Ning et al., 2019 - Google Patents
Feature recognition of small amplitude hunting signals based on the MPE-LTSA in high-speed trainsNing et al., 2019
View PDF- Document ID
- 10676324407603677204
- Author
- Ning J
- Cui W
- Chong C
- Ouyang H
- Chen C
- Zhang B
- Publication year
- Publication venue
- Measurement
External Links
Snippet
Hunting stability is an important factor for high-speed trains to achieve safe operation, which can be monitored by on-board instruments. When analysing measured online tracking data of high-speed trains, the authors have observed that small amplitude hunting tend to appear …
- 230000001133 acceleration 0 abstract description 24
Classifications
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B61—RAILWAYS
- B61K—OTHER AUXILIARY EQUIPMENT FOR RAILWAYS
- B61K9/00—Railway vehicle profile gauges; Detecting or indicating overheating of components; Apparatus on locomotives or cars to indicate bad track sections; General design of track recording vehicles
- B61K9/08—Measuring installations for surveying permanent way
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