Research on key technologies of atmospheric carbon emission monitoring and early warning based on big data and spectral measurement

Na Ren, Hong-jiang Wang, Yan Xia, Nan Zhang, Wenqiang Zhang, Zhengda Li
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Abstract

The distribution of carbon emissions varies greatly among regions and industries in China. In order to master the current situation and trend of carbon emissions in different regions and industries, and formulate and adjust relevant policies in a timely manner, it is necessary to conduct real-time, continuous, accurate and digital monitoring of carbon emissions in major regions and industries. Therefore, "carbon peaking" and "carbon neutralization" put forward higher requirements for the environmental monitoring industry and also brought greater opportunities. In this paper, the spectral information data in typical atmospheric samples are collected in real time, processed and stored structurally through the atmospheric spectral detection method based on mid far infrared spectrum and terahertz spectrum, the spectral feature extraction algorithm based on deep neural network, and the atmospheric carbon emission data analysis and visual monitoring based on big data technology; Run the spectral classification algorithm with low cost and high efficiency on the big data platform, obtain the detailed data of gas sample composition in real time, and display the analysis results visually. Through simulation experiments, the results show that the proposed method can better achieve the monitoring and early warning of atmospheric carbon emissions based on big data and spectral measurement.
基于大数据和光谱测量的大气碳排放监测预警关键技术研究
中国不同地区、不同行业的碳排放分布差异很大。为了掌握不同地区和行业碳排放的现状和趋势,及时制定和调整相关政策,有必要对主要地区和行业的碳排放进行实时、连续、准确和数字化的监测。因此,“碳调峰”和“碳中和”对环境监测行业提出了更高的要求,也带来了更大的机遇。本文通过基于中远红外光谱和太赫兹光谱的大气光谱检测方法、基于深度神经网络的光谱特征提取算法、基于大数据技术的大气碳排放数据分析和可视化监测,对典型大气样品的光谱信息数据进行实时采集、结构化处理和存储;在大数据平台上运行低成本、高效率的光谱分类算法,实时获取气体样品成分的详细数据,并可视化显示分析结果。仿真实验结果表明,该方法能较好地实现基于大数据和光谱测量的大气碳排放监测预警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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