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1.
iScience ; 23(12): 101809, 2020 Dec 18.
Artículo en Inglés | MEDLINE | ID: mdl-33305176

RESUMEN

Memristive devices share remarkable similarities to biological synapses, dendrites, and neurons at both the physical mechanism level and unit functionality level, making the memristive approach to neuromorphic computing a promising technology for future artificial intelligence. However, these similarities do not directly transfer to the success of efficient computation without device and algorithm co-designs and optimizations. Contemporary deep learning algorithms demand the memristive artificial synapses to ideally possess analog weighting and linear weight-update behavior, requiring substantial device-level and circuit-level optimization. Such co-design and optimization have been the main focus of memristive neuromorphic engineering, which often abandons the "non-ideal" behaviors of memristive devices, although many of them resemble what have been observed in biological components. Novel brain-inspired algorithms are being proposed to utilize such behaviors as unique features to further enhance the efficiency and intelligence of neuromorphic computing, which calls for collaborations among electrical engineers, computing scientists, and neuroscientists.

2.
IEEE Des Test ; 37(6): 96-98, 2020 Dec.
Artículo en Inglés | MEDLINE | ID: mdl-35581996

RESUMEN

The abstract and full paper deadlines for International Symposium on Low Power Electronics and Design (ISLPED) were March 16th and 23rd, 2020. On March 11, 2020, the World Health Organization (WHO) announced COVID-19 a pandemic and in the following weeks many countries and states immediately issued stay-at-home order. This situation adversely affected the submission to the conference. The conference received 123 legitimate full paper submissions, which is 25% lower than last year. The majority of the submissions were from America (57%), Asia (26%), and Europe (16%). The main contact authors come from 21 different countries. Technical Program Committee consisted of 102 experts from all over the world who reviewed the submissions. The review meeting took place online on May 16, 2020. Each track had its Zoom meeting hosted by the track chair/co-chair. The committee accepted 30 regular papers (~23% acceptance rate) and 12 poster papers (~34% acceptance rate). The acceptance rate is the same as the last year.

3.
Nat Commun ; 9(1): 3208, 2018 08 10.
Artículo en Inglés | MEDLINE | ID: mdl-30097585

RESUMEN

Experimental demonstration of resistive neural networks has been the recent focus of hardware implementation of neuromorphic computing. Capacitive neural networks, which call for novel building blocks, provide an alternative physical embodiment of neural networks featuring a lower static power and a better emulation of neural functionalities. Here, we develop neuro-transistors by integrating dynamic pseudo-memcapacitors as the gates of transistors to produce electronic analogs of the soma and axon of a neuron, with "leaky integrate-and-fire" dynamics augmented by a signal gain on the output. Paired with non-volatile pseudo-memcapacitive synapses, a Hebbian-like learning mechanism is implemented in a capacitive switching network, leading to the observed associative learning. A prototypical fully integrated capacitive neural network is built and used to classify inputs of signals.

4.
IEEE Trans Neural Netw Learn Syst ; 29(5): 1622-1636, 2018 05.
Artículo en Inglés | MEDLINE | ID: mdl-28328516

RESUMEN

The evolution of high performance computing technologies has enabled the large-scale implementation of neuromorphic models and pushed the research in computational intelligence into a new era. Among the machine learning applications, unsupervised detection of anomalous streams is especially challenging due to the requirements of detection accuracy and real-time performance. Designing a computing framework that harnesses the growing computing power of the multicore systems while maintaining high sensitivity and specificity to the anomalies is an urgent research topic. In this paper, we propose anomaly recognition and detection (AnRAD), a bioinspired detection framework that performs probabilistic inferences. We analyze the feature dependency and develop a self-structuring method that learns an efficient confabulation network using unlabeled data. This network is capable of fast incremental learning, which continuously refines the knowledge base using streaming data. Compared with several existing anomaly detection approaches, our method provides competitive detection quality. Furthermore, we exploit the massive parallel structure of the AnRAD framework. Our implementations of the detection algorithm on the graphic processing unit and the Xeon Phi coprocessor both obtain substantial speedups over the sequential implementation on general-purpose microprocessor. The framework provides real-time service to concurrent data streams within diversified knowledge contexts, and can be applied to large problems with multiple local patterns. Experimental results demonstrate high computing performance and memory efficiency. For vehicle behavior detection, the framework is able to monitor up to 16000 vehicles (data streams) and their interactions in real time with a single commodity coprocessor, and uses less than 0.2 ms for one testing subject. Finally, the detection network is ported to our spiking neural network simulator to show the potential of adapting to the emerging neuromorphic architectures.

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