电力消耗与污染物排放:基于DCCA和MF-DCCA的研究

Guangzhongzhai Li, Jia-xin Zhang, X. Wen, Lang-ming Xu, Ying Yuan
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引用次数: 0

摘要

在大数据背景下,深入了解工业企业用电量与污染物排放浓度之间的潜在相关性,对于有效预测和监测污染物排放具有重要意义。本文考虑到工业企业用电量和污染物排放数据的非线性和复杂性,采用相关统计检验、去趋势相关分析和多重分形去趋势相关分析等方法研究两者之间的相关性。本文以某工业企业为例进行了数值计算,结果表明该企业的用电量数据与污染物排放浓度之间确实存在一定的关联。此外,它们之间的相关性显示出长记忆和多重分形。我们的研究有助于利用电力大数据进一步预测污染物排放。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electric Power Consumption and Pollutant Emission: A Study Based on DCCA and MF-DCCA
In the context of big data, an in-depth understanding of the potential correlation between electric power consumption and pollutant emission concentration of industrial enterprises is of great significance for effective prediction and monitoring of pollutant emissions. In this paper, considering the properties of nonlinearity and complexity in the data of electric power consumption and pollutant emission of industrial enterprises, we apply cross-correlation statistic test, detrended cross-correlation analysis and multifractal detrended cross-correlation analysis to study the correlation between them. Our numerical example based on an industrial enterprise shows that there is indeed an association between electricity consumption data and pollutant emission concentration of the enterprise. Moreover, the correlations between them demonstrate long memory and multifractality. Our research can help to further predict the pollutant emission using the electric power big data.
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