cris.boxmetadata.label.title
Sensor nodes fault detection for agricultural wireless sensor networks based on NMF
cris.boxmetadata.label.dateissued
01 browse.startsWith.months.june 2019
cris.boxmetadata.label.accesslevel
metadata only access
cris.boxmetadata.label.resourcetype
journal article
cris.boxmetadata.label.authors
LUDEÑA CHOEZ, JIMMY DIESTIN
Choquehuanca-Zevallos J.J.
MAYHUA LOPEZ, EFRAIN TITO
cris.boxmetadata.label.publisher
Elsevier B.V.
cris.boxmetadata.label.abstract
Nowadays, Wireless Sensor Networks (WSN) are widely been employed to solve agricultural problems related to the optimization of scarce farming resources, decision making support, and land monitoring. However, the small sensing devices that are part of WSNs – known as sensor nodes – suffer from degradation and so producing erroneous measurements. In this paper, a machine learning method based on Non-Negative Matrix Factorization (NMF) is applied to the spectral representation of data acquired by a WSN to extract features that model the normal behavior of sensor node readings leading to a good representation of data using a low number of features. This procedure is accompanied by a classifier that decides if there is a set of features that deviates from the normal ones. Experiments on soil moisture data show that NMF achieves good results detecting flaws in readings from sensors. Results are compared with other method based on Principal Component Analysis (PCA), the Multi-scale PCA (MSPCA) algorithm.
cris.boxmetadata.label.citationstartpage
214
cris.boxmetadata.label.citationendpage
224
cris.boxmetadata.label.volume
161
cris.boxmetadata.label.language
English
cris.boxmetadata.label.ocdeknowledgeArea
Agricultura Ingeniería de sistemas y comunicaciones Telecomunicaciones Otras ciencias agrícolas
cris.boxmetadata.label.doi
cris.boxmetadata.label.scopusidentifier
2-s2.0-85049352598
cris.boxmetadata.label.source
Computers and Electronics in Agriculture
cris.boxmetadata.label.containerissn
01681699
cris.boxmetadata.label.sponsor
This work has been partially supported by the Peruvian Government grant PITEI-1-P-275-092-14 (Innóvate Perú) and the Universidad Católica San Pablo .
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