Abstract

Taking inspiration from biological information processing in neural assemblies, deep learning and artificial intelligence made solutions to complex problems more feasible. While at first realized by silicon-based hardware, memristive devices for vector-matrix multiplication are attracting huge focus due to their potential integration in large, parallel cross-bar arrays, mimicking the aspect of highly parallel processing (and in-memory processing) in biological neural networks. In real neuron assemblies, however, the connections are not strictly formed in a rigid 2D crossbar array, but form and degrade dynamically in a 3D environment with features of hierarchy, modularity and reconfigurability. To fully explore the capabilities of truly brain-like hardware computing, the transition towards a platform with dynamically reconfigurable connections is mandatory. This work showcases different approaches to address this biological motivation, covering the fields of Topology & Structure as well as Dynamics of biological systems, and classifies them with respect to seven fundamental principles of brain-like computing. The approaches are ranging from highly interconnected nanogranular networks with dynamically reconfigurable connections over liquid-solid composites rearranging connections via dielectrophoresis and guided redox-wiring to the mimicking of neural action potentials by relaxation-type oscillators that are used as input stimuli.

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