6533b7d8fe1ef96bd126a22f
RESEARCH PRODUCT
Hardware implementation of real-time Extreme Learning Machine in FPGA: Analysis of precision, resource occupation and performance
Alfredo Rosado-muñozManuel Bataller-mompeánJose V. Frances-villoraMarek WegrzynJuan GuerreroJosé M. Martínez-villenasubject
General Computer ScienceArtificial neural networkComputer sciencebusiness.industry020209 energyComputationTraining (meteorology)02 engineering and technologyRange (mathematics)Resource (project management)Control and Systems Engineering0202 electrical engineering electronic engineering information engineeringFeedforward neural network020201 artificial intelligence & image processingElectrical and Electronic EngineeringField-programmable gate arraybusinessComputer hardwareExtreme learning machinedescription
Extreme Learning Machine (ELM) on-chip learning is implemented on FPGA.Three hardware architectures are evaluated.Parametrical analysis of accuracy, resource occupation and performance is carried out. Display Omitted Extreme Learning Machine (ELM) proposes a non-iterative training method for Single Layer Feedforward Neural Networks that provides an effective solution for classification and prediction problems. Its hardware implementation is an important step towards fast, accurate and reconfigurable embedded systems based on neural networks, allowing to extend the range of applications where neural networks can be used, especially where frequent and fast training, or even real-time training, is required. This work proposes three hardware architectures for on-chip ELM training computation and implementation, a sequential and two parallel. All three are implemented parameterizably on FPGA as an IP (Intellectual Property) core. Results describe performance, accuracy, resources and power consumption. The analysis is conducted parametrically varying the number of hidden neurons, number of training patterns and internal bit-length, providing a guideline on required resources and level of performance that an FPGA based ELM training can provide.
year | journal | country | edition | language |
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2016-04-01 | Computers & Electrical Engineering |