Sustainable Infrastructure Research and Development Center, Department of Mechanical Engineering, Faculty of Engineering, Khon Kaen University, Khon Kaen, Thailand.
Department of Mechanical Engineering, Bursa Uludag University, Bursa, Turkey.
Comput Intell Neurosci. 2021 Dec 20;2021:4740995. doi: 10.1155/2021/4740995. eCollection 2021.
This work presents a metaheuristic (MH) termed, self-adaptive teaching-learning-based optimization, with an acceptance probability for aircraft parameter estimation. An inverse optimization problem is presented for aircraft longitudinal parameter estimation. The problem is posed to find longitudinal aerodynamic parameters by minimising errors between real flight data and those calculated from the dynamic equations. The HANSA-3 aircraft is used for numerical validation. Several established MHs along with the proposed algorithm are used to solve the proposed optimization problem, while their search performance is investigated compared to a conventional output error method (OEM). The results show that the proposed algorithm is the best performer in terms of search convergence and consistency. This work is said to be the baseline for purely applying MHs for aircraft parameter estimation.
本文提出了一种元启发式算法(MH),称为自适应教学优化算法,并具有飞机参数估计的接受概率。本文提出了一个用于飞机纵向参数估计的逆优化问题。该问题旨在通过最小化真实飞行数据和从动态方程计算得出的数据之间的误差来找到纵向空气动力学参数。使用 HANSA-3 飞机进行数值验证。使用了几种已建立的 MH 算法和所提出的算法来解决所提出的优化问题,同时比较了它们的搜索性能与传统的输出误差方法(OEM)。结果表明,在所提出的算法在搜索收敛性和一致性方面表现最佳。这项工作可以说是纯应用 MH 算法进行飞机参数估计的基准。