6 research outputs found

    Towards optimal sensor deployment for location tracking in smart home

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    International audienceAmbient Assisted Living (AAL) aims to ease the daily living and working environmentfor disabled/elderly peopleat home. AAL use information and communication technology based on sensors data. These sensors are generally placed randomly without taking into account the layout of buildings and rooms. In this paper, we develop a mathematical model foroptimal sensor placement in order (i) to optimize the sensor number with regard to room features, (ii) to ensure a reliability level in sensor networkconsidering a sensor failure rate. This placement ensures the targettracking in smart home sinceoptimizing sensorplacement allow us to distinguish different zonesand consequently, to identify the target location, according to the activated sensors

    Une approche basĂ©e sur l'optimisation pour la planification simultanĂ©e de multi projets et rĂ©seaux logistique : application aux projets de la rénovation de bâtiments

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    The application context of the current study is on a CRIBA project. The CRIBA aims to industrialize an integrated solution for the insulation and thermal renovation of building complexes in France. As a result, a significant part of the added value is transferred from the renovation sites to the manufacturing centers, making both synchronized. Planning is one of the important steps in project management. Depending on the different viewpoints of organizations, successful planning for projects can be achieved by performing to optimality within the time, cost, quality factors as well as the efficient assignment of resources. Planning for the allocation of resources becomes more complex when a set of projects is sharing renewable and non-renewable resources. The global objective of the study is to develop a decision-making tool for decision-makers to plan multiple projects by integrating the allocation of the renewable resources and planning the flow of non-renewable resources to the project worksites. In this context, non-renewable resources such as equipment and labor have a limited initial availability at the construction sites. Nevertheless, we assume that additional limited amounts can be added to the projects. In addition, we take into account the interest of the project coordinators in supplying the non-renewable resources in a just-in-time manner to the projects, especially for low-demand resources with a high price. This requires extending the framework of the project planning by including the planning of the supply chain which is responsible. Finally, in order to meet the requirements for environmentally responsible decision-making, the model envisages the transportation and recycling of waste from project sites to appropriate centers. A mixed integer linear model of the problem is proposed. Since it falls within the class of NP-hard optimization models, a double resolution is targeted: first, using a solver and then a metaheuristic based on the genetic algorithm. In addition, in order to facilitate the use of the model by users unfamiliar with operational research, a web-based decision-making support system has been developed. All the contributions are evaluated in a set of case studies from the CRIBA project.Le contexte d’application de cette recherche a Ă©tĂ© le projet CRIBA. CRIBA vise Ă  industrialiser une solution intĂ©grĂ©e de rĂ©novation et d’isolation de grands bĂątiments. De ce fait, une part importante de la valeur ajoutĂ©e est transfĂ©rĂ©e des chantiers de rĂ©novation vers des usines de fabrications devant ĂȘtre synchronisĂ©es avec les chantiers. La planification est l'une des Ă©tapes importantes de la gestion de projets. S’adaptant Ă  une organisation, elle vise une rĂ©alisation optimale en considĂ©rant les facteurs de temps, coĂ»t, qualitĂ© ainsi que l’affectation efficace des ressources. Cette affectation est d’autant plus complexe lorsqu’un ensemble de projets se partagent les ressources, renouvelables ou non renouvelables. L'objectif global de notre Ă©tude est de dĂ©velopper un outil d’aide Ă  la dĂ©cision pour un dĂ©cideur visant Ă  planifier plusieurs projets en intĂ©grant l'allocation des ressources renouvelables, et la planification des flux de ressources non-renouvelables vers ces projets. Dans ce cadre, les ressources non renouvelables telles que les machines et la main-d'Ɠuvre ont une disponibilitĂ© initiale limitĂ©e sur les chantiers. Cependant, nous supposons que des quantitĂ©s limitĂ©es supplĂ©mentaires peuvent ĂȘtre achetĂ©es. En outre, nous prenons en compte la volontĂ© des coordinateurs des projets pour l’approvisionnement des chantiers en juste Ă  temps (just in time), en particulier pour les ressources peu demandĂ©es, encombrantes et Ă  forte valeur. Ceci oblige Ă  Ă©tendre le cadre du modĂšle de la planification des projets en incluant la planification de la chaĂźne logistique qui approvisionne les ressources non renouvelables des chantiers. Enfin, pour rĂ©pondre au besoin d’outils dĂ©cisionnels responsables sur le plan environnemental, le modĂšle prĂ©voit le transport et le recyclage des dĂ©chets des chantiers dans les centres appropriĂ©s. Un modĂšle linĂ©aire mixte du problĂšme est ainsi posĂ©. Puisqu’il rentre dans la classe des modĂšles d'optimisation NP-durs, une double rĂ©solution est proposĂ©e. D’abord Ă  l’aide d’un solveur puis une mĂ©ta-heuristique basĂ©e sur un algorithme gĂ©nĂ©tique. De plus, pour faciliter l'utilisation du modĂšle par des utilisateurs peu familiers avec la recherche opĂ©rationnelle, un systĂšme d'aide Ă  la dĂ©cision basĂ© sur une application web a Ă©tĂ© dĂ©veloppĂ©. L’ensemble de ces contributions ont Ă©tĂ© Ă©valuĂ©es sur des jeux de test issus du projet CRIBA

    A Heuristic-Based Genetic Algorithm for Scheduling of Multiple Projects Subjected to Resource Constraints and Environmental Responsibility Commitments

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    International audienceDuring the last decades, resource-constrained project scheduling problems have been abundantly presented in extant literature. However, there are still some real-world challenges that have not been adequately considered. These challenges include environmental commitments and constraints related to the procurement of resources (as regards procurement commitment). This calls for the integration of the project planning and forward-reverse supply chain planning systems. To achieve this goal, this paper contributes to the existing literature by presenting a model that incorporates the two issues in the integrated planning system: (1) the procurement commitment objective is met through the just-in-time delivery of non-renewable resources to the project sites while considering the limited supply capacity of suppliers, and (2) the environmental commitment is satisfied by collecting and recycling the waste generated at project sites. A mixed-integer linear formulation of the problem is proposed. Since the model is NP-hard (non-deterministic polynomial time-hard), the paper develops a new heuristic-based genetic algorithm to solve the problem instances. The main parameters of the algorithm are tuned using the Taguchi method. The results show the efficiency of the algorithm in obtaining appropriate solutions in reasonable computational times. The integrated planning model that is proposed in this paper and its novel resolution method would help managers to make more responsive and efficient decisions

    Integration of Supply Chain Planning with Time and Resource Constrained Project Scheduling Problems for Building’s Thermal Renovation Projects

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    Part 10: Performance and OptimizationInternational audienceCRIBA is a project that aims at industrializing thermal renovation processes of buildings. It consists in designing and configuring make-to-order insulated panels that will be installed on the external facade of the buildings to meet the thermal renovation objectives. Our study provides an optimization model that comprehensively plans supply chain network, which delivers insulated panels to the building’s worksites, and schedules renovation activity that should be executed at the worksites under the limited quantity of the resources’ availability. In this context, integration of supply chain planning problem with resource constrained multi project scheduling problem and time constrained project scheduling is of interest in realizing the decision making tool

    Towards optimal sensor deployment for location tracking in smart home

    No full text
    International audienceAmbient Assisted Living (AAL) aims to ease the daily living and working environmentfor disabled/elderly peopleat home. AAL use information and communication technology based on sensors data. These sensors are generally placed randomly without taking into account the layout of buildings and rooms. In this paper, we develop a mathematical model foroptimal sensor placement in order (i) to optimize the sensor number with regard to room features, (ii) to ensure a reliability level in sensor networkconsidering a sensor failure rate. This placement ensures the targettracking in smart home sinceoptimizing sensorplacement allow us to distinguish different zonesand consequently, to identify the target location, according to the activated sensors
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