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Dive into the research topics where Carl Svärd is active.

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Featured researches published by Carl Svärd.


systems man and cybernetics | 2010

Residual Generators for Fault Diagnosis Using Computation Sequences With Mixed Causality Applied to Automotive Systems

Carl Svärd; Mattias Nyberg

An essential step in the design of a model-based diagnosis system is to find a set of residual generators fulfilling stated fault detection and isolation requirements. To be able to find a good set, it is desirable that the method used for residual generation gives as many candidate residual generators as possible, given a model. This paper presents a novel residual generation method that enables simultaneous use of integral and derivative causality, i.e., mixed causality, and also handles equation sets corresponding to algebraic and differential loops in a systematic manner. The method relies on a formal framework for computing unknown variables according to a computation sequence. In this framework, mixed causality is utilized, and the analytical properties of the equations in the model, as well as the available tools for algebraic equation solving, are taken into account. The proposed method is applied to two models of automotive systems, a Scania diesel engine, and a hydraulic braking system. Significantly more residual generators are found with the proposed method in comparison with methods using solely integral or derivative causality.


IFAC Proceedings Volumes | 2011

Automated Design of an FDI-System for the Wind Turbine Benchmark

Carl Svärd; Mattias Nyberg

Present paper proposes an FDI-system for the wind turbine benchmark designed by application of a generic automated design method, in which the number of required human decisions and assumptions are ...


Journal of Control Science and Engineering | 2012

Automated design of an FDI system for the wind turbine benchmark

Carl Svärd; Mattias Nyberg

We propose an FDI system for the wind turbine benchmark designed by the application of a generic automated method. No specific adaptation of the method for the wind turbine benchmark is needed, and the number of required human decisions, assumptions, as well as parameter choices is minimized. The method contains in essence three steps: generation of candidate residual generators, residual generator selection, and diagnostic test construction. The proposed FDI system performs well in spite of no specific adaptation or tuning to the benchmark. All faults in the predefined test sequence can be detected and all faults, except a double fault, can also be isolated shortly thereafter. In addition, there are no false or missed detections.


systems man and cybernetics | 2013

Realizability Constrained Selection of Residual Generators for Fault Diagnosis With an Automotive Engine Application

Carl Svärd; Mattias Nyberg; Erik Frisk

This paper considers the problem of selecting a set of residual generators for inclusion in a model-based diagnosis system, while fulfilling fault isolability requirements and minimizing the number of residual generators. Two novel algorithms for solving the selection problem are proposed. The first algorithm provides an exact solution fulfilling both requirements and is suitable for small problems. The second algorithm, which constitutes the main contribution, is suitable for large problems and provides an approximate solution by means of a greedy heuristic and by relaxing the minimal cardinality requirement. The foundation for the algorithms is a novel formulation of the selection problem which enables an efficient reduction of the search-space by taking into account realizability properties, with respect to the considered residual generation method. Both algorithms are general in the sense that they are aimed at supporting any computerized residual generation method. In a case study the greedy selection algorithm is successfully applied in an industrial sized automotive engine system.


conference on control and fault tolerant systems | 2010

A service based approach to decentralized diagnosis and fault tolerant control

Mattias Nyberg; Carl Svärd

The paper presents a hierarchical architecture for fault tolerant control of mechatronic systems. In the architecture, both the diagnosis and the reconfiguration are completely decentralized according to the structure of the control system. This is achieved by using a purely service oriented view of the system including both hardware and software. The service view with no cyclic dependencies is further used to obtain Bayesian networks for modeling the system.


IFAC Proceedings Volumes | 2008

Observer-Based Residual Generation for Linear Differential-Algebraic Equation Systems

Carl Svärd; Mattias Nyberg

Abstract Residual generation for linear differential-algebraic systems is considered. A new systematic method for observer-based residual generation is presented. The proposed design method places no restrictions on the system to be diagnosed. If the fault of interest can be detected in the system, the output from the design method is a residual generator in state-space form that is sensitive to the fault of interest. The method is iterative and relies only on constant matrix operations such as multiplications, null-space calculations and equivalence transformations, and thereby straightforward to implement. An illustrative numerical example is included, where the design method is applied to a non-observable model of a robot manipulator.


conference on decision and control | 2011

A data-driven and probabilistic approach to residual evaluation for fault diagnosis

Carl Svärd; Mattias Nyberg; Erik Frisk; Mattias Krysander

An important step in fault detection and isolation is residual evaluation where residuals, signals ideally zero in the no-fault case, are evaluated with the aim to detect changes in their behavior caused by faults. Generally, residuals deviate from zero even in the no-fault case and their probability distributions exhibit non-stationary features due to, e.g., modeling errors, measurement noise, and different operating conditions. To handle these issues, this paper proposes a data-driven approach to residual evaluation based on an explicit comparison of the residual distribution estimated on-line and a no-fault distribution, estimated off-line using training data. The comparison is done within the framework of statistical hypothesis testing. With the Generalized Likelihood Ratio test statistic as starting point, a more powerful and computational efficient test statistic is derived by a properly chosen approximation to one of the emerging likelihood maximization problems. The proposed approach is evaluated with measurement data on a residual for diagnosis of the gas-flow system of a Scania truck diesel engine. The proposed test statistic performs well, small faults can for example be reliable detected in cases where regular methods based on constant thresholding fail.


Mechanical Systems and Signal Processing | 2014

Data-Driven and Adaptive Statistical Residual Evaluation for Fault Detection with an Automotive Application

Carl Svärd; Mattias Nyberg; Erik Frisk; Mattias Krysander


Control Engineering Practice | 2013

Automotive Engine FDI by Application of an Automated Model-Based and Data-Driven Design Methodology

Carl Svärd; Mattias Nyberg; Erik Frisk; Mattias Krysander


Archive | 2008

A Mixed Causality Approach to Residual Generation Utilizing Equation System Solvers and Differential-Algebraic Equation Theory

Carl Svärd; Mattias Nyberg

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Mattias Nyberg

Royal Institute of Technology

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