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Assessment Analysis and Forecasting for Security Early Warning of Energy Consumption Carbon Emissions in Hebei Province, China

机译:中国河北省能耗碳排放安全预警评估分析与预测

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Against the backdrop of increasingly serious global climate change and the development of the low-carbon economy, the coordination between energy consumption carbon emissions (ECCE) and regional population, resources, environment, economy and society has become an important subject. In this paper, the research focuses on the security early warning of ECCE in Hebei Province, China. First, an assessment index system of the security early warning of ECCE is constructed based on the pressure-state-response (P-S-R) model. Then, the variance method and linearity weighted method are used to calculate the security early warning index of ECCE. From the two dimensions of time series and spatial pattern, the security early warning conditions of ECCE are analyzed in depth. Finally, with the assessment analysis of the data from 2000 to 2014, the prediction of the security early warning of carbon emissions from 2015 to 2020 is given, using a back propagation neural network based on a kidney-inspired algorithm (KA-BPNN) model. The results indicate that: (1) from 2000 to 2014, the security comprehensive index of ECCE demonstrates a fluctuating upward trend in general and the trend of the alarm level is “Severe warning”–“Moderate warning”–“Slight warning”; (2) there is a big spatial difference in the security of ECCE, with relatively high-security alarm level in the north while it is relatively low in the other areas; (3) the security index shows the trend of continuing improvement from 2015 to 2020, however the security level will remain in the state of “Semi-secure” for a long time and the corresponding alarm is still in the state of “Slight warning”, reflecting that the situation is still not optimistic.
机译:在全球气候变化日益严重和低碳经济发展的背景下,能源消费碳排放与区域人口,资源,环境,经济和社会之间的协调已成为重要课题。本文的研究重点是中国河北省ECCE的安全预警。首先,基于压力状态响应(P-S-R)模型构建了ECCE安全预警评估指标体系。然后,采用方差法和线性加权法计算ECCE的安全预警指标。从时间序列和空间格局两个维度,深入分析了幼儿保育与安全的预警条件。最后,通过对2000年至2014年数据的评估分析,使用基于肾脏启发算法(KA-BPNN)模型的反向传播神经网络,给出了2015年至2020年碳排放安全预警的预测。 。结果表明:(1)从2000年到2014年,ECCE的安全综合指数总体上呈现出波动的上升趋势,警报级别的趋势为“严重警告” -“中度警告” -“轻微警告”; (2)ECCE的安全性存在较大的空间差异,北部的安全警报级别较高,而其他地区的警报级别较低; (3)安全指数呈现2015年至2020年持续改善的趋势,但安全级别将长期处于“半安全”状态,相应的警报仍处于“轻微警告”状态,反映情况仍然不容乐观。

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