Title :
Movers and Shakers: Kinetic Energy Harvesting for the Internet of Things
Author :
Gorlatova, Maria ; Sarik, John ; Grebla, Guy ; Cong, Mina ; Kymissis, Ioannis ; Zussman, Gil
Author_Institution :
D. E. Shaw Res., New York, NY, USA
Abstract :
Numerous energy harvesting wireless devices that will serve as building blocks for the Internet of Things (IoT) are currently under development. However, there is still only limited understanding of the properties of various energy sources and their impact on energy harvesting adaptive algorithms. Hence, we focus on characterizing the kinetic (motion) energy that can be harvested by a wireless node with an IoT form factor and on developing energy allocation algorithms for such nodes. In this paper, we describe methods for estimating harvested energy from acceleration traces. To characterize the energy availability associated with specific human activities (e.g., relaxing, walking, cycling), we analyze a motion dataset with over 40 participants. Based on acceleration measurements that we collected for over 200 hours, we study energy generation processes associated with day-long human routines. We also briefly summarize our experiments with moving objects. We develop energy allocation algorithms that take into account practical IoT node design considerations, and evaluate the algorithms using the collected measurements. Our observations provide insights into the design of motion energy harvesters, IoT nodes, and energy harvesting adaptive algorithms.
Keywords :
Internet of Things; energy harvesting; motion measurement; Internet of things; IoT nodes; acceleration measurements; acceleration traces; energy allocation algorithms; energy generation process; energy harvesting wireless devices; energy sources; kinetic energy harvesting; kinetic motion energy; motion dataset; motion energy harvesters; wireless node; Acceleration; Algorithm design and analysis; Availability; Energy harvesting; Resonant frequency; Sensors; Wireless communication; Algorithms; Energy harvesting; Internet of Things; algorithms; low-power networking; measurements; motion energy;
Journal_Title :
Selected Areas in Communications, IEEE Journal on
DOI :
10.1109/JSAC.2015.2391690