利用不同曲线拟合模型预测固体废物成分:一个案例研究

Kemal Özkan, Ş. Işık, A. Ozkan, M. Banar
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引用次数: 4

摘要

本文提出了一种基于有限样本的城市固体废物组成预测方法。该方法在土耳其eski ehir市的一个案例研究中得到应用。为此,根据各区的社会经济结构,收集了一年的城市固体废物样本。城市生活垃圾样品主要分为五组:纸板、金属、玻璃、塑料和食物垃圾。每组75%的值用作训练数据集,其余的用作考虑收入水平和人口的测试集。采用不同的曲线拟合模型对数据进行训练,得到不同的方程(幂、指数和多项式)。利用这些方程对试验集进行预测,并将实际值与试验结果进行比较。根据测量值的不同优度确定预测精度并进行解释。从模型的准确性可以看出,收入水平和人口对垃圾组成的影响是非常重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction for the solid waste composition by use of different curve fitting models: A case study
This study presents a methodology for the prediction of solid waste composition in the urban area based on a set of limited samples. The methodology was applied by a case study for Eskişehir city in Turkey. For this purpose, Municipal Solid Waste (MSW) samples were collected for one year according to socioeconomic structure of districts. MSW samples were separated mainly into five groups of: paper-cardboard, metals, glass, plastics and food wastes as manually. The 75% of the values for each group were used as train data sets and the remains were used as test sets considering to income levels and population. It was used different curve fitting models for training of data and obtained different equations (power, exponential and polynomial) from the models. These equations were used for prediction of test sets and real values and test results were compared. Prediction accuracies were determined and interpreted according to different goodness of measurement values. It was seen that the effect of income level and population on waste composition from the degree of accuracy of this model is very important.
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