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Incorporating uncertainty in data driven regression models of fluidized bed gasification: A Bayesian approach

机译:在流化床气化的数据驱动回归模型中纳入不确定性:贝叶斯方法

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In recent years, different non-linear regression techniques using neural networks and genetic programming have been applied for data-driven modelling of fluidized bed gasification processes. However, none of these methods explicitly take into account the uncertainty of the measurements and predictions. In this paper, a Bayesian approach based on Gaussian processes is used to address this issue. This method is used to predict the syngas yield production and the lower heating value (LHV) for municipal solid waste (MSW) gasification in a fluidized bed gasifier. The model parameters are calculated using the maximum a-posteriori (MAP) estimate and compared with the Markov Chain Monte Carlo (MCMC) method. The simulations demonstrate that the Bayesian methodology is a powerful technique for handling the uncertainties in the model and making probabilistic predictions based on experimental data. The method is generic in nature and can be extended to other types of fuels as well. (C) 2015 Elsevier B.V. All rights reserved.
机译:近年来,使用神经网络和遗传编程的不同非线性回归技术已用于流化床气化过程的数据驱动建模。但是,这些方法均未明确考虑测量和预测的不确定性。在本文中,基于高斯过程的贝叶斯方法被用来解决这个问题。该方法用于预测流化床气化炉中城市固体废物(MSW)气化的合成气产量和较低的发热量(LHV)。使用最大后验(MAP)估计值计算模型参数,并将其与Markov Chain Monte Carlo(MCMC)方法进行比较。仿真表明,贝叶斯方法是一种强大的技术,可以处理模型中的不确定性,并根据实验数据进行概率预测。该方法本质上是通用的,并且可以扩展到其他类型的燃料。 (C)2015 Elsevier B.V.保留所有权利。

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