Compact models for adaptive sampling in marine robotics

被引:2
|
作者
Fossum, Trygve Olav [1 ,2 ]
Ryan, John [3 ]
Mukerji, Tapan [4 ,5 ]
Eidsvik, Jo [6 ]
Maughan, Thom [3 ]
Ludvigsen, Martin [1 ,2 ,7 ]
Rajan, Kanna [2 ,8 ,9 ]
机构
[1] Norwegian Univ Sci & Technol NTNU, Dept Marine Technol, Trondheim, Norway
[2] Ctr Autonomous Marine Operat & Syst AMOS, Trondheim, Norway
[3] Monterey Bay Aquarium Res Inst, Moss Landing, CA USA
[4] Stanford Univ, Dept Energy Resources Engn, Stanford, CA 94305 USA
[5] Dept Geophys Courtesy, Stanford, CA 94305 USA
[6] NTNU, Dept Math Sci, Trondheim, Norway
[7] Univ Ctr Svalbard UNIS, Longyearbyen, Norway
[8] NTNU, Dept Engn Cybernet, Trondheim, Norway
[9] Univ Porto, Fac Engn, Underwater Syst & Technol Lab, Porto, Portugal
来源
关键词
Machine learning; sampling; ocean modeling; marine robotics; CLASSIFICATION; UNCERTAINTY; PREDICTION;
D O I
10.1177/0278364919884141
中图分类号
TP24 [机器人技术];
学科分类号
080202 ; 1405 ;
摘要
Finding high-value locations for in situ data collection is of substantial importance in ocean science, where diverse bio-physical processes interact to create dynamically evolving phenomena. These cover a variable spatial extent, and are sparse and difficult to predict. Autonomous robotic platforms can sustain themselves in harsh conditions with persistent presence, but require deployment at the correct place and time. To that end, we consider the use of remote sensing data for building compact models that can improve skill in predicting sub-mesoscale features and inform onboard sampling. The model enables prediction of regional patterns based on sparse in situ data, a capability that is essential in regions where use of satellite remote sensing in real time is often limited by cloud cover. Our model is based on classification of sea-surface temperature (SST) images, but the technique is general across any remotely sensed parameter. Images having similar magnitude and spatial patterns are grouped into a compact set of conditional means representing the dominant states. The classification is unsupervised and uses a combination of dictionary learning and hierarchical clustering. The method is demonstrated using SST images from Monterey Bay, California. The consistency of the classification result is verified and compared with oceanographic forcing using historical wind measurements. The established model is then shown to work in a real application using measurements from an autonomous surface vehicle (ASV), together with forecast and sampling strategies. Finally an analysis of the model prediction error is presented and compared across different paths and survey duration.
引用
收藏
页码:127 / 142
页数:16
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