Identification of Helicopter Dynamics based on Flight Data using Nature Inspired Techniques
S.N. Omkar, Dheevatsa Mudigere, J Senthilnath, M. Vijaya Kumar

TL;DR
This paper explores a novel, nature-inspired neural network architecture for helicopter system identification, demonstrating its effectiveness through simulations and comparing various optimization techniques.
Contribution
It introduces a modified NARX model with a two-tiered recurrent neural network optimized by nature-inspired algorithms for helicopter dynamics identification.
Findings
High correlation between actual and predicted helicopter responses
Effectiveness of nature-inspired algorithms in optimizing neural network models
Versatility of the proposed architecture for complex system identification
Abstract
The complexity of helicopter flight dynamics makes modeling and helicopter system identification a very difficult task. Most of the traditional techniques require a model structure to be defined apriori and in case of helicopter dynamics, this is difficult due to its complexity and the interplay between various subsystems.To overcome this difficulty, non-parametric approaches are commonly adopted for helicopter system identification. Artificial Neural Network are a widely used class of algorithms for non-parametric system identification, among them, the Nonlinear Auto Regressive eXogeneous input network (NARX) model is very popular, but it also necessitates some in depth knowledge regarding the system being modeled. There have been many approaches proposed to circumvent this and yet still retain the advantageous characteristics. In this paper we carry out an extensive study of one such…
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Taxonomy
TopicsMetaheuristic Optimization Algorithms Research · Artificial Immune Systems Applications · Advanced Vision and Imaging
