Solano Meza Johanna Karina, Orjuela Yepes David, Rodrigo-Ilarri Javier, Cassiraga Eduardo
Department of Environmental Engineering, Santo Tomás University, Cra. 9 # 51-11, Bogotá, Colombia.
Water and Environmental Engineering Institute (IIAMA), Polytechnic University of Valencia, Camino de Vera, s/n, 46022 Valencia, Spain.
Heliyon. 2019 Nov 14;5(11):e02810. doi: 10.1016/j.heliyon.2019.e02810. eCollection 2019 Nov.
This study presents an analysis of three models associated with artificial intelligence as tools to forecast the generation of urban solid waste in the city of Bogotá, in order to learn about this type of waste's behavior. The analysis was carried out in such a manner that different efficient alternatives are presented. In this paper, a possible decision-making strategy was explored and implemented to plan and design technologies for the stages of collection, transport and final disposal of waste in cities, while taking into account their particular characteristics. The first model used to analyze data was the decision tree which employed machine learning as a non-parametric algorithm that models data separation limitations based on the learning decision rules on the input characteristics of the model. Support vector machines were the second method implemented as a forecasting model. The primary advantage of support vector machines is their proper adjustment to data despite its variable nature or when faced with problems with a small amount of training data. Lastly, recurrent neural network models to forecast data were implemented, which yielded positive results. Their architectural design is useful in exploring temporal correlations among the same. Distribution by collection zone in the city, socio-economic stratification, population, and quantity of solid waste generated in a determined period of time were factors considered in the analysis of this forecast. The results found that support vector machines are the most appropriate model for this type of analysis.
本研究对与人工智能相关的三种模型进行了分析,这些模型作为预测波哥大市城市固体废物产生量的工具,以便了解这类废物的行为。分析以呈现不同有效替代方案的方式进行。本文探索并实施了一种可能的决策策略,以规划和设计城市废物收集、运输及最终处置阶段的技术,同时考虑其特殊特征。用于分析数据的第一个模型是决策树,它采用机器学习作为一种非参数算法,基于对模型输入特征的学习决策规则来对数据分离限制进行建模。支持向量机是作为预测模型实施的第二种方法。支持向量机的主要优点是,无论数据性质如何变化,或者在面对少量训练数据的问题时,它们都能对数据进行适当调整。最后,实施了用于预测数据的递归神经网络模型,其产生了积极结果。其架构设计有助于探索其中的时间相关性。在该预测分析中考虑的因素包括城市按收集区域的分布、社会经济分层、人口以及在特定时间段内产生的固体废物量。结果发现,支持向量机是这类分析中最合适的模型。