Differential signals are key in control engineering as they anticipate future behavior of process variables and therefore are critical in formulating control laws such as proportional-integral-derivative (PID). The practical challenge, however, is to extract such signals from noisy measurements and this difficulty is addressed first by J. Han in the form of linear and nonlinear tracking differentiator (TD). While improvements were made, TD did not completely resolve the conflict between the noise sensitivity and the accuracy and timeliness of the differentiation. The two approaches proposed in this paper start with the basic linear TD, but apply iterative learning mechanism to the historical data in a moving window (MW), to form two new ite...
In this brief, a novel tracking differentiator (TD) based on discrete time optimal control (DTOC) is...
An enhanced discrete-time tracking differentiator (TD) with high precision based on discrete-time op...
Learning from past data enables substantial performance improvement for systems that perform repeati...
AbstractThis paper presents a comparison study of four advanced tracking differentiators, including ...
In this paper, we propose a modified version of the Proportional Integral Derivative (PID)-type iter...
A discrete-time tracking differentiator (TD) based on a time criterion is presented. Its control law...
Abstract: A survey of several kinds differentiators is given firstly. The comparison shows the track...
In the past Iterative Learning Control has been shown to be a method that can easily achieve extreme...
A general class of iterative learning control law is examined using the Discrete Fourier Transform a...
In industrial applications, many tasks are repetitive. Iterative learning controllers are effective ...
This paper presents a new approach towards the design of iterative learning control \cite{moore}. In...
International audienceThis paper proposes first partial results for a new class of differentiators. ...
The size of the tracking error is one of the important indicators to measure the control system of t...
In this work we explore the possibility of designing a new iterative learning control scheme for sys...
Learning from past data enables substantial performance improvement for systems that perform repeati...
In this brief, a novel tracking differentiator (TD) based on discrete time optimal control (DTOC) is...
An enhanced discrete-time tracking differentiator (TD) with high precision based on discrete-time op...
Learning from past data enables substantial performance improvement for systems that perform repeati...
AbstractThis paper presents a comparison study of four advanced tracking differentiators, including ...
In this paper, we propose a modified version of the Proportional Integral Derivative (PID)-type iter...
A discrete-time tracking differentiator (TD) based on a time criterion is presented. Its control law...
Abstract: A survey of several kinds differentiators is given firstly. The comparison shows the track...
In the past Iterative Learning Control has been shown to be a method that can easily achieve extreme...
A general class of iterative learning control law is examined using the Discrete Fourier Transform a...
In industrial applications, many tasks are repetitive. Iterative learning controllers are effective ...
This paper presents a new approach towards the design of iterative learning control \cite{moore}. In...
International audienceThis paper proposes first partial results for a new class of differentiators. ...
The size of the tracking error is one of the important indicators to measure the control system of t...
In this work we explore the possibility of designing a new iterative learning control scheme for sys...
Learning from past data enables substantial performance improvement for systems that perform repeati...
In this brief, a novel tracking differentiator (TD) based on discrete time optimal control (DTOC) is...
An enhanced discrete-time tracking differentiator (TD) with high precision based on discrete-time op...
Learning from past data enables substantial performance improvement for systems that perform repeati...