Application of a multi-stage neural network approach for time-series landfill gas modeling with missing data imputation

被引:27
|
作者
Fallah, Bahareh [1 ]
Ng, Kelvin Tsun Wai [1 ]
Hoang Lan Vu [1 ]
Torabi, Farshid [1 ]
机构
[1] Univ Regina, Environm Syst Engn, Regina, SK, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Methane generation prediction; Data pre-processing; Missing data imputation; Artificial neural networks; MLP; NARX; MUNICIPAL SOLID-WASTE; METHANE EMISSIONS; PREDICTION; GENERATION; AIR; ANN; ENERGY; VALUES; GROUNDWATER; REGRESSION;
D O I
10.1016/j.wasman.2020.07.034
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
To mitigate the greenhouse gas effect, accurate and precise landfill gas prediction models are required for more precise prediction of the amount and recovery time of methane gas from landfills. When the study associates to greenhouse gas emissions problems, time series prediction models are of considerable interests, in which significant past records of gas data are required. This study is the first to specially impute the missing methane (CH4) data for applying in time series artificial neural network (ANN) model in an attempt to predict daily CH4 generation rate from a landfill in Regina, SK, Canada. Pre-processing was conducted on data to evaluate independent and significant meteorological input variables and provide suitable dataset for developing CH4 generation models. A two-stage time series model proposed in this study was performed by missing data imputation at the first stage, followed by a neural network auto-regressive model with exogenous inputs (NARX) at the second stage. The model with 3 layers, 5 climatic variables and 9 neurons in the hidden layer was the optimal structure. This model shows the high performance in CH4 prediction with the average index of agreement of 0.92 and the average mean absolute percentage error (MAPE) of 3.03% during the testing stage. Missing data imputation coupled with NARX method decreased the mean squared error (MSE) of the model by 84% (compared to Multilayer Perceptrons neural network model) in the testing period representing the effectiveness of missing data estimation coupling with time series ANN models in daily CH4 generation prediction. (C) 2020 Elsevier Ltd. All rights reserved.
引用
收藏
页码:66 / 78
页数:13
相关论文
共 50 条
  • [21] Multi-stage Algorithm Based on Neural Network Committee for Prediction and Search for Precursors in Multi-dimensional Time Series
    Dolenko, Sergey
    Guzhva, Alexander
    Persiantsev, Igor
    Shugai, Julia
    ARTIFICIAL NEURAL NETWORKS - ICANN 2009, PT II, 2009, 5769 : 295 - 304
  • [22] Modeling of Ion Energy Distribution Using Time-Series Neural Network
    Kim, Suyeon
    Kim, Byungwhan
    NEW ASPECTS OF SYSTEMS, PTS I AND II, 2008, : 159 - +
  • [24] Two stage approach to functional network reconstruction for binary time-series
    Navit Dori
    Pablo Piedrahita
    Yoram Louzoun
    The European Physical Journal B, 2019, 92
  • [25] Two stage approach to functional network reconstruction for binary time-series
    Dori, Navit
    Piedrahita, Pablo
    Louzoun, Yoram
    EUROPEAN PHYSICAL JOURNAL B, 2019, 92 (02):
  • [26] A Novel Missing Data Imputation Approach for Time Series Air Quality Data Based on Logistic Regression
    Chen, Mei
    Zhu, Hongyu
    Chen, Yongxu
    Wang, Youshuai
    ATMOSPHERE, 2022, 13 (07)
  • [27] Missing data imputation in a transformer district based on time series imagingencoding and a generative adversarial network
    Liu K.
    Zhou F.
    Zhou H.
    Dianli Xitong Baohu yu Kongzhi/Power System Protection and Control, 2022, 50 (24): : 129 - 136
  • [28] Application of BP neural network in forecasting soil temperature time-series
    邹平
    杨劲松
    姚荣江
    中国生态农业学报(中英文), 2008, (04) : 835 - 838
  • [29] Modeling of Multi-resolution Active Network Measurement Time-series
    Calyam, Prasad
    Devulapalli, Ananth
    2008 IEEE 33RD CONFERENCE ON LOCAL COMPUTER NETWORKS, VOLS 1 AND 2, 2008, : 878 - 885
  • [30] Simulating Time-Series Data for Improved Deep Neural Network Performance
    Yeomans, Jordan
    Thwaites, Simon
    Robertson, William S. P.
    Booth, David
    Ng, Brian
    Thewlis, Dominic
    IEEE ACCESS, 2019, 7 : 131248 - 131255