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Dive into the research topics where Andri Riid is active.

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Featured researches published by Andri Riid.


ieee international conference on fuzzy systems | 2001

Fuzzy logic in control: truck backer-upper problem revisited

Andri Riid; Ennu Rüstern

The truck backer-upper problem, considered an acknowledged benchmark in nonlinear system identification, is an excellent test-bed for fuzzy control systems. A fuzzy controller, formulated on the basis of human understanding of the process or identified from measured control actions, can be regarded as an emulator of human operator. Controller design, however, may become difficult, especially if the number of state variables is large. In the paper, a supervisory control system is proposed that reduces the complexity of the control problem and enhances control. This is demonstrated with backing simulations in comparison with other fuzzy control techniques.


IEEE Computer | 2015

The Benefits of Self-Awareness and Attention in Fog and Mist Computing

Jürgo-Sören Preden; Kalle Tammemäe; Axel Jantsch; Mairo Leier; Andri Riid; Emine Calis

Self-awareness facilitates a proper assessment of cost-constrained cyber-physical systems, allocating limited resources where they are most needed. Together, situation awareness and attention are key enablers for self-awareness in efficient distributed sensing and computing networks.


Archive | 2003

Transparent Fuzzy Systems in Modelling and Control

Andri Riid; Ennu Rüstern

This chapter deals with low-level transparency of fuzzy systems that is necessary to ensure reliable interpretation of linguistic information provided by fuzzy systems. It is shown that for different types of fuzzy systems different definitions of transparency apply. Particular attention is paid to transparency protection mechanisms for data-driven optimisation algorithms such as gradient descent and genetic algorithms that otherwise would destroy the semantics of fuzzy systems in the course of optimisation. The need for transparency in fuzzy control is discussed and further illustrated by a control application of truck backer-upper.


Information Sciences | 2011

Identification of transparent, compact, accurate and reliable linguistic fuzzy models

Andri Riid; Ennu Rüstern

Transparency, accuracy, compactness and reliability all appear to be vital (even though somewhat contradictory) requirements when it comes down to linguistic fuzzy modeling. This paper presents a methodology for simultaneous optimization of these criteria by chaining previously published various algorithms - a heuristic fully automated identification algorithm that is able to extract sufficiently accurate, yet reliable and transparent models from data and two algorithms for subsequent simplification of the model that are able to reduce the number of output parameters as well as the number of fuzzy rules with only a marginal negative effect to the accuracy of the model.


ieee international conference on fuzzy systems | 2007

Interpretability of Fuzzy Systems and Its Application to Process Control

Andri Riid; Ennu Rüstern

The paper reviews the concept of fuzzy system interpretability and concludes that known interpretability constraints work mostly for the internal consistency of the system, thus are insufficient that we could really benefit from interpretability in practice. In particular, reliability of system rules is an often overlooked property. The latter is a phenomenon of external consistency and thus is largely a responsibility of the optimization algorithm that is used to finalize the system. The modeling algorithm that is suggested in current paper has special regard for model reliability. We then proceed with a methodology for extracting a process controller from the identified process model. Controller design is guided by a automatic linguistic inversion technique. The approach is successfully tested on a fed-batch fermentation benchmark.


Information Sciences | 2014

Adaptability, interpretability and rule weights in fuzzy rule-based systems

Andri Riid; Ennu Rüstern

This paper discusses interpretability in two main categories of fuzzy systems - fuzzy rule-based classifiers and interpolative fuzzy systems. Our goal is to show that the aspect of high level interpretability is more relevant to fuzzy classifiers, whereas fuzzy systems employed in modeling and control benefit more from low-level interpretability. We also discuss the interpretability-accuracy tradeoff and observe why various rule weighting schemes that have been brought into play to increase adaptability of fuzzy systems rather just increase computational overhead and seriously compromise interpretability of fuzzy systems.


ieee international conference on fuzzy systems | 2004

Car navigation and collision avoidance system with fuzzy logic

Andri Riid; Dmitri Pahhomov; Ennu Rüstern

A navigation control and collision avoidance system for delivering a car to the arbitrarily positioned loading dock is designed, based on the fuzzy trajectory mapping unit (TMU). Simulated driving experiments in different environmental conditions demonstrate that the designed system shows good performance. Modular structure of the control system facilitates both efficient control knowledge acquisition (which is encapsulated in TMU) as well as further development of the control system to accomplish more demanding tasks.


ieee international multi disciplinary conference on cognitive methods in situation awareness and decision support | 2011

Situation awareness for networked systems

Jurgo Preden; Leo Motus; Merik Meriste; Andri Riid

Modern technology offers the possibility to construct networked monitoring systems from autonomous computing nodes equipped with appropriate sensors. Complementing such a system with actuators yields a cyber-physical system that must be able to cope with uncertainties arising from feedback loops via the physical world. The common property of such systems lies in the high degree of uncertainty in the varying configuration of the system and also in the potentially high amounts of (unstructured) data that can be generated by such a system. In order to tackle these problems and make the distributed monitoring systems more usable the concepts of situational information and hierarchies of situations can be applied in this domain. The problem of high amounts of data can be partially solved by arriving at a higher level of abstraction lower in the processing chain, communicating only data fused into an ontological structure to information consumers. The fusion templates are called situation parameters and values of the fused data items are called situational parameter values in the context of the current article. Situation parameter values must be tagged with situational and temporal validity information in order to cope with the delays and spatial uncertainties that can occur in a distributed monitoring system. The lower level situation parameters can be fused to even higher level situation parameters, projecting the temporal and spatial validity information from the lower level parameters up to the higher level parameters. The article presents the concepts of forming situational information templates and hierarchies based on data available from a distributed monitoring system where the temporal and spatial properties of situational information are taken into account. A case study is presented that shows the feasibility of the concepts in a real world monitoring scenario.


ieee international conference on fuzzy systems | 2010

Interpretability improvement of fuzzy systems: Reducing the number of unique singletons in zeroth order Takagi-Sugeno systems

Andri Riid; Ennu Rüstern

This paper addresses one specific aspect of complexity reduction/interpretability improvement in fuzzy systems — how to limit the number of unique singletons in 0-th order Takagi-Sugeno (TS) systems, where the common practice is to assign an unique singleton to each rule. While abundance of free parameters makes 0-th order TS systems effective in data-driven identification, it also presents a computational load and an obstacle for interpretability and reliability of fuzzy rules. The developed reduction algorithm that utilizes singleton mapping matrix, subtractive clustering and least squares estimation algorithms, is able to bring the number of unique singletons down to the desired level without substantial accuracy loss.


international conference on intelligent engineering systems | 2011

An integrated approach for the identification of compact, interpretable and accurate fuzzy rule-based classifiers from data

Andri Riid; Ennu Rüstern

This paper presents three very simple and computationally undemanding symbiotic algorithms for the identification of compact fuzzy rule-based classifiers from data. The problem of interpretability is specifically addressed, resulting in a conclusion that due to the characteristics of classification tasks a major well-known interpretability condition — distinguishability — can be discarded. It is shown that despite the interpretability-accuracy tradeoff, accuracy of identified classifiers stands out to comparison. All obtained properties can be very useful in practical problems. The proposed method is validated on Iris, Wine and Wisconsin Breast Cancer data sets.

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Ennu Rüstern

Tallinn University of Technology

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Jürgo-Sören Preden

Tallinn University of Technology

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Sergei Astapov

Tallinn University of Technology

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Johannes Ehala

Tallinn University of Technology

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Leo Motus

Tallinn University of Technology

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Dmitri Pahhomov

Tallinn University of Technology

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Jurgo Preden

Tallinn University of Technology

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Raido Pahtma

Tallinn University of Technology

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Kalle Saastamoinen

Lappeenranta University of Technology

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Alar Leibak

Tallinn University of Technology

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