56 research outputs found
Hierarchical Model Predictive/Sliding Mode control of nonlinear constrained uncertain systems
This paper presents an overview of some hierarchical control schemes composed by a high level Model Predictive Control (MPC) and a low level Sliding Mode Control (SMC). The latter is realized by using the so-called Integral Sliding Mode (ISM) control approach and is meant to reject the matched disturbances affecting the plant, thus providing a system with reduced uncertainty for the MPC design. Both continuous and discrete-time solutions are discussed in the paper. Moreover, assuming the presence of a network in the control loop, a networked version of the control scheme is presented. It is a model-based event-triggered MPC/ISM control scheme aimed at minimizing the packets transmission. The input-to-state (practical) stability properties of the proposed approaches are also addressed in the paper
Robustness of Prediction Based Delay Compensation for Nonlinear Systems
Control of systems where the information between the controller, actuator,
and sensor can be lost or delayed can be challenging with respect to stability
and performance. One way to overcome the resulting problems is the use of
prediction based compensation schemes. Instead of a single input, a sequence of
(predicted) future controls is submitted and implemented at the actuator. If
suitable, so-called prediction consistent compensation and control schemes,
such as certain predictive control approaches, are used, stability of the
closed loop in the presence of delays and packet losses can be guaranteed. In
this paper, we show that control schemes employing prediction based delay
compensation approaches do posses inherent robustness properties. Specifically,
if the nominal closed loop system without delay compensation is ISS with
respect to perturbation and measurement errors, then the closed loop system
employing prediction based delay compensation techniques is robustly stable. We
analyze the influence of the prediction horizon on the robustness gains and
illustrate the results in simulation.Comment: 6 pages, 3 figure
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Variance-constrained state estimation for networked multi-rate systems with measurement quantization and probabilistic sensor failures
This paper is concerned with the variance-constrained state estimation problem for a class of networked multi-rate systems (NMSs) with network-induced probabilistic sensor failures and measurement quantization. The stochastic characteristics of the sensor failures are governed by mutually independent random variables over the interval [0,1]. By applying the lifting technique, an augmented system model is established to facilitate the state estimation of the underlying NMSs. With the aid of the stochastic analysis approach, sufficient conditions are derived under which the exponential mean-square stability of the augmented system is guaranteed, the prescribed H∞ performance constraint is achieved, and the individual variance constraint on the steady-state estimation error is satisfied. Based on the derived conditions, the addressed variance-constrained state estimation problem of NMSs is recast as a convex optimization one that can be solved via the semi-definite program method. Furthermore, the explicit expression of the desired estimator gains is obtained by means of the feasibility of certain matrix inequalities. Two additional optimization problems are considered with respect to the H∞ performance index and the weighted error variances. Finally, a simulation example is utilized to illustrate the effectiveness of the proposed state estimation method
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Centralized moving-horizon estimation for a class of nonlinear dynamical complex networks under event-triggered transmission scheme
Data availability statement: The data that support the findings of this study are available from the corresponding author upon reasonable request.This article is concerned with the problem of event-triggered centralized moving-horizon state estimation for a class of nonlinear dynamical complex networks. An event-triggered scheme is employed to reduce unnecessary data transmissions between sensors and estimators, where the signal is transmitted only when certain condition is violated. By treating sector-bounded nonlinearities as certain sector-bounded uncertainties, the addressed centralized moving-horizon estimation problem is transformed into a regularized robust least-squares problem that can be effectively solved via existing convex optimization algorithms. Moreover, a sufficient condition is derived to guarantee the exponentially ultimate boundedness of the estimation error, and an upper bound of the estimation error is also presented. Finally, a numerical example is provided to demonstrate the feasibility and efficiency of the proposed estimator design method.National Natural Science Foundation of China. Grant Numbers: 61873148, 61933007, 62033008, 62073339, 62173343;
Natural Science Foundation of Shandong Province of China. Grant Number: ZR2020YQ49;
AHPU Youth Top-notch Talent Support Program of China. Grant Number: 2018BJRC009;
Natural Science Foundation of Anhui Province of China. Grant Number: 2108085MA07;
China Postdoctoral Science Foundation. Grant Number: 2018T110702;
Postdoctoral Special Innovation Foundation of Shandong Province of China. Grant Number: 201701015;
Royal Society of the UK;
Alexander von Humboldt Foundation of Germany
Asynchronous networked MPC with ISM for uncertain nonlinear systems
A model-based event-triggered control scheme for nonlinear constrained continuous-time uncertain systems in networked configuration is presented in this paper. It is based on the combined use of Model Predictive Control (MPC) and Integral Sliding Mode (ISM) control, and it is oriented to reduce the packets transmission over the network both in the direct path and in the feedback path, in order to avoid network congestion. The key elements of the proposed control scheme are the ISM local control law, the MPC remote controller, a smart sensor and a smart actuator, both containing a copy of the nominal model of the plant. The role of the ISM control law is to compensate matched uncertainties, without amplifying the unmatched ones. The MPC controller with tightened constraints generates the control component oriented to comply with state and control requirements, and is asynchronous since the underlying constrained optimization problem is solved only when a triggering event occurs. In the paper, the robustness properties of the controlled system are theoretically analyzed, proving the regional input-tostate practical stability of the overall control scheme
Optimized state feedback regulation of 3DOF helicopter system via extremum seeking
In this paper, an optimized state feedback regulation of a 3 degree of freedom (DOF) helicopter is designed via extremum seeking (ES) technique. Multi-parameter ES is applied to optimize the tracking performance via tuning State Vector Feedback with Integration of the Control Error (SVFBICE).
Discrete multivariable version of ES is developed to minimize a cost function that measures the performance of the controller. The cost function is a function of the error between the actual and desired axis positions. The controller parameters are updated online as the optimization takes place. This method significantly decreases the time in obtaining optimal controller parameters. Simulations were conducted for the online optimization under both fixed and varying operating conditions. The results demonstrate the usefulness of using ES for preserving the maximum attainable performance
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