This paper presents a fault-tolerant aircraft control (FTAC) scheme against actuator faults. Firstly, the upper bounds of the norms of the unknown functions are introduced, which contain actuator faults and model uncertainties. Subsequently, self-constructing fuzzy neural networks (SCFNNs) with adaptive laws are capable of obtaining the bounds. The bound estimation can reduce the computational burden with a lower amount of rules and weights, rather than the dynamic matrix approximation. Moreover, with the aid of SCFNNs, a multivariable sliding mode control (SMC) is developed to guarantee the finite-time stability of the handicapped aircraft. As compared to the existing intelligent FTAC techniques, the proposed method has twofold merits: fau...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
PublishedJournal Article© by Mirza Tariq Hamayun 2015. In this paper, integral sliding mode control ...
This dissertation aims to do a performance evaluation between two controllers viz. Neural network ai...
Operational failure of control surfaces is one of the main reasons leading to aircraft crash. Since ...
In this talk, we will cover some recent work carried out in our group for developing intelligent fli...
In this paper, the fault tolerant capabilities of the neural aided sliding mode controller for autol...
With the increasing demand for unmanned aerial vehicles (UAVs) in both military and civilian applica...
Current trends towards greater complexity and automation are leaving modern technological systems i...
We address a fault tolerant control (FTC) issue about an unmanned aerial vehicle (UAV) under possibl...
The endurance of an aircraft can be increased in the presence of failures by utilising flight contro...
This thesis focuses on the development of two efficient sequential fuzzy neural algorithms. The firs...
This work focuses on an improved reconfigurable Fault Tolerant Flight Control (FTFC) strategy based ...
Journal ArticleThis paper presents a sliding-mode approach for fault-tolerant control of a civil air...
A dissertation submitted to the Faculty of Engineering and the Built Environment, University of the...
Abstract This paper presents a novel form of control allocation, designed within a sliding mode fram...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
PublishedJournal Article© by Mirza Tariq Hamayun 2015. In this paper, integral sliding mode control ...
This dissertation aims to do a performance evaluation between two controllers viz. Neural network ai...
Operational failure of control surfaces is one of the main reasons leading to aircraft crash. Since ...
In this talk, we will cover some recent work carried out in our group for developing intelligent fli...
In this paper, the fault tolerant capabilities of the neural aided sliding mode controller for autol...
With the increasing demand for unmanned aerial vehicles (UAVs) in both military and civilian applica...
Current trends towards greater complexity and automation are leaving modern technological systems i...
We address a fault tolerant control (FTC) issue about an unmanned aerial vehicle (UAV) under possibl...
The endurance of an aircraft can be increased in the presence of failures by utilising flight contro...
This thesis focuses on the development of two efficient sequential fuzzy neural algorithms. The firs...
This work focuses on an improved reconfigurable Fault Tolerant Flight Control (FTFC) strategy based ...
Journal ArticleThis paper presents a sliding-mode approach for fault-tolerant control of a civil air...
A dissertation submitted to the Faculty of Engineering and the Built Environment, University of the...
Abstract This paper presents a novel form of control allocation, designed within a sliding mode fram...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
PublishedJournal Article© by Mirza Tariq Hamayun 2015. In this paper, integral sliding mode control ...
This dissertation aims to do a performance evaluation between two controllers viz. Neural network ai...