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Random Fuzzy Variable based Uncertainty Modelling for the Prediction of Human Development Index using CO2 Emission Data

机译:基于随机模糊变量的基于CO2排放数据的人类发展指数预测的不确定性建模

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The instruments used for the measurements are often accredited with some amount of error or uncertainty. These ambiguities and uncertainties may affect the process of decision making, quality assessment, risk analysis etc. Although, there are several high-end devices which can comfortably calculate the uncertainty in the measurement, the expression and representations of such uncertainty is a major bottleneck. From several years, Random Fuzzy Variables (RFVs) have provided the solution to this problem of uncertainty modelling. In this paper, we have modelled the uncertain readings of CO2 emissions from the satellites and earthly devices using the RFVs. Later, the Human Development index (HDI) is predicted using the above modelled data. Three most widely used machine learning (ML) approaches are utilized for the prediction purpose. These approaches are: kernel extreme learning machines (KELM), generalized regression neural network (GRNN), and support vector regression (SVR). Experimental results have shown the efficacy of the proposed approach with better RMSE in HDI predictions as compared to the traditional approaches.
机译:用于测量的仪器通常经过一定程度的误差或不确定性认可。这些不确定性和不确定性可能会影响决策,质量评估,风险分析等过程。尽管有几种高端设备可以舒适地计算测量中的不确定性,但是这种不确定性的表达和表示是一个主要的瓶颈。几年来,随机模糊变量(RFV)为不确定性建模提供了解决方案。在本文中,我们对CO的不确定读数建模 2 使用RFV的卫星和地球设备的发射。后来,使用上述模型数据预测了人类发展指数(HDI)。三种最广泛使用的机器学习(ML)方法用于预测目的。这些方法是:内核极限学习机(KELM),广义回归神经网络(GRNN)和支持向量回归(SVR)。实验结果表明,与传统方法相比,该方法在HDI预测中具有更好的RMSE效果。

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