2022
DOI: 10.1007/s10586-022-03609-z
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Energy efficient offloading mechanism using particle swarm optimization in 5G enabled edge nodes

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Cited by 27 publications
(16 citation statements)
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“…Other successful applications of metaheuristics optimizers include tuning of the cloud, edge and fog computing [2,5,15,23,46,59], feature selection challenge [8,19,22,32,37,49,61], dropout regularization [11], a variety of COVID-19 applications [25,58,[62][63][64], tuning artificial neural networks [3,6,7,10,13,18,44], text clustering [21,50] and cryptocurrency price forecast [42].…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%
“…Other successful applications of metaheuristics optimizers include tuning of the cloud, edge and fog computing [2,5,15,23,46,59], feature selection challenge [8,19,22,32,37,49,61], dropout regularization [11], a variety of COVID-19 applications [25,58,[62][63][64], tuning artificial neural networks [3,6,7,10,13,18,44], text clustering [21,50] and cryptocurrency price forecast [42].…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%
“…Step iv) Update radius: When a complete lap is covered by the search agent after s iterations, the new radius value γ new is computed using the following expression, γ new = γ 0.99 (18) Step v) Update variable range: A variable G ls is used to restrict the agents to the most hopeful regions in the search space, thus performing an exclusive local search. The exclusive local search begins at the q th iteration, while the proportion of s to the total iteration count is higher than G ls .…”
Section: Cioa For Weight Optimization Of the Deep-lstmmentioning
confidence: 99%
“…Artificial Neural Networks (ANN) and regression models use the concept of the empirical scheme in forecasting [12]. Furthermore, Deep learning (DL) schemes and optimization algorithms, like Firefly Algorithm [13][14][15][16], Multi-Swarm Algorithm [17], particle swarm optimization [18], sine cosine algorithm [19], Moth Flame Optimizer [20] have shown promising results for solving complicated issues with less computational complexities and hence used in dealing with hydrological variable prediction at different spatial and temporal scales [21].…”
Section: Introductionmentioning
confidence: 99%
“…NP-hard complexity with real world problems is common and hence the application of these algorithms is diverse. Some notable examples are artificial neural network optimization [7][8][9][10]12,14,15,19,21,26,32,36,48,53,54], wireless sensors networks (WSNs) [4,11,13,52,65,75], cryptocurrency trends estimations [44,49], finally the COVID-19 global epidemic-associated applications [22,25,64,66,[69][70][71]73], computer-conducted MRI classification and sickness determination [17,20,24,33,55], cloud-edge and fog computing and task scheduling [3,5,6,16,23,50,67], and lastly securing networks through intrusion detection [2,31,43,62,…”
Section: Swarm Intelligence Applications In Machine Learningmentioning
confidence: 99%