A Low-Latency and Low-Cost Montgomery Modular Multiplier Based on NLP Multiplication

2020 ◽  
Vol 67 (7) ◽  
pp. 1319-1323 ◽  
Author(s):  
Jinnan Ding ◽  
Shuguo Li
Author(s):  
Valery Tikhvinskiy ◽  
Grigory Bochechka ◽  
Andrey Gryazev ◽  
Altay Aitmagambetov

Optimization of 3GPP standards that apply to cellular technologies and their adaptation to LPWAN has not led to positive results only enabling to compete on the market with the growing number non-cellular greenfield LPWAN technologies – LoRa, Sigfox and others. The need to take into consideration, during the 3GPP standard optimization phase, the low-cost segment of narrow-band IoT devices relying on such new technologies as LTE-M, NB-IoT and EC-GSM, has also led to a loss of a number of technical characteristics and functions that offered low latency and guaranteed the quality of service. The aim of this article is therefore to review some of the most technical limitations and restrictions of the new 3GPP IoT technologies, as well as to indicate the direction for development of future standards applicable to cellular IoT technologies.


Author(s):  
Donghyuk Lee ◽  
Yoongu Kim ◽  
V. Seshadri ◽  
Jamie Liu ◽  
L. Subramanian ◽  
...  
Keyword(s):  
Low Cost ◽  

2017 ◽  
Vol 7 (6) ◽  
pp. 178-181
Author(s):  
Ali Aghdaei ◽  
Seyed A. (Reza) Zekavat
Keyword(s):  
Low Cost ◽  

2021 ◽  
Author(s):  
Enrico Tabanelli ◽  
Davide Brunelli ◽  
Luca Benini ◽  
Andrea Acquaviva

Non-Intrusive Load Monitoring (NILM) enables the disaggregation of the global power consumption of multiple loads, taken from a single smart electrical meter, into appliance-level details. State-of-the-Art approaches are based on Machine Learning methods and exploit the fusion of time- and frequency-domain features from current and voltage sensors. Unfortunately, these methods are compute-demanding and memory-intensive. Therefore, running low-latency NILM on low-cost, resource-constrained MCU-based meters is currently an open challenge. This paper addresses the optimization of the feature spaces as well as the computational and storage cost reduction needed for executing State-of-the-Art (SoA) NILM algorithms on memory- and compute-limited MCUs. We compare four supervised learning techniques on different classification scenarios and characterize the overall NILM pipeline’s implementation on a MCU-based Smart Measurement Node. Experimental results demonstrate that optimizing the feature space enables edge MCU-based NILM with 95.15% accuracy, resulting in a small drop compared to the most-accurate feature vector deployment (96.19%) while achieving up to 5.45x speed-up and 80.56% storage reduction. Furthermore, we show that low-latency NILM relying only on current measurements reaches almost 80% accuracy, allowing a major cost reduction by removing voltage sensors from the hardware design.


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