Treffer: Sensor dynamics in high dimensional phase spaces via nonlinear transformations: Application to helicopter loads monitoring

Title:
Sensor dynamics in high dimensional phase spaces via nonlinear transformations: Application to helicopter loads monitoring
Source:
2014 IEEE Symposium on Computational Intelligence and Data Mining (CIDM). :365-372
Publisher Information:
IEEE, 2014.
Publication Year:
2014
Document Type:
Fachzeitschrift Article<br />Conference object
DOI:
10.1109/cidm.2014.7008691
Accession Number:
edsair.doi.dedup.....5e54206b54f7b8e6932bcd3fbecb379e
Database:
OpenAIRE

Weitere Informationen

Accurately determining component loads on a helicopter is an important goal in the helicopter structural integrity field, with repercussions on safety, component damage, maintenance schedules and other operations. Measuring dynamic component loads directly is possible, but these measurement methods are costly and are difficult to maintain. While the ultimate goal is to estimate the loads from flight state and control system parameters available in most helicopters, a necessary step is understanding the behavior of the loads under different flight conditions. This paper explores the behavior of the main rotor normal bending loads in level flight, steady turn and rolling pullout flight conditions, as well as the potential of computational intelligence methods in understanding the dynamics. Time delay methods, residual variance analysis (gamma test) using genetic algorithms, unsupervised non-linear mapping and recurrence plot and quantification analysis were used. The results from this initial work demonstrate that there are important differences in the load behavior of the main rotor blade under the different flight conditions which must be taken into account when working with machine learning methods for developing prediction models.