741 research outputs found
Ethnic minority students' access, participation and outcomes in preparatory classes in China : a case study of a School of Minzu Education
This study investigates how educational equity is applied in university preparatory classes from the perspective of minority students. It explores minority students' access to, participation and outcomes in preparatory classes, as well as the factors that influence their experience and attitude. Using a mixed research method, 320 students from a School of Minzu Education were surveyed and further in-depth interviews were conducted with seven respondents. This study finds that minority students from cities and towns are more likely to get into preparatory classes. Moreover, the fairness of the access to preparatory classes is questioned between various ethnic minority groups and even within the same ethnic group. In terms of participation in preparatory classes, preparatory classes play a positive role in promoting integration between Han and ethnic minorities and educational equality. However, minority students in preparatory class lack a sense of belonging to the affiliated university due to insufficient recognition of their cultural and linguistic background in class and community activities. The findings indicate that the outcomes of preparatory classes were mainly reflected in minority students' academic performance and perception towards preparatory classes. The outcomes differed depending mainly on the family income, ethnic origins and the high schools they attended.Peer reviewe
Comparing multicultural education in China and Finland : From policy to practice
Over the last several decades multicultural education has played a key role in many educational policies and practices internationally. In this article, the author examines multicultural education in the Chinese and Finnish contexts through a comparative study. The comparison includes the scope of diversity, the policy and practice of multicultural education, and what two distinct educational systems can learn from each other. A critical multicultural education framework and pluralistic unity nationality theory have been employed to discuss the policy and practice of multicultural education in both countries. The analysis clarifies commonalities and context-bound differences. Implications and suggestions for further development of multicultural education in both countries are also explored.Peer reviewe
Robust finite-time fault estimation for stochastic nonlinear systems with Brownian motions
Motivated by real-time monitoring and fault diagnosis for complex systems, the presented paper aims to develop effective fault estimation techniques for stochastic nonlinear systems subject to partially decoupled unknown input disturbances and Brownian motions. The challenge of the research is how to ensure the robustness of the proposed fault estimation techniques against stochastic Brownian perturbations and additive process disturbances, and provide a rigorous mathematical proof of the finite-time input-to-stabilization of the estimation error dynamics. In this paper, stochastic input-to-state stability and finite-time stochastic input-to-state stability of stochastic nonlinear systems are firstly investigated based on Lyapunov theory, leading to simple and straightforward criteria. By integrating augmented system approach, unknown input observer technique, and finite-time stochastic input-to-state stability theory, a highly-novel fault estimation technique is proposed. The convergence of the estimation error with respect to un-decoupled unknown inputs and Brownian perturbations is proven by using the derived stochastic input-to-state stability and finite-time stochastic input-to-state stability theorems. Based on linear matrix inequality technique, the robust observer gains can be obtained in order to achieve both stability and robustness of the error dynamic. Finally, the effectiveness of the proposed fault estimation techniques is demonstrated by the detailed simulation studies using a robotic system and a numerical example
Robust Fault Tolerant Control for Discrete-Time Dynamic Systems With Applications to Aero Engineering Systems
Unexpected faults in actuators and sensors may degrade the reliability and safety of aero engineering systems. Therefore, there is motivation to develop integrated fault tolerant control techniques with applications to aero engineering systems. In this paper, discrete-time dynamic systems, in the presence of simultaneous actuator/sensor faults, partially decoupled unknown input disturbances, and sensor noises, are investigated. A jointly state/fault estimator is formulated by integrating an unknown input observer, augmented system approach, and optimization algorithm. Unknown input disturbances can be either decoupled by an unknown input observer, or attenuated by a linear matrix inequality optimization, enabling the estimation error to be input-to-state stable. Estimator-based signal compensation is then implemented to mitigate adverse effects from the unanticipated actuator and sensor faults. A pre-designed controller, which maintains normal system behaviors under a fault-free scenario, is allowed to work along with the presented fault tolerant mechanism of the signal compensations. The fault-tolerant closed-loop system can be ensured to mitigate the effects from the faults, guarantee the input-to-state stability, and satisfy the required robustness performance. The proposed fault estimation and fault tolerant control methods are developed for both discrete-time linear and discrete-time Lipschitz nonlinear systems. Finally, the proposed techniques are applied to a jet engine system and a flight control system for simulation validation
Determining anomalies in a semilinear elliptic equation by a minimal number of measurements
We are concerned with the inverse boundary problem of determining anomalies
associated with a semilinear elliptic equation of the form , where is a general nonlinear term that belongs to a
H\"older class. It is assumed that the inhomogeneity of is
contained in a bounded domain in the sense that outside , with . We establish novel unique
identifiability results in several general scenarios of practical interest.
These include determining the support of the inclusion (i.e. ) independent
of its content (i.e. in ) by a single boundary
measurement; and determining both and by boundary
measurements, where signifies the number of unknown
coefficients in . The mathematical argument is based on
microlocally characterising the singularities in the solution induced by
the geometric singularities of , and does not rely on any linearisation
technique
Robust fault estimation for stochastic Takagi-Sugeno fuzzy systems
Nowadays, industrial plants are calling for high-performance fault diagnosis techniques to meet stringent requirements on system availability and safety in the event of component failures. This paper deals with robust fault estimation problems for stochastic nonlinear systems subject to faults and unknown inputs relying on Takagi-Sugeno fuzzy models. Augmented approach jointly with unknown input observers for stochastic Takagi-Sugeno models is exploited here, which allows one to estimate both considered faults and full system states robustly. The considered unknown inputs can be either completely decoupled or partially decoupled by observers. For the un-decoupled part of unknown inputs, which still influence error dynamics, stochastic input-to-state stability properties are applied to take nonzero inputs into account and sufficient conditions are achieved to guarantee bounded estimation errors under bounded unknown inputs. Linear matrix inequalities are employed to compute gain matrices of the observer, leading to stochastic input-to-state-stable error dynamics and optimization of the estimation performances against un-decoupled unknown inputs. Finally, simulation on wind turbine benchmark model is applied to validate the performances of the suggested fault reconstruction methodologies
Multi-sensor Suboptimal Fusion Student's Filter
A multi-sensor fusion Student's filter is proposed for time-series
recursive estimation in the presence of heavy-tailed process and measurement
noises. Driven from an information-theoretic optimization, the approach extends
the single sensor Student's Kalman filter based on the suboptimal
arithmetic average (AA) fusion approach. To ensure computationally efficient,
closed-form density recursion, reasonable approximation has been used in
both local-sensor filtering and inter-sensor fusion calculation. The overall
framework accommodates any Gaussian-oriented fusion approach such as the
covariance intersection (CI). Simulation demonstrates the effectiveness of the
proposed multi-sensor AA fusion-based filter in dealing with outliers as
compared with the classic Gaussian estimator, and the advantage of the AA
fusion in comparison with the CI approach and the augmented measurement fusion.Comment: 8 pages, 8 figure
Facile Synthesis of Carbon-Coated Zn 2
Carbon-coated Zn2SnO4 nanomaterials have been synthesized by a facile hydrothermal method in which as-prepared Zn2SnO4 was used as the precursor and glucose as the carbon source. The structural, morphological, and electrochemical properties were investigated by means of X-ray (XRD), scanning electron microscopy (SEM), transmission electron microscopy (TEM), and electrochemical measurement. The first discharge/charge capacity of carbon-coated Zn2SnO4 was about 1248.8 mAh/g and 873.2 mAh/g at a current density of 200 mA/g in the voltage range of 0.05 V–3.0 V, respectively, corresponding to Coulombic efficiency of 69.92%. After 40 cycles, the capacity retained 400 mAh/g, which is much better than bare Zn2SnO4
An Overview on Fault Diagnosis, Prognosis and Resilient Control for Wind Turbine Systems
Wind energy is contributing to more and more portions in the world energy market. However, one deterrent to even greater investment in wind energy is the considerable failure rate of turbines. In particular, large wind turbines are expensive, with less tolerance for system performance degradations, unscheduled system shut downs, and even system damages caused by various malfunctions or faults occurring in system components such as rotor blades, hydraulic systems, generator, electronic control units, electric systems, sensors, and so forth. As a result, there is a high demand to improve the operation reliability, availability, and productivity of wind turbine systems. It is thus paramount to detect and identify any kinds of abnormalities as early as possible, predict potential faults and the remaining useful life of the components, and implement resilient control and management for minimizing performance degradation and economic cost, and avoiding dangerous situations. During the last 20 years, interesting and intensive research results were reported on fault diagnosis, prognosis, and resilient control techniques for wind turbine systems. This paper aims to provide a state-of-the-art overview on the existing fault diagnosis, prognosis, and resilient control methods and techniques for wind turbine systems, with particular attention on the results reported during the last decade. Finally, an overlook on the future development of the fault diagnosis, prognosis, and resilient control techniques for wind turbine systems is presented
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