Articles | Volume 14, issue 12
https://doi.org/10.5194/nhess-14-3123-2014
https://doi.org/10.5194/nhess-14-3123-2014
Research article
 | 
01 Dec 2014
Research article |  | 01 Dec 2014

A wireless sensor network for monitoring volcano-seismic signals

R. Lopes Pereira, J. Trindade, F. Gonçalves, L. Suresh, D. Barbosa, and T. Vazão

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Cited articles

Abolhasan, M., Hagelstein, B., and Wang, J. C.-P: Real-world performance of current proactive multi-hop mesh protocols, in: 15th Asia-Pacific Conference on Communications (APCC 2009), Shanghai, 44–47, 2009.
Akyildiz, I. and Wang, X.: A survey on wireless mesh networks, IEEE Commun. Mag., 43, 23–30, 2005.
Al Basset Almamou, A., Wrede, R., Kumar, P., Labiod, H., and Schiller, J.: Performance evaluation of routing protocols in a Real-World WSN, in: Global Information Infrastructure Symposium, 2009, GIIS'09, Hammemet, 1–5, 2009.
Budi-Santoso, A., Lesage, P., Dwiyono, S., Sumarti, S., Subandriyo, S., Jousset, P., and Metaxian, J.-P.: Analysis of the seismic activity associated with the 2010 eruption of Merapi Volcano, Java, J. Volcanol. Geoth. Res., 261, 153–170, 2013.
Chouet, B.: A Seismic Model for the Source of Long-Period Events and Harmonic Tremor, in: Volcanic Seismology, IAVCEI Proceedings in Volcanology, Springer, Berlin, Heidelberg, 133–156, 1992.
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Short summary
We developed a WSN capable of collecting geophysical measurements on remote active volcanoes. Our main goals were to create a flexible, easy-to-deploy and easy-to-maintain, adaptable, low-cost WSN for temporary or permanent monitoring of seismic tremor. It enables the easy installation of a sensor array in an area of tens of thousands of sqm. It can be used to record data locally for later analysis or for continuously transmitting to a remote laboratory for real-time analysis.
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