6 research outputs found

    Accurate simulations of the interplay between process and statistical variability for nanoscale FinFET-based SRAM cell stability

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    In this paper we illustrate how by using advanced atomistic TCAD tools the interplay between long-range process variation and short-range statistical variability in FinFETs can be accurately modelled and simulated for the purposes of Design-Technology Co-Optimization (DTCO). The proposed statistical simulation and compact modelling methodology is demonstrated via a comprehensive evaluation of the impact of FinFET variability on SRAM cell stability

    Impact of self-heating on the statistical variability in bulk and SOI FinFETs

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    In this paper for the first time we study the impact of self-heating on the statistical variability of bulk and SOI FinFETs designed to meet the requirements of the 14/16nm technology node. The simulations are performed using the GSS ‘atomistic’ simulator GARAND using an enhanced electro-thermal model that takes into account the impact of the fin geometry on the thermal conductivity. In the simulations we have compared the statistical variability obtained from full-scale electro-thermal simulations with the variability at uniform room temperature and at the maximum or average temperatures obtained in the electro-thermal simulations. The combined effects of line edge roughness and metal gate granularity are taken into account. The distributions and the correlations between key figures of merit including the threshold voltage, on-current, subthreshold slope and leakage current are presented and analysed

    Ultra-Low-Power Embedded SRAM Design for Battery- Operated and Energy-Harvested IoT Applications

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    Internet of Things (IoT) devices such as wearable health monitors, augmented reality goggles, home automation, smart appliances, etc. are a trending topic of research. Various IoT products are thriving in the current electronics market. The IoT application needs such as portability, form factor, weight, etc. dictate the features of such devices. Small, portable, and lightweight IoT devices limit the usage of the primary energy source to a smaller rechargeable or non-rechargeable battery. As battery life and replacement time are critical issues in battery-operated or partially energy-harvested IoT devices, ultra-low-power (ULP) system on chips (SoC) are becoming a widespread solution of chip makers’ choice. Such ULP SoC requires both logic and the embedded static random access memory (SRAM) in the processor to operate at very low supply voltages. With technology scaling for bulk and FinFET devices, logic has demonstrated to operate at low minimum operating voltages (VMIN). However, due to process and temperature variation, SRAMs have higher VMIN in scaled processes that become a huge problem in designing ULP SoC cores. This chapter discusses the latest published circuits and architecture techniques to minimize the SRAM VMIN for scaled bulk and FinFET technologies and improve battery life for ULP IoT applications

    Statistical variability in 14-nm node SOI FinFETs and its impact on corresponding 6T-SRAM cell design

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    This paper presents a comprehensive statistical variability study of 14-nm technology node SOI FinFET which is optimized based on extensive exploration of TCAD design space. The variability sources, including random discrete dopants, gate and fin edge roughness, and possible metal gate granularity, are simulated and examined in term of their impacts on device parameters. The impact of intrinsic parameter fluctuations on a high density SOI FinFET 6T-SRAM cell is also investigated

    Robustness Analysis of Controllable-Polarity Silicon Nanowire Devices and Circuits

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    Substantial downscaling of the feature size in current CMOS technology has confronted digital designers with serious challenges including short channel effect and high amount of leakage power. To address these problems, emerging nano-devices, e.g., Silicon NanoWire FET (SiNWFET), is being introduced by the research community. These devices keep on pursuing Mooreâs Law by improving channel electrostatic controllability, thereby reducing the Off âstate leakage current. In addition to these improvements, recent developments introduced devices with enhanced capabilities, such as Controllable-Polarity (CP) SiNWFETs, which make them very interesting for compact logic cell and arithmetic circuits. At advanced technology nodes, the amount of physical controls, during the fabrication process of nanometer devices, cannot be precisely determined because of technology fluctuations. Consequently, the structural parameters of fabricated circuits can be significantly different from their nominal values. Moreover, giving an a-priori conclusion on the variability of advanced technologies for emerging nanoscale devices, is a difficult task and novel estimation methodologies are required. This is a necessity to guarantee the performance and the reliability of future integrated circuits. Statistical analysis of process variation requires a great amount of numerical data for nanoscale devices. This introduces a serious challenge for variability analysis of emerging technologies due to the lack of fast simulation models. One the one hand, the development of accurate compact models entails numerous tests and costly measurements on fabricated devices. On the other hand, Technology Computer Aided Design (TCAD) simulations, that can provide precise information about devices behavior, are too slow to timely generate large enough data set. In this research, a fast methodology for generating data set for variability analysis is introduced. This methodology combines the TCAD simulations with a learning algorithm to alleviate the time complexity of data set generation. Another formidable challenge for variability analysis of the large circuits is growing number of process variation sources. Utilizing parameterized models is becoming a necessity for chip design and verification. However, the high dimensionality of parameter space imposes a serious problem. Unfortunately, the available dimensionality reduction techniques cannot be employed for three main reasons of lack of accuracy, distribution dependency of the data points, and finally incompatibility with device and circuit simulators. We propose a novel technique of parameter selection for modeling process and performance variation. The proposed technique efficiently addresses the aforementioned problems. Appropriate testing, to capture manufacturing defects, plays an important role on the quality of integrated circuits. Compared to conventional CMOS, emerging nano-devices such as CP-SiNWFETs have different fabrication process steps. In this case, current fault models must be extended for defect detection. In this research, we extracted the possible fabrication defects, and then proposed a fault model for this technology. We also provided a couple of test methods for detecting the manufacturing defects in various types of CP-SiNWFET logic gates. Finally, we used the obtained fault model to build fault tolerant arithmetic circuits with a bunch of superior properties compared to their competitors
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