37 research outputs found

    Uniform Strategies

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    We consider turn-based game arenas for which we investigate uniformity properties of strategies. These properties involve bundles of plays, that arise from some semantical motive. Typically, we can represent constraints on allowed strategies, such as being observation-based. We propose a formal language to specify uniformity properties and demonstrate its relevance by rephrasing various known problems from the literature. Note that the ability to correlate different plays cannot be achieved by any branching-time logic if not equipped with an additional modality, so-called R in this contribution. We also study an automated procedure to synthesize strategies subject to a uniformity property, which strictly extends existing results based on, say standard temporal logics. We exhibit a generic solution for the synthesis problem provided the bundles of plays rely on any binary relation definable by a finite state transducer. This solution yields a non-elementary procedure.Comment: (2012

    The Complexity of Synthesizing Uniform Strategies

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    We investigate uniformity properties of strategies. These properties involve sets of plays in order to express useful constraints on strategies that are not \mu-calculus definable. Typically, we can state that a strategy is observation-based. We propose a formal language to specify uniformity properties, interpreted over two-player turn-based arenas equipped with a binary relation between plays. This way, we capture e.g. games with winning conditions expressible in epistemic temporal logic, whose underlying equivalence relation between plays reflects the observational capabilities of agents (for example, synchronous perfect recall). Our framework naturally generalizes many other situations from the literature. We establish that the problem of synthesizing strategies under uniformity constraints based on regular binary relations between plays is non-elementary complete.Comment: In Proceedings SR 2013, arXiv:1303.007

    Discrete and hybrid methods for the diagnosis of distributed systems

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    Many important activities of modern society rely on the proper functioning of complex systems such as electricity networks, telecommunication networks, manufacturing plants and aircrafts. The supervision of such systems must include strong diagnosis capability to be able to effectively detect the occurrence of faults and ensure appropriate corrective measures can be taken in order to recover from the faults or prevent total failure. This thesis addresses issues in the diagnosis of large complex systems. Such systems are usually distributed in nature, i.e. they consist of many interconnected components each having their own local behaviour. These components interact together to produce an emergent global behaviour that is complex. As those systems increase in complexity and size, their diagnosis becomes increasingly challenging. In the first part of this thesis, a method is proposed for diagnosis on distributed systems that avoids a monolithic global computation. The method, based on converting the graph of the system into a junction tree, takes into account the topology of the system in choosing how to merge local diagnoses on the components while still obtaining a globally consistent result. The method is shown to work well for systems with tree or near-tree structures. This method is further extended to handle systems with high clustering by selectively ignoring some connections that would still allow an accurate diagnosis to be obtained. A hybrid system approach is explored in the second part of the thesis, where continuous dynamics information on the system is also retained to help better isolate or identify faults. A hybrid system framework is presented that models both continuous dynamics and discrete evolution in dynamical systems, based on detecting changes in the fundamental governing dynamics of the system rather than on residual estimation. This makes it possible to handle systems that might not be well characterised and where parameter drift is present. The discrete aspect of the hybrid system model is used to derive diagnosability conditions using indicator functions for the detection and isolation of multiple, arbitrary sequential or simultaneous events in hybrid dynamical networks. Issues with diagnosis in the presence of uncertainty in measurements due sensor or actuator noise are addressed. Faults may generate symptoms that are in the same order of magnitude as the latter. The use of statistical techniques,within a hybrid system framework, is proposed to detect these elusive fault symptoms and translate this information into probabilities for the actual operational mode and possibility of transition between modes which makes it possible to apply probabilistic analysis on the system to handle the underlying uncertainty present

    Adventures in monitorability: From branching time to linear time and back again.

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    This paper establishes a comprehensive theory of runtime monitorability for Hennessy-Milner logic with recursion, a very expressive variant of the modal ”-calculus. It investigates the monitorability of that logic with a linear-time semantics and then compares the obtained results with ones that were previously presented in the literature for a branching-time setting. Our work establishes an expressiveness hierarchy of monitorable fragments of Hennessy-Milner logic with recursion in a linear-time setting and exactly identifies what kinds of guarantees can be given using runtime monitors for each fragment in the hierarchy. Each fragment is shown to be complete, in the sense that it can express all properties that can be monitored under the corresponding guarantees. The study is carried out using a principled approach to monitoring that connects the semantics of the logic and the operational semantics of monitors. The proposed framework supports the automatic, compositional synthesis of correct monitors from monitorable properties

    Une approche efficace pour l’étude de la diagnosticabilitĂ© et le diagnostic des SED modĂ©lisĂ©s par RĂ©seaux de Petri labellisĂ©s : contextes atemporel et temporel

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    This PhD thesis deals with fault diagnosis of discrete event systems using Petri net models. Some on-the-fly and incremental techniques are developed to reduce the state explosion problem while analyzing diagnosability. In the untimed context, an algebraic representation for labeled Petri nets (LPNs) is developed for featuring system behavior. The diagnosability of LPN models is tackled by analyzing a series of K-diagnosability problems. Two models called respectively FM-graph and FM-set tree are developed and built on the fly to record the necessary information for diagnosability analysis. Finally, a diagnoser is derived from the FM-set tree for online diagnosis. In the timed context, time interval splitting techniques are developed in order to make it possible to generate a state representation of labeled time Petri net (LTPN) models, for which techniques from the untimed context can be used to analyze diagnosability. Based on this, necessary and sufficient conditions for the diagnosability of LTPN models are determined. Moreover, we provide the solution for the minimum delay ∆ that ensures diagnosability. From a practical point of view, diagnosability analysis is performed on the basis of on-the-fly building of a structure that we call ASG and which holds fault information about the LTPN states. Generally, using on-the-fly analysis and incremental technique makes it possible to build and investigate only a part of the state space, even in the case when the system is diagnosable. Simulation results obtained on some chosen benchmarks show the efficiency in terms of time and memory compared with the traditional approaches using state enumerationCette thĂšse s'intĂ©resse Ă  l'Ă©tude des problĂšmes de diagnostic des fautes sur les systĂšmes Ă  Ă©vĂ©nements discrets en utilisant les modĂšles rĂ©seau de Petri. Des techniques d'exploration incrĂ©mentale et Ă -la-volĂ©e sont dĂ©veloppĂ©es pour combattre le problĂšme de l'explosion de l'Ă©tat lors de l'analyse de la diagnosticabilitĂ©. Dans le contexte atemporel, la diagnosticabilitĂ© de modĂšles RdP-L est abordĂ©e par l'analyse d'une sĂ©rie de problĂšmes K-diagnosticabilitĂ©. L'analyse de la diagnosticabilitĂ© est effectuĂ©e sur la base de deux modĂšles nommĂ©s respectivement FM-graph et FM-set tree qui sont dĂ©veloppĂ©s Ă -la-volĂ©e. Un diagnostiqueur peut ĂȘtre dĂ©rivĂ© Ă  partir du FM-set tree pour le diagnostic en ligne. Dans le contexte temporel, les techniques de fractionnement des intervalles de temps sont Ă©laborĂ©es pour dĂ©velopper reprĂ©sentation de l'espace d'Ă©tat des RdP-LT pour laquelle des techniques d'analyse de la diagnosticabilitĂ© peuvent ĂȘtre utilisĂ©es. Sur cette base, les conditions nĂ©cessaires et suffisantes pour la diagnosticabilitĂ© de RdP-LT ont Ă©tĂ© dĂ©terminĂ©es. En pratique, l'analyse de la diagnosticabilitĂ© est effectuĂ©e sur la base de la construction Ă -la-volĂ©e d'une structure nommĂ©e ASG et qui contient des informations relatives Ă  l'occurrence de fautes. D'une maniĂšre gĂ©nĂ©rale, l'analyse effectuĂ©e sur la base des techniques Ă -la-volĂ©e et incrĂ©mentale permet de construire et explorer seulement une partie de l'espace d'Ă©tat, mĂȘme lorsque le systĂšme est diagnosticable. Les rĂ©sultats des simulations effectuĂ©es sur certains benchmarks montrent l'efficacitĂ© de ces techniques en termes de temps et de mĂ©moire par rapport aux approches traditionnelles basĂ©es sur l'Ă©numĂ©ration des Ă©tat

    The Complexity of Diagnosability and Opacity Verification for Petri Nets

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    International audienceDiagnosability and opacity are two well-studied problems in discrete-event systems. We revisit these two problems with respect to expressiveness and complexity issues. We first relate different notions of diagnosability and opacity. We consider in particular fairness issues and extend the definition of Germanos et al. [ACM TECS, 2015] of weakly fair diagnosability for safe Petri nets to general Petri nets and to opacity questions. Second, we provide a global picture of complexity results for the verification of diagnosability and opacity. We show that diagnosability is NL-complete for finite state systems, PSPACE-complete for safe Petri nets (even with fairness), and EXPSPACE-complete for general Petri nets without fairness, while non diagnosability is inter-reducible with reachability when fault events are not weakly fair. Opacity is ESPACE-complete for safe Petri nets (even with fairness) and undecidable for general Petri nets already without fairness

    Distributed intrusion detection for secure cooperative multi–agent systems

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    In this thesis we propose a solution for the problem of detecting intruders in an open set of cooperative agents. An agent can perform a finite set of maneuvers and is modeled by a hybrid system whose state is a continuous and a discrete part, representing the agents' physical evolution and logical variables, respectively. Each agent plans its behavior and chooses the appropriate maneuver to perform following a common set of shared rules designed to ensure the safety of the entire system. Since the number of agents is unknown, and since these agents have a limited knowledge of their neighborhood, they can make decisions based only on their own position, and on the configuration of a limited number of surrounding agents. Such a planning strategy is said to be decentralized. The expounded solution is an Intrusion Detecting System (IDS), based on a decentralized monitoring strategy, performed by several common local monitor modules running on--board each agent. This module tries to evaluate the behavior of neighboring agents by estimating the occurrence of the logical events described in the shared rule set. Since each monitor has a limited vision of its neighbors, in many cases it can remain uncertain about the correctness of the monitored agent's behavior. In order to solve this problem we developed a distributed consensus algorithm which, by introducing communication between agents, enhances the intrusion detection capabilities of single monitors. The effectiveness of our solution has been proved by in-depth simulations and a theoretical demonstration of the convergence of the consensus algorithm
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