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2020 | OriginalPaper | Buchkapitel

Systematic Review of Deep Learning and Machine Learning Models in Biofuels Research

verfasst von : Sina Ardabili, Amir Mosavi, Annamária R. Várkonyi-Kóczy

Erschienen in: Engineering for Sustainable Future

Verlag: Springer International Publishing

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Abstract

The importance of energy systems and their role in economics and politics is not hidden for anyone. This issue is not only important for the advanced industrialized countries, which are major energy consumers but is also essential for oil-rich countries. In addition to the nature of these fuels, which contains polluting substances, the issue of their ending up has aggravated the growing concern. Biofuels can be used in different fields for energy production like electricity production, power production, or for transportation. Various scenarios have been written about the estimated biofuels from different sources in the future energy system. The availability of biofuels for the electricity market, heating, and liquid fuels is critical. Accordingly, the need for handling, modeling, decision making, and forecasting for biofuels can be of utmost importance. Recently, machine learning (ML) and deep learning (DL) techniques have been accessible in modeling, optimizing, and handling biodiesel production, consumption, and environmental impacts. The main aim of this study is to review and evaluate ML and DL techniques and their applications in handling biofuels production, consumption, and environmental impacts, both for modeling and optimization purposes. Hybrid and ensemble ML methods, as well as DL methods, have found to provide higher performance and accuracy.

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Literatur
1.
Zurück zum Zitat Landis, D.A., et al.: Biomass and biofuel crop effects on biodiversity and ecosystem services in the North Central US. Biomass Bioenergy 114, 18–29 (2018)CrossRef Landis, D.A., et al.: Biomass and biofuel crop effects on biodiversity and ecosystem services in the North Central US. Biomass Bioenergy 114, 18–29 (2018)CrossRef
2.
Zurück zum Zitat Shaosen, S., et al.: Experimental and artificial intelligence for determination of stable criteria in cyclic voltammetric process of medicinal herbs for biofuel cells. Int. J. Energy Res. (2019) Shaosen, S., et al.: Experimental and artificial intelligence for determination of stable criteria in cyclic voltammetric process of medicinal herbs for biofuel cells. Int. J. Energy Res. (2019)
3.
Zurück zum Zitat Wong, K.I., Wong, P.K.: Optimal calibration of variable biofuel blend dual-injection engines using sparse Bayesian extreme learning machine and metaheuristic optimization. Energy Convers. Manag. 148, 1170–1178 (2017)CrossRef Wong, K.I., Wong, P.K.: Optimal calibration of variable biofuel blend dual-injection engines using sparse Bayesian extreme learning machine and metaheuristic optimization. Energy Convers. Manag. 148, 1170–1178 (2017)CrossRef
4.
Zurück zum Zitat Wong, K.I., Wong, P.K.: Adaptive air-fuel ratio control of dual-injection engines under biofuel blends using extreme learning machine. Energy Convers. Manag. 165, 66–75 (2018)CrossRef Wong, K.I., Wong, P.K.: Adaptive air-fuel ratio control of dual-injection engines under biofuel blends using extreme learning machine. Energy Convers. Manag. 165, 66–75 (2018)CrossRef
5.
Zurück zum Zitat Zhang, F., et al.: Integrating GIS with optimization method for a biofuel feedstock supply chain. Biomass Bioenergy 98, 194–205 (2017)CrossRef Zhang, F., et al.: Integrating GIS with optimization method for a biofuel feedstock supply chain. Biomass Bioenergy 98, 194–205 (2017)CrossRef
6.
Zurück zum Zitat Afsharzade, N., et al.: Renewable energy development in rural areas of Iran. Renew. Sustain. Energy Rev. 65, 743–755 (2016)CrossRef Afsharzade, N., et al.: Renewable energy development in rural areas of Iran. Renew. Sustain. Energy Rev. 65, 743–755 (2016)CrossRef
7.
Zurück zum Zitat Fardad, K.: Producing Biogas from Medicinal Plants, in Biosystem Engineering. University of Mohaghegh Ardabili, Ardabil, Iran (2017) Fardad, K.: Producing Biogas from Medicinal Plants, in Biosystem Engineering. University of Mohaghegh Ardabili, Ardabil, Iran (2017)
8.
Zurück zum Zitat Jebli, M.B., Youssef, S.B.: The role of renewable energy and agriculture in reducing CO2 emissions: evidence for North Africa countries (2015) Jebli, M.B., Youssef, S.B.: The role of renewable energy and agriculture in reducing CO2 emissions: evidence for North Africa countries (2015)
9.
Zurück zum Zitat Concu, R., et al.: PTML model of enzyme subclasses for mining the proteome of biofuel producing microorganisms. J. Proteome Res. (2019) Concu, R., et al.: PTML model of enzyme subclasses for mining the proteome of biofuel producing microorganisms. J. Proteome Res. (2019)
10.
Zurück zum Zitat De Bortoli, A.L., Pereira, F.N.: Obtaining a reduced kinetic mechanism for Methyl Butanoate. J. Math. Chem. 57(3), 812–833 (2019)MathSciNetMATHCrossRef De Bortoli, A.L., Pereira, F.N.: Obtaining a reduced kinetic mechanism for Methyl Butanoate. J. Math. Chem. 57(3), 812–833 (2019)MathSciNetMATHCrossRef
11.
Zurück zum Zitat del Rio-Chanona, E.A., et al.: Deep learning-based surrogate modeling and optimization for microalgal biofuel production and photobioreactor design. AIChE J. 65(3), 915–923 (2019)CrossRef del Rio-Chanona, E.A., et al.: Deep learning-based surrogate modeling and optimization for microalgal biofuel production and photobioreactor design. AIChE J. 65(3), 915–923 (2019)CrossRef
12.
Zurück zum Zitat Demirbas, A.: Global biofuel strategies. Energy Educ. Sci. Technol. 17(1/2), 27 (2006) Demirbas, A.: Global biofuel strategies. Energy Educ. Sci. Technol. 17(1/2), 27 (2006)
13.
Zurück zum Zitat Xue, J., Grift, T.E., Hansen, A.C.: Effect of biodiesel on engine performances and emissions. Renew. Sustain. Energy Rev. 15(2), 1098–1116 (2011)CrossRef Xue, J., Grift, T.E., Hansen, A.C.: Effect of biodiesel on engine performances and emissions. Renew. Sustain. Energy Rev. 15(2), 1098–1116 (2011)CrossRef
14.
Zurück zum Zitat Seyyed aram, A., Najafi, B.: The effect of biodiesel of butanol alcohol and waste oil on performance and emission of diesel engine, in biosystem engineering. Thesis of M.Sc., University of Mohaghegh Ardabili (2016) Seyyed aram, A., Najafi, B.: The effect of biodiesel of butanol alcohol and waste oil on performance and emission of diesel engine, in biosystem engineering. Thesis of M.Sc., University of Mohaghegh Ardabili (2016)
15.
Zurück zum Zitat Nicoletti, J., Ning, C., You, F.: Incorporating agricultural waste-to-energy pathways into biomass product and process network through data-driven nonlinear adaptive robust optimization. Energy 180, 556–571 (2019)CrossRef Nicoletti, J., Ning, C., You, F.: Incorporating agricultural waste-to-energy pathways into biomass product and process network through data-driven nonlinear adaptive robust optimization. Energy 180, 556–571 (2019)CrossRef
16.
Zurück zum Zitat Opgenorth, P., et al.: Lessons from two Design-Build-Test-Learn cycles of dodecanol production in Escherichia coli aided by machine learning. ACS Synth. Biol. 8(6), 1337–1351 (2019)CrossRef Opgenorth, P., et al.: Lessons from two Design-Build-Test-Learn cycles of dodecanol production in Escherichia coli aided by machine learning. ACS Synth. Biol. 8(6), 1337–1351 (2019)CrossRef
17.
Zurück zum Zitat Rezk, H., et al.: Improving the environmental impact of palm kernel shell through maximizing its production of hydrogen and syngas using advanced artificial intelligence. Sci. Total Environ. 658, 1150–1160 (2019)CrossRef Rezk, H., et al.: Improving the environmental impact of palm kernel shell through maximizing its production of hydrogen and syngas using advanced artificial intelligence. Sci. Total Environ. 658, 1150–1160 (2019)CrossRef
18.
Zurück zum Zitat Salmeron, J.L., Ruiz-Celma, A.: Elliot and symmetric elliot extreme learning machines for Gaussian noisy industrial thermal modelling. Energies 12(1), 90 (2019)CrossRef Salmeron, J.L., Ruiz-Celma, A.: Elliot and symmetric elliot extreme learning machines for Gaussian noisy industrial thermal modelling. Energies 12(1), 90 (2019)CrossRef
19.
Zurück zum Zitat Ghaderi, M., et al.: An analysis of noise pollution emitted by moving MF285 Tractor using different mixtures of biodiesel, bioethanol and diesel through artificial intelligence. J. Low Freq. Noise Vib. Act. Control 38(2), 270–281 (2019)CrossRef Ghaderi, M., et al.: An analysis of noise pollution emitted by moving MF285 Tractor using different mixtures of biodiesel, bioethanol and diesel through artificial intelligence. J. Low Freq. Noise Vib. Act. Control 38(2), 270–281 (2019)CrossRef
20.
Zurück zum Zitat Habyarimana, E., et al.: Towards predictive modeling of sorghum biomass yields using fraction of absorbed photosynthetically active radiation derived from sentinel-2 satellite imagery and supervised machine learning techniques. Agronomy 9(4), 203 (2019)CrossRef Habyarimana, E., et al.: Towards predictive modeling of sorghum biomass yields using fraction of absorbed photosynthetically active radiation derived from sentinel-2 satellite imagery and supervised machine learning techniques. Agronomy 9(4), 203 (2019)CrossRef
21.
Zurück zum Zitat Kumar, S., et al.: Thermozymes: adaptive strategies and tools for their biotechnological applications. Bioresour. Technol. 278, 372–382 (2019)CrossRef Kumar, S., et al.: Thermozymes: adaptive strategies and tools for their biotechnological applications. Bioresour. Technol. 278, 372–382 (2019)CrossRef
22.
Zurück zum Zitat Mosavi, A., et al.: State of the art of machine learning models in energy systems, a systematic review. Energies 12(7), 1301 (2019)CrossRef Mosavi, A., et al.: State of the art of machine learning models in energy systems, a systematic review. Energies 12(7), 1301 (2019)CrossRef
23.
Zurück zum Zitat Muthukumaran, C., et al.: Process optimization and kinetic modeling of biodiesel production using non-edible Madhuca indica oil. Fuel 195, 217–225 (2017)CrossRef Muthukumaran, C., et al.: Process optimization and kinetic modeling of biodiesel production using non-edible Madhuca indica oil. Fuel 195, 217–225 (2017)CrossRef
24.
Zurück zum Zitat Anderson, R., et al.: An integrated modeling framework for crop and biofuel systems using the DSSAT and GREET models. Environ. Model Softw. 108, 40–50 (2018)CrossRef Anderson, R., et al.: An integrated modeling framework for crop and biofuel systems using the DSSAT and GREET models. Environ. Model Softw. 108, 40–50 (2018)CrossRef
25.
Zurück zum Zitat Kessler, T., et al.: Artificial neural network based predictions of cetane number for furanic biofuel additives. Fuel 206, 171–179 (2017)CrossRef Kessler, T., et al.: Artificial neural network based predictions of cetane number for furanic biofuel additives. Fuel 206, 171–179 (2017)CrossRef
26.
Zurück zum Zitat Choubin, B., et al.: An ensemble prediction of flood susceptibility using multivariate discriminant analysis, classification and regression trees, and support vector machines. Sci. Total Environ. 651, 2087–2096 (2019)CrossRef Choubin, B., et al.: An ensemble prediction of flood susceptibility using multivariate discriminant analysis, classification and regression trees, and support vector machines. Sci. Total Environ. 651, 2087–2096 (2019)CrossRef
27.
Zurück zum Zitat Dehghani, M., et al.: Prediction of hydropower generation using Grey wolf optimization adaptive neuro-fuzzy inference system. Energies 12(2), 289 (2019)CrossRef Dehghani, M., et al.: Prediction of hydropower generation using Grey wolf optimization adaptive neuro-fuzzy inference system. Energies 12(2), 289 (2019)CrossRef
28.
Zurück zum Zitat Dineva, A., et al.: Review of soft computing models in design and control of rotating electrical machines. Energies 12(6), 1049 (2019)CrossRef Dineva, A., et al.: Review of soft computing models in design and control of rotating electrical machines. Energies 12(6), 1049 (2019)CrossRef
29.
Zurück zum Zitat Dineva, A., et al.: Multi-Label Classification for Fault Diagnosis of Rotating Electrical Machines (2019) Dineva, A., et al.: Multi-Label Classification for Fault Diagnosis of Rotating Electrical Machines (2019)
30.
Zurück zum Zitat Farzaneh-Gord, M., et al.: Numerical simulation of pressure pulsation effects of a snubber in a CNG station for increasing measurement accuracy. Eng. Appl. Comput. Fluid Mech. 13(1), 642–663 (2019) Farzaneh-Gord, M., et al.: Numerical simulation of pressure pulsation effects of a snubber in a CNG station for increasing measurement accuracy. Eng. Appl. Comput. Fluid Mech. 13(1), 642–663 (2019)
31.
Zurück zum Zitat Ghalandari, M., et al.: Investigation of submerged structures’ flexibility on sloshing frequency using a boundary element method and finite element analysis. Eng. Appl. Comput. Fluid Mech. 13(1), 519–528 (2019) Ghalandari, M., et al.: Investigation of submerged structures’ flexibility on sloshing frequency using a boundary element method and finite element analysis. Eng. Appl. Comput. Fluid Mech. 13(1), 519–528 (2019)
32.
Zurück zum Zitat Ghalandari, M., et al.: Flutter speed estimation using presented differential quadrature method formulation. Eng. Appl. Comput. Fluid Mech. 13(1), 804–810 (2019) Ghalandari, M., et al.: Flutter speed estimation using presented differential quadrature method formulation. Eng. Appl. Comput. Fluid Mech. 13(1), 804–810 (2019)
33.
Zurück zum Zitat Karballaeezadeh, N., et al.: Prediction of remaining service life of pavement using an optimized support vector machine (case study of Semnan-Firuzkuh road). Eng. Appl. Comput. Fluid Mech. 13(1), 188–198 (2019) Karballaeezadeh, N., et al.: Prediction of remaining service life of pavement using an optimized support vector machine (case study of Semnan-Firuzkuh road). Eng. Appl. Comput. Fluid Mech. 13(1), 188–198 (2019)
34.
Zurück zum Zitat Menad, N.A., et al.: Modeling temperature dependency of oil - water relative permeability in thermal enhanced oil recovery processes using group method of data handling and gene expression programming. Eng. Appl. Comput. Fluid Mech. 13(1), 724–743 (2019)MathSciNet Menad, N.A., et al.: Modeling temperature dependency of oil - water relative permeability in thermal enhanced oil recovery processes using group method of data handling and gene expression programming. Eng. Appl. Comput. Fluid Mech. 13(1), 724–743 (2019)MathSciNet
35.
Zurück zum Zitat Mohammadzadeh, S., et al.: Prediction of compression index of fine-grained soils using a gene expression programming model. Infrastructures 4(2), 26 (2019)CrossRef Mohammadzadeh, S., et al.: Prediction of compression index of fine-grained soils using a gene expression programming model. Infrastructures 4(2), 26 (2019)CrossRef
36.
Zurück zum Zitat Mosavi, A., Edalatifar, M.: A hybrid neuro-fuzzy algorithm for prediction of reference evapotranspiration. Lecture Notes in Networks and Systems, pp. 235–243. Springer (2019) Mosavi, A., Edalatifar, M.: A hybrid neuro-fuzzy algorithm for prediction of reference evapotranspiration. Lecture Notes in Networks and Systems, pp. 235–243. Springer (2019)
37.
Zurück zum Zitat Mosavi, A., Lopez, A., Várkonyi-Kóczy, A.R.: Industrial applications of big data: state of the art survey. In: Luca, D., Sirghi, L., Costin, C. (eds.) pp. 225–232. Springer (2018) Mosavi, A., Lopez, A., Várkonyi-Kóczy, A.R.: Industrial applications of big data: state of the art survey. In: Luca, D., Sirghi, L., Costin, C. (eds.) pp. 225–232. Springer (2018)
38.
Zurück zum Zitat Mosavi, A., Ozturk, P., Chau, K.W.: Flood prediction using machine learning models: literature review. Water (Switzerland) 10(11), 1536 (2018) Mosavi, A., Ozturk, P., Chau, K.W.: Flood prediction using machine learning models: literature review. Water (Switzerland) 10(11), 1536 (2018)
39.
Zurück zum Zitat Mosavi, A., Rabczuk, T.: Learning and intelligent optimization for material design innovation. In: Kvasov, D.E., et al. (eds.) pp. 358–363. Springer (2017) Mosavi, A., Rabczuk, T.: Learning and intelligent optimization for material design innovation. In: Kvasov, D.E., et al. (eds.) pp. 358–363. Springer (2017)
40.
Zurück zum Zitat Mosavi, A., Rabczuk, T., Várkonyi-Kóczy, A.R.: Reviewing the novel machine learning tools for materials design. In: Luca, D., Sirghi, L., Costin, C. (eds.) pp. 50–58. Springer (2018) Mosavi, A., Rabczuk, T., Várkonyi-Kóczy, A.R.: Reviewing the novel machine learning tools for materials design. In: Luca, D., Sirghi, L., Costin, C. (eds.) pp. 50–58. Springer (2018)
41.
Zurück zum Zitat Aram, F., et al.: Design and validation of a computational program for analysing mental maps: aram mental map analyzer. Sustainability (Switzerland) 11(14), 3790 (2019)CrossRef Aram, F., et al.: Design and validation of a computational program for analysing mental maps: aram mental map analyzer. Sustainability (Switzerland) 11(14), 3790 (2019)CrossRef
42.
Zurück zum Zitat Asadi, E., et al.: Groundwater Quality Assessment for Drinking and Agricultural Purposes in Tabriz Aquifer, Iran (2019) Asadi, E., et al.: Groundwater Quality Assessment for Drinking and Agricultural Purposes in Tabriz Aquifer, Iran (2019)
43.
45.
Zurück zum Zitat Choubin, B., et al.: Snow avalanche hazard prediction using machine learning methods. J. Hydrol. 577, 123929 (2019)CrossRef Choubin, B., et al.: Snow avalanche hazard prediction using machine learning methods. J. Hydrol. 577, 123929 (2019)CrossRef
46.
Zurück zum Zitat Mosavi, A., et al.: Prediction of multi-inputs bubble column reactor using a novel hybrid model of computational fluid dynamics and machine learning. Eng. Appl. Comput. Fluid Mech. 13(1), 482–492 (2019) Mosavi, A., et al.: Prediction of multi-inputs bubble column reactor using a novel hybrid model of computational fluid dynamics and machine learning. Eng. Appl. Comput. Fluid Mech. 13(1), 482–492 (2019)
47.
Zurück zum Zitat Mosavi, A., Várkonyi-Kóczy, A.R.: Integration of machine learning and optimization for robot learning. In: Jablonski, R., Szewczyk, R. (eds.) pp. 349–355. Springer (2017) Mosavi, A., Várkonyi-Kóczy, A.R.: Integration of machine learning and optimization for robot learning. In: Jablonski, R., Szewczyk, R. (eds.) pp. 349–355. Springer (2017)
48.
Zurück zum Zitat Nosratabadi, S., et al.: Sustainable business models: a review. Sustainability (Switzerland) 11(6), 1663 (2019)CrossRef Nosratabadi, S., et al.: Sustainable business models: a review. Sustainability (Switzerland) 11(6), 1663 (2019)CrossRef
49.
Zurück zum Zitat Qasem, S.N., et al.: Estimating daily dew point temperature using machine learning algorithms. Water (Switzerland) 11(3), 582 (2019) Qasem, S.N., et al.: Estimating daily dew point temperature using machine learning algorithms. Water (Switzerland) 11(3), 582 (2019)
50.
Zurück zum Zitat Rezakazemi, M., Mosavi, A., Shirazian, S.: ANFIS pattern for molecular membranes separation optimization. J. Mol. Liq. 274, 470–476 (2019)CrossRef Rezakazemi, M., Mosavi, A., Shirazian, S.: ANFIS pattern for molecular membranes separation optimization. J. Mol. Liq. 274, 470–476 (2019)CrossRef
51.
Zurück zum Zitat Riahi-Madvar, H., et al.: Comparative analysis of soft computing techniques RBF, MLP, and ANFIS with MLR and MNLR for predicting grade-control scour hole geometry. Eng. Appl. Comput. Fluid Mech. 13(1), 529–550 (2019) Riahi-Madvar, H., et al.: Comparative analysis of soft computing techniques RBF, MLP, and ANFIS with MLR and MNLR for predicting grade-control scour hole geometry. Eng. Appl. Comput. Fluid Mech. 13(1), 529–550 (2019)
54.
Zurück zum Zitat Shamshirband, S., et al.: Ensemble models with uncertainty analysis for multi-day ahead forecasting of chlorophyll a concentration in coastal waters. Eng. Appl. Comput. Fluid Mech. 13(1), 91–101 (2019) Shamshirband, S., et al.: Ensemble models with uncertainty analysis for multi-day ahead forecasting of chlorophyll a concentration in coastal waters. Eng. Appl. Comput. Fluid Mech. 13(1), 91–101 (2019)
55.
Zurück zum Zitat Shamshirband, S., Mosavi, A., Rabczuk, T.: Particle swarm optimization model to predict scour depth around bridge pier. arXiv:1906.08863 (2019) Shamshirband, S., Mosavi, A., Rabczuk, T.: Particle swarm optimization model to predict scour depth around bridge pier. arXiv:​1906.​08863 (2019)
56.
Zurück zum Zitat Taherei Ghazvinei, P., et al.: Sugarcane growth prediction based on meteorological parameters using extreme learning machine and artificial neural network. Eng. Appl. Comput. Fluid Mech. 12(1), 738–749 (2018) Taherei Ghazvinei, P., et al.: Sugarcane growth prediction based on meteorological parameters using extreme learning machine and artificial neural network. Eng. Appl. Comput. Fluid Mech. 12(1), 738–749 (2018)
57.
Zurück zum Zitat Torabi, M., et al.: A Hybrid clustering and classification technique for forecasting short-term energy consumption. Environ. Prog. Sustain. Energy 38(1), 66–76 (2019)CrossRef Torabi, M., et al.: A Hybrid clustering and classification technique for forecasting short-term energy consumption. Environ. Prog. Sustain. Energy 38(1), 66–76 (2019)CrossRef
58.
Zurück zum Zitat Torabi, M., et al.: A hybrid machine learning approach for daily prediction of solar radiation. Lecture Notes in Networks and Systems, pp. 266–274. Springer (2019) Torabi, M., et al.: A hybrid machine learning approach for daily prediction of solar radiation. Lecture Notes in Networks and Systems, pp. 266–274. Springer (2019)
59.
Zurück zum Zitat Reynel-Ávila, H.E., Bonilla-Petriciolet, A., Tapia-Picazo, J.C.: An artificial neural network-based NRTL model for simulating liquid-liquid equilibria of systems present in biofuels production. Fluid Phase Equilib. 483, 153–164 (2019)CrossRef Reynel-Ávila, H.E., Bonilla-Petriciolet, A., Tapia-Picazo, J.C.: An artificial neural network-based NRTL model for simulating liquid-liquid equilibria of systems present in biofuels production. Fluid Phase Equilib. 483, 153–164 (2019)CrossRef
60.
Zurück zum Zitat Camberos, S.A., et al.: Neuronal modeling of a two stages anaerobic digestion process for biofuels production. IFAC-PapersOnLine 51(13), 408–413 (2018)CrossRef Camberos, S.A., et al.: Neuronal modeling of a two stages anaerobic digestion process for biofuels production. IFAC-PapersOnLine 51(13), 408–413 (2018)CrossRef
61.
Zurück zum Zitat Sewsynker-Sukai, Y., Faloye, F., Kana, E.B.G.: Artificial neural networks: an efficient tool for modelling and optimization of biofuel production (a mini review). Biotechnol. Biotechnol. Equip. 31(2), 221–235 (2017)CrossRef Sewsynker-Sukai, Y., Faloye, F., Kana, E.B.G.: Artificial neural networks: an efficient tool for modelling and optimization of biofuel production (a mini review). Biotechnol. Biotechnol. Equip. 31(2), 221–235 (2017)CrossRef
62.
Zurück zum Zitat Mancini, M., Taavitsainen, V.M., Toscano, G.: Comparison of three different classification methods performance for the determination of biofuel quality by means of NIR spectroscopy. J. Chemom. (2019) Mancini, M., Taavitsainen, V.M., Toscano, G.: Comparison of three different classification methods performance for the determination of biofuel quality by means of NIR spectroscopy. J. Chemom. (2019)
63.
Zurück zum Zitat Feng, X., et al.: Rapid and non-destructive measurement of biofuel pellet quality indices based on two-dimensional near infrared spectroscopic imaging. Fuel 228, 197–205 (2018)CrossRef Feng, X., et al.: Rapid and non-destructive measurement of biofuel pellet quality indices based on two-dimensional near infrared spectroscopic imaging. Fuel 228, 197–205 (2018)CrossRef
64.
Zurück zum Zitat Faizollahzadeh Ardabili, S., Najafi, B., Shamshirband, S.: Fuzzy logic method for the prediction of cetane number using carbon number, double bounds, iodic, and saponification values of biodiesel fuels. Environ. Prog. Sustain. Energy (2019) Faizollahzadeh Ardabili, S., Najafi, B., Shamshirband, S.: Fuzzy logic method for the prediction of cetane number using carbon number, double bounds, iodic, and saponification values of biodiesel fuels. Environ. Prog. Sustain. Energy (2019)
65.
Zurück zum Zitat Wong, K.I., et al.: Sparse Bayesian extreme learning machine and its application to biofuel engine performance prediction. Neurocomputing 149(Part A), 397–404 (2015)CrossRef Wong, K.I., et al.: Sparse Bayesian extreme learning machine and its application to biofuel engine performance prediction. Neurocomputing 149(Part A), 397–404 (2015)CrossRef
66.
Zurück zum Zitat Faizollahzadeh Ardabili, S., et al.: Using SVM-RSM and ELM-RSM approaches for optimizing the production process of methyl and ethyl esters. Energies 11(11), 2889 (2018)CrossRef Faizollahzadeh Ardabili, S., et al.: Using SVM-RSM and ELM-RSM approaches for optimizing the production process of methyl and ethyl esters. Energies 11(11), 2889 (2018)CrossRef
67.
Zurück zum Zitat Erdoğan, S., et al.: The best fuel selection with hybrid multiple-criteria decision making approaches in a CI engine fueled with their blends and pure biodiesels produced from different sources. Renew. Energy, 653–668 (2019)CrossRef Erdoğan, S., et al.: The best fuel selection with hybrid multiple-criteria decision making approaches in a CI engine fueled with their blends and pure biodiesels produced from different sources. Renew. Energy, 653–668 (2019)CrossRef
68.
Zurück zum Zitat Deo, R.C., et al.: Adaptive Neuro-Fuzzy Inference System integrated with solar zenith angle for forecasting sub-tropical Photosynthetically Active Radiation. Food Energy Secur. 8(1), e00151 (2019)CrossRef Deo, R.C., et al.: Adaptive Neuro-Fuzzy Inference System integrated with solar zenith angle for forecasting sub-tropical Photosynthetically Active Radiation. Food Energy Secur. 8(1), e00151 (2019)CrossRef
69.
Zurück zum Zitat Ardabili, S., Mosavi, A., Mahmoudi, A., Gundoshmian, T.M., Nosratabadi, S., Var-konyi-Koczy, A.: Modelling temperature variation of mushroom growing hall using artificial neural networks. Preprints (2019) Ardabili, S., Mosavi, A., Mahmoudi, A., Gundoshmian, T.M., Nosratabadi, S., Var-konyi-Koczy, A.: Modelling temperature variation of mushroom growing hall using artificial neural networks. Preprints (2019)
70.
Zurück zum Zitat Gundoshmian, T.M., Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Prediction of combine harvester performance using hybrid machine learning modeling and response surface methodology. Preprints (2019) Gundoshmian, T.M., Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Prediction of combine harvester performance using hybrid machine learning modeling and response surface methodology. Preprints (2019)
71.
Zurück zum Zitat Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Systematic review of deep learning and machine learning models in biofuels research. Preprints (2019) Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Systematic review of deep learning and machine learning models in biofuels research. Preprints (2019)
72.
Zurück zum Zitat Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Advances in machine learning modeling reviewing hybrid and ensemble methods. Preprints (2019) Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Advances in machine learning modeling reviewing hybrid and ensemble methods. Preprints (2019)
73.
Zurück zum Zitat Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Building Energy information: demand and consumption prediction with Machine Learning models for sustainable and smart cities. Preprints (2019) Ardabili, S., Mosavi, A., Varkonyi-Koczy, A.: Building Energy information: demand and consumption prediction with Machine Learning models for sustainable and smart cities. Preprints (2019)
74.
Zurück zum Zitat Ardabili, S., Mosavi, A., Dehghani, M., Varkonyi-Koczy, A.: Deep learning and machine learning in hydrological processes climate change and earth systems a systematic review. Preprints (2019) Ardabili, S., Mosavi, A., Dehghani, M., Varkonyi-Koczy, A.: Deep learning and machine learning in hydrological processes climate change and earth systems a systematic review. Preprints (2019)
75.
Zurück zum Zitat Mohammadzadeh, D., Karballaeezadeh, N., Mohemmi, M., Mosavi, A., Várkonyi-Kóczy A.: Urban Train Soil-Structure Interaction Modeling And Analysis. Preprints (2019) Mohammadzadeh, D., Karballaeezadeh, N., Mohemmi, M., Mosavi, A., Várkonyi-Kóczy A.: Urban Train Soil-Structure Interaction Modeling And Analysis. Preprints (2019)
76.
Zurück zum Zitat Mosavi, A., Ardabili, S., Varkonyi-Koczy, A.: List of deep learning models. Preprints (2019) Mosavi, A., Ardabili, S., Varkonyi-Koczy, A.: List of deep learning models. Preprints (2019)
77.
Zurück zum Zitat Nosratabadi, S., Mosavi, A., Keivani, R., Ardabili, S., Aram, F.: State of the art survey of deep learning and machine learning models for smart cities and urban sustainability. Preprints (2019) Nosratabadi, S., Mosavi, A., Keivani, R., Ardabili, S., Aram, F.: State of the art survey of deep learning and machine learning models for smart cities and urban sustainability. Preprints (2019)
Metadaten
Titel
Systematic Review of Deep Learning and Machine Learning Models in Biofuels Research
verfasst von
Sina Ardabili
Amir Mosavi
Annamária R. Várkonyi-Kóczy
Copyright-Jahr
2020
DOI
https://doi.org/10.1007/978-3-030-36841-8_2

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