scholarly journals Deep Caller for Ocean Acoustic Releases

2020 ◽  
Vol 37 (6) ◽  
pp. 1135-1137
Author(s):  
Hans van Haren ◽  
Martin Laan ◽  
Sander Asjes ◽  
Bas Denissen

AbstractWe relate about the custom-made modification of a Benthos deep-ocean acoustic release into a “deep caller,” an acoustic transducer for calling and releasing ocean acoustic transponding releases that cannot be reached from a standard deck unit. The self-contained deep caller can be lowered down to 12 km on any nonconducting winch cable. It may prove useful to retrieve subsurface instrumentation like a seafloor lander hidden behind large rocks or in a narrow canyon, or moorings in very deep topographic depressions. We used it to retrieve a 7-km-long mooring from 10 910-m depth in the Challenger Deep, Mariana Trench, that a standard deck unit could not reach.

2017 ◽  
Vol 19 (7) ◽  
pp. 2769-2784 ◽  
Author(s):  
Rosa León-Zayas ◽  
Logan Peoples ◽  
Jennifer F. Biddle ◽  
Sheila Podell ◽  
Mark Novotny ◽  
...  

2017 ◽  
Vol 67 (4) ◽  
pp. 824-831 ◽  
Author(s):  
Masataka Kusube ◽  
Than S. Kyaw ◽  
Kumiko Tanikawa ◽  
Roger A. Chastain ◽  
Kevin M. Hardy ◽  
...  

Author(s):  
Andrew D. Bowen ◽  
Dana R. Yoerger ◽  
Chris Taylor ◽  
Robert McCabe ◽  
Jonathan Howland ◽  
...  

Extremophiles ◽  
2006 ◽  
Vol 10 (3) ◽  
pp. 181-189 ◽  
Author(s):  
Wasu Pathom-aree ◽  
James E. M. Stach ◽  
Alan C. Ward ◽  
Koki Horikoshi ◽  
Alan T. Bull ◽  
...  

Zootaxa ◽  
2018 ◽  
Vol 4402 (1) ◽  
pp. 42 ◽  
Author(s):  
QI KOU ◽  
XINZHENG LI ◽  
LISHENG HE ◽  
YONG WANG

The blind deep-sea mysid Amblyops magnus Birstein & Tchindonova, 1958 is recorded for the first time from the Mariana Trench based on an adult female specimen collected near the Challenger Deep at a depth of 6555 m. The specimen was described, illustrated and compared with the type description as well as with the materials previously collected from the Japan Trench. The mitochondrial COI barcode was also obtained from the specimen and submitted to GenBank. This is the third discovery of this rare species and significantly extends its geographic distribution range to the low latitude hadal zone. 


PeerJ ◽  
2018 ◽  
Vol 6 ◽  
pp. e5764 ◽  
Author(s):  
Yongwon Jang ◽  
Seunghwan Kim ◽  
Kiseong Kim ◽  
Doheon Lee

Background The proportion of overweight and obese people has increased tremendously in a short period, culminating in a worldwide trend of obesity that is reaching epidemic proportions. Overweight and obesity are serious issues, especially with regard to children. This is because obese children have twice the risk of becoming obese as adults, as compared to non-obese children. Nowadays, many methods for maintaining a caloric balance exist; however, these methods are not applicable to children. In this study, a new approach for helping children monitor their activities using a convolutional neural network (CNN) is proposed, which is applicable for real-time scenarios requiring high accuracy. Methods A total of 136 participants (86 boys and 50 girls), aged between 8.5 years and 12.5 years (mean 10.5, standard deviation 1.1), took part in this study. The participants performed various movement while wearing custom-made three-axis accelerometer modules around their waists. The data acquired by the accelerometer module was preprocessed by dividing them into small sets (128 sample points for 2.8 s). Approximately 183,600 data samples were used by the developed CNN for learning to classify ten physical activities : slow walking, fast walking, slow running, fast running, walking up the stairs, walking down the stairs, jumping rope, standing up, sitting down, and remaining still. Results The developed CNN classified the ten activities with an overall accuracy of 81.2%. When similar activities were merged, leading to seven merged activities, the CNN classified activities with an overall accuracy of 91.1%. Activity merging also improved performance indicators, for the maximum case of 66.4% in recall, 48.5% in precision, and 57.4% in f1 score . The developed CNN classifier was compared to conventional machine learning algorithms such as the support vector machine, decision tree, and k-nearest neighbor algorithms, and the proposed CNN classifier performed the best: CNN (81.2%) > SVM (64.8%) > DT (63.9%) > kNN (55.4%) (for ten activities); CNN (91.1%) > SVM (74.4%) > DT (73.2%) > kNN (65.3%) (for the merged seven activities). Discussion The developed algorithm distinguished physical activities with improved time resolution using short-time acceleration signals from the physical activities performed by children. This study involved algorithm development, participant recruitment, IRB approval, custom-design of a data acquisition module, and data collection. The self-selected moving speeds for walking and running (slow and fast) and the structure of staircase degraded the performance of the algorithm. However, after similar activities were merged, the effects caused by the self-selection of speed were reduced. The experimental results show that the proposed algorithm performed better than conventional algorithms. Owing to its simplicity, the proposed algorithm could be applied to real-time applicaitons.


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