Title :
Energy-efficient pipelined DTW architecture on hybrid embedded platforms
Author :
Hanqing Zhou; Xiaowei Xu; Yu Hu; Guangyu Yu; Zeyu Yan; Feng Lin; Wenyao Xu
Author_Institution :
School of Optical and Electronic Information, HUST, Wuhan, China
Abstract :
It is predicted that fifty billion sensor-based devices are to be connected to the Internet by 2020 with the fast development of Internet of Things (IoT). Stream data mining on these tremendous sensor-based devices has become an urgent task. Dynamic time warping (DTW) is a popular similarity measure, which is the foundation of stream data mining. In the last decade, DTW has been well accelerated with software and reconfigurable hardware optimizations. However, energy-efficiency has not been considered, which is critical for data mining on these devices. In this paper, we propose an energy-efficient DTW acceleration architecture for stream data mining on sensor-based devices, which is based on a hybrid embedded platform of ARM and field programmable gate array (FPGA). Software optimizations for DTW are implemented on ARM, and pipelined DTW is implemented on FPGA for further accelerations. A pilot study is performed with three widely adopted stream data mining tasks: similarity search, classification, and anomaly detection. The results show that the performance improvements vary for different configurations, and the achieved average speedup and energy efficiency improvement are 7.52× and 4.23×, respectively.
Keywords :
"Acceleration","Software","Data mining","Computer architecture","Optimization","Time measurement","Hardware"
Conference_Titel :
Green Computing Conference and Sustainable Computing Conference (IGSC), 2015 Sixth International
DOI :
10.1109/IGCC.2015.7393707