Estimation of aerodynamic parameters using neural artificial bee colony fusion algorithm for moderate angle of attack using real flight data

Prashant Kumar, Sarvesh Kumar Sonkar, Riya Catherine George, Ajoy Kanti Ghosh, Deepu Philip
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Abstract

Aircraft system identification aims to estimate the aerodynamic force and moment coefficients utilizing intelligent modeling and parametric identification methodologies. Classical methods like output, filter, and equation error methods apply extensively as parametric approaches. In contrast, machine learning approaches like Artificial Neural Networks (ANN), Adaptive Neuro-Fuzzy Inference Systems (ANFIS), etc., are alternatives to model-based methods. This work presents a novel aerodynamic parameters estimation technique that fuses two biologically inspired optimization techniques, (i) the Artificial Bee Colony (ABC) optimization and (ii) ANN for an actual aircraft while incorporating system and measurement uncertainty. The fusion of ABC and ANN imparts the ability to address sensor noise challenges associated with system identification and parameter estimation. Comparison of the proposed method’s results with the benchmark techniques like Least Square, Filter Error, and Neural Gauss Methods using recorded flight data of the ATTAS (DLR German Aerospace Centre) and HANSA-3 (IIT Kanpur) aircrafts established its adequacy and efficacy. Furthermore, the capability of the proposed hybrid method to extract stability and control variables from the stable aircraft kinematics is shown even with insufficient information in its data history.
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基于真实飞行数据的中等迎角神经人工蜂群融合算法气动参数估计
飞机系统辨识的目的是利用智能建模和参数辨识方法估计气动力和力矩系数。经典方法如输出、滤波和方程误差方法作为参数方法广泛应用。相比之下,机器学习方法,如人工神经网络(ANN),自适应神经模糊推理系统(ANFIS)等,是基于模型的方法的替代方案。这项工作提出了一种新的空气动力学参数估计技术,融合了两种生物学启发的优化技术,(i)人工蜂群(ABC)优化和(ii)实际飞机的人工神经网络,同时结合了系统和测量的不确定性。ABC和ANN的融合赋予了解决与系统识别和参数估计相关的传感器噪声挑战的能力。将该方法的结果与最小二乘法、滤波误差和神经高斯方法等基准技术进行比较,并使用ATTAS (DLR德国航空航天中心)和HANSA-3 (IIT坎普尔)飞机的记录飞行数据,确定了该方法的充分性和有效性。此外,所提出的混合方法能够从稳定飞机的运动学中提取稳定性和控制变量,即使在其数据历史信息不足的情况下。
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来源期刊
CiteScore
2.40
自引率
18.20%
发文量
212
审稿时长
5.7 months
期刊介绍: The Journal of Aerospace Engineering is dedicated to the publication of high quality research in all branches of applied sciences and technology dealing with aircraft and spacecraft, and their support systems. "Our authorship is truly international and all efforts are made to ensure that each paper is presented in the best possible way and reaches a wide audience. "The Editorial Board is composed of recognized experts representing the technical communities of fifteen countries. The Board Members work in close cooperation with the editors, reviewers, and authors to achieve a consistent standard of well written and presented papers."Professor Rodrigo Martinez-Val, Universidad Politécnica de Madrid, Spain This journal is a member of the Committee on Publication Ethics (COPE).
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