Srairi F, Saidi L, Djeffal F, Meguellati M.
Control of a New Swimming Microrobot Design Using Flatness-ANFIS-Based Approach. Engineering Letters (IAENG)Engineering Letters (IAENG). 2016;24 :106-112.
AbstractThis article deals with the study of a new swimming microrobot behavior using an analytical investigation. The analyzed microrobot is associated by a spherical head and hybrid tail. The principle of modeling is based on solving of the coupled elastic/fluidic problems between the hybrid tail’s deflections and the running environment. In spite of the resulting nonlinear model can be exploited to enhance both the sailing ability and also can be controlled in viscous environment using nonlinear control investigations. The applications of the micro-robot have required the precision of control for targeting the running area in terms of response time and tracking error. Due to these limitations, the Flatness-ANFIS based control is used to ensure a good control behavior in hazardous environment. Our control investigation is coupled the differential flatness and adaptive neuro-fuzzy inference techniques, in which the flatness is used to planning the optimal trajectory and eliminate the nonlinearity effects of the resulting model. In other hand, the neuro-fuzzy inference technique is used to build the law of control technique and minimize the dynamic error of tracking trajectory. In particular, we deduct from a non linear model to an optimal model of the design parameter’s using Multi-Objective genetic algorithms (MOGAs). In addition, Computational fluid dynamics modeling of the microrobot is also carried out to study the produced thrust and velocity of the microrobot displacement taking into account the fluid parameters. Our analytical results have been validated by the recorded good agreement between the numerical and analytical results.
Boukhenoufa N, Ferhati H, Djeffal F, Mahamdi R.
Enhancement of the optical performance of ZnO thin-film using metallic nano-particles for optoelectronic applications. 17th International Conference on Sciences and Techniques of Automatic Control and Computer Engineering (STA) [Internet]. 2016.
Publisher's VersionAbstract
In this paper, versatile structures based on dissimilar metallic nano-particles (Ag, Au, Ti, Al) are proposed to enhance the ZnO thin film optical performance for both optoelectronic and environment monitoring applications. An Exhaustive study of the proposed structure including metallic nano-particles has been performed numerically, in order to evaluate the optical behavior of the proposed ZnO thin films against the conventional design for optoelectronic applications. The numerical computations reveal that the proposed design exhibits an outstanding capability in improving the overall device optical parameters. In addition, the proposed device with Al metallic nano-particles offers superior absorbance as well as lower reflectance as compared to the conventional design. These achievements can be attributed essentially to the localized surface plasma resonance phenomenon and the improved light trapping capability resulted from the optical confinement effect. The recorded results signify the crucial role of the proposed feature in improving the ZnO thin films optical performance, which makes it very promising to be used in the future high performance optoelectronic devices.
Boukhenoufa N, Ferhati H, Djeffal F, Ramdane M.
Enhancement of the optical performance of ZnO thin-film using metallic nano-particles for optoelectronic applications. 17th International Conference on Sciences and Techniques of Automatic Control and Computer Engineering (STA) [Internet]. 2016.
Publisher's VersionAbstract
In this paper, versatile structures based on dissimilar metallic nano-particles (Ag, Au, Ti, Al) are proposed to enhance the ZnO thin film optical performance for both optoelectronic and environment monitoring applications. An Exhaustive study of the proposed structure including metallic nano-particles has been performed numerically, in order to evaluate the optical behavior of the proposed ZnO thin films against the conventional design for optoelectronic applications. The numerical computations reveal that the proposed design exhibits an outstanding capability in improving the overall device optical parameters. In addition, the proposed device with Al metallic nano-particles offers superior absorbance as well as lower reflectance as compared to the conventional design. These achievements can be attributed essentially to the localized surface plasma resonance phenomenon and the improved light trapping capability resulted from the optical confinement effect. The recorded results signify the crucial role of the proposed feature in improving the ZnO thin films optical performance, which makes it very promising to be used in the future high performance optoelectronic devices.
Djeffal F, Menacer F, Kadri A, Dibi Z, Ferhati H.
Modeling of boron nitride-based nanotube biological sensor using neural networks. 17th International Conference on Sciences and Techniques of Automatic Control and Computer Engineering (STA) [Internet]. 2016.
Publisher's VersionAbstract
In this study, an ultrasensitive biological boron nitride-based nanotube (Bio-BNNT) sensor is modeled and investigated by means of neural approach. The type of configuration studied is a cantilevered BNNT resonator sensor with an attached mass at the tip. The idea behind our resonator sensor is based on the determination of the natural BNNT frequency shift induced by added biological mass. A multilayer perceptron neural network is used to predict the attached mass, which causes a variation of the BNNTs frequency shift with different diameters and lengths. This model is implemented in the form of a component in the ORCAD-PSPICE electric simulator library. The component should reproduce faithfully the biological sensor behavior. Moreover, we have developed an inverse model called intelligent sensor in order to remove the nonlinearity response provided by the sensor. The association of this ANN-based corrector has brought significant improvement for high sensing performance.