Classification of solid waste generation areas in the greater accra region using machine learning algorithms

C. Chapman-Wardy, Eric Ocran, Samuel Iddi, L. Asiedu
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Abstract

Solid waste management has become a challenge for developing countries mainly because of surging economic activities, rapid urbanisation and rise in community living standards. Many researchers have identified its related problems and have recommended solutions while others have established models to forecast the amount of solid waste generated over a period. However, an efficient and effective management of solid waste requires adequate categorisation of solid waste generation areas to aid in the provision of area-specific or targeted solutions for each categorised area. In this study, we used primary data on some important socio-demographic variables (household size, house type, predominant religion of household, age and educational level of household head, residency type household waste disposal method, frequency of waste collection etc) and the amount of solid waste generated from 2102 households in Greater Accra Region, Ghana. We assessed the classification performances of a traditional statistical classifiers and some selected machine learning algorithms in classifying the surveyed areas in Greater Accra into low, medium, and high solid waste generation areas. The Support Vector Machine with the Cubic Kernel was found to be the best performing classifier with a Specificity of 86%, Sensitivity, Precision and Accuracy of 73% and Area under the curve (AUC) of 0.90. The Support Vector Machine with the Cubic Kernel is therefore recommended as a suitable algorithm for the categorisation of solid waste generation areas. Stakeholders responsible for solid waste management could leverage on the evidence from this study to categorise their waste generation areas and to proffer targeted community-based interventions.
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使用机器学习算法对大阿克拉地区的固体废物产生区域进行分类
固体废物管理已成为发展中国家面临的一项挑战,这主要是因为经济活动激增、城市化进程加快以及社区生活水平提高。许多研究人员发现了相关问题并提出了解决方案,还有一些研究人员建立了模型来预测一段时间内产生的固体废物量。然而,要对固体废物进行高效和有效的管理,就必须对固体废物产生区域进行适当分类,以便为每个分类区域提供特定或有针对性的解决方案。在这项研究中,我们使用了加纳大阿克拉地区 2102 个家庭的一些重要社会人口变量(家庭规模、房屋类型、家庭主要宗教信仰、户主年龄和教育水平、居住类型、家庭废物处理方法、废物收集频率等)和固体废物产生量的原始数据。我们评估了传统统计分类器和一些选定的机器学习算法在将大阿克拉地区的调查区域分为低、中和高固体废物产生区域时的分类性能。结果发现,带有立方核的支持向量机是性能最好的分类器,其特异性为 86%,灵敏度、精确度和准确度均为 73%,曲线下面积 (AUC) 为 0.90。因此,建议将带有立方核的支持向量机作为固体废物产生区域分类的合适算法。负责固体废物管理的利益相关者可以利用本研究的证据对其废物产生区域进行分类,并提出有针对性的社区干预措施。
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来源期刊
Model Assisted Statistics and Applications
Model Assisted Statistics and Applications Mathematics-Applied Mathematics
CiteScore
1.00
自引率
0.00%
发文量
26
期刊介绍: Model Assisted Statistics and Applications is a peer reviewed international journal. Model Assisted Statistics means an improvement of inference and analysis by use of correlated information, or an underlying theoretical or design model. This might be the design, adjustment, estimation, or analytical phase of statistical project. This information may be survey generated or coming from an independent source. Original papers in the field of sampling theory, econometrics, time-series, design of experiments, and multivariate analysis will be preferred. Papers of both applied and theoretical topics are acceptable.
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