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首页> 外文期刊>Military operations research >A hybrid intelligent algorithm for optimum forecasting of CO_2 emission in complex environments: the cases of Brazil, Canada, France, Japan, India, UK and US
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A hybrid intelligent algorithm for optimum forecasting of CO_2 emission in complex environments: the cases of Brazil, Canada, France, Japan, India, UK and US

机译:一种用于复杂环境中CO_2排放最佳预测的混合智能算法:以巴西,加拿大,法国,日本,印度,英国和美国为例

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摘要

This study presents a hybrid meta-modeling algorithm for optimum carbon dioxide (CO_2) emission estimation. It is composed of artificial neural network (ANN), fuzzy linear regression (FLR), and conventional regression (CR). Different FLR models are considered to cover the latest algorithms and viewpoints. ANN with different training algorithms and transfer functions is also applied to data sets. The proposed hybrid algorithms uses analysis of variance (ANOVA), and mean absolute percentage error (MAPE) to select between ANN, FLR or conventional regression for future CO_2 emission estimation. The intelligent algorithm of this study is then applied to estimate CO_2 emission in seven countries including India, Canada, Brazil, France, Japan, United Kingdom and United States. Different models are selected as preferred model for annual CO_2 emission estimation in these countries. The preferred model for India, Brazil, United Kingdom and United States is selected as FLR whereas the preferred model for CO_2 emission estimation in Japan, Canada and France is ANN. This shows how adopting the proposed hybrid algorithm could help in selecting the preferred model between FLR, ANN and CR in order to cover possible noise, complexity and ambiguity. This is the first study that utilizes a hybrid algorithm based on ANN, FLR and CR for accurate and optimum long term CO_2 emission estimation.
机译:这项研究提出了一种用于优化二氧化碳(CO_2)排放估算的混合元建模算法。它由人工神经网络(ANN),模糊线性回归(FLR)和常规回归(CR)组成。考虑使用不同的FLR模型来涵盖最新的算法和观点。具有不同训练算法和传递函数的人工神经网络也适用于数据集。提出的混合算法使用方差分析(ANOVA)和平均绝对百分比误差(MAPE)在ANN,FLR或常规回归之间进行选择,以用于将来的CO_2排放估算。然后,将这项研究的智能算法应用于估算七个国家(包括印度,加拿大,巴西,法国,日本,英国和美国)的CO_2排放量。在这些国家中,选择不同的模型作为年度CO_2排放估算的首选模型。选择印度,巴西,英国和美国的首选模型作为FLR,而日本,加拿大和法国的CO_2排放估算的首选模型是ANN。这表明采用建议的混合算法如何有助于在FLR,ANN和CR之间选择首选模型,以涵盖可能的噪声,复杂性和歧义性。这是首次利用基于ANN,FLR和CR的混合算法进行准确和最佳的长期CO_2排放估算的研究。

著录项

  • 来源
    《Military operations research》 |2015年第3期|237-246|共10页
  • 作者单位

    School of Industrial and Systems Engineering, Center of Excellence for Intelligent-Based Experimental Mechanic, and Department of Engineering Optimization Research, College of Engineering, University of Tehran, Iran;

    School of Industrial and Systems Engineering, Center of Excellence for Intelligent-Based Experimental Mechanic, and Department of Engineering Optimization Research, College of Engineering, University of Tehran, Iran;

    School of Industrial and Systems Engineering, Center of Excellence for Intelligent-Based Experimental Mechanic, and Department of Engineering Optimization Research, College of Engineering, University of Tehran, Iran;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    CO_2 emission; Neural network; Fuzzy mathematical programming; Mean absolute percentage error; Analysis of variance;

    机译:CO_2排放;神经网络;模糊数学编程平均绝对百分比误差;方差分析;

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