This paper addresses the influence reduction of quantization and observation noises in a disturbance observer (DOB) technique. DOB is a disturbance estimation method that makes control systems robust. However, in implementing low-resolution sensors, disturbance estimates from DOB are considerably influenced by observation and quantization noises. In this paper, a novel DOB design method for simultaneous estimation of state and unknown disturbances, including the reduction of noise influences, is proposed. The proposed method is divided into two components. The first component is a Kalman filter (KF)-based DOB for simultaneous estimation of state and unknown disturbances. To improve the estimation performance through the KF-based DOB, a forg...
We consider the problem of function of state plus unknown input estimation of a linear time-invarian...
In the conventional design of disturbance observer (DOB), a first order low pass filter (LPF) is use...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
An accurate and reliable positioning system (PS) is a significant topic of research due to its broad...
In general case, as an algorithm for estimating the parameters of a linear system, Kalman filter can...
In this work, we propose a Disturbance Observer (DOB) with a low pass filter with a single tuning pa...
Disturbance observer (DOB) estimates the system disturbances by using the inverse of the nominal pla...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
The Kalman filter (KF) is used extensively for state estimation. Among its requirements are the proc...
This paper describes the two stage control using a disturbance observer and a Kalman filter. The sys...
A novel adaptive Unscented Kalman Filter (UKF) based on dual estimation structure is proposed. The f...
In this paper a Robust Adaptive Kalman Filter (RAKF) is introduced. The RAKF incorporates measuremen...
Abstract. Working in a passive mode, the result of instability, slow convergence and low convergence...
In this paper, an optimization-based adaptive Kalman filtering method is proposed. The method produc...
We consider the problem of function of state plus unknown input estimation of a linear time-invarian...
In the conventional design of disturbance observer (DOB), a first order low pass filter (LPF) is use...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
An accurate and reliable positioning system (PS) is a significant topic of research due to its broad...
In general case, as an algorithm for estimating the parameters of a linear system, Kalman filter can...
In this work, we propose a Disturbance Observer (DOB) with a low pass filter with a single tuning pa...
Disturbance observer (DOB) estimates the system disturbances by using the inverse of the nominal pla...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
The Kalman filter (KF) is used extensively for state estimation. Among its requirements are the proc...
This paper describes the two stage control using a disturbance observer and a Kalman filter. The sys...
A novel adaptive Unscented Kalman Filter (UKF) based on dual estimation structure is proposed. The f...
In this paper a Robust Adaptive Kalman Filter (RAKF) is introduced. The RAKF incorporates measuremen...
Abstract. Working in a passive mode, the result of instability, slow convergence and low convergence...
In this paper, an optimization-based adaptive Kalman filtering method is proposed. The method produc...
We consider the problem of function of state plus unknown input estimation of a linear time-invarian...
In the conventional design of disturbance observer (DOB), a first order low pass filter (LPF) is use...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...