Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset

Sensor data generated by intelligent systems, such as autonomous robots, smart buildings and other systems based on artificial intelligence, represent valuable sources of knowledge in today's data-driven society, since they contain information about the situations these systems face during thei...

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Main Authors: Alberto Castellini, Domenico Bloisi, Jason Blum, Francesco Masillo, Alessandro Farinelli
Format: Article
Language:English
Published: Elsevier 2020-06-01
Series:Data in Brief
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352340920303309
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spelling doaj-8588400d546b475d9a330a6ee72f6f532020-11-25T03:12:25ZengElsevierData in Brief2352-34092020-06-0130105436Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete datasetAlberto Castellini0Domenico Bloisi1Jason Blum2Francesco Masillo3Alessandro Farinelli4Department of Computer Science, University of Verona, Strada le Grazie 15, 37134 Verona, Italy; Corresponding author.Department of Mathematics, Computer Science, and Economics, University of Basilicata, Viale dell'AteneoLucano, 10, 85100 Potenza, ItalyDepartment of Computer Science, University of Verona, Strada le Grazie 15, 37134 Verona, ItalyDepartment of Computer Science, University of Verona, Strada le Grazie 15, 37134 Verona, ItalyDepartment of Computer Science, University of Verona, Strada le Grazie 15, 37134 Verona, ItalySensor data generated by intelligent systems, such as autonomous robots, smart buildings and other systems based on artificial intelligence, represent valuable sources of knowledge in today's data-driven society, since they contain information about the situations these systems face during their operation. These data are usually multivariate time series since modern technologies enable the simultaneous acquisition of multiple signals during long periods of time. In this paper we present a dataset containing sensor traces of six data acquisition campaigns performed by autonomous aquatic drones involved in water monitoring. A total of 5.6 h of navigation are available, with data coming from both lakes and rivers, and from different locations in Italy and Spain. The monitored variables concern both the internal state of the drone (e.g., battery voltage, GPS position and signals to propellers) and the state of the water (e.g., temperature, dissolved oxygen and electrical conductivity). Data were collected in the context of the EU-funded Horizon 2020 project INTCATCH (http://www.intcatch.eu) which aims to develop a new paradigm for monitoring water quality of catchments. The aquatic drones used for data acquisition are Platypus Lutra boats. Both autonomous and manual drive is used in different parts of the navigation. The dataset is analyzed in the paper “Time series segmentation for state-model generation of autonomous aquatic drones: A systematic framework” [1] by means of recent time series clustering/segmentation techniques to extract data-driven models of the situations faced by the drones in the data acquisition campaigns. These data have strong potential for reuse in other kinds of data analysis and evaluation of machine learning methods on real-world datasets [2]. Moreover, we consider this dataset valuable also for the variety of situations faced by the drone, from which machine learning techniques can learn behavioral patterns or detect anomalous activities. We also provide manual labeling for some known states of the drones, such as, drone inside/outside the water, upstream/downstream navigation, manual/autonomous drive, and drone turning, that represent a ground truth for validation purposes. Finally, the real-world nature of the dataset makes it more challenging for machine learning methods because it contains noisy samples collected while the drone was exposed to atmospheric agents and uncertain water flow conditions.http://www.sciencedirect.com/science/article/pii/S2352340920303309Sensor dataAquatic dronesAutonomous surface vesselsWater monitoringMultivariate time seriesAutonomous navigation
collection DOAJ
language English
format Article
sources DOAJ
author Alberto Castellini
Domenico Bloisi
Jason Blum
Francesco Masillo
Alessandro Farinelli
spellingShingle Alberto Castellini
Domenico Bloisi
Jason Blum
Francesco Masillo
Alessandro Farinelli
Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
Data in Brief
Sensor data
Aquatic drones
Autonomous surface vessels
Water monitoring
Multivariate time series
Autonomous navigation
author_facet Alberto Castellini
Domenico Bloisi
Jason Blum
Francesco Masillo
Alessandro Farinelli
author_sort Alberto Castellini
title Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
title_short Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
title_full Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
title_fullStr Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
title_full_unstemmed Multivariate sensor signals collected by aquatic drones involved in water monitoring: A complete dataset
title_sort multivariate sensor signals collected by aquatic drones involved in water monitoring: a complete dataset
publisher Elsevier
series Data in Brief
issn 2352-3409
publishDate 2020-06-01
description Sensor data generated by intelligent systems, such as autonomous robots, smart buildings and other systems based on artificial intelligence, represent valuable sources of knowledge in today's data-driven society, since they contain information about the situations these systems face during their operation. These data are usually multivariate time series since modern technologies enable the simultaneous acquisition of multiple signals during long periods of time. In this paper we present a dataset containing sensor traces of six data acquisition campaigns performed by autonomous aquatic drones involved in water monitoring. A total of 5.6 h of navigation are available, with data coming from both lakes and rivers, and from different locations in Italy and Spain. The monitored variables concern both the internal state of the drone (e.g., battery voltage, GPS position and signals to propellers) and the state of the water (e.g., temperature, dissolved oxygen and electrical conductivity). Data were collected in the context of the EU-funded Horizon 2020 project INTCATCH (http://www.intcatch.eu) which aims to develop a new paradigm for monitoring water quality of catchments. The aquatic drones used for data acquisition are Platypus Lutra boats. Both autonomous and manual drive is used in different parts of the navigation. The dataset is analyzed in the paper “Time series segmentation for state-model generation of autonomous aquatic drones: A systematic framework” [1] by means of recent time series clustering/segmentation techniques to extract data-driven models of the situations faced by the drones in the data acquisition campaigns. These data have strong potential for reuse in other kinds of data analysis and evaluation of machine learning methods on real-world datasets [2]. Moreover, we consider this dataset valuable also for the variety of situations faced by the drone, from which machine learning techniques can learn behavioral patterns or detect anomalous activities. We also provide manual labeling for some known states of the drones, such as, drone inside/outside the water, upstream/downstream navigation, manual/autonomous drive, and drone turning, that represent a ground truth for validation purposes. Finally, the real-world nature of the dataset makes it more challenging for machine learning methods because it contains noisy samples collected while the drone was exposed to atmospheric agents and uncertain water flow conditions.
topic Sensor data
Aquatic drones
Autonomous surface vessels
Water monitoring
Multivariate time series
Autonomous navigation
url http://www.sciencedirect.com/science/article/pii/S2352340920303309
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