A Hardware-Deployable Neuromorphic Solution for Encoding and Classification of Electronic Nose Data
TL;DR: This investigation proposed a spiking neural network (SNN)-based classifier that can be seamlessly deployed on a neuromorphic system-on-a-chip (NSoC) that 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.
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Abstract: 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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Citations
Gas Recognition in E-Nose System: A Review
TL;DR: In this paper , the authors investigate several gas recognition methods for E-nose, and compare and analyze them in terms of algorithms and hardware implementations, and find each classical gas recognition method has a relatively fixed framework and a few parameters, which makes it easy to be designed and perform well with limited gas samples, but weak in multi-gas recognition under noise.
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TL;DR: In this paper, an artificial olfactory inference system based on memristive devices is developed to classify four gases (ethanol, methane, ethylene, and carbon monoxide) with 10 different concentrations.
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Neuromorphic artificial intelligence systems
TL;DR: New architectural approaches used by neuromorphic devices based on existing silicon microelectronics technologies, and the prospects for using a new memristor element base are reviewed.
Neuromorphic encoding of image pixel data into rate-coded optical spike trains with a photonic VCSEL-neuron
Matěj Hejda,Joshua Robertson,Julian Bueno,Juan Arturo Alanis,Antonio Hurtado +4 more
- 02 Jun 2021
TL;DR: This work experimentally demonstrates encoding of digital image data into continuous, rate-coded, up to GHz-speed optical spike trains with a VCSEL-based photonic spiking neuron, making the system compatible with current optical network and data center technologies.
Bio-inspired strategies for improving the selectivity and sensitivity of artificial noses: A review
TL;DR: This work will review, in a systemic way, the biomimetic strategies for improving performance criteria, including the design of sensing materials, their immobilization on the sensing surface, the sampling of VOCs, the choice of a transduction method, and the data processing.
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References
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Krishna C. Persaud,G. H. Dodd +1 more
TL;DR: An electronic nose constructed using semiconductor transducers and incorporating design features suggested by the proposal can reproducibly discriminate between a wide variety of odours, and its properties show that discrimination in an olfactory system could be achieved without the use of highly specific receptors.
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Applications and advances in electronic-nose technologies.
TL;DR: This paper is a review of the major electronic-nose technologies developed since this specialized field was born and became prominent in the mid 1980s, and a summarization of some of the more important and useful applications that have been of greatest benefit to man.
Deep Learning With Spiking Neurons: Opportunities and Challenges.
Michael Pfeiffer,Thomas Pfeil +1 more
TL;DR: This review addresses the opportunities that deep spiking networks offer and investigates in detail the challenges associated with training SNNs in a way that makes them competitive with conventional deep learning, but simultaneously allows for efficient mapping to hardware.
Point-to-point connectivity between neuromorphic chips using address events
TL;DR: This paper quantifies tradeoffs faced in allocating bandwidth, granting access, and queuing, as well as throughput requirements, and concludes that an arbitered channel design is the best choice.
•Proceedings Article
Thermometer Encoding: One Hot Way To Resist Adversarial Examples
Jacob Buckman,Aurko Roy,Colin Raffel,Ian Goodfellow +3 more
- 15 Feb 2018
TL;DR: A simple modification to standard neural network ar3 chitectures, thermometer encoding is proposed, which significantly increases the robustness of the network to adversarial examples, and the proper ties of these networks are explored, providing evidence that thermometer encodings help neural networks to find more-non-linear decision boundaries.