2020
DOI: 10.3390/electronics9111909
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Compressed-Sensing-Based Time–Frequency Representation for Disturbance Characterization of Maglev On-Board Distribution Systems

Abstract: The frequency variating source, linear generator, and switching devices lead to dynamic characteristics of the low-frequency conducted emissions within maglev on-board distribution systems. To track the time-varying feature of these disturbances, a joint time–frequency representation combined adaptive optimal kernel with compressed sensing technique is proposed in this paper. The joint representation is based on Wigner–Ville distribution, and employs adaptive optimal kernel to remove undesirable cross terms. T… Show more

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Cited by 3 publications
(2 citation statements)
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“…According to U S and V S , the next operation about whether to add one unselected element or removing an existing element would be determined, upgrading S to S new . After estimating S new , we can update x S new and r S new in ( 17) and (18), respectively.…”
Section: Accelerated Calculationmentioning
confidence: 99%
See 1 more Smart Citation
“…According to U S and V S , the next operation about whether to add one unselected element or removing an existing element would be determined, upgrading S to S new . After estimating S new , we can update x S new and r S new in ( 17) and (18), respectively.…”
Section: Accelerated Calculationmentioning
confidence: 99%
“…As an attractive method for monitoring many critical structural components in SHM, CS-based methods have been widely used in many fields. Numerous researchers have used CS as a powerful mean for SHM to realize data compression and reduction [12][13][14][15], reduced power consumption [16,17], signal recovery [18,19], and damage detection and location [20][21][22]. As a new signal processing framework, the CS theorem significantly reduces the acquisition, storage, and transmission of signals, making it a crucial alternative to solve these issues.…”
Section: Introductionmentioning
confidence: 99%