Fuente:
PubMed "honey"
Sci Rep. 2026 May 7;16(1):14640. doi: 10.1038/s41598-026-40739-5.ABSTRACTElectroencephalogram (EEG) based classification of hand movements have an eloquent significance in the diverse fields like biomedical engineering, neuroscience, and assistive technologies. EEG can be used to convert brain waves into useful commands supporting multiple tasks. The article introduces a novel EEG-based hand-movement classification using Honey Bee Optimization (HBO) as an offline hyperparameter optimization that finds the best learning rate to be used in the Transformer model before training. Conventional learning rate techniques are unable to adapt to the fluctuations in the dynamics of training in transformer models, hindering the potential of deep learning models. The suggested architecture involves the application of HBO to optimize the learning rate prior to training, which allows the model to stabilize better and makes it a part of the obtained accuracy of 95.60%. This facilitates a more stable convergence and the classification of EEG hand-movements. The Bio-inspired optimization techniques ensures that machine learning models can be optimized to increase their performance and flexibility. The research can be applied to current medical signal analysis and new breakthroughs in neurotechnology whereby accurate hand movement identification is essential.PMID:42098189 | PMC:PMC13153216 | DOI:10.1038/s41598-026-40739-5