scholarly journals Uncovering spatiotemporal patterns in semiconductor superlattices by efficient data processing tools

2021 ◽  
Vol 104 (3) ◽  
Author(s):  
F. Terragni ◽  
L. L. Bonilla ◽  
J. M. Vega
Author(s):  
Sebastian Götz ◽  
Thomas Ilsche ◽  
Jorge Cardoso ◽  
Josef Spillner ◽  
Uwe ASSmann ◽  
...  

Database technology is highly developed for the many uses that it is employs; although, tomorrow will hold new challenges and demands that it is ill-equipped to accomplish. The rigors and demands of the current Information Age pushes information systems to develop more universal solutions not pre-established on the proprietary demands of capitalistic conceptions. In the Information Age, the ever-increasing need for more data processing capabilities becomes inherent with the times, and with the addition of the Digital Age, it is assumed that increased data processing will continue to be conducted by discrete electronic computing systems and the many forms that they will take. The continued development of more efficient data models, and the database systems designed to leverage them, will become the chariot bringing forth the climax of the current times and the dawning of new endeavors for human curiosity and our willingness to learn and explore ever further into the beyond. Tackling these issues is the direct purpose of the LISA Universal Informationbase System (the LISA Informationbase), to effectively integrate data of diverse variations and in a semi-ubiquitous structure to increase data automation of information content for use by our patrons in a powerful database management technology. Surveyed in this chapter is a review of this driving technology and its applications, covering the NITA Methodology Stage-I, Stage-II, and Stage-III in its developmental process.


Sensors ◽  
2019 ◽  
Vol 19 (22) ◽  
pp. 4831 ◽  
Author(s):  
Anup Vanarse ◽  
Adam Osseiran ◽  
Alexander Rassau ◽  
Peter van der Made

In several application domains, electronic nose systems employing conventional data processing approaches incur substantial power and computational costs and limitations, such as significant latency and poor accuracy for classification. Recent developments in spike-based bio-inspired approaches have delivered solutions for the highly accurate classification of multivariate sensor data with minimized computational and power requirements. Although these methods have addressed issues related to efficient data processing and classification accuracy, other areas, such as reducing the processing latency to support real-time application and deploying spike-based solutions on supported hardware, have yet to be studied in detail. Through this investigation, we proposed a spiking neural network (SNN)-based classifier, implemented in a chip-emulation-based development environment, that can be seamlessly deployed on a neuromorphic system-on-a-chip (NSoC). Under three different scenarios of increasing complexity, the SNN was determined to be able to classify real-valued sensor data with greater than 90% accuracy and with a maximum latency of 3 s on the software-based platform. Highlights of this work included the design and implementation of a novel encoder for artificial olfactory systems, implementation of unsupervised spike-timing-dependent plasticity (STDP) for learning, and a foundational study on early classification capability using the SNN-based classifier.


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