We propose a new power macromodel for usage in the context of register-transfer level (RTL) power estimation. The model is suitable for reconfigurable, synthesizable, soft macros because it is parameterized with respect to the input data size (i.e., bit width) and can also be automatically scaled with respect to different technology libraries and/or synthesis options. The power model is precharacterized once and for all for each soft macro and then adapted to each specific instance by means of a single additional experiment to be performed by the end user. No intellectual-property disclosure is required for model scaling. The proposed model is derived from empirical analysis of the sensitivity of power consumption on input statistics, input...
In this paper, we present a new analytical macro-modeling technique for high-level power estimation....
We propose a new approach to RT-level power modeling for combinational macros, that does not require...
This paper presents a new macromodeling technique for high-level power estimation. Our technique is ...
We propose a new power macromodel for usage in the context of register-transfer level (RTL) power es...
We propose a new RTL power macromodel that is suitable for re-configurable, synthesizable soft-macro...
In this paper, we propose a robust register-transfer level (RTL) power modeling methodology for func...
Register-transfer level (RTL) power estimation is a key feature for synthesis-based design flows. Th...
Although RTL power macromodeling is a mature research topic, it is not yet broadly accepted in the i...
RTL power macromodeling is a mature research topic with a variety of equation and table-based approa...
This paper presents novel techniques for the cycle-accurate power macro-modeling of complex RTL comp...
Most power macromodels for RTL datapath modules are both data-dependent and activity-sensitive, that...
Abstract—Despite its maturity, RTL power macromodeling is not yet widely accepted as a de facto indu...
In this paper, we propose a novel power macromodeling technique for high level power estimation base...
Power estimation at the Register-Transfer level is usually narrowed down to the problem of building ...
Abstract In this paper we present a methodology and techniques for generating cycle-accurate macro-m...
In this paper, we present a new analytical macro-modeling technique for high-level power estimation....
We propose a new approach to RT-level power modeling for combinational macros, that does not require...
This paper presents a new macromodeling technique for high-level power estimation. Our technique is ...
We propose a new power macromodel for usage in the context of register-transfer level (RTL) power es...
We propose a new RTL power macromodel that is suitable for re-configurable, synthesizable soft-macro...
In this paper, we propose a robust register-transfer level (RTL) power modeling methodology for func...
Register-transfer level (RTL) power estimation is a key feature for synthesis-based design flows. Th...
Although RTL power macromodeling is a mature research topic, it is not yet broadly accepted in the i...
RTL power macromodeling is a mature research topic with a variety of equation and table-based approa...
This paper presents novel techniques for the cycle-accurate power macro-modeling of complex RTL comp...
Most power macromodels for RTL datapath modules are both data-dependent and activity-sensitive, that...
Abstract—Despite its maturity, RTL power macromodeling is not yet widely accepted as a de facto indu...
In this paper, we propose a novel power macromodeling technique for high level power estimation base...
Power estimation at the Register-Transfer level is usually narrowed down to the problem of building ...
Abstract In this paper we present a methodology and techniques for generating cycle-accurate macro-m...
In this paper, we present a new analytical macro-modeling technique for high-level power estimation....
We propose a new approach to RT-level power modeling for combinational macros, that does not require...
This paper presents a new macromodeling technique for high-level power estimation. Our technique is ...