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Research on Green Management Effect Evaluation of Power Generation Enterprises in China Based on Dynamic Hesitation and Improved Extreme Learning Machine

机译:基于动力犹豫和改进的极限学习机的中国发电企业绿色管理绩效评价研究

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Carbon emissions and environmental protection issues have become the pressure from the international community during the current transitional stage of China’s energy transformation. China has set a macro carbon emission target, which will reduce carbon emissions per unit of Gross Domestic Product (GDP) by 40% in 2020 and 60–65% in 2030 than that in 2005. To achieve the emission reduction target, the industrial structure must be adjusted and upgraded. Furthermore, it must start from a high-pollution and high-emission industry. Therefore, it is of practical significance to construct a low-carbon sustainability and green operation benefits of power generation enterprises to save energy and reduce emissions. In this paper, an intuitionistic fuzzy comprehensive analytic hierarchy process based on improved dynamic hesitation degree (D-IFAHP) and an improved extreme learning machine algorithm optimized by RBF kernel function (RELM) are proposed. Firstly, we construct the evaluation indicator system of low-carbon sustainability and green operation benefits of power generation enterprises. Moreover, during the non-dimensional processing, the evaluation index system is determined. Secondly, we apply the evaluation indicator system by an empirical analysis. It is proved that the D-IFAHP evaluation model proposed in this paper has higher accuracy performance. Finally, the RELM is applied to D-IFAHP to construct a combined evaluation model named D-IFAHP-RELM evaluation model. The D-IFAHP evaluation results are used as the input of the training sets of the RELM algorithm, which simplifies the comprehensive evaluation process and can be directly applied to similar projects.
机译:在当前中国能源转型的过渡阶段,碳排放和环境保护问题已成为国际社会的压力。中国制定了宏观碳排放目标,到2020年,单位国内生产总值的碳排放量将比2005年减少40%,到2030年减少60-65%。为实现减排目标,产业结构必须进行调整和升级。此外,它必须从高污染和高排放的行业开始。因此,构建发电企业的低碳可持续性和绿色运营效益对节约能源,减少排放具有现实意义。提出了一种基于改进的动态犹豫度(D-IFAHP)的直觉模糊综合分析层次结构方法,并提出了一种基于RBF核函数(RELM)优化的改进的极限学习机算法。首先,构建发电企业低碳可持续性和绿色运营效益评价指标体系。此外,在无量纲处理期间,确定评估指标系统。其次,通过实证分析,应用评价指标体系。实践证明,本文提出的D-IFAHP评价模型具有较高的准确性。最后,将RELM应用于D-IFAHP,构建了一个综合评估模型D-IFAHP-RELM评估模型。 D-IFAHP评估结果用作RELM算法训练集的输入,简化了综合评估过程,可以直接应用于类似项目。

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