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Municipal solid waste higher heating value prediction from ultimate analysis using multiple regression and genetic programming techniques

机译:使用多元回归和遗传编程技术,从最终分析中获得城市固体废物更高的加热值预测

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Municipal solid waste (MSW) management presents an important challenge for all countries. In order to exploit them as a source of energy, a knowledge of their calorific value is essential. In fact, it can be experimentally measured by an oxygen bomb calorimeter. This process is, however, expensive. In this light, the purpose of this paper was to develop empirical models for the prediction of MSW higher heating value (HHV) from ultimate analysis. Two methods were used: multiple regression analysis and genetic programming formalism. Both techniques gave good results. Genetic programming, however, provides more accuracy compared to published works in terms of a great correlation coefficient (CC) and a low root mean square error (RMSE).
机译:市固体废物(MSW)管理层为所有国家提供了重要挑战。为了利用它们作为能量来源,他们的热值知识至关重要。事实上,它可以通过氧气炸弹量热计进行实验测量。然而,这个过程昂贵。在这种光中,本文的目的是从最终分析开发用于预测MSW更高的加热值(HHV)的实证模型。使用了两种方法:多元回归分析和遗传编程形式主义。这两种技术都得到了良好的结果。然而,与发布的作品相比,遗传编程提供了更准确的基础,而在巨大的相关系数(CC)和低根均方误差(RMSE)方面。

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