TY - JOUR
T1 - CONDENSE
T2 - A Reconfigurable Knowledge Acquisition Architecture for Future 5G IoT
AU - Vukobratovic, Dejan
AU - Jakovetic, Dusan
AU - Skachek, Vitaly
AU - Bajovic, Dragana
AU - Sejdinovic, Dino
AU - Kurt, Gunes Karabulut
AU - Hollanti, Camilla
AU - Fischer, Ingo
PY - 2016
Y1 - 2016
N2 - In forthcoming years, the Internet of Things (IoT) will connect billions of smart devices generating and uploading a deluge of data to the cloud. If successfully extracted, the knowledge buried in the data can significantly improve the quality of life and foster economic growth. However, a critical bottleneck for realizing the efficient IoT is the pressure it puts on the existing communication infrastructures, requiring transfer of enormous data volumes. Aiming at addressing this problem, we propose a novel architecture dubbed Condense which integrates the IoT-communication infrastructure into the data analysis. This is achieved via the generic concept of network function computation. Instead of merely transferring data from the IoT sources to the cloud, the communication infrastructure should actively participate in the data analysis by carefully designed en-route processing. We define the Condense architecture, its basic layers, and the interactions among its constituent modules. Furthermore, from the implementation side, we describe how Condense can be integrated into the Third Generation Partnership Project (3GPP) machine type communications (MTCs) architecture, as well as the prospects of making it a practically viable technology in a short time frame, relying on network function virtualization and software-defined networking. Finally, from the theoretical side, we survey the relevant literature on computing atomic functions in both analog and digital domains, as well as on function decomposition over networks, highlighting challenges, insights, and future directions for exploiting these techniques within practical 3GPP MTC architecture.
AB - In forthcoming years, the Internet of Things (IoT) will connect billions of smart devices generating and uploading a deluge of data to the cloud. If successfully extracted, the knowledge buried in the data can significantly improve the quality of life and foster economic growth. However, a critical bottleneck for realizing the efficient IoT is the pressure it puts on the existing communication infrastructures, requiring transfer of enormous data volumes. Aiming at addressing this problem, we propose a novel architecture dubbed Condense which integrates the IoT-communication infrastructure into the data analysis. This is achieved via the generic concept of network function computation. Instead of merely transferring data from the IoT sources to the cloud, the communication infrastructure should actively participate in the data analysis by carefully designed en-route processing. We define the Condense architecture, its basic layers, and the interactions among its constituent modules. Furthermore, from the implementation side, we describe how Condense can be integrated into the Third Generation Partnership Project (3GPP) machine type communications (MTCs) architecture, as well as the prospects of making it a practically viable technology in a short time frame, relying on network function virtualization and software-defined networking. Finally, from the theoretical side, we survey the relevant literature on computing atomic functions in both analog and digital domains, as well as on function decomposition over networks, highlighting challenges, insights, and future directions for exploiting these techniques within practical 3GPP MTC architecture.
KW - Internet of things (IoT)
KW - big data
KW - network coding
KW - network function computation
KW - machine learning
KW - wireless communications
KW - SOFTWARE-DEFINED NETWORKING
KW - WIRELESS SENSOR NETWORKS
KW - MACHINE-TYPE COMMUNICATIONS
KW - MULTIPLE-ACCESS CHANNELS
KW - HARNESSING INTERFERENCE
KW - FUNCTION COMPUTATION
KW - INFORMATION-FLOW
KW - SYSTEMS
KW - COMMUNICATION
KW - ALGORITHMS
U2 - 10.1109/ACCESS.2016.2585468
DO - 10.1109/ACCESS.2016.2585468
M3 - Article
SN - 2169-3536
VL - 4
SP - 3360
EP - 3378
JO - IEEE Access
JF - IEEE Access
ER -