The SKa (Square Kilometre array) radio telescope will become the most sensitive telescope by correlating a large number of antenna nodes to form a giant antenna array. The data generated from such a large number of antenna nodes will pose a huge storage problem and require real-time data processing to make the best use of data, and the SKa Scientific Data Processing becomes the bottleneck of the whole processing flow. However, the existing high-performance CPU- and GPU (Graphics Processing Unit)-based solutions cannot satisfy the performance requirements and power budget requirements well [1]. Due to the consideration of the high energy efficiency of hardware accelerators and the flexibility and cost of prototype design, in this paper, we explore the FPGa(Field Programmable Gate array)-based prototype of one of the most computationally demanding procedures in SKa scientific data processing: degridding. Through the analysis of algorithm behavior and bottlenecks, we design and optimize the memory architecture and computing logic of an FPGa-based prototype. Besides, with the consideration of the relations between the required data of processing multiple spectral channels, we reuse the shared data in processing neighboring spectral channels, and the performance further improves. The functionality and performance of our design have been verified on the target FPGa board, and the software-based benchmarks were also measured on comparable CPU and GPU platforms, indicating that the FPGa-based prototype achieves 2.74 times and 2.03 times speedup, 7.64 times and 7.42 times energy efficiency than the MPI(Message Passing Interface)-based CPU benchmark and the CUDa (Compute Unified Device architecture)-based GPU benchmark, respectively.
CITATION STYLE
Hou, J., Zhu, Y., Du, S., Song, S., & Song, Y. (2020). FPGa-Based Scale-Out Prototyping of Degridding algorithm for accelerating Square Kilometre array Telescope Data Processing. IEEE Access, 8, 15586–15597. https://doi.org/10.1109/aCCESS.2020.2966666
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