11 research outputs found

    Multi-Agents Model Oriented Safety in Maintenance (MAM-SM)

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    International audienceThis paper proposes an agent-based simulation framework for the development of a decision support system for occupational risks management in a maintenance task. The proposed model is defined as a Multi-Agent system oriented Safety in Maintenance (MAM-SM). This model aggregates many agents, where architecture includes agents Supervisor, Resource, Machine, Environment, Reasoning, Task, Control and Agent Capitalization. Based on a multi-agent simulator, the objective of the proposed approach is to account for the complexity of the maintenance task for better analysis and understanding of risks. It allows orienting the actors to the best decisions in order to minimize risks that may arise. The method is applied to two case studies. The results show that this model can express the behavior of each agent and also the performance of the whole system. In particular, the results demonstrate that the maintenance tasks can be controlled to avoid an accident

    Customising agent based analysis towards analysis of disaster management knowledge

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    © 2016 Dedi Iskandar Inan, Ghassan Beydoun and Simon Opper. In developed countries such as Australia, for recurring disasters (e.g. floods), there are dedicated document repositories of Disaster Management Plans (DISPLANs), and supporting doctrine and processes that are used to prepare organisations and communities for disasters. They are maintained on an ongoing cyclical basis and form a key information source for community education, engagement and awareness programme in the preparation for and mitigation of disasters. DISPLANS, generally in semi-structured text document format, are then accessed and activated during the response and recovery to incidents to coordinate emergency service and community safety actions. However, accessing the appropriate plan and the specific knowledge within the text document from across its conceptual areas in a timely manner and sharing activities between stakeholders requires intimate domain knowledge of the plan contents and its development. This paper describes progress on an ongoing project with NSW State Emergency Service (NSW SES) to convert DISPLANs into a collection of knowledge units that can be stored in a unified repository with the goal to form the basis of a future knowledge sharing capability. All Australian emergency services covering a wide range of hazards develop DISPLANs of various structure and intent, in general the plans are created as instances of a template, for example those which are developed centrally by the NSW and Victorian SES’s State planning policies. In this paper, we illustrate how by using selected templates as part of an elaborate agent-based process, we can apply agent-oriented analysis more efficiently to convert extant DISPLANs into a centralised repository. The repository is structured as a layered abstraction according to Meta Object Facility (MOF). The work is illustrated using DISPLANs along the flood-prone Murrumbidgee River in central NSW

    Towards knowledge sharing in disaster management: An agent oriented knowledge analysis framework

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    Disaster Management (DM) is a complex set of interrelated activities. The activities are often knowledge intensive and time sensitive. Sharing the required knowledge timely is critical for DM. In developed countries, for recurring disasters (e.g. floods), there are dedicated document repositories of Disaster Management Plans (DMP) that can be accessed as needs arise. However, accessing the appropriate plan in a timely manner and sharing activities between plans often requires domain knowledge and intimate knowledge of the plans in the first place. In this paper, we introduce an agent-based knowledge analysis method to convert DMPs into a collection of knowledge units that can be stored into a unified repository. The repository of DM actions then enables the mixing and matching knowledge between different plans. The repository is structured as a layered abstraction according to Meta Object Facility (MOF). We use the flood management plans used by SES (State Emergency Service), an authoritative DM agency in NSW (New State Wales) State of Australia to illustrate and give a preliminary validation of the approach. It is illustrated using DMPs along the flood prone Murrumbidgee River in central NSW

    Multi-Agent Systems

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    This Special Issue ""Multi-Agent Systems"" gathers original research articles reporting results on the steadily growing area of agent-oriented computing and multi-agent systems technologies. After more than 20 years of academic research on multi-agent systems (MASs), in fact, agent-oriented models and technologies have been promoted as the most suitable candidates for the design and development of distributed and intelligent applications in complex and dynamic environments. With respect to both their quality and range, the papers in this Special Issue already represent a meaningful sample of the most recent advancements in the field of agent-oriented models and technologies. In particular, the 17 contributions cover agent-based modeling and simulation, situated multi-agent systems, socio-technical multi-agent systems, and semantic technologies applied to multi-agent systems. In fact, it is surprising to witness how such a limited portion of MAS research already highlights the most relevant usage of agent-based models and technologies, as well as their most appreciated characteristics. We are thus confident that the readers of Applied Sciences will be able to appreciate the growing role that MASs will play in the design and development of the next generation of complex intelligent systems. This Special Issue has been converted into a yearly series, for which a new call for papers is already available at the Applied Sciences journal’s website: https://www.mdpi.com/journal/applsci/special_issues/Multi-Agent_Systems_2019

    Ingeniería basada en modelos aplicada a sistemas distribuidos sensibles al contexto.

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    239 p.En esta Tesis Doctoral se plantea una metodología, soportada por mecanismos y herramientas, que da soporte al ciclo de desarrollo de aplicaciones distribuidas sensibles al contexto, aquéllas que supervisan su entorno físico con objeto de detectar cambios en él y reaccionar rápida y adecuadamente. Son aplicaciones presentes en diferentes campos de aplicación que demandan requisitos tales como ejecución en entornos distribuidos y heterogéneos, personalización de la supervisión, adaptación a cambios relevantes en su contexto, gestión de la calidad específica de cada aplicación, disponibilidad y recuperación ante situaciones de fallo. En concreto, se propone una aproximación de modelado genérica que permite la especificación y diseño de estas aplicaciones, independientemente de la plataforma de gestión responsable de su ejecución y atendiendo a los diferentes expertos que participan: expertos de dominio y desarrolladores de software. Se hace uso de la ingeniería dirigida por modelos para lograr la separación de dominios necesaria. Así, el experto de dominio realiza el diseño arquitectónico en el que se especifican todos sus requisitos, mientras que el desarrollador de software se centra en el diseño e implementación de la solución software correspondiente. Por tanto, la aproximación de modelado recoge los requisitos de las aplicaciones que una plataforma de gestión debe cumplir en tiempo de ejecución, al mismo tiempo que captura la información necesaria para la generación de su código. También se plantea un entorno de desarrollo integrado, basado en dicha aproximación, que da soporte al ciclo de desarrollo, cuyo prototipo se ha validado en un demostrador en el campo de la asistencia domiciliaria

    A system dynamics & emergency logistics model for post-disaster relief operations

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    Emergency teams’ efficiency in responding to disasters is critical in saving lives, reducing suffering, and for damage control. Quality standards for emergency response systems are based on government policies, resources, training, and team readiness and flexibility. This research investigates these matters in regards to Saudi emergency responses to floods in Jeddah in 2009 and again in 2011. The study is relevant to countries who are building emergency response capacity for their populations: analysing the effects of the disaster, communications and data flows for stakeholders, achieving and securing access, finding and rescuing victims, setting up field triage sites, evacuation, and refuges. The research problem in this case was to develop a dynamic systems model capable of managing real time data to allow a team or a decision-maker to optimise their particular response within a rapidly changing situation. The Emergency Logistics Centre capability model responds to this problem by providing a set of nodes relevant to each responsibility centre (Civil Defence, regional/local authority including rescue teams, police and clean-up teams, Red Crescent). These nodes facilitate information on resource use and replenishment, and barriers such as access and weather can be controlled for in the model. The dynamic systems approach builds model capacity and transparency, allowing emergency response decision-makers access to updated instructions and decisions that may affect their capacities. After the event, coordinators and researchers can review data and actions for policy change, resource control, training and communications. In this way, knowledge from the experiences of members of the network is not lost for future position occupants in the emergency response network. The conclusion for this research is that the Saudi emergency response framework is now sufficiently robust to respond to a large scale crisis, such as may occur during the hajj with its three million pilgrims. Researchers are recommended to test their emergency response systems using the Emergency Logistics Centre model, if only to encourage rethinking and flexibility of perhaps stale or formulaic responses from staff. This may lead to benefits in identification of policy change, training, or more appropriate pathways for response teams

    Modèle multi-agents d'aide à la décision pour la gestion des services préhospitaliers d'urgence

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    La nécessité de mieux comprendre et maîtriser la complexité des systèmes d’information exige le développement de nouvelles méthodes de modélisation et de résolution de problèmes. Ce travail de recherche s’intéresse à la conception et la modélisation d’un système d’aide à la décision dans lequel le savoir et les compétences de l’expert permettent d’analyser et de proposer de nouveaux modèles multi-agents. Le développement d’un tel modèle relève un certain nombre de difficultés de conception, liés notamment à l’efficience et l’efficacité du processus de calcul et de résolution du problème, auxquels on apporte des éléments de solution. Beaucoup de systèmes complexes se caractérisent par des dynamiques non linéaires, désordonnées et aléatoires, en résumé compliquées dans le sens où leur assimilation demande du temps et du talent. Les méthodes mathématiques classiques (équations différentielles, modèles probabilistes, etc.) peuvent s’avérer inappropriées pour modéliser de tels systèmes dans lesquels l’interaction occupe un rôle très important. La modélisation à base d’agents réactifs est l’une des techniques de modélisation microscopique les plus répandues. Pourquoi choisir une modélisation orientée agent plutôt qu’un autre méta-modèle de modélisation? Premièrement, le modèle agent est très riche. Il aide ainsi le concepteur à schématiser facilement des processus qualitatifs et quantitatifs et permet d’interagir des entités hétérogènes aux architectures diverses. Pourtant, la raison principale est souvent liée à la vocation de modélisation : bien appréhender la relation entre actions/comportements individuels et action/comportement collectif. Ce travail est mené principalement dans un cadre applicatif lié au problème de planification et de gestion des services préhospitaliers d’urgence (SPU). En effet, on trouve un ensemble de recherches qui traitent le sujet de la gestion et de la planification des SPU. Chaque travail de recherche traite une problématique bien spécifique de ce domaine, soit la confection des horaires des ambulanciers, soit la gestion de la demande en services préhospitaliers, ou la gestion des véhicules/ambulances, etc. Cette thèse s’intéresse à la problématique de planification des services préhospitaliers d’urgence afin de mieux répondre à la demande de service et par conséquence diminuer le temps-réponse des ambulanciers. Elle adopte une approche de résolution globale et intégrée. Elle vise la proposition d’un modèle sous forme de différentes composantes d’aide à la décision. Elle intègre des techniques d’optimisation touchant à la fois la planification des horaires, la gestion des remplacements, la gestion de la flotte de véhicules, la gestion de la capacité des dépôts, la couverture de la demande et la gestion des événements spéciaux. Le modèle proposé est basé sur une architecture multi-agents et permet de répondre aux contraintes et aux aléas survenus lors de la planification des SPU. Le travail réalisé dans le cadre de cette thèse est articulé autour de trois articles suivants : • « Integrated and global approach (IGAP) based on multi-agent systems for the management of prehospital emergency services », soumis à Computers & Industrial Engineering de Elsevier. Cet article présente une introduction aux systèmes multiagents appliqués aux SPU et propose une nouvelle approche globale et intégrée pour sa résolution appelée IGAP. • « Scheduling Model for Prehospital Emergency Services », soumis à l’European Journal of Operational Research de Elsevier. Cet article traite le problème de confection d’horaires des techniciens ambulanciers. Notre contribution réside dans la proposition d’un modèle mathématique appelé « set covering » qui résout un problème de couverture intégré dans un nouveau système suffisamment flexible de confection d’horaires. • « Multi-Agent Decision-Making Support Model for the Management of Prehospital Emergency Services », publié dans International Journal of Machine Learning and Computing, de IACSIT. Cet article porte sur le thème de la modélisation et de l’aide à la décision dans le cadre des systèmes complexes dont on propose une architecture à base d’agents d’aide à la décision dédiée à la gestion des services préhospitaliers d’urgence
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