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A Survey on Neuromorphic Architectures for Running Artificial Intelligence Algorithms

Seham Al Abdul Wahid, Arghavan Asad, Farah Mohammadi

2024Electronics15 citationsDOIOpen Access PDF

Abstract

Neuromorphic computing, a brain-inspired non-Von Neumann computing system, addresses the challenges posed by the Moore’s law memory wall phenomenon. It has the capability to enhance performance while maintaining power efficiency. Neuromorphic chip architecture requirements vary depending on the application and optimising it for large-scale applications remains a challenge. Neuromorphic chips are programmed using spiking neural networks which provide them with important properties such as parallelism, asynchronism, and on-device learning. Widely used spiking neuron models include the Hodgkin–Huxley Model, Izhikevich model, integrate-and-fire model, and spike response model. Hardware implementation platforms of the chip follow three approaches: analogue, digital, or a combination of both. Each platform can be implemented using various memory topologies which interconnect with the learning mechanism. Current neuromorphic computing systems typically use the unsupervised learning spike timing-dependent plasticity algorithms. However, algorithms such as voltage-dependent synaptic plasticity have the potential to enhance performance. This review summarises the potential neuromorphic chip architecture specifications and highlights which applications they are suitable for.

Topics & Concepts

Neuromorphic engineeringComputer scienceVon Neumann architectureSpiking neural networkComputer architectureArtificial neural networkSpike (software development)MemristorArtificial intelligenceReservoir computingElectronic engineeringEngineeringRecurrent neural networkSoftware engineeringOperating systemAdvanced Memory and Neural ComputingNeural Networks and Reservoir ComputingFerroelectric and Negative Capacitance Devices
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