PROJECT TITLE:

Data Encoding Techniques for Reducing EnergyConsumption in Network-on-Chip - 2015

ABSTRACT:

As technology shrinks, the facility dissipated by the links of a network-on-chip (NoC) starts to compete with the facility dissipated by the other components of the Communication subsystem, particularly, the routers and therefore the network interfaces (NIs). During this project, we tend to present a set of information encoding schemes aimed toward reducing the power dissipated by the links of an NoC. The proposed schemes are general and transparent with respect to the underlying NoC material (i.e., their application does not require any modification of the routers and link design). Experiments dispensed on both artificial and real traffic situations show the effectiveness of the proposed schemes, that allow to avoid wasting up to fifty onepercent of power dissipation and 14% of energy consumption while not any vital performance degradation and with but 15% area overhead in the NI.


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