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An adaptive neural network-fuzzy linear regression approach for improved car ownership estimation and forecasting in complex and uncertain environments: the case of Iran

机译:自适应神经网络-模糊线性回归方法可改善复杂和不确定环境中的汽车拥有量估计和预测:伊朗为例

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This paper applies a novel adaptive approach consisting of Artificial Neural Network (ANN) and Fuzzy Linear Regression (FLR) to improve car ownership forecasting in complex, ambiguous, and uncertain environments. This integrated approach is applied to forecast car ownership in Iran from 1930 to 2007. In this study, the level of car ownership is viewed as the result of demographic, politico-social, and urban structure factors including average family size, total population density, urban population density, urbanization rate, gross national product per capita, gasoline price, and total road length. To capture the potential complexity, uncertainty, and linearity relation between the car ownership function and its determinants, ANN and FLR (including eight well-known FLR) approaches are applied to the collected data. Next, the preferred ANN is selected based on sensitivity analysis results for the test data while the preferred FLR is identified with regard to ANOVA and MAPE results. The results obtained from the performance comparison demonstrate the considerable superiority of the preferred ANN over the preferred FLR regarding the nonlinear and complex nature of the car ownership function in Iran. This is the first study that presents an ANN-FLR approach for car ownership forecasting capable of handling complexity and non-linearity, uncertainty, pre-processing, and post-processing.
机译:本文应用了一种由人工神经网络(ANN)和模糊线性回归(FLR)组成的新型自适应方法,以改善在复杂,歧义和不确定环境中的汽车拥有量预测。这种综合方法可用于预测1930年至2007年伊朗的汽车拥有量。在本研究中,汽车拥有量的水平被视为人口,政治社会和城市结构因素(包括平均家庭规模,总人口密度,城市人口密度,城市化率,人均国民生产总值,汽油价格和总道路长度。为了捕获汽车所有权函数及其决定因素之间潜在的复杂性,不确定性和线性关系,将ANN和FLR(包括八种著名的FLR)方法应用于所收集的数据。接下来,基于对测试数据的敏感性分析结果选择首选的人工神经网络,同时根据方差分析和MAPE结果确定首选的FLR。从性能比较中获得的结果表明,就伊朗汽车拥有权函数的非线性和复杂性质而言,首选ANN优于首选FLR。这是第一项提出用于汽车拥有量预测的ANN-FLR方法的研究,该方法能够处理复杂性和非线性,不确定性,预处理和后处理。

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