with various condensation regimes is essential and challenging for satisfactory recognition purpose. Accordingly, an artificial neural network technique using wavelet multiresolution analysis of pressure oscillation signals for objective identification of jet condensation regimes is presented in this paper. The recognition procedure was carried out in two major steps. Statistical features of wavelet multiresolution analysis of pressure signals, i.e., mean of absolute and percentage of energy of each wavelet scale, were chose first. And then artificial neural network was adopted to construct classifiers for forecasting the condensation regimes automatically. The recognition results illustrated that the proposed method is feasible and effective for identifying vapor jet condensation regime in pipe flow system. Furthermore, it is suggested that statistical features of mean of absolute and percentage of energy at least four or more particular wavelet scales, and also sample length longer than 1.5s could guarantee a satisfactory recognition rate above 90%.
机译:管流系统中蒸汽射流冷凝制度的在线识别是工业过程的流动保证和智能化的有希望的方法。然而,从强烈用各种凝结制度相关联的压力信号的可区别特性是必不可少的,并且挑战以满足令人满意的识别目的。因此,本文介绍了用于客观识别喷射凝结制度的压力振荡信号的小波多分辨率分析的人工神经网络技术。识别程序是以两种主要步骤进行的。压力信号小波多分辨率分析的统计特征,即每种小波尺度的绝对和能量百分比的平均值,首先选择。然后采用人工神经网络来构建自动预测凝结制度的分类器。识别结果表明,该方法是可行的,可用于识别管道流动系统中的蒸汽射流冷凝制度。此外,建议绝对和能量百分比的统计特征至少四个或更多个特定的小波尺度,以及比1.5s长的样品长度可以保证高于90%的令人满意的识别率。

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