Abstract
Simplified swarm optimization (SSO) and particle swarm optimization (PSO) are two types of modern swarm intelligence techniques that are often used for optimization. In order to identify the most effective system RRAP with a cold-standby strategic plan while aiming to exploit the reliability of the organization, the article discusses a PSSO procedure that combines UM of PSO and Simplified swarm optimization, PSSO is especially impressive in comparison with other recently incorporated algorithms into four popular applications, namely a sequences scheme, a complex organization, a series–parallel system, and an airspeed indicator defense system for a turbine, with extensive experiments conducted on the pretty standard and well-known four benchmarks of reliability-redundancy allocation problems. Finally, the experiment findings show that the particle-based simplified swarm optimization can successfully solution to address the reliability-redundancy allocation (RRAP) issues using the cold-standby method and performs well in terms of organization reliability, even though the best platform consistency is not attained in all four benchmarks and experiment is done using python and Google colab.
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References
Abouei Ardakan M, Rezvan MT (2018) “Multi-objective optimization of reliability-redundancy allocation problem with cold-standby strategy using NSGA-II.” Reliab Eng Syst Saf 172:225–238
Abouei Ardakan M, Zeinal Hamadani A (2014) Reliabilityredundancy allocation problem with cold-standby redundancy strategy. Simul Model Pract Theory 42:107–118
Agrawal A, Garg D, Sethi R, Shrivastava AK (2023) Optimum redundancy allocation using spider monkey optimization. Soft Comput 27:15595–15608
ArezkiMellal M, Zio E (2020) System reliability-redundancy optimization with cold-standby strategy by an enhanced nest cuckoo optimization algorithm. Reliab Eng Syst Saf 201:106973
Bae C, Yeh WC, Chung YY, Liu SL (2010) Feature selection with intelligent dynamic swarm and rough set. Expert Syst Appl 37(10):7026–7032
Bae C, Wahid N, Chung YY, Yeh WC, Bergmann NW, Chen Z (2011) Effective audio classification algorithm using swarm-based optimization. Int J Innov Comput Inf Control 7(1):1–10
Bae C, Yeh WC, Wahid N, Chung YY, Liu Y (2012) A new simplified swarm optimization (SSO) using exchange local search scheme. Int J Innov Comput Inf Control 8(6):4391–4406
Chen TC (2006) IAs based approach for reliability redundancy allocation problems. Appl Math Comput 182(2):1556–1567
Coit DW (2001) Cold-standby redundancy optimization for nonrepairable systems. IIE Trans 33(6):471–478
Devi S, Garg D (2020) Hybrid genetic and particle swarm algorithm: redundancy allocation problem. Int J of Syst Assurance Eng Manag 11:313–319
Devi S, Garg H, Garg ANDD (2023) A review of redundancy allocation problem for two decades: bibliometrics and future directions. Artif Intell Rev 56:7457–7548
Garg D, Devi S (2021) RAP via hybrid genetic simulating annealing algorithm. Int J Syst Assurance Eng Manag 12:419–425
Ho SJ, Ho SY, Shu LS (2004) OSA: orthogonal simulated annealing algorithm and its application to designing mixed<tex>$rm H_2 /rm H_infty$</tex>optimal controllers. Man Cybern, Part a: Syst Hum 34(5):588–600
Hu Y, Zhang Y, Gong D (2021) Multiobjective particle swarm optimization for feature selection with fuzzy cost. IEEE Trans Cybern 51(2):874–888
Huang CL (2015) A particle-based simplified swarm optimization algorithm for reliability redundancy allocation problems. Reliab Eng Syst Saf 142:221–230
Ji X, Zhang Y, Gong D, Sun X (2021) Dual-surrogate assisted cooperative particle swarm optimization for expensive multimodal problems. IEEE Trans Evol Comput 25(4):794–808
Juybari MN, Ardakan MA, Davari-Ardakani H (2019) A penalty-guided fractal search algorithm for reliability–redundancy allocation problems with cold-standby strategy. Proc Inst Mech Eng, Part o: J Risk Reliab 233(5):775–790
J. Kennedy and R. C. Eberhard, “Particle swarm optimization,” in proceedings of IEEE international conference on neural networks, pp. 1942–1948, Publishing, Piscataway,NJ, USA, 1995.
Khorshidi HA, Gunawan I, Ibrahim MY (2016) A valuedriven approach for optimizing reliability-redundancy allo-cation problem in multi-state weighted k-out-of-n system. J Manuf Syst 40(1):54–62
Kim H, Kim P (2017) Reliability-redundancy allocation problem considering optimal redundancy strategy using parallel genetic algorithm. Reliab Eng Syst Saf 159:153–160
Li L, Chang L, Gu T, Sheng W, Wang W (2021) On the norm of dominant difference for many-objective particle swarm optimization. IEEE Trans Cybern 51(4):2055–2067
Muhuri PK, Ashraf Z, Lohani QMD (2018) Multiobjective reliability redundancy allocation problem with interval type-2 fuzzy uncertainty. IEEE Trans Fuzzy Syst 26(3):1339–1355
Ouyang Z, Liu Y, Ruan SJ, Jiang T (2019) An improved particle swarm optimization algorithm for reliability-redundancy allocation problem with mixed redundancy strategy and heterogeneous components. Reliab Eng Syst Saf 181:62–74
L. Sahoo, “Reliability redundancy allocation problems under fuzziness using genetic algorithm and dual-connection numbers,” in Nature-Inspired Computing Paradigms in Systems, pp. 111–123, Elsevier, 2021.
Song XF, Zhang Y, Gong DW, Gao XZ (2021) “A fast hybrid feature selection based on correlation-guided clustering and particle swarm optimization for high-dimensional data.” IEEE Trans Cybern 52:1–14
Wang W, Lin M, Fu Y, Luo X, Chen H (2020) Multi-objective optimization of reliability-redundancy allocation problem for multi-type production systems considering redundancy strategies. Reliab Eng Syst Saf 193:106681
Yeh WC (2009) A two-stage discrete particle swarm optimization for the problem of multiple multi-level redundancy allocation in series systems. Expert Syst Appl 36(5):9192–9200
Yeh WC (2012) “Optimization of the disassembly sequencing problem on the basis of self-adaptive simplified swarm optimization. IEEE Trans Syst Man Cybern Part A Syst Hum 42(1):250–261
Yeh WC (2012) Novel swarm optimization for mining classification rules on thyroid gland data. Inf Sci 197:65–76
Yeh WC (2013) New parameter-free simplified swarm optimization for artificial neural network training and its application in the prediction of time series. IEEE Trans Neural Netw Learning Sys 24(4):661–665
Yeh WC (2014) Orthogonal simpli fied swarm optimization for the series –parallel redundancy allocation problem with a mix of components. Knowl-Based Syst 64:1–12
Yeh WC (2019a) Solving cold-standby reliability redundancy allocation problems using a new swarm intelligence algorithm. Appl Soft Comput 83:105582
Yeh WC (2019b) A new harmonic continuous simplified swarm optimization. Appl Soft Comput 85:105544
Yeh WC (2019c) A novel boundary swarm optimization method for reliability redundancy allocation problems. Reliab Eng Syst Saf 192:106060
Yeh WC, Hsieh TJ (2011) Solving reliability redundancy allocation problems using an artificial bee colony algorithm. Comput Oper Res 38(11):1465–1473
Yeh WC, Lin JS (2018) New parallel swarm algorithm for smart sensor systems redundancy allocation problems in the Internet of Things. J Supercomput 74(9):4358–4384
Yeh WC, Lin CM, Wei SC (2012) Disassembly sequencing problems with stochastic processing time using simplified swarm optimization. Int J Innov Manag Technol 3(3):226–231
Yeh WC, Yeh YM, Chang PC, Ke YC, Chung V (2014) Forecasting wind power in the Mai Liao Wind Farm based on the multi-layer perceptron artificial neural network model with improved simplified swarm optimization. Electr Power Energy Syst 55:741–748
Yeh WC, Huang CL, Lin P, Chen Z, Jiang Y, Sun B (2018) Simplex simplified swarm optimisation for the efficient optimisation of parameter identification for solar cell models. IET Renew Power Gener 12(1):45–51
Yeh WC, Su YZ, Gao XZ, Hu CF, Wang J, Huang CL (2021) Simplified swarm optimization for bi-objection active reliability redundancy allocation problems. Appl Soft Comput J 106:107321
You GR, Shiue YR, Yeh WC, Chen XL, Chen CM (2020) A weighted ensemble learning algorithm based on diversity using a novel particle swarm optimization approach. Algorithms 13(10):255
Zhang E, Chen Q (2016) Multi-objective reliability redundancy allocation in an interval environment using particle swarm optimization. Reliab Eng Syst Saf 145:83–92
Zhang X, Yeh WC, Jiang Y, Huang Y, Xiao Y, Li L (2018) A ase study of control and improved simplified swarm optimization for economic dispatch of a stand-alone modular microgrid. Energies 11(4):793
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Singla, S., Kaur, K. Using particle-based simplified swarm optimization to solve the cold-standby reliability of the gas turbine industry. Int J Syst Assur Eng Manag 15, 4456–4465 (2024). https://doi.org/10.1007/s13198-024-02457-x
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DOI: https://doi.org/10.1007/s13198-024-02457-x