International Journal of Engineering and Modern Technology (IJEMT )
E-ISSN 2504-8848
P-ISSN 2695-2149
VOL. 11 NO. 4 2025
DOI: 10.56201/ijemt.vol.11.no4.2025.pg341.371
Geku, Diton and Adebayo Adeniyi D
Nature has served as a source of motivation for ages, and there's still bounty to memorize and get it approximately it. The brilliantly collective behavior of social swarming in nature serves as the establishment for Swarm Insights (SI), a noteworthy subfield of manufactured insights. This ponder presents the Particle Swarm Optimization calculation (PSO), one of the foremost broadly utilized SI standards. Since its foundation within the mid-1990s, PSO has experienced a few alterations. Analysts and professionals have made unused applications, produced modern forms, and distributed hypothetical ponders on the conceivable impact of diverse algorithmic settings and characteristics since learning around the approach. Based on the Orderly Audit (SR) approach, this consider overviews a assortment of perspectives on current and proceeding investigate, covering calculation strategies, a extend of application areas, exceptional issues, and future sees. A specialized scientific categorization of the chosen substance, counting hybridization, change, and variations of PSO, as well as down to earth applications of the calculation classified into health-care, natural, mechanical, commercial, keen city, and common angles applications, is the center of this paper's investigation of the strategies and applications that have been published between 2017 and 2019. To look at the viability of different PSO methods and executions, some specialized highlights are included, such as precision, evaluation settings, and the recommended case study. Each specified study has a few critical benefits and inescapable impediments that are investigated and, as a result, have delivered a few proposals for settling the inadequacies of those ponders and emphasizing the uncertain issues and potential headings for algorithmic inquire about within the future.
1. Abdel-Basset M, Fakhry AE, El-Henawy I, Qiu T, Sangaiah AK (2017) Feature and intensity
based medical image registration using particle swarm optimization. J Med Syst
41(12):197
Abdelkader HE, Gad AG, Abohany AA, Sorour SE (2022) An efficient data mining technique
for assessing satisfaction level of online learning for higher education students during the
covid- 19. IEEE Access
Aberbour J, Graba M, Kheldoun A (2015) Effect of cost function and pso topology selection on
the optimum design of pid parameters for the avr system. In: 2015 4th international
conference on electrical engineering (ICEE). IEEE, pp 1–5
Abid S, Zafar A, Khalid R, Javaid S, Qasim U, Khan ZA, Javaid N (2017) Managing energy in
smart homes using binary particle swarm optimization. In: Conference on complex,
intelligent, and software intensive systems. Springer, pp 189–196
Adhikari M, Srirama SN (2019) Multi-objective accelerated particle swarm optimization with a
container-based scheduling for internet-of-things in cloud environment. J Netw Comput
Appl 137:35–61
Al-Thanoon NA, Qasim OS, Algamal ZY (2019) A new hybrid firefly algorithm and particle
swarm optimization for tuning parameter estimation in penalized support vector machine
with application in chemometrics. Chemom Intell Lab Syst 184:142–152
Alam S, Dobbie G, Koh YS, Riddle P, Rehman SU (2014) Research on particle swarm
optimization based clustering: a systematic review of literature and techniques. Swarm
Evol Comput 17:1–13
Ali Ghorbani M, Kazempour R, Chau KW, Shamshirband S, Taherei Ghazvinei P (2018)
Forecasting pan evaporation with an integrated artificial neural network quantum-behaved
particle swarm optimization model: A case study in talesh, northern iran. Eng Appl Comput
Fluid Mech 12(1):724–737
Ali Yahya A (2018) Centroid particle swarm optimisation for high-dimensional data
classification. J Exp Theor Artif Intell 30(6):857–886
Alnaqi AA, Moayedi H, Shahsavar A, Nguyen TK (2019) Prediction of energetic performance
of a building integrated photovoltaic/thermal system thorough artificial neural network and
hybrid particle swarm optimization models. Energy Convers Manag 183:137–148
Alswaitti M, Albughdadi M, Isa NAM (2018) Density-based particle swarm optimization
algorithm for data clustering. Expert Syst Appl 91:170–186
Aydilek IB (2018) A hybrid firefly and particle swarm optimization algorithm for
computationally expensive numerical problems. Appl Soft Comput 66:232–249
Banks A, Vincent J, Anyakoha C (2007) A review of particle swarm optimization. Part i:
background and development. Nat Comput 6(4):467–484
Banks A, Vincent J, Anyakoha C (2008) A review of particle swarm optimization. Part ii:
hybridisation, combinatorial, multicriteria and constrained optimization, and indicative
applications. Nat Comput 7(1):109–124
Barman D, Hasnat A, Sarkar S, Murshidanad MAR (2016) Color image quantization using
gaussian particle swarm optimization (ciq-gpso). In: 2016 international conference on
inventive computation technologies (ICICT). IEEE, vol 1, pp 1–4
Beheshti Z, Shamsuddin SM, Hasan S (2015) Memetic binary particle swarm optimization for
discrete optimization problems. Inf Sci 299:58–84
Beni G (1988) The concept of cellular robotic system. In: Proceedings IEEE international
symposium on intelligent control 1988. IEEE, pp 57–62
Beni G, Hackwood S (1992) Stationary waves in cyclic swarms. In: Proceedings of the 1992
IEEE international symposium on intelligent control. IEEE, pp 234–242
Beni G, Wang J (1993) Swarm intelligence in cellular robotic systems. In: Robots and
biological systems: towards a new bionics? Springer, pp 703–712
Benioff P (1980) The computer as a physical system: a microscopic quantum mechanical
Hamiltonian model of computers as represented by turing machines. J Stat Phys 22(5):563–
591
Bernardino HS, Barbosa HJ, Fonseca LG (2011) Surrogateassisted clonal selection algorithms
for expensive optimization problems. Evol Intel 4(2):81–97
Beskos A, Crisan D, Jasra A, Kamatani K, Zhou Y (2017) A stable particle filter for a class of
high-dimensional state-space models. Adv Appl Probab 49(1):24–48
Bhattacharya A, Goswami RT, Mukherjee K (2018) A feature selection technique based on
rough set and improvised pso algorithm (psors-fs) for permission based detection of
android malwares. Int J Mach Learn Cybern, pp 1–15
Bhattacharya A, Goswami RT, Mukherjee K (2019) A feature selection technique based on
rough set and improvised pso algorithm (psors-fs) for permission based detection of
android malwares. Int J Mach Learn Cybern 10(7):1893–1907
Bonabeau E, Marco DdRDF, Dorigo M, Théraulaz G, Theraulaz G et al (1999) Swarm
intelligence: from natural to artificial systems, 1st edn. Oxford University Press, Oxford
Bonyadi MR, Michalewicz Z (2015) Stability analysis of the particle swarm optimization
without stagnation assumption. IEEE Trans Evol Comput 20(5):814–819
Borjigin S, Sahoo PK (2019) Color image segmentation basedon multi-level tsallis-havrda-
charvát entropy and 2d histogram using pso algorithms. Pattern Recogn 92:107–118
Camci E, Kripalani DR, Ma L, Kayacan E, Khanesar MA (2018) An aerial robot for rice farm
quality inspection with type-2 fuzzy neural networks tuned by particle swarm optimization-
sliding mode control hybrid algorithm. Swarm Evol Comput 41:1–8
Cao Y, Ye Y, Zhao H, Jiang Y, Wang H, Shang Y, Wang J (2018) Remote sensing of water
quality based on hj-1a hsi imagery with modified discrete binary particle swarm
optimization-partial least squares (mdbpso-pls) in inland waters: a case in weishan lake.
Eco Inform 44:21–32
Cao Y, Zhang H, Li W, Zhou M, Zhang Y, Chaovalitwongse WA (2018) Comprehensive
learning particle swarm optimization algorithm with local search for multimodal functions.
IEEE Trans Evol Comput
Chen CH, Liu TK, Chou JH (2014) A novel crowding genetic algorithm and its applications to
manufacturing robots. IEEE Trans Ind Inf 10(3):1705–1716
Chen K, Zhou F, Yin L, Wang S, Wang Y, Wan F (2018) A hybrid particle swarm optimizer
with sine cosine acceleration coefficients. Inf Sci 422:218–241
Chen S, Jq Wang, Hy Zhang (2019) A hybrid pso-svm model based on clustering algorithm for
short-term atmospheric pollutant concentration forecasting. Technol Forecast Soc Chang
146:41–54
Chen Y, Li L, Peng H, Xiao J, Wu Q (2018) Dynamic multiswarm differential learning particle
swarm optimizer. Swarm Evol Comput 39:209–221
Chernbumroong S, Cang S, Yu H (2014) Genetic algorithmbased classifiers fusion for
multisensor activity recognition of elderly people. IEEE J Biomed Health Inform
19(1):282–289
Clerc M, Kennedy J (2002) The particle swarm-explosion, stability, and convergence in a
multidimensional complex space. IEEE Trans Evol Comput 6(1):58–73
Colorni A, Dorigo M, Maniezzo V et al (1992) Distributed optimization by ant colonies. In:
Proceedings of the first European conference on artificial life, Cambridge, MA, vol 142,
pp 134–142
Cui H, Shu M, Song M, Wang Y (2017) Parameter selection and performance comparison of
particle swarm optimization in sensor networks localization. Sensors 17(3):487
Dai L, Guan Q, Liu H (2018) Robust image registration of printed circuit boards using
improved sift-pso algorithm. J Eng 16:1793–1797.