Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization

The optimal control literature is dominated by standard problems in which the system cost functional is expressed in the well-known Bolza form. Such Bolza cost functionals consist of two terms: a Mayer term (which depends solely on the final state reached by the system) and a Lagrange integral term...

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Main Authors: Loxton, Ryan, Lin, Qun, Teo, Kok Lay
Format: Conference Paper
Published: IEEE 2014
Online Access:http://hdl.handle.net/20.500.11937/11580
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author Loxton, Ryan
Lin, Qun
Teo, Kok Lay
author_facet Loxton, Ryan
Lin, Qun
Teo, Kok Lay
author_sort Loxton, Ryan
building Curtin Institutional Repository
collection Online Access
description The optimal control literature is dominated by standard problems in which the system cost functional is expressed in the well-known Bolza form. Such Bolza cost functionals consist of two terms: a Mayer term (which depends solely on the final state reached by the system) and a Lagrange integral term (which depends on the state and control values over the entire time horizon). One limitation with the standard Bolza cost functional is that it does not consider the cost of control changes. Such costs should certainly be considered when designing practical control strategies, as changing the control signal will invariably cause wear and tear on the system's acutators. Accordingly, in this paper, we propose a new optimal control formulation that balances system performance with control variation. The problem is to minimize the total variation of the control signal subject to a guaranteed-cost constraint that ensures an acceptable level of system performance (as measured by a standard Bolza cost functional). We first apply the control parameterization method to approximate this problem by a non-smooth dynamic optimization problem involving a finite number of decision variables. We then devise a novel transformation procedure for converting this non-smooth dynamic optimization problem into a smooth problem that can be solved using gradient-based optimization techniques. The paper concludes with numerical examples in fisheries and container crane control.
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spelling curtin-20.500.11937-115802017-09-13T14:53:53Z Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization Loxton, Ryan Lin, Qun Teo, Kok Lay The optimal control literature is dominated by standard problems in which the system cost functional is expressed in the well-known Bolza form. Such Bolza cost functionals consist of two terms: a Mayer term (which depends solely on the final state reached by the system) and a Lagrange integral term (which depends on the state and control values over the entire time horizon). One limitation with the standard Bolza cost functional is that it does not consider the cost of control changes. Such costs should certainly be considered when designing practical control strategies, as changing the control signal will invariably cause wear and tear on the system's acutators. Accordingly, in this paper, we propose a new optimal control formulation that balances system performance with control variation. The problem is to minimize the total variation of the control signal subject to a guaranteed-cost constraint that ensures an acceptable level of system performance (as measured by a standard Bolza cost functional). We first apply the control parameterization method to approximate this problem by a non-smooth dynamic optimization problem involving a finite number of decision variables. We then devise a novel transformation procedure for converting this non-smooth dynamic optimization problem into a smooth problem that can be solved using gradient-based optimization techniques. The paper concludes with numerical examples in fisheries and container crane control. 2014 Conference Paper http://hdl.handle.net/20.500.11937/11580 10.1109/ChiCC.2014.6896500 IEEE fulltext
spellingShingle Loxton, Ryan
Lin, Qun
Teo, Kok Lay
Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title_full Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title_fullStr Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title_full_unstemmed Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title_short Guaranteed-Cost Controls of Minimal Variation: A Numerical Algorithm Based on Control Parameterization
title_sort guaranteed-cost controls of minimal variation: a numerical algorithm based on control parameterization
url http://hdl.handle.net/20.500.11937/11580