Study on the Environmental Innovation Capability Evaluation Model of Manufacturing Enterprises Based on Entropy Weight TOPSIS-BP Neural Network and Empirical Research

Jianzhong Xu, Ying Sun
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引用次数: 2

Abstract

In order to objectively and accurately evaluate the environmental innovation capability of manufacturing enterprises, this study establishes an evaluation indicator system of environmental innovation ability of manufacturing enterprises. We propose the evaluation model of environmental innovation capability of manufacturing enterprises based on the integrated learning algorithm which is entropy weight TOPSIS and BP neural network. First, the entropy weight method is employed to calculate the weighted index and comprehensive evaluation of environmental innovation capability of manufacturing enterprises by TOPSIS method. Then, the evaluation value is used as a priori sample for the training and testing of BP neural network. The environmental innovation ability of the manufacturing enterprises is analyzed and evaluated in a more comprehensive way. Furthermore, an empirical evaluation of the sixty enterprises in Heilongjiang Province is taken as the example to illustrate the feasibility of this method. And the environmental innovation capability of enterprises is comparatively analyzed. The validity of the prediction model was verified by comparing the proposed the entropy weight TOPSIS-BP neural network regression fitting algorithms. The results show that the evaluation results based on entropy weight TOPSIS-BP neural network model is more accurate and reliable than the existing methods. In addition, it provides theoretical suggestions for further improving the environmental innovation capability of manufacturing enterprises in China.
基于熵权TOPSIS-BP神经网络的制造企业环境创新能力评价模型及实证研究
为了客观准确地评价制造企业的环境创新能力,本研究建立了制造企业环境创新能力评价指标体系。提出了基于熵权TOPSIS和BP神经网络集成学习算法的制造企业环境创新能力评价模型。首先,采用熵权法计算制造企业环境创新能力的加权指标,并用TOPSIS法对制造企业环境创新能力进行综合评价。然后,将评价值作为先验样本进行BP神经网络的训练和测试。对制造企业的环境创新能力进行了较为全面的分析和评价。并以黑龙江省60家企业为例进行实证评价,验证了该方法的可行性。并对企业环境创新能力进行了比较分析。通过比较所提出的熵权TOPSIS-BP神经网络回归拟合算法,验证了预测模型的有效性。结果表明,基于熵权TOPSIS-BP神经网络模型的评价结果比现有方法更加准确可靠。并为进一步提高中国制造企业的环境创新能力提供理论建议。
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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