Agricultural Green Ecological Efficiency Evaluation Using BP Neural Network-DEA Model

Qiang Sun, Yuxin Sui
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引用次数: 1

Abstract

The evaluation of agricultural green ecological efficiency can reflect the capacity of agriculture for sustainable development and reduce the endogenous pollution caused by agricultural waste in order to alleviate the weakening of agricultural ecosystems. Taking the agricultural green economy as the research object, an evaluation index system based on the theories of green economic efficiency and economic growth for agricultural green ecological efficiency was constructed, and the impact mechanisms of specific indicators on agricultural green ecological efficiency were empirically explored. In addition, based on the data envelopment analysis (DEA) model, the overall agricultural green ecological efficiency of China from 2002 to 2021 was evaluated and the efficiency characteristics were analyzed from multiple perspectives. Then, the indicators of policy, finance, communication, society and other aspects were added in order to construct a comprehensive evaluation model of agricultural green ecological efficiency using a combination of DEA and a BP neural network, and the feasibility of the model was verified. The results indicate that the agricultural green ecological efficiency increased from 0.7340 in 2002 to 0.8205 in 2021, an increase of 11.78%. Additionally, the technological efficiency of China’s agricultural green ecological system did not show a very obvious trend of divergence. The results of the BP neural network were consistent with those obtained using DEA, and the overall evolution trend of the calculated BP neural network and DEA were mutually verified and integrated. The effectiveness and accuracy of the BP neural network was verified via a comparison with DEA.
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基于BP神经网络dea模型的农业绿色生态效率评价
农业绿色生态效率评价可以反映农业可持续发展的能力,减少农业废弃物造成的内生污染,缓解农业生态系统的弱化。以农业绿色经济为研究对象,基于绿色经济效率和经济增长理论构建了农业绿色生态效率评价指标体系,并实证探讨了具体指标对农业绿色生态效率的影响机制。此外,基于数据包络分析(DEA)模型,对2002 - 2021年中国农业绿色生态整体效率进行了评价,并从多个角度分析了效率特征。然后,加入政策、金融、传播、社会等方面的指标,采用DEA与BP神经网络相结合的方法构建农业绿色生态效率综合评价模型,并对模型的可行性进行了验证。结果表明:农业绿色生态效率从2002年的0.7340上升到2021年的0.8205,增长了11.78%;此外,中国农业绿色生态系统的技术效率并没有表现出非常明显的分化趋势。BP神经网络的计算结果与DEA的计算结果一致,并且计算得到的BP神经网络与DEA的整体演化趋势相互验证和整合。通过与DEA的比较,验证了BP神经网络的有效性和准确性。
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