| Literature DB >> 26725842 |
Marco P Soares Dos Santos1,2, Jorge A F Ferreira1,2, José A O Simões2, Ricardo Pascoal3, João Torrão2, Xiaozheng Xue4, Edward P Furlani4,5.
Abstract
Magnetic levitation has been used to implement low-cost and maintenance-free electromagnetic energy harvesting. The ability of levitation-based harvesting systems to operate autonomously for long periods of time makes them well-suited for self-powering a broad range of technologies. In this paper, a combined theoretical and experimental study is presented of a harvester configuration that utilizes the motion of a levitated hard-magnetic element to generate electrical power. A semi-analytical, non-linear model is introduced that enables accurate and efficient analysis of energy transduction. The model predicts the transient and steady-state response of the harvester a function of its motion (amplitude and frequency) and load impedance. Very good agreement is obtained between simulation and experiment with energy errors lower than 14.15% (mean absolute percentage error of 6.02%) and cross-correlations higher than 86%. The model provides unique insight into fundamental mechanisms of energy transduction and enables the geometric optimization of harvesters prior to fabrication and the rational design of intelligent energy harvesters.Entities:
Year: 2016 PMID: 26725842 PMCID: PMC4698582 DOI: 10.1038/srep18579
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Section-views of the levitation-based harvester.
Harvester’s characteristics.
| Characteristics | Value | Units |
|---|---|---|
| 58 × 10−3 | m | |
| 20 × 10−3 | m | |
| 23.5 × 10−3 | m | |
| 16 × 10−3 | m | |
| 8.2 × 10−3 | m | |
| 6.2 × 10−3 | m | |
| 3 × 10−3 | m | |
| 3 × 10−3 | m | |
| 3 × 10−3 | m | |
| 6 × 10−3 | m | |
| 1 × 10−3 | m | |
| 1 × 10−3 | m | |
| 8 × 105 | A/m | |
| 7.61 × 105 | A/m | |
| 7.61 × 105 | A/m | |
| 1.24 × 10−3 | kg | |
| 15000 | — | |
| Coil wire diameter | 6.8 × 10−5 | m |
| 3.63 | kΩ | |
| 1.009 | H | |
| 89.3|3.5 | kΩ |
Figure 2Steady-state analysis (experimental (red dots) and simulation (solid black lines)) for experiments: (a) T2; (b) T4; (c) T6; (d) T8; (e) T1; (f) T3; (g) T5; (h) T7.
Validation resultsa,b.
| Exp. | CC (%) | EE (%) | ST (sec) | ||
|---|---|---|---|---|---|
| T1 | 17 | 3.5 | 86.20 | 9.31 | ≈12.5 |
| T2 | 17 | 89.3 | 88.30 | 4.26 | ≈12.4 |
| T3 | 12.25 | 3.5 | 98.24 | 6.38 | ≈9.3 |
| T4 | 12.25 | 89.3 | 88.03 | 2.46 | ≈9.1 |
| T5 | 7.75 | 3.5 | 92.78 | 0.59 | ≈5.8 |
| T6 | 7.75 | 89.3 | 90.63 | 14.15 | ≈5.9 |
| T7 | 6 | 3.5 | 88.53 | 4.72 | ≈5.1 |
| T8 | 7 | 89.3 | 94.79 | 6.27 | ≈5.9 |
aAbbreviations: CC - Cross-correlation; EE - Energy error; ST - Simulation time.
bResults are referred to a cycle in steady state responses.
cP = 0 m, P = 0 m, θ = 0 rad, θ = π/9 rad.
d2.5 GHz CPU, 8 GB RAM, Windows 7 operating system.
Figure 3Transient analysis (experimental (red dots) and simulation (solid black lines)) for experiments: (a) T4, CC = 93.85%, EE = 7.51%; (b) T7, CC = 88.62%, EE = 6.23%.
Figure 4Steady-state analysis (experimental (red dots) and simulation (solid black lines)) for experiment T6 considering M = 8.1 × 105 A/m and δ = 38.5 × 10−3 m: CC = 99.24%, EE = 4.55%.