Evolutionary-based neuro-fuzzy modelling of combustion enthalpy of municipal solid waste

被引:0
|
作者
Adeleke, Oluwatobi [1 ]
Akinlabi, Stephen [2 ]
Jen, Tien-Chien [1 ]
Adedeji, Paul A. [1 ]
Dunmade, Israel [3 ]
机构
[1] Department of Mechanical Engineering Science, University of Johannesburg, Auckland Park Kingsway Campus, Johannesburg, South Africa
[2] Department of Mechanical Engineering, Walter Sisulu University, Butterworth Campus, Butterworth, South Africa
[3] Faculty of Science and Technology, Mount Royal University, Calgary, Canada
关键词
Enthalpy - Genetic algorithms - Municipal solid waste - Forecasting - Waste incineration - Cluster analysis - Errors - Mean square error - Particle swarm optimization (PSO) - Calorific value;
D O I
暂无
中图分类号
学科分类号
摘要
The viability of thermal waste-to-energy (WTE) plants and its optimal performance have informed intelligent predictive modelling of its significant variables critical to optimal energy recovery and plant operational planning using machine learning approach. However, the optimality of hyper-parameters is significant to accurate modelling of combustion enthalpy of waste in neuro-fuzzy models. In this study, the significant effect of hyper-parameters tuning of different clustering techniques, vis-à-vis fuzzy c-means (FCM), subtractive clustering (SC) and grid partitioning (GP), on the performance of the ANFIS model in its standalone and hybridized form was investigated. The ANFIS model was optimized with two evolutionary algorithms, namely particle swarm optimization (PSO) and genetic algorithm (GA), for predicting the lower heating value (LHV) of waste using the city of Johannesburg as a case study. The optimal model for LHV prediction was selected based on minimum error criteria after testing the models’ performance using relevant statistical metrics like root mean square error (RMSE), mean absolute percentage error (MAPE), mean absolute deviation (MAD), relative mean bias error (rMBE) and coefficient of variation (RCoV). The result revealed a better performance of the hybridized ANFIS model than the standalone ANFIS model. Also, a significant variation in all models’ performance at different clustering technique was noted. However, all GP-clustered models gave the most accurate prediction than others. The most accurate model was obtained using a GP-clustered PSO-ANFIS model with triangular input membership function (tri-MF) giving RMSE, MAD, MAPE, rMBE and RCoV values of 0.139, 0.064, 2.536, 0.071 and 0.181, respectively. This study established the significance of municipality-based LHV prediction model to enhance the efficiency of thermal WTE plants and the robustness of evolutionary-based neuro-fuzzy model for heating value prediction. © 2022, The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature.
引用
收藏
页码:7419 / 7436
相关论文
共 50 条
  • [31] Evolutionary neuro-fuzzy system for surface roughness evaluation
    Svalina, Ilija
    Simunovic, Goran
    Saric, Tomislav
    Lujic, Roberto
    [J]. APPLIED SOFT COMPUTING, 2017, 52 : 593 - 604
  • [32] A neuro-fuzzy classifier based on the fuzzy perceptron
    Xu, L.-J.
    Yu, Y.-L.
    [J]. Huanan Ligong Daxue Xuebao/Journal of South China University of Technology (Natural Science), 2001, 29 (09): : 40 - 44
  • [33] Supervised and Reinforcement Evolutionary Learning for Wavelet-based Neuro-fuzzy Networks
    Cheng-Jian Lin
    Yong-Cheng Liu
    Chi-Yung Lee
    [J]. Journal of Intelligent and Robotic Systems, 2008, 52 : 285 - 312
  • [34] Supervised and reinforcement evolutionary learning for wavelet-based neuro-fuzzy networks
    Lin, Cheng-Jian
    Liu, Yong-Cheng
    Lee, Chi-Yung
    [J]. JOURNAL OF INTELLIGENT & ROBOTIC SYSTEMS, 2008, 52 (02) : 285 - 312
  • [35] Sensor Selection in Neuro-fuzzy Modelling for Fault Diagnosis
    Zhou, Yimin
    Zolotas, Argyrios
    [J]. IEEE INTERNATIONAL SYMPOSIUM ON INDUSTRIAL ELECTRONICS (ISIE 2010), 2010, : 322 - 327
  • [36] Adaptive neuro-fuzzy inference system for modelling and control
    Amaral, TGB
    Crisóstomo, MM
    Pires, VF
    [J]. 2002 FIRST INTERNATIONAL IEEE SYMPOSIUM INTELLIGENT SYSTEMS, VOL 1, PROCEEDINGS, 2002, : 67 - 72
  • [37] Neuro-Fuzzy modelling using a logistic discriminant tree
    Hametner, Christoph
    Jakubek, Stefan
    [J]. 2007 AMERICAN CONTROL CONFERENCE, VOLS 1-13, 2007, : 5470 - +
  • [38] On Designing of Flexible Neuro-Fuzzy Systems for Nonlinear Modelling
    Cpalka, Krzysztof
    Rebrova, Olga
    Nowicki, Robert
    Rutkowski, Leszek
    [J]. ROUGH SETS, FUZZY SETS, DATA MINING AND GRANULAR COMPUTING, RSFDGRC 2011, 2011, 6743 : 147 - 154
  • [39] On design of flexible neuro-fuzzy systems for nonlinear modelling
    Cpalka, Krzysztof
    Rebrova, Olga
    Nowicki, Robert
    Rutkowski, Leszek
    [J]. INTERNATIONAL JOURNAL OF GENERAL SYSTEMS, 2013, 42 (06) : 706 - 720
  • [40] NEURO-FUZZY MODELLING OF BLENDING PROCESS IN CEMENT PLANT
    Araromi, Dauda Olarotimi
    Odewale, Stephen Ayodele
    Hamed, Jimoh Olugbenga
    [J]. ADVANCES IN SCIENCE AND TECHNOLOGY-RESEARCH JOURNAL, 2015, 9 (28): : 27 - 33