Litcius/Paper detail

Integer Echo State Networks: Efficient Reservoir Computing for Digital Hardware

Denis Kleyko, Edward Paxon Frady, Mansour Kheffache, Evgeny Osipov

2020IEEE Transactions on Neural Networks and Learning Systems34 citationsDOIOpen Access PDF

Abstract

We propose an approximation of echo state networks (ESNs) that can be efficiently implemented on digital hardware based on the mathematics of hyperdimensional computing. The reservoir of the proposed integer ESN (intESN) is a vector containing only n -bits integers (where is normally sufficient for a satisfactory performance). The recurrent matrix multiplication is replaced with an efficient cyclic shift operation. The proposed intESN approach is verified with typical tasks in reservoir computing: memorizing of a sequence of inputs, classifying time series, and learning dynamic processes. Such architecture results in dramatic improvements in memory footprint and computational efficiency, with minimal performance loss. The experiments on a field-programmable gate array confirm that the proposed intESN approach is much more energy efficient than the conventional ESN.

Topics & Concepts

Reservoir computingInteger (computer science)Computer scienceState (computer science)Echo (communications protocol)Multiplication (music)Memory footprintSequence (biology)Computer hardwareAlgorithmEcho state networkMatrix multiplicationThroughputHardware architectureEnergy (signal processing)Matrix (chemical analysis)ArithmeticParallel computingFootprintMemorizationState vectorMultipleComputational scienceTheoretical computer scienceComputer engineeringNeural Networks and Reservoir ComputingFerroelectric and Negative Capacitance DevicesAdvanced Memory and Neural Computing