Network-Centric Operations in Machine-to-Machine Networks
نویسندگان
چکیده
This paper explores the convergence of Machine-to-Machine (M2M) networks with Network-Centric Operations (NCO). An overview of the M2M communication paradigm and current standardization efforts regarding architecture are given. It includes an overview of the network-centric networking and analyses the idea of implementing NCO approach to achieve situational awareness and self-synchronization of autonomous and intelligent M2M devices in networked M2M environments. Case study involving M2M e-Health scenario is given and discussed as a proof of concept for the proposed convergence.
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