scholarly journals System-Level Leakage Power Estimation Model for ASIC Designs

Author(s):  
Abhishek Narayan Tripathi ◽  
Arvind Rajawat
2019 ◽  
Vol 28 (13) ◽  
pp. 1950218
Author(s):  
Abhishek N. Tripathi ◽  
Arvind Rajawat

In this paper, we present an efficient and fast system-level power estimation model for the FPGA-based designs. To estimate the dynamic power early, first time, LLVM IR code analysis is employed at the C-level designs and then the neural network-based estimation model is built from the information obtained from this high-level profiling. The model accuracy is validated through designs of heterogeneous domains from the CHStone and MachSuite benchmarks. An insignificant relative error of 0.21–3.6% is observed for the analyzed benchmark designs with the exceptional increase in the estimation speed by 63 times of magnitude as compared to the Xilinx Vivado Design Suite. Moreover, the model eliminates the need for synthesis-based exploration. In addition, the effectiveness of proposed approach is also verified through a comparison with the other reported works.


2018 ◽  
Vol 106 (4) ◽  
pp. 2087-2098
Author(s):  
Gaurav Verma ◽  
Tarun Singhal ◽  
Rahul Kumar ◽  
Shivam Chauhan ◽  
Sushant Shekhar ◽  
...  

2020 ◽  
Vol 12 (22) ◽  
pp. 3707
Author(s):  
Zhongli Lin ◽  
Hanqiu Xu

With the rapid process of urbanization, anthropogenic heat generated by human activities has become an important factor that drives the changes in urban climate and regional environmental quality. The nighttime light (NTL) data can aptly reflect the spatial distribution of social-economic activities and energy consumption, and quantitatively estimate the anthropogenic heat flux (AHF) distribution. However, the commonly used DMSP/OLS and Suomi-NPP/VIIRS NTL data are restricted by their coarse spatial resolution and, therefore, cannot exhibit the spatial details of AHF at city scale. The 130 m high-resolution NTL data obtained by Luojia 1-01 satellite launched in June 2018 shows a promise to solve this problem. In this paper, the gridded AHF spatial estimation is achieved with a resolution of 130 m using Luojia 1-01 NTL data based on three indexes, NTLnor (Normalized Nighttime Light Data), HSI (Human Settlement Index), and VANUI (Vegetation Adjusted NTL Urban Index). We chose Jiangsu, a fast-developing province in China, as an example to determine the best AHF estimation model among the three indexes. The AHF of 96 county-level cities of the province was first calculated using energy-consumption statistics data and then correlated with the corresponding data of three indexes. The results show that based on a 5-fold cross-validation approach, the VANUI power estimation model achieves the highest R2 of 0.8444 along with the smallest RMSE of 4.8277 W·m−2 and therefore has the highest accuracy among the three indexes. According to the VANUI power estimation model, the annual mean AHF of Jiangsu in 2018 was 2.91 W·m−2. Of the 96 cities, Suzhou has the highest annual mean AHF of 7.41 W·m−2, followed by Wuxi, Nanjing, Changzhou and Zhenjiang, with the annual mean of 3.80–5.97 W·m−2, while the figures of Suqian, Yancheng, Lianyungang, and Huaian, the cities in northern Jiangsu, are relatively low, ranging from 1.41 to 1.59 W·m−2. This study has shown that the AHF estimation model developed by Luojia 1-01 NTL data can achieve higher accuracy at city-scale and discriminate the spatial detail of AHF effectively.


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