network diagnosis
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2021 ◽  
Author(s):  
Derek Weitzel ◽  
Shawn McKee ◽  
Brian Paul Bockelman ◽  
John Thiltges ◽  
Marian Babik ◽  
...  

2021 ◽  
Author(s):  
Sizhe Rao ◽  
Minghui Wang ◽  
Cuixia Tian ◽  
Xin'an Yang ◽  
Xiangqiao Ao

2020 ◽  
Vol 38 (9) ◽  
pp. 2695-2702 ◽  
Author(s):  
Fumikazu Inuzuka ◽  
Takuya Oda ◽  
Takafumi Tanaka ◽  
Kei Kitamura ◽  
Seiki Kuwabara ◽  
...  

Sensors ◽  
2020 ◽  
Vol 20 (5) ◽  
pp. 1541
Author(s):  
Alberto Lucas Pascual ◽  
Antonio Madueño Luna ◽  
Manuel de Jódar Lázaro ◽  
José Miguel Molina Martínez ◽  
Antonio Ruiz Canales ◽  
...  

Olive pitting, slicing and stuffing machines (DRR in Spanish) are characterized by the fact that their optimal functioning is based on appropriate adjustments. Traditional systems are not completely reliable because their minimum error rate is 1–2%, which can result in fruit loss, since the pitting process is not infallible, and food safety issues can arise. Such minimum errors are impossible to remove through mechanical adjustments. In order to achieve this objective, an innovative solution must be provided in order to remove errors at operating speed rates over 2500 olives/min. This work analyzes the appropriate placement of olives in the pockets of the feed chain by using the following items: (1) An IoT System to control the DRR machine and the data analysis. (2) A computer vision system with an external shot camera and a LED lighting system, which takes a picture of every pocket passing in front of the camera. (3) A chip with a neural network for classification that, once trained, classifies between four possible pocket cases: empty, normal, incorrectly de-stoned olives at any angles (also known as a “boat”), and an anomalous case (foreign elements such as leafs, small branches or stones, two olives or small parts of olives in the same pocket). The main objective of this paper is to illustrate how with the use of a system based on IoT and a physical chip (NeuroMem CM1K, General Vision Inc.) with neural networks for sorting purposes, it is possible to optimize the functionality of this type of machine by remotely analyzing the data obtained. The use of classifying hardware allows it to work at the nominal operating speed for these machines. This would be limited if other classifying techniques based on software were used.


2020 ◽  
Vol 245 ◽  
pp. 07053
Author(s):  
Marian Babik ◽  
Shawn McKee ◽  
Pedro Andrade ◽  
Brian Paul Bockelman ◽  
Robert Gardner ◽  
...  

WLCG relies on the network as a critical part of its infrastructure and therefore needs to guarantee effective network usage and prompt detection and resolution of any network issues including connection failures, congestion and traffic routing. The OSG Networking Area, in partnership with WLCG, is focused on being the primary source of networking information for its partners and constituents. It was established to ensure sites and experiments can better understand and fix networking issues, while providing an analytics platform that aggregates network monitoring data with higher level workload and data transfer services. This has been facilitated by the global network of the perfSONAR instances that have been commissioned and are operated in collaboration with WLCG Network Throughput Working Group. An additional important update is the inclusion of the newly funded NSF project SAND (Service Analytics and Network Diagnosis) which is focusing on network analytics. This paper describes the current state of the network measurement and analytics platform and summarises the activities taken by the working group and our collaborators. This includes the progress being made in providing higher level analytics, alerting and alarming from the rich set of network metrics we are gathering.


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