Recent innovations in information technology have encouraged extensive research into the development of future generation memory and computing technologies. Memristive devices based on resistance switching are not only attractive because of their multi-level information storage, but they also display fascinating neuromorphic behaviors. We investigated the basic human brain’s learning and memory algorithm for “memorizing” as a feature for memristive devices based on Li-implanted structures with low power consumption. A topographical and surface chemical functionality analysis of an Li:ITO substrate was conducted to observe its characterization. In addition, a switching mechanism of a memristive device was theoretically studied and associated...
Recently, memristors have attracted considerable attention because of their potential applications i...
Inspired by neural computing, the pursuit of ultralow power neuromorphic architectures with highly d...
International audienceNeuromorphic computing has gained important attention since it is an efficient...
A new class of electronic device has emerged which bear the potential for low powered brain like ada...
International audienceThe phenomenon of resistive switching (RS), which was initially linked to non-...
The memristor is a two-terminal semiconductor device that is able to mimic the conductance response ...
Memristive devices present a new device technology allowing for the realization of compact non-volat...
Nanoionic memrisitve devices are one of the most promising building blocks for next generation hardw...
Synaptic devices with bipolar analog resistive switching behavior are the building blocks for memris...
Polymermaterials have been considered as promising candidates for the implementation of memristor de...
Abstract Artificial synapses are the fundamental of building a neuron network for neuromorphic compu...
In the field of artificial intelligence hardware, a memristor has been proposed as an artificial syn...
This thesis presents systematic study on the fundamental understanding of an emerging electronic dev...
Memristive materials play a key role in the development of neuromorphic technology given that they c...
This thesis studied an emerging electronic device, the memristor, to gain a fundamental understandin...
Recently, memristors have attracted considerable attention because of their potential applications i...
Inspired by neural computing, the pursuit of ultralow power neuromorphic architectures with highly d...
International audienceNeuromorphic computing has gained important attention since it is an efficient...
A new class of electronic device has emerged which bear the potential for low powered brain like ada...
International audienceThe phenomenon of resistive switching (RS), which was initially linked to non-...
The memristor is a two-terminal semiconductor device that is able to mimic the conductance response ...
Memristive devices present a new device technology allowing for the realization of compact non-volat...
Nanoionic memrisitve devices are one of the most promising building blocks for next generation hardw...
Synaptic devices with bipolar analog resistive switching behavior are the building blocks for memris...
Polymermaterials have been considered as promising candidates for the implementation of memristor de...
Abstract Artificial synapses are the fundamental of building a neuron network for neuromorphic compu...
In the field of artificial intelligence hardware, a memristor has been proposed as an artificial syn...
This thesis presents systematic study on the fundamental understanding of an emerging electronic dev...
Memristive materials play a key role in the development of neuromorphic technology given that they c...
This thesis studied an emerging electronic device, the memristor, to gain a fundamental understandin...
Recently, memristors have attracted considerable attention because of their potential applications i...
Inspired by neural computing, the pursuit of ultralow power neuromorphic architectures with highly d...
International audienceNeuromorphic computing has gained important attention since it is an efficient...