dc.contributor
Universitat Ramon Llull. IQS
dc.contributor.author
Alvarez Canchila, Oscar Ivan
dc.contributor.author
Espinal, Andres
dc.contributor.author
Patiño Saucedo, Alberto
dc.contributor.author
Rostro Gonzalez, Horacio
dc.date.accessioned
2025-05-14T11:42:09Z
dc.date.available
2025-05-14T11:42:09Z
dc.identifier.issn
2079-9268
dc.identifier.uri
http://hdl.handle.net/20.500.14342/5246
dc.description.abstract
In this paper, we propose an optimization approach using Particle Swarm Optimization (PSO) to enhance reservoir separability in Liquid State Machines (LSMs) for spatio-temporal classification in neuromorphic systems. By leveraging PSO, our method fine-tunes reservoir parameters, neuron dynamics, and connectivity patterns, maximizing separability while aligning with the resource constraints typical of neuromorphic hardware. This approach was validated in both software (NEST) and on neuromorphic hardware (SpiNNaker), demonstrating notable results in terms of accuracy and low energy consumption when using SpiNNaker. Specifically, our approach addresses two problems: Frequency Recognition (FR) with five classes and Pattern Recognition (PR) with four, eight, and twelve classes. For instance, in the Mono-objective approach running in NEST, accuracies ranged from 81.09% to 95.52% across the benchmarks under study. The Multi-objective approach outperformed the Mono-objective approach, delivering accuracies ranging from 90.23% to 98.77%, demonstrating its superior scalability for LSM implementations. On the SpiNNaker platform, the mono-objective approach achieved accuracies ranging from 86.20% to 97.70% across the same benchmarks, with the Multi-objective approach further improving accuracies, ranging from 94.42% to 99.52%. These results show that, in addition to slight accuracy improvements, hardware-based implementations offer superior energy efficiency with a lower execution time. For example, SpiNNaker operates at around 1–5 watts per chip, while traditional systems can require 50–100 watts for similar tasks, highlighting the significant energy savings of neuromorphic hardware. These results underscore the scalability and effectiveness of PSO-optimized LSMs on resource-limited neuromorphic platforms, showcasing both improved classification performance and the advantages of energy-efficient processing.
dc.relation.ispartof
Journal of Low Power Electronics and Applications 2025, 15(1), 4
dc.rights
Attribution 4.0 International
dc.rights.uri
http://creativecommons.org/licenses/by/4.0/
dc.subject
Liquid State Machine
dc.subject
Reservoir computing
dc.subject
Neuromorphic computing
dc.subject
Particle Swarm Optimization
dc.subject
Màquina d'estat líquid
dc.subject
Computació de reservori
dc.subject
Enginyeria neuromòrfica
dc.title
Optimizing Reservoir Separability in Liquid State Machines for Spatio-Temporal Classification in Neuromorphic Hardware
dc.type
info:eu-repo/semantics/article
dc.description.version
info:eu-repo/semantics/publishedVersion
dc.identifier.doi
https://doi.org/10.3390/jlpea15010004
dc.rights.accessLevel
info:eu-repo/semantics/openAccess