首页> 外文期刊>Environmental Science and Pollution Research >Leachate generation rate modeling using artificial intelligence algorithms aided by input optimization method for an MSW landfill
【24h】

Leachate generation rate modeling using artificial intelligence algorithms aided by input optimization method for an MSW landfill

机译:用于MSW垃圾填埋的输入优化方法辅助使用人工智能算法的渗滤液产生速率建模

获取原文
获取原文并翻译 | 示例
           

摘要

Leachate is one of the main surface water pollution sources in Selangor State (SS), Malaysia. The prediction of leachate amounts is elementary in sustainable waste management and leachate treatment processes, before discharging to surrounding environment. In developing countries, the accurate evaluation of leachate generation rates has often considered a challenge due to the lack of reliable data and high measurement costs. Leachate generation is related to several factors, including meteorological data, waste generation rates, and landfill design conditions. The high variations in these factors lead to complicating leachate modeling processes. This study aims at identifying the key elements contributing to leachate production and developing various AI-based models to predict leachate generation rates. These models included Artificial Neural Network (ANN)-Multi-linear perceptron (MLP) with single and double hidden layers, and support vector machine (SVM) regression time series algorithms. Various performance measures were applied to evaluate the developed model's accuracy. In this study, input optimization process showed that three inputs were acceptable for modeling the leachate generation rates, namely dumped waste quantity, rainfall level, and emanated gases. The initial performance analysis showed that ANN-MLP2 modelwhich applies two hidden layersachieved the best performance, then followed by ANN-MLP1 modelwhich applies one hidden layer and three inputswhile SVM model gave the lowest performance. Ranges and frequency of relative error (RE%) also demonstrate that ANN-MLP models outperformed SVM models. Furthermore, low and peak flow criterion (LFC and PFC) assessment of leachate inflow values in ANN-MLP model with two hidden layers made more accurate values than other models. Since minimizing data collection and processing efforts as well as minimizing modeling complexity are critical in the hydrological modeling process, the applied input optimization process and the developed models in this study were able to provide a good performance in the modeling of leachate generation efficiently.
机译:渗滤液是马来西亚雪兰莪州的主要地表水污染来源之一。在释放到周围环境之前,在可持续废物管理和渗滤液处理过程中,渗滤液量的预测是基本的。在发展中国家,由于缺乏可靠的数据和高测量成本,对渗滤液产生率的准确评估往往是挑战。渗滤液生成与几个因素有关,包括气象数据,废物产生率和垃圾填埋场设计条件。这些因素的高变化导致渗滤液建模过程复杂化。本研究旨在识别有助于渗滤液生产和开发各种基于AI的模型的关键因素来预测渗滤液产生率。这些型号包括人工神经网络(ANN) - 具有单个和双隐藏层的人工神经网络(ANN)-Multi-Linear Perceptron(MLP),并支持向量机(SVM)回归时间序列算法。应用各种性能措施来评估开发的模型的准确性。在该研究中,输入优化过程显示三种输入可接受用于建模渗滤液产生速率,即倾倒废物量,降雨量和涂气体。初始性能分析表明,Ann-MLP2型号适用于两个隐藏的阶段最佳性能,然后采用Ann-MLP1模型,应用一个隐藏层,三个InputSwhile SVM模型给出了最低的性能。相对误差的范围和频率(RE%)还证明了ANN-MLP型号优于SVM模型。此外,具有两个隐藏层的Ann-MLP模型中的低和峰值流量(LFC和PFC)评估渗滤液流入值与两个隐藏层更精确的值比其他模型更准确。由于最小化数据收集和处理工作以及最小化建模复杂性在水文建模过程中至关重要,因此应用的输入优化过程和本研究中的开发模型能够有效地在渗滤液的建模中提供良好的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号