dc.description.abstract |
The aggressive scaling of on-chip interconnects leads to a significant increase in coupling
capacitance. This causes crosstalk effects, especially for technology nodes at the end of the
roadmap. In addition, surface roughness is viewed as the major contributing factor to conductor
losses, which further aggravates crosstalk-induced effects. An analysis is provided of crosstalkinduced effects considering the surface roughness of the interconnect at current and future
technology nodes (13nm, 7nm) for on-chip global Copper interconnects. To perform our
analysis, we used an Aggressor Victim Aggressor 3-line bus architecture and FINFET-based
driver circuits based on binary input logic. In our work, we also discuss the relevance of
repeater insertion in rough interconnects. In designing high-performance on-chip
interconnects, repeaters are one way to minimize power losses and propagation delays.
Repeaters are buffers or inverters made of complementary metal oxide semiconductor (CMOS)
or other advanced transistors. Our work comprises the development of an artificial neural
network (ANN) framework for quantifying the statistics of the optimal number and size of
repeaters that are needed to minimize the power delay product of rough copper on-chip
interconnects. The proposed ANN framework enables the use of analytic mathematical
expressions instead of expensive and repeated SPICE simulations and evaluations of a particle
swarm optimization (PSO) algorithm to solve the repeater optimization problem. Due to this
ANN framework, Monte Carlo-based statistical analysis of the optimal number and size of
repeaters can be conducted extremely quickly with this ANN framework.
With an increase in signal speeds, small imperfections begin to affect the performance of
interconnects. It is a fact that thermal effects are integral aspects of interconnects, such as selfheating caused by current flow, as well as environmental heating in high-speed designs. Due
to high computational power and increased component density, printed circuit boards (PCBs)
have a greater thermal budget. A major role is played by thermal effects in the performance of
high-speed interconnects. It is extremely important to design high-speed interconnects that are
reliable and efficient at the board level. We present thermal effects on the insertion loss,
crosstalk, and phase of high-speed signals. Additionally, this study examines the thermal
sensitivity of various aspects of interconnect design, such as interpair spacing, trace height, and
dielectric thickness. We also examine the thermal sensitivity for standard loss, mid-loss, lowloss, as well as ultra-low loss dielectric materials. Moreover, this study also examines the major
heat sources contributing to thermal effects in high-speed PCB interconnections. Two different high-speed interconnect topologies are considered in our analysis. An electrothermal
methodology (EEM) is presented for the design of high-speed PCB interconnects for reliable
and efficient system design. An electrical-thermal co-simulation is performed using our
proposed EEM. In addition, we provide an artificial neural network (ANN)-based model for
reliable and efficient interconnect design which is faster and requires significantly fewer
computations. Our analysis shows that the proposed ANN model is five orders of magnitude
faster than the EEM. Based on our reported EEM, we are able to develop reliable and efficient
methods of designing high-speed interconnect topologies that offer space and cost savings, as
well as ensuring the system's accuracy. It could be used for designing high-performance
servers, storage systems, and network cards. |
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