Abstract
The advent of new data-mining techniques and, more recently, swarm-based optimization algorithms have antiquated traditional models in the field of energy performance analysis. This paper investigates the potential of two state-of-the-art hybrid methods, namely grasshopper optimization algorithm (GOA) and gray wolf optimization (GWO) in improving the neural assessment of heating load (HL) of residential buildings. To achieve this goal, eight HL influential factors including glazing area distribution, relative compactness, overall height, surface area, roof area, wall area, orientation, and glazing area are considered for preparing the required dataset. A population-based sensitivity analysis is then carried out to use the best-fitted structures of each ensemble. The results showed that utilizing both GOA and GWO algorithms results in increasing the accuracy of the neural network. From comparison viewpoint, it was found that the GWO (error = 2.2899 and correlation = 0.9551) surpasses GOA (error = 2.4459 and correlation = 0.9486) in adjusting the computational parameters of the proposed neural system.
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Zhou S (2012) Operational parameters prediction and optimization research of district heating system based on pipe network dynamic model. Shandong University, Jinan
Pengfei J, Lin F (2014) Operational regulation of the secondary network of district heating systems based on actual parameters. Heat Vent Air Cond 12:32
Gao W, Wang W, Dimitrov D, Wang Y (2018) Nano properties analysis via fourth multiplicative ABC indicator calculating. Arab J Chem 11:793–801
Bui DT, Moayedi H, Gör M, Jaafari A, Foong LK (2019) Predicting slope stability failure through machine learning paradigms. ISPRS Int J Geo-Inf 8(9):395
Gao W, Dimitrov D, Abdo H (2018) Tight independent set neighborhood union condition for fractional critical deleted graphs and ID deleted graphs. Discrete Contin Dyn Syst S 12:711–721
Moayedi H, Tien Bui D, Gör M, Pradhan B, Jaafari A (2019) The feasibility of three prediction techniques of the artificial neural network, adaptive neuro-fuzzy inference system, and hybrid particle swarm optimization for assessing the safety factor of cohesive slopes. ISPRS Int J Geo-Inf 8(9):391
Gao W, Guirao JLG, Abdel-Aty M, Xi W (2019) An independent set degree condition for fractional critical deleted graphs. Discrete Contin Dyn Syst S 12:877–886
Protić M, Shamshirband S, Petković D, Abbasi A, Mat Kiah ML, Unar JA, Živković L, Raos M (2015) Forecasting of consumers heat load in district heating systems using the support vector machine with a discrete wavelet transform algorithm. Energy 87:343–351
Yang H, Jin S, Feng S, Wang B, Zhang F, Che J (2016) Heat load forecasting of district heating system based on numerical weather prediction model. In: 2015 2nd international forum on electrical engineering and automation (IFEEA 2015)
Geysen D, De Somer O, Johansson C, Brage J, Vanhoudt D (2018) Operational thermal load forecasting in district heating networks using machine learning and expert advice. Energy Build 162:144–153
Kwok SSK, Lee EWM (2011) A study of the importance of occupancy to building cooling load in prediction by intelligent approach. Energy Convers Manag 52:2555–2564
Foucquier A, Robert S, Suard F, Stéphan L, Jay A (2013) State of the art in building modelling and energy performances prediction: a review. Renew Sustain Energy Rev 23:272–288
Justel A, Peña D, Zamar R (1997) A multivariate Kolmogorov–Smirnov test of goodness of fit. Stat Probab Lett 35:251–259
Shamshirband S, Petković D, Enayatifar R, Hanan Abdullah A, Marković D, Lee M, Ahmad R (2015) Heat load prediction in district heating systems with adaptive neuro-fuzzy method. Renew Sustain Energy Rev 48:760–767
Jihad AS, Tahiri M (2018) Forecasting the heating and cooling load of residential buildings by using a learning algorithm “gradient descent”, Morocco. Case Stud Therm Eng 12:85–93
Castelli M, Trujillo L, Vanneschi L, Popovič A (2015) Prediction of energy performance of residential buildings: a genetic programming approach. Energy Build 102:67–74
Fan C, Xiao F, Zhao Y (2017) A short-term building cooling load prediction method using deep learning algorithms. Appl Energy 195:222–233
Xie L (2017) The heat load prediction model based on BP neural network-markov model. Proc Comput Sci 107:296–300
Chou J-S, Bui D-K (2014) Modeling heating and cooling loads by artificial intelligence for energy-efficient building design. Energy Build 82:437–446
Tien Bui D, Khosravi K, Li S, Shahabi H, Panahi M, Singh V, Chapi K, Shirzadi A, Panahi S, Chen W (2018) New hybrids of ANFIS with several optimization algorithms for flood susceptibility modeling. Water 10:1210
Tsanas A, Xifara A (2012) Accurate quantitative estimation of energy performance of residential buildings using statistical machine learning tools. Energy Build 49:560–567
Zeynali M, Shahidi A (2018) Performance assessment of grasshopper optimization algorithm for optimizing coefficients of sediment rating curve. AUT J Civ Eng 2:39–48
Gao W, Guirao JLG, Basavanagoud B, Wu J (2018) Partial multi-dividing ontology learning algorithm. Inf Sci 467:35–58
Mittal N, Singh U, Sohi BS (2016) Modified grey wolf optimizer for global engineering optimization. Appl Comput Intell Soft Comput 2016:8
Gao W, Wu H, Siddiqui MK, Baig AQ (2018) Study of biological networks using graph theory. Saudi J Biol Sci 25:1212–1219
Barman M, Choudhury NBD (2018) Hybrid GOA-SVR technique for short term load forecasting during periods with substantial weather changes in North-East India. Proc Comput Sci 143:124–132
Liu J, Wang A, Qu Y, Wang W (2018) Coordinated operation of multi-integrated energy system based on linear weighted sum and grasshopper optimization algorithm. IEEE Access 6:42186–42195
Kahla S, Soufi Y, Sedraoui M, Bechouat M (2017) Maximum power point tracking of wind energy conversion system using multi-objective grey wolf optimization of fuzzy-sliding mode controller. Int J Renew Energy Res (IJRER) 7:926–936
Petković D, Protić M, Shamshirband S, Akib S, Raos M, Marković D (2015) Evaluation of the most influential parameters of heat load in district heating systems. Energy Build 104:264–274
Moayedi H, Mehrabi M, Kalantar B, Abdullahi Mu’azu MA, Rashid AS, Foong LK, Nguyen H (2019) Novel hybrids of adaptive neuro-fuzzy inference system (ANFIS) with several metaheuristic algorithms for spatial susceptibility assessment of seismic-induced landslide. Geomat Nat Hazards Risk 10:1879–1911
Le LT, Nguyen H, Dou J, Zhou J (2019) A comparative study of PSO-ANN, GA-ANN, ICA-ANN, and ABC-ANN in estimating the heating load of buildings’ energy efficiency for smart city planning. Appl Sci 9:2630
Le LT, Nguyen H, Zhou J, Dou J, Moayedi H (2019) Estimating the heating load of buildings for smart city planning using a novel artificial intelligence technique PSO-XGBoost. Appl Sci 9:2714
Moayedi H, Kalantar B, Foong LK, Tien Bui D, Motevalli A (2019) Application of three metaheuristic techniques in simulation of concrete slump. Appl Sci 9:4340
Tien Bui D, Moayedi H, Anastasios D, Kok Foong L (2019) Predicting heating and cooling loads in energy-efficient buildings using two hybrid intelligent models. Appl Sci 9:3543
Hornik K, Stinchcombe M, White H (1989) Multilayer feedforward networks are universal approximators. Neural Netw 2:359–366
Liu L, Moayedi H, Rashid ASA, Rahman SSA, Nguyen H (2019) Optimizing an ANN model with genetic algorithm (GA) predicting load-settlement behaviours of eco-friendly raft-pile foundation (ERP) system. Eng Comput. https://doi.org/10.1007/s00366-019-00767-4
Moayedi H, Nguyen H, Safuan ARA (2019) Novel metaheuristic classification approach in developing mathematical model-based solutions predicting failure in shallow footing. Eng Comput 36:1–8
Nguyen H, Moayedi H, Sharifi A, Amizah WJW, Safuan ARA (2019) Proposing a novel predictive technique using M5Rules-PSO model estimating cooling load in energy-efficient building system. Eng Comput 35:1–11
Wang B, Moayedi H, Safuan A, Rashid ASA, Nguyen H (2019) Feasibility of a novel predictive technique based on artificial neural network optimized with particle swarm optimization estimating pullout bearing capacity of helical piles. Eng Comput 36:1–10
Yuan C, Moayedi H (2019) The performance of six neural-evolutionary classification techniques combined with multi-layer perception in two-layered cohesive slope stability analysis and failure recognition. Eng Comput 36:1–10
Kaveh A (2017) Sizing optimization of skeletal structures using the enhanced whale optimization algorithm, applications of metaheuristic optimization algorithms in civil engineering. Springer, Cham, pp 47–69
Simpson SJ, McCAFFERY AR, HAeGELE BF (1999) A behavioural analysis of phase change in the desert locust. Biol Rev 74:461–480
Saremi S, Mirjalili S, Lewis A (2017) Grasshopper optimisation algorithm: theory and application. Adv Eng Softw 105:30–47
Mafarja M, Aljarah I, Faris H, Hammouri AI, Ala’M A-Z, Mirjalili S (2019) Binary grasshopper optimisation algorithm approaches for feature selection problems. Expert Syst Appl 117:267–286
Mirjalili SZ, Mirjalili S, Saremi S, Faris H, Aljarah I (2018) Grasshopper optimization algorithm for multi-objective optimization problems. Appl Intell 48:805–820
Aljarah I, Ala’M A-Z, Faris H, Hassonah MA, Mirjalili S, Saadeh H (2018) Simultaneous feature selection and support vector machine optimization using the grasshopper optimization algorithm. Cogn Comput 10:478–495
Mirjalili S, Mirjalili SM, Lewis A (2014) Grey wolf optimizer. Adv Eng Softw 69:46–61
Muro C, Escobedo R, Spector L, Coppinger R (2011) Wolf-pack (Canis lupus) hunting strategies emerge from simple rules in computational simulations. Behav Process 88:192–197
Bozorg-Haddad O (2018) Advanced optimization by nature-inspired algorithms. Springer, Berlin
Dehghani M, Riahi-Madvar H, Hooshyaripor F, Mosavi A, Shamshirband S, Zavadskas EK, Chau K-w (2019) Prediction of hydropower generation using grey wolf optimization adaptive neuro-fuzzy inference system. Energies 12:289
Moayedi H, Nazir R, Mosallanezhad M, Noor RBM, Khalilpour M (2018) Lateral deflection of piles in a multilayer soil medium. Case study: the Terengganu seaside platform. Measurement 123:185–192
Seyedashraf O, Mehrabi M, Akhtari AA (2018) Novel approach for dam break flow modeling using computational intelligence. J Hydrol 559:1028–1038
Roy SS, Roy R, Balas VE (2018) Estimating heating load in buildings using multivariate adaptive regression splines, extreme learning machine, a hybrid model of MARS and ELM. Renew Sustain Energy Rev 82:4256–4268
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Moayedi, H., Nguyen, H. & Kok Foong, L. Nonlinear evolutionary swarm intelligence of grasshopper optimization algorithm and gray wolf optimization for weight adjustment of neural network. Engineering with Computers 37, 1265–1275 (2021). https://doi.org/10.1007/s00366-019-00882-2
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DOI: https://doi.org/10.1007/s00366-019-00882-2