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Using a back propagation neural network based on improved particle swarm optimization to study the influential factors of carbon dioxide emissions in Hebei Province, China

机译:利用基于改进粒子群算法的反向传播神经网络研究河北省二氧化碳排放的影响因素

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The emission of carbon dioxide is the primary cause of the greenhouse effect, therefore a precise study of the influential factors of carbon dioxide emissions is of great significance to control the growth from the source. In this paper, non-inertial weight coefficients and selective mutation strategies are used in a particle swarm optimization algorithm, and the improved particle swarm was used to optimize the initial connection weights and thresholds of a traditional back propagation (BP) neural network. Consequently, a new BP model based on an improved particle swarm (IPSO) is established: improved particle swarm optimization-back propagation algorithm (IPSO-BP). In order to verify the overall performance and effectiveness of the proposed method, an empirical analysis of carbon dioxide emissions and influential factors was carried out in Hebei Province, China during the period 1978-2012. The results were compared with those of two other methods to prove that the proposed IPSO-BP algorithm could take full advantage of IPSO's global search capability and BP's local search capability, as well as overcome the problems of BP of random initial values and premature solutions. In addition, the precision of the fit and prediction of carbon dioxide emissions are improved notably. (C) 2015 Elsevier Ltd. All rights reserved.
机译:二氧化碳的排放是温室效应的主要原因,因此,准确研究二氧化碳排放的影响因素对于从源头控制生长具有重要意义。本文将非惯性权重系数和选择性突变策略用于粒子群优化算法,并将改进的粒子群用于优化传统反向传播(BP)神经网络的初始连接权重和阈值。因此,建立了基于改进粒子群算法(IPSO)的新BP模型:改进粒子群优化-反向传播算法(IPSO-BP)。为了验证该方法的整体性能和有效性,在中国河北省1978-2012年间进行了二氧化碳排放量及其影响因素的实证分析。将结果与其他两种方法进行比较,证明所提出的IPSO-BP算法可以充分利用IPSO的全局搜索能力和BP的局部搜索能力,并克服了随机初始值和过早求解BP的问题。另外,拟合精度和二氧化碳排放量的预测得到了显着提高。 (C)2015 Elsevier Ltd.保留所有权利。

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