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首页> 外文期刊>International journal of low carbon technologies >Applying GMDH artificial neural network in modeling CO_2 emissions in four nordic countries
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Applying GMDH artificial neural network in modeling CO_2 emissions in four nordic countries

机译:GMDH人工神经网络在四个北欧国家的CO_2排放建模中的应用

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摘要

CO_2 emission depends on several parameters. Due to environmental issues, it is necessary to find influential factors on CO_2 emission as one of the most critical greenhouse gases. Type of utilized fuels and their share in total primary energy consumption, Gross Domestic Product (GDP) as an indicator for economic activities and the share of renewable energies play key role in the amount of CO_2 emission. In the present study, Group method of data handling (GMDH) is applied in order to model CO_2 emission as a function of consumption of various fuels, renewable energies and GDP. Obtained data showed that GMDH is an appropriate approach to predict CO_2 emission. Comparing between actual data and GMDH output indicates that the R-squared value for the proposed model is equal to 0.998 which shows its high accuracy. In addition, it is observed that the highest absolute error by using GMDH artificial neural network is lower than 4%. The absolute relative error for more than 66% of data is lower than 1% which is another criterion demonstrating acceptable accuracy of the proposed model.
机译:CO_2排放取决于几个参数。由于环境问题,有必要寻找影响CO_2排放的最主要温室气体之一。所用燃料的类型及其在一次能源总消耗中所占的份额,作为经济活动指标的国内生产总值(GDP)和可再生能源的份额在CO_2排放量中起着关键作用。在本研究中,应用分组数据处理方法(GMDH)来建模CO_2排放作为各种燃料,可再生能源和GDP消耗的函数。获得的数据表明,GMDH是预测CO_2排放的合适方法。实际数据与GMDH输出之间的比较表明,所提出模型的R平方值等于0.998,这表明它具有很高的准确性。此外,可以看出,使用GMDH人工神经网络的最高绝对误差低于4%。超过66%的数据的绝对相对误差低于1%,这是另一个证明所提出模型可接受的准确性的标准。

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