Real-Time neural signal decoding on heterogeneous MPSocs based on VLIW ASIPs

Meloni P.;Rubattu C.;Tuveri G.;Pani D.;Raffo L.;Palumbo F.
2017-01-01

Abstract

An important research problem, at the basis of the development of embedded systems for neuroprosthetic applications, is the development of algorithms and platforms able to extract the patient's motion intention by decoding the information encoded in neural signals. At the state of the art, no portable and reliable integrated solutions implementing such a decoding task have been identified. To this aim, in this paper, we investigate the possibility of using the MPSoC paradigm in this application domain. We perform a design space exploration that compares different custom MPSoC embedded architectures, implementing two versions of a on-line neural signal decoding algorithm, respectively targeting decoding of single and multiple acquisition channels. Each considered design points features a different application configuration, with a specific partitioning and mapping of parallel software tasks, executed on customized VLIW ASIP processing cores. Experimental results, obtained by means of FPGA-based prototyping and post-floorplanning power evaluation on a 40nm technology library, assess the performance and hardware-related costs of the considered configurations. The reported power figures demonstrate the usability of the MPSoC paradigm within the processing of bio-electrical signals and show the benefits achievable by the exploitation of the instruction-level parallelism within tasks.
2017
Inglese
76
89
101
13
Esperti anonimi
internazionale
scientifica
ASIPs
Design space exploration
Low power
MPSoCS
Neural signal decoding
no
Meloni, P.; Rubattu, C.; Tuveri, G.; Pani, D.; Raffo, L.; Palumbo, F.
1.1 Articolo in rivista
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
6
none
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