(Preprint) AAS 12-637 HIGH-ORDER STATE FEEDBACK GAIN SENSITIVITY CALCULATIONS USING COMPUTATIONAL DIFFERENTIATION
نویسندگان
چکیده
A nonlinear feedback control strategy is presented where the feedback control is augmented with feedback gain sensitivity partial derivatives for handling model uncertainties. Derivative enhanced optimal feedback control is shown to be robust to large changes in the model parameters. The OCEA (Object Oriented Coordinate Embedding) computational differentiation toolbox is used for automatically generating firstthrough fourth-order partial derivatives for the feedback gain differential equation. Both linear and nonlinear scalar applications are presented. The model sensitivities are obtained about a nominal reference state by defining the Riccati differential equation as being derivative enhanced: OCEA then automatically generates the firstthrough fourth-order Riccati gain gradients. An estimator is assumed to be available for predicting the model parameter changes. The optimal gain is then computed as a Taylor series expansion in the Riccati gain as a function of the system model parameters. The pre-calculation of the sensitivity gains eliminates the need for gain scheduling for handling model parameter changes. Examples are presented that demonstrate the impact of nonlinear response behaviors, as well as the effectiveness of the generalized sensitivity enhanced feedback control strategy.
منابع مشابه
A High Order Method for Estimation of Dynamic Systems
An analytical approach is presented for developing an estimation framework (called the Jth Moment Extended Kalman Filter (JMEKF)). This forms an important component of a class of architectures under investigation to study the interplay of major issues in nonlinear estimation such as model nonlinearity, measurement sparsity and initial condition uncertainty in the presence of low process noise. ...
متن کاملMarkovian Delay Prediction-Based Control of Networked Systems
A new Markov-based method for real time prediction of network transmission time delays is introduced. The method considers a Multi-Layer Perceptron (MLP) neural model for the transmission network, where the number of neurons in the input layer is minimized so that the required calculations are reduced and the method can be implemented in the real-time. For this purpose, the Markov process order...
متن کاملA NEW APPROACH TO THE SOLUTION OF SENSITIVITY MINIMIZATION IN LINEAR STATE FEEDBACK CONTROL
In this paper, it is shown that by exploiting the explicit parametric state feedback solution, it is feasible to obtain the ultimate solution to minimum sensitivity problem. A numerical algorithm for construction of a robust state feedback in eigenvalue assignment problem for a controllable linear system is presented. By using a generalized parametric vector companion form, the problem of eigen...
متن کامل(Preprint) AAS XX-XXX STATE-SPACE MODELING OF LARGE DOMAIN WAVE PROPAGATION SYSTEMS BY CY-PARTITIONED MATRICES
The Cy-partitioned method to produce a reduced-order, discrete-time, state-space model for large domain wave propagation is described. The method is suitable when the output dimension is orders of magnitude higher than the number of discrete-time samples specifying the time duration of interest. The model is characterized by a relatively small dynamic component relating the inputs to a relative...
متن کاملHigher Order Sensitivities for Solving Nonlinear Two-Point Boundary-Value Problems
In this paper, we consider new computational approaches for solving nonlinear TwoPoint Boundary-Value Problems. The sensitivity calculations required in the solution utilize the automatic differentiation tool OCEA (Object Oriented Coordinate Embedding Method). OCEA has broad potential in this area and many other areas since the partial derivative calculations required for solving these problems...
متن کامل