Power Optimized Ternary Arithmetic Logic Circuit using Carbon Nano Tube Field Effect Transistor

A. Latha, S. Murugeswaran, G. Yamuna
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Abstract

Ternary Logic Circuits have gained the crucial attention of all the semiconductor researchers as it provides better interconnect, power, performance and speed when compared to the conventional binary logics. There is a minimal area overhead in ternary logics but that’s permissible as long as other parameters provide a much beneficial results. Carbon Nano Tube (CNT) Transistors are a remarkable replacement for the conventional Complementary Metal Oxide Semiconductors (CMOS) as they exhibit better electrical connectivity, structural abilities and mechanical properties. The main focus of present-day requirements are designing and developing power optimized high speed circuits without compromising on performance and area. So, to achieve all these, this research work focus on combining both the high-profile techniques to build Low Powered Ternary Arithmetic Logic Circuits (LP- TALCs) using CNT transistors. ALCs plays the major role as the basic operating unit for any processors or circuits which helps to perform arithmetic operations and logic operations in single structure. The various logic operations performed by this TALC circuit is Buffer, Inversion, Ternary NAND, Ternary NOR, Ternary AND, Ternary OR, Ternary Adder, Ternary Subtractor and Ternary Comparator. The structure basically consists of Low Power Enabled Decoder (LPED), Functional modules and Output selection circuit (OSC). LPED circuit helps to achieve low power by enabling the selected circuit operations using decoder circuits and the inputs are fed to functional modules which consists of all the logical structure and finally the output selection circuit consists of encoders which deliver the final output function. The proposed structure is designed using 32nm CNTFET technology and the simulation results shows almost 90% power reduction to their binary counterpart and 85% Power delay product improvement.
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基于碳纳米管场效应晶体管的功率优化三元算术逻辑电路
与传统的二进制逻辑相比,三元逻辑电路具有更好的互连性、功耗、性能和速度,因此受到了所有半导体研究人员的高度关注。在三元逻辑中有一个最小的面积开销,但只要其他参数提供非常有益的结果,这是允许的。碳纳米管(CNT)晶体管是传统互补金属氧化物半导体(CMOS)的重要替代品,因为它们具有更好的电连通性、结构能力和机械性能。当前需求的主要焦点是设计和开发功率优化的高速电路,而不影响性能和面积。因此,为了实现这一切,本研究工作的重点是将这两种高水平的技术结合起来,利用碳纳米管晶体管构建低功耗三元算术逻辑电路(LP- TALCs)。alc作为任何处理器或电路的基本操作单元起着主要作用,它有助于在单一结构中执行算术运算和逻辑运算。该TALC电路执行的各种逻辑运算是缓冲、反转、三元非与、三元非与、三元与、三元或、三元加、三元减、三元比较。该结构主要由低功耗译码器(LPED)、功能模块和输出选择电路(OSC)组成。LPED电路通过使用解码器电路使所选电路操作能够帮助实现低功耗,输入被馈送到由所有逻辑结构组成的功能模块,最后输出选择电路由提供最终输出功能的编码器组成。该结构采用32nm CNTFET技术设计,仿真结果表明,与二进制结构相比,该结构功耗降低近90%,功耗延迟产品改善85%。
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