Application of artificial neural networks for predicting the physical composition of municipal solid waste: An assessment of the impact of seasonal variation

被引:39
作者
Adeleke, Oluwatobi [1 ]
Akinlabi, Stephen A. [2 ]
Jen, Tien-Chien [1 ]
Dunmade, Israel [3 ]
机构
[1] Univ Johannesburg, Dept Mech Engn Sci, Auckland Pk Kingsway Campus, ZA-2006 Johannesburg, Gauteng, South Africa
[2] Walter Sisulu Univ, Dept Mech Engn, Mthatha, South Africa
[3] Mt Royal Univ, Fac Sci & Technol, Calgary, AB, Canada
关键词
Municipal solid waste; model architecture; backpropagation; seasonal variation; physical composition; ANN; GENERATION; MANAGEMENT; LANDFILL; ANN; CITY; OPTIMIZATION; COLLECTION; SYSTEM; LEVEL; MODEL;
D O I
10.1177/0734242X21991642
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Sustainable planning of waste management is contingent on reliable data on waste characteristics and their variation across the seasons owing to the consequential environmental impact of such variation. Traditional waste characterization techniques in most developing countries are time-consuming and expensive; hence the need to address the issue from a modelling approach arises. In modelling the complexity within the system, a paradigm shift from the classical models to the intelligent models has been observed. The application of artificial intelligence models in waste management is gaining traction; however its application in predicting the physical composition of waste is still lacking. This study aims at investigating the optimal combinations of network architecture, training algorithm and activation functions that accurately predict the fraction of physical waste streams from meteorological parameters using artificial neural networks. The city of Johannesburg was used as a case study. Maximum temperature, minimum temperature, wind speed and humidity were used as input variables to predict the percentage composition of organic, paper, plastics and textile waste streams. Several sub-models were stimulated with combination of nine training algorithms and four activation functions in each single hidden layer topology with a range of 1-15 neurons. Performance metrics used to evaluate the accuracy of the system are, root mean square error, mean absolute deviation, mean absolute percentage error and correlation coefficient (R). Optimal architectures in the order of input layer-number of neurons in the hidden layer-output layer for predicting organic, paper, plastics and textile waste were 4-10-1, 4-14-1, 4-5-1 and 4-8-1 with R-values of 0.916, 0.862, 0.834 and 0.826, respectively at the testing phase. The result of the study verifies that waste composition prediction can be done in a single hidden-layer satisfactorily.
引用
收藏
页码:1058 / 1068
页数:11
相关论文
共 45 条
[1]   Forecasting municipal solid waste generation using artificial intelligence modelling approaches [J].
Abbasi, Maryam ;
El Hanandeh, Ali .
WASTE MANAGEMENT, 2016, 56 :13-22
[2]   Artificial intelligence applications in solid waste management: A systematic research review [J].
Abdallah, Mohamed ;
Abu Talib, Manar ;
Feroz, Sainab ;
Nasir, Qassim ;
Abdalla, Hadeer ;
Mahfood, Bayan .
WASTE MANAGEMENT, 2020, 109 :231-246
[3]   Modeling and optimization of biogas production from a waste digester using artificial neural network and genetic algorithm [J].
Abu Qdais, H. ;
Hani, K. Bani ;
Shatnawi, N. .
RESOURCES CONSERVATION AND RECYCLING, 2010, 54 (06) :359-363
[4]   Seasonal characterisation of municipal solid waste from Astana city, Kazakhstan: Composition and thermal properties of combustible fraction [J].
Abylkhani, Bexultan ;
Aiymbetov, Berik ;
Yagofarova, Almira ;
Tokmurzin, Diyar ;
Venetis, Christos ;
Poulopoulos, Stavros ;
Sarbassov, Yerbol ;
Inglezakis, Vassilis J. .
WASTE MANAGEMENT & RESEARCH, 2019, 37 (12) :1271-1281
[5]  
Aslani H., 2018, Journal of Advances in Environmental Health Research, V6, P34, DOI [10.22102/JAEHR.2018.105728.1053, DOI 10.22102/JAEHR.2018.105728.1053]
[6]   Municipal solid waste generation and characterization in the City of Johannesburg: A pathway for the implementation of zero waste [J].
Ayeleru, O. O. ;
Okonta, F. N. ;
Ntuli, F. .
WASTE MANAGEMENT, 2018, 79 :87-97
[7]   Develop 24 dissimilar ANNs by suitable architectures & training algorithms via sensitivity analysis to better statistical presentation: Measure MSEs between targets & ANN for Fe-CuO/Eg-Water nanofluid [J].
Bahrami, Mehrdad ;
Akbari, Mohammad ;
Bagherzadeh, Seyed Amin ;
Karimipour, Arash ;
Afrand, Masoud ;
Goodarzi, Marjan .
PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2019, 519 :159-168
[8]   Modeling leaching behavior of solidified wastes using back-propagation neural networks [J].
Bayar, Senem ;
Demir, Ibrahim ;
Engin, Guleda Onkal .
ECOTOXICOLOGY AND ENVIRONMENTAL SAFETY, 2009, 72 (03) :843-850
[9]   Local strategies for efficient management of solid household waste - the full-scale Augustenborg experiment [J].
Bernstad, Anna ;
Jansen, Jes la Cour ;
Aspegren, Henrik .
WASTE MANAGEMENT & RESEARCH, 2012, 30 (02) :200-212
[10]   Improving forecasting accuracy of time series data using a new ARIMA-ANN hybrid method and empirical mode decomposition [J].
Buyuksahin, Umit Cavus ;
Ertekina, Seyda .
NEUROCOMPUTING, 2019, 361 :151-163