J Supercomput https://doi.org/10.1007/s11227-018-2419-1 An energy-efﬁcient dynamic decision model for wireless multi-sensor network 1,2 1 1 1 Xuhui Yang · Qingguo Zhou · Jinqiang Wang · Rui Zhou · Kuan-Ching Li © Springer Science+Business Media, LLC, part of Springer Nature 2018 Abstract This paper proposes an energy-efﬁcient dynamic decision model for wire- less multi-sensor network, which is based on the dynamic analysis of the energy consumption characteristics of wireless multi-sensor nodes. We analyze the behaviors of the nodes in wireless multi-sensor network and introduce the existing energy- efﬁcient decision methods, then propose a simple dynamic decision model and prove it theoretically. This paper uses MATLAB 2015 to carry out simulation experiments under the condition of ﬁxed routing protocol based on tree topology and two low- power routing protocols based on mesh topology, and simulation results show that the network lifetime is obviously prolonged. Extending the application of the pro- posed decision model to aquaculture environmental monitoring system, testing results Qingguo Zhou firstname.lastname@example.org; email@example.com Xuhui Yang firstname.lastname@example.org Jinqiang Wang email@example.com Rui Zhou firstname.lastname@example.org Kuan-Ching Li email@example.com School of Information Science and Engineering, Lanzhou University, Lanzhou, Gansu province, People’s Republic of China Gansu Province Key Laboratory of Sensors and Sensing Technology, Institute
The Journal of Supercomputing – Springer Journals
Published: May 30, 2018
It’s your single place to instantly
discover and read the research
that matters to you.
Enjoy affordable access to
over 18 million articles from more than
15,000 peer-reviewed journals.
All for just $49/month
Query the DeepDyve database, plus search all of PubMed and Google Scholar seamlessly
Save any article or search result from DeepDyve, PubMed, and Google Scholar... all in one place.
Get unlimited, online access to over 18 million full-text articles from more than 15,000 scientific journals.
Read from thousands of the leading scholarly journals from SpringerNature, Elsevier, Wiley-Blackwell, Oxford University Press and more.
All the latest content is available, no embargo periods.
“Hi guys, I cannot tell you how much I love this resource. Incredible. I really believe you've hit the nail on the head with this site in regards to solving the research-purchase issue.”Daniel C.
“Whoa! It’s like Spotify but for academic articles.”@Phil_Robichaud
“I must say, @deepdyve is a fabulous solution to the independent researcher's problem of #access to #information.”@deepthiw
“My last article couldn't be possible without the platform @deepdyve that makes journal papers cheaper.”@JoseServera