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Author

Georg Schildbach

Other affiliations: University of Lübeck, ETH Zurich
Bio: Georg Schildbach is an academic researcher from University of California, Berkeley. The author has contributed to research in topics: Model predictive control & Computer science. The author has an hindex of 16, co-authored 28 publications receiving 1786 citations. Previous affiliations of Georg Schildbach include University of Lübeck & ETH Zurich.

Papers
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Proceedings ArticleDOI
27 Aug 2015
TL;DR: Experimental results show the effectiveness of the proposed approach at various speeds on windy roads, and it is shown that it is less computationally expensive than existing methods which use vehicle tire models.
Abstract: We study the use of kinematic and dynamic vehicle models for model-based control design used in autonomous driving In particular, we analyze the statistics of the forecast error of these two models by using experimental data In addition, we study the effect of discretization on forecast error We use the results of the first part to motivate the design of a controller for an autonomous vehicle using model predictive control (MPC) and a simple kinematic bicycle model The proposed approach is less computationally expensive than existing methods which use vehicle tire models Moreover it can be implemented at low vehicle speeds where tire models become singular Experimental results show the effectiveness of the proposed approach at various speeds on windy roads

621 citations

Journal ArticleDOI
TL;DR: It is shown that it is possible to trade off reward payouts to customers against the cost of hiring staff to redistribute bicycles, in order to minimize operating costs for a given desired service level.
Abstract: This paper considers the efficient operation of shared mobility systems via the combination of intelligent routing decisions for staff-based vehicle redistribution and real-time price incentives for customers. The approach is applied to London's Barclays Cycle Hire scheme, which the authors have simulated based on historical data. Using model-based predictive control principles, dynamically varying rewards are computed and offered to customers carrying out journeys, based on the current and predicted state of the system. The aim is to encourage them to park bicycles at nearby underused stations, thereby reducing the expected cost of redistributing them using dedicated staff. In parallel, routing directions for redistribution staff are periodically recomputed using a model-based heuristic. It is shown that it is possible to trade off reward payouts to customers against the cost of hiring staff to redistribute bicycles, in order to minimize operating costs for a given desired service level.

302 citations

Journal ArticleDOI
TL;DR: A novel SCMPC method can be devised for general linear systems with additive and multiplicative disturbances, for which the number of scenarios is significantly reduced.

249 citations

Journal ArticleDOI
TL;DR: An overview of the research on control design methods which systematically handle uncertain forecasts for autonomous and semi-autonomous vehicles and relevant aspects of the recent results are presented.

166 citations

Journal ArticleDOI
TL;DR: The scenario-based optimization approach provides an intuitive way of approximating the solution to chance-constrained optimization programs, based on finding the optimal solution under a finite number of sampled outcomes of the uncertainty ( ``scenarios'').
Abstract: The scenario-based optimization approach (`scenario approach') provides an intuitive way of approximating the solution to chance-constrained optimization programs, based on finding the optimal solution under a finite number of sampled outcomes of the uncertainty (`scenarios'). A key merit of this approach is that it neither assumes knowledge of the uncertainty set, as it is common in robust optimization, nor of its probability distribution, as it is usually required in stochastic optimization. Moreover, the scenario approach is computationally efficient as its solution is based on a deterministic optimization program that is canonically convex, even when the original chance-constrained problem is not. Recently, researchers have obtained theoretical foundations for the scenario approach, providing a direct link between the number of scenarios and bounds on the constraint violation probability. These bounds are tight in the general case of an uncertain optimization problem with a single chance constraint. However, this paper shows that these bounds can be improved in situations where the constraints have a limited `support rank', a new concept that is introduced for the first time. This property is typically found in a large number of practical applications---most importantly, if the problem originally contains multiple chance constraints (e.g. multi-stage uncertain decision problems), or if a chance constraint belongs to a special class of constraints (e.g. linear or quadratic constraints). In these cases the quality of the scenario solution is improved while the same bound on the constraint violation probability is maintained, and also the computational complexity is reduced.

110 citations


Cited by
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01 Jan 2016
TL;DR: The linear and nonlinear programming is universally compatible with any devices to read and is available in the book collection an online access to it is set as public so you can download it instantly.
Abstract: Thank you for downloading linear and nonlinear programming. As you may know, people have search numerous times for their favorite novels like this linear and nonlinear programming, but end up in malicious downloads. Rather than reading a good book with a cup of tea in the afternoon, instead they juggled with some infectious bugs inside their desktop computer. linear and nonlinear programming is available in our book collection an online access to it is set as public so you can download it instantly. Our digital library spans in multiple locations, allowing you to get the most less latency time to download any of our books like this one. Kindly say, the linear and nonlinear programming is universally compatible with any devices to read.

943 citations

Journal ArticleDOI
TL;DR: In this article, a model predictive control (MPC) approach is proposed to solve an open-loop constrained optimal control problem (OCP) repeatedly in a receding-horizon manner, where the OCP is solved over a finite sequence of control actions at every sampling time instant that the current state of the system is measured.
Abstract: Model predictive control (MPC) has demonstrated exceptional success for the high-performance control of complex systems [1], [2]. The conceptual simplicity of MPC as well as its ability to effectively cope with the complex dynamics of systems with multiple inputs and outputs, input and state/output constraints, and conflicting control objectives have made it an attractive multivariable constrained control approach [1]. MPC (a.k.a. receding-horizon control) solves an open-loop constrained optimal control problem (OCP) repeatedly in a receding-horizon manner [3]. The OCP is solved over a finite sequence of control actions {u0,u1,f,uN- 1} at every sampling time instant that the current state of the system is measured. The first element of the sequence of optimal control actions is applied to the system, and the computations are then repeated at the next sampling time. Thus, MPC replaces a feedback control law p(m), which can have formidable offline computation, with the repeated solution of an open-loop OCP [2]. In fact, repeated solution of the OCP confers an "implicit" feedback action to MPC to cope with system uncertainties and disturbances. Alternatively, explicit MPC approaches circumvent the need to solve an OCP online by deriving relationships for the optimal control actions in terms of an "explicit" function of the state and reference vectors. However, explicit MPC is not typically intended to replace standard MPC but, rather, to extend its area of application [4]-[6].

657 citations

Journal ArticleDOI
TL;DR: A review of recent bikeshare literature can be found in this article, where it has been found that just under 50% of users use the system less than once a month.

598 citations