160 research outputs found

    Designing and Scheduling Cost-Efficient Tours by Using the Concept of Truck Platooning

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    Truck Platooning is a promising new technology to reduce the fuel consumption by around 15% via the exploitation of a preceding and digitally connected truck’s slipstream. However, the cost-efficient coordination of such platoons under consideration of mandatory EU driving time restrictions turns out to be a highly complex task. For this purpose, we provide a comprehensive literature review and formulate the exact EU-Truck Platooning Problem (EU-TPP) as an Integer Linear Program (ILP) which also features a hypothetical task-relieving effect for following drivers in a convoy. In order to increase the computational efficiency, we introduce an auxiliary constraint and two hierarchical planning-based matheuristic approaches: the Shortest Path Heuristic (SPH) and the Platoon Routing Heuristic (PRH). Besides a qualitative sensitivity analysis, we perform an extensive numerical study to investigate the impact of different critical influence factors on platooning, being of major political and economic interest. Our experiments with the EU-TPP suggest remarkable fuel cost savings of up to 10.83% without a 50% task relief, while its inclusion leads to additional personnel cost savings of up to even 31.86% at best with maximally 12 trucks to be coordinated in a recreated part of the European highway network. Moreover, we prove our matheuristics’ highly favorable character in terms of solution quality and processing time. Keywords: autonomous transport; Truck Platooning; driving time and rest periods; cost-efficient routing & scheduling; computational efficiency

    ProblÚmes de tournées avec gestion de stock et prise en compte explicite de la consommation d'énergie

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    Dans le problÚme de tournées avec gestion de stock ou "Inventory Routing Problem" (IRP), le fournisseur a pour mission de surveiller les niveaux de stock d'un ensemble de clients et gérer leur approvisionnement en prenant simultanément en compte les coûts de transport et de stockage. Etant données les nouvelles exigences de développement durable et de transport écologique, nous étudions l'IRP sous une perspective énergétique, peu de travaux s'étant intéressés à cet aspect. Plus précisément, la thÚse identifie les facteurs principaux influençant la consommation d'énergie et évalue les gains potentiels qu'une meilleure planification des approvisionnements permet de réaliser. Un problÚme relatif à l'approvisionnement en composants de chaßnes d'assemblage d'automobiles est tout d'abord considéré pour lequel la masse transportée, la dynamique du véhicule et la distance parcourue sont identifiés comme les principaux facteurs impactant la consommation énergétique. Ce résultat est étendu à l'IRP classique et les gains potentiels en termes d'énergie sont analysés. Un problÚme industriel de tournées avec gestion de stock est ensuite étudié et résolu, notamment à l'aide d'une méthode de génération de colonnes. Ce problÚme met en évidence les limitations du modÚle IRP classique, ce qui nous a amené à définir un modÚle d'IRP plus réaliste. Finalement, une méthode de décomposition basée sur la relaxation lagrangienne est développée pour la résolution de ce problÚme dans le but de minimiser la consommation énergétique.The thesis studies the Inventory Routing Problem (IRP) with explicit energy consideration. Under the Vendor Managed Inventory (VMI) model, the IRP is an integration of the inventory management and routing, where both inventory storage and transportation costs are taken into account. Under the new sustainability paradigm, green transport and logistics has become an emerging area of study, but few research focus on the ecological aspect of the classical IRP. Since the classical IRP concentrates solely on the economic benefits, it is worth studying under the energy perspective. The thesis gives an estimation of the energetic gain that a better supplying plan can provide. More specifically, this thesis integrates the energy consumption into the decision of the inventory replenishment and routing. It starts with a part supplying problem in car assembly lines, where the transported mass, the vehicle dynamics and the travelled distance are identified as main energy influencing factors. This result is extended to the classical IRP with energy objective to show the potential energy reduction that can be achieved. Then, an industrial challenge of IRP is presented and solved using a column generation approach. This problem put the limitations of the classical IRP model in evidence, which brings us to define a more realistic IRP model on a multigraph. Finally, a Lagrangian relaxation method is presented for solving this new model with the aim of energy minimization

    Approches générales de résolution pour les problÚmes multi-attributs de tournées de véhicules et confection d'horaires

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    ThĂšse rĂ©alisĂ©e en cotutelle entre l'UniversitĂ© de MontrĂ©al et l'UniversitĂ© de Technologie de TroyesLe problĂšme de tournĂ©es de vĂ©hicules (VRP) implique de planifier les itinĂ©raires d'une flotte de vĂ©hicules afin de desservir un ensemble de clients Ă  moindre coĂ»t. Ce problĂšme d'optimisation combinatoire NP-difficile apparait dans de nombreux domaines d'application, notamment en logistique, tĂ©lĂ©communications, robotique ou gestion de crise dans des contextes militaires et humanitaires. Ces applications amĂšnent diffĂ©rents contraintes, objectifs et dĂ©cisions supplĂ©mentaires ; des "attributs" qui viennent complĂ©ter les formulations classiques du problĂšme. Les nombreux VRP Multi-Attributs (MAVRP) qui s'ensuivent sont le support d'une littĂ©rature considĂ©rable, mais qui manque de mĂ©thodes gĂ©nĂ©ralistes capables de traiter efficacement un Ă©ventail significatif de variantes. Par ailleurs, la rĂ©solution de problĂšmes "riches", combinant de nombreux attributs, pose d'importantes difficultĂ©s mĂ©thodologiques. Cette thĂšse contribue Ă  relever ces dĂ©fis par le biais d'analyses structurelles des problĂšmes, de dĂ©veloppements de stratĂ©gies mĂ©taheuristiques, et de mĂ©thodes unifiĂ©es. Nous prĂ©sentons tout d'abord une Ă©tude transversale des concepts Ă  succĂšs de 64 mĂ©ta-heuristiques pour 15 MAVRP afin d'en cerner les "stratĂ©gies gagnantes". Puis, nous analysons les problĂšmes et algorithmes d'ajustement d'horaires en prĂ©sence d'une sĂ©quence de tĂąches fixĂ©e, appelĂ©s problĂšmes de "timing". Ces mĂ©thodes, dĂ©veloppĂ©es indĂ©pendamment dans diffĂ©rents domaines de recherche liĂ©s au transport, ordonnancement, allocation de ressource et mĂȘme rĂ©gression isotonique, sont unifiĂ©s dans une revue multidisciplinaire. Un algorithme gĂ©nĂ©tique hybride efficace est ensuite proposĂ©, combinant l'exploration large des mĂ©thodes Ă©volutionnaires, les capacitĂ©s d'amĂ©lioration agressive des mĂ©taheuristiques Ă  voisinage, et une Ă©valuation bi-critĂšre des solutions considĂ©rant coĂ»t et contribution Ă  la diversitĂ© de la population. Les meilleures solutions connues de la littĂ©rature sont retrouvĂ©es ou amĂ©liorĂ©es pour le VRP classique ainsi que des variantes avec multiples dĂ©pĂŽts et pĂ©riodes. La mĂ©thode est Ă©tendue aux VRP avec contraintes de fenĂȘtres de temps, durĂ©e de route, et horaires de conducteurs. Ces applications mettent en jeu de nouvelles mĂ©thodes d'Ă©valuation efficaces de contraintes temporelles relaxĂ©es, des phases de dĂ©composition, et des recherches arborescentes pour l'insertion des pauses des conducteurs. Un algorithme de gestion implicite du placement des dĂ©pĂŽts au cours de recherches locales, par programmation dynamique, est aussi proposĂ©. Des Ă©tudes expĂ©rimentales approfondies dĂ©montrent la contribution notable des nouvelles stratĂ©gies au sein de plusieurs cadres mĂ©ta-heuristiques. Afin de traiter la variĂ©tĂ© des attributs, un cadre de rĂ©solution heuristique modulaire est prĂ©sentĂ© ainsi qu'un algorithme gĂ©nĂ©tique hybride unifiĂ© (UHGS). Les attributs sont gĂ©rĂ©s par des composants Ă©lĂ©mentaires adaptatifs. Des expĂ©rimentations sur 26 variantes du VRP et 39 groupes d'instances dĂ©montrent la performance remarquable de UHGS qui, avec une unique implĂ©mentation et paramĂ©trage, Ă©galise ou surpasse les nombreux algorithmes dĂ©diĂ©s, issus de plus de 180 articles, rĂ©vĂ©lant ainsi que la gĂ©nĂ©ralitĂ© ne s'obtient pas forcĂ©ment aux dĂ©pends de l'efficacitĂ© pour cette classe de problĂšmes. Enfin, pour traiter les problĂšmes riches, UHGS est Ă©tendu au sein d'un cadre de rĂ©solution parallĂšle coopĂ©ratif Ă  base de dĂ©composition, d'intĂ©gration de solutions partielles, et de recherche guidĂ©e. L'ensemble de ces travaux permet de jeter un nouveau regard sur les MAVRP et les problĂšmes de timing, leur rĂ©solution par des mĂ©thodes mĂ©ta-heuristiques, ainsi que les mĂ©thodes gĂ©nĂ©ralistes pour l'optimisation combinatoire.The Vehicle Routing Problem (VRP) involves designing least cost delivery routes to service a geographically-dispersed set of customers while taking into account vehicle-capacity constraints. This NP-hard combinatorial optimization problem is linked with multiple applications in logistics, telecommunications, robotics, crisis management in military and humanitarian frameworks, among others. Practical routing applications are usually quite distinct from the academic cases, encompassing additional sets of specific constraints, objectives and decisions which breed further new problem variants. The resulting "Multi-Attribute" Vehicle Routing Problems (MAVRP) are the support of a vast literature which, however, lacks unified methods capable of addressing multiple MAVRP. In addition, some "rich" VRPs, i.e. those that involve several attributes, may be difficult to address because of the wide array of combined and possibly antagonistic decisions they require. This thesis contributes to address these challenges by means of problem structure analysis, new metaheuristics and unified method developments. The "winning strategies" of 64 state-of-the-art algorithms for 15 different MAVRP are scrutinized in a unifying review. Another analysis is targeted on "timing" problems and algorithms for adjusting the execution dates of a given sequence of tasks. Such methods, independently studied in different research domains related to routing, scheduling, resource allocation, and even isotonic regression are here surveyed in a multidisciplinary review. A Hybrid Genetic Search with Advanced Diversity Control (HGSADC) is then introduced, which combines the exploration breadth of population-based evolutionary search, the aggressive-improvement capabilities of neighborhood-based metaheuristics, and a bi-criteria evaluation of solutions based on cost and diversity measures. Results of remarkable quality are achieved on classic benchmark instances of the capacitated VRP, the multi-depot VRP, and the periodic VRP. Further extensions of the method to VRP variants with constraints on time windows, limited route duration, and truck drivers' statutory pauses are also proposed. New route and neighborhood evaluation procedures are introduced to manage penalized infeasible solutions w.r.t. to time-window and duration constraints. Tree-search procedures are used for drivers' rest scheduling, as well as advanced search limitation strategies, memories and decomposition phases. A dynamic programming-based neighborhood search is introduced to optimally select the depot, vehicle type, and first customer visited in the route during local searches. The notable contribution of these new methodological elements is assessed within two different metaheuristic frameworks. To further advance general-purpose MAVRP methods, we introduce a new component-based heuristic resolution framework and a Unified Hybrid Genetic Search (UHGS), which relies on modular self-adaptive components for addressing problem specifics. Computational experiments demonstrate the groundbreaking performance of UHGS. With a single implementation, unique parameter setting and termination criterion, this algorithm matches or outperforms all current problem-tailored methods from more than 180 articles, on 26 vehicle routing variants and 39 benchmark sets. To address rich problems, UHGS was included in a new parallel cooperative solution framework called "Integrative Cooperative Search (ICS)", based on problem decompositions, partial solutions integration, and global search guidance. This compendium of results provides a novel view on a wide range of MAVRP and timing problems, on efficient heuristic searches, and on general-purpose solution methods for combinatorial optimization problems

    A Realistic Model to Support Rescue Operations after an Earthquake via UAVs

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    In this paper, we consider the problem of completely flying over an area just hit by an earthquake with a fleet of Unmanned Aerial Vehicles (UAVs) to opportunely direct rescue teams. The cooperation between UAVs ensures that the search for possible survivors can be faster and more effective than the solutions currently implemented by civil protection. To study this scenario, we introduce the Cover by Multitrips with Priorities (CMP) problem, which tries to keep into account all the main real-life issues connected to the flight and coordination of the UAVs. We conduct a theoretical study to estimate the best number of UAVs and additional batteries, to give indications to the organization that leads the rescue teams to be able to guarantee rapid and effective rescue. Finally, based on some theoretical considerations, we propose some heuristics that tackle the problem of flying over the whole area with a fleet of UAVs in the shortest possible time. Simulations show that they work efficiently in both the proposed scenarios and provide better performance than previous solutions once they are arranged to work in our scenarios. The main advantages of our approach w.r.t. the current drone-based solutions used by the civil defense are that UAVs do not need drivers so the time of all available rescue workers can be invested in doing something else. In our model, we take into account that some sites (e.g. buildings with a high fire risk or schools and hospitals) have a higher priority and must be inspected first, and the possibility that UAVs can make a decision based on what they detect. Finally, our approach allows UAVs to collaborate so that the same sites will be flown over exactly once in order to speed up the rescue mission

    ProblĂšme de transport avec contraintes d'horaires

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    L’industrie forestiĂšre est un secteur extrĂȘmement important pour plusieurs pays dont le Canada. En 2007, ce secteur offrait de l’emploi Ă  environ 1 million de personnes (directement et indirectement)Ă  travers le pays et a contribuĂ© par 23.4milliardsaˋlabalancecommercialenationale.Plusieursprobleˋmeslieˊsaˋcetteindustriesontdenatured’aideaˋladeˊcision.Ilssedivisentgeˊneˊralemententroiscateˊgories:strateˊgique,tactiqueetopeˊrationnelle.Toutaulongdecettetheˋse,nousnoussommesinteˊresseˊaˋcettedernieˋrecateˊgorieetpluspreˊciseˊmentauprobleˋmedutransportforestieravechoraire.Danslalitteˊraturedudomaine,cettequestionafaitl’objetdeplusieurstravaux.Denotrepart,nousavonsadapteˊleprobleˋmeaucontextecanadienenprenantencomptelescontraintesdesynchronisationentreleschargeusesetlescamions.Cescontraintesdesynchronisationtraduisentlefaitqueleschargeusesenfore^tnepeuventpassupporterd’autresopeˊrationsenceslieux,aˋpartlechargement,vulagrandesuperficiedessitesforestierscanadiens.Ainsi,ileˊtaitprimordialdeminimiserlesattentesdeschargeusesetdescamions,pourreˊduirelescou^tsdetransport.Danslepremierarticledecetravail,nousavonstraiteˊleprobleˋmejournalierouˋnousavonssupposeˊquelesreque^tesdetransportsontconnuesaˋl’avance.Unemeˊthodehybridemettantenoeuvrelaprogrammationparcontraintesetlaprogrammationlineˊaireennombresentiersaeˊteˊadopteˊe,desortequecettedernieˋremodeˊliselaviicirculationdescamionscommeunprobleˋmedeflotaˋcou^tminimumdansunreˊseau,alorsqueprogrammationparcontraintess’occupedel’ordonnancementdesta^ches,unefoislacirculationesteˊtablie.−−−−−−−−−−ABSTRACTTheforestindustryisanimportanteconomicsectorforseveralcountriesincludingCanada.In2007,thisindustryemployedabout1millionpeople(directlyandindirectly),andcontributed23.4 milliards Ă  la balance commerciale nationale. Plusieurs problĂšmes liĂ©s Ă  cette industrie sont de nature d’aide Ă  la dĂ©cision. Ils se divisent gĂ©nĂ©ralement en trois catĂ©gories : stratĂ©gique, tactique et opĂ©rationnelle. Tout au long de cette thĂšse, nous nous sommes intĂ©ressĂ© Ă  cette derniĂšre catĂ©gorie et plus prĂ©cisĂ©ment au problĂšme du transport forestier avec horaire. Dans la littĂ©rature du domaine, cette question a fait l’objet de plusieurs travaux. De notre part, nous avons adaptĂ© le problĂšme au contexte canadien en prenant en compte les contraintes de synchronisation entre les chargeuses et les camions. Ces contraintes de synchronisation traduisent le fait que les chargeuses en forĂȘt ne peuvent pas supporter d’autres opĂ©rations en ces lieux, Ă  part le chargement, vu la grande superficie des sites forestiers canadiens. Ainsi, il Ă©tait primordial de minimiser les attentes des chargeuses et des camions, pour rĂ©duire les coĂ»ts de transport. Dans le premier article de ce travail, nous avons traitĂ© le problĂšme journalier oĂč nous avons supposĂ© que les requĂȘtes de transport sont connues Ă  l’avance. Une mĂ©thode hybride mettant en oeuvre la programmation par contraintes et la programmation linĂ©aire en nombres entiers a Ă©tĂ© adoptĂ©e, de sorte que cette derniĂšre modĂ©lise la vii circulation des camions comme un problĂšme de flot Ă  coĂ»t minimum dans un rĂ©seau, alors que programmation par contraintes s’occupe de l’ordonnancement des tĂąches, une fois la circulation est Ă©tablie.----------ABSTRACT The forest industry is an important economic sector for several countries including Canada. In 2007, this industry employed about 1 million people (directly and indirectly),and contributed 23.4 billion to Canada’s trade balance. The operations research problems related to this sector are divided into three categories: strategic, tactical and operational. In this thesis, we are interested in the later category and more precisely in the log-truck scheduling problem. Many papers in the literature have addressed this issue, and our contribution has been to address the problem to the Canadian context, taking into account the synchronization constraints between loarders and trucks. These constraints reflect the fact that forest-loaders cannot support other operations in forests except loading, since in Canada, we have large areas.In the first article of this thesis, we presented the daily problem where we have assumed that requests are known in advance. We proposed a hybrid approach involving a linear model to deal with the routing part of the problem and a constraint programming model to deal the scheduling part. Both of these models are combined through the exchange of global cardinality constraints. In the second article, we discussed the weekly problem where inventories at wood mills are taken into consideration in order to allow wood mills to work in a just in x time mode. For this purpose, we have developed a two-phase method

    Should I send now or send later? A decision-theoretic approach to transmission scheduling in sensor networks with mobile sinks

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    Mobile sinks can significantly extend the lifetime of a sensor network by eliminating the need for expensive hop-by-hop routing. However, a sensor node might not always have a mobile sink in transmission range, or the mobile sink might be so far that the data transmission would be very expensive. In the latter case, the sensor node needs to make a decision whether it should send the data now, or take the risk to wait for a more favorable occasion. Making the right decisions in this transmission scheduling problem has significant impact on the performance and lifetime of the node. In this paper, we investigate the fundamentals of the transmission scheduling problem for sensor networks with mobile sinks. We first develop a dynamic programming-based optimal algorithm for the case when the mobility of the sinks is known in advance. Then, we describe two decision theoretic algorithms which use only probabilistic models learned from the history of interaction with the mobile sinks, and do not require knowledge about their future mobility patterns. The first algorithm uses Markov Decision Processes with states without history information, while the second algorithm encodes some elements of the history into the state. Through a series of experiments, we show that the decision theoretic approaches significantly outperform naive heuristics, and can have a performance close to that of the optimal approach, without requiring an advance knowledge of the mobility

    Connecting Vehicles to the Internet - Strategic Data Transmission for Mobile Nodes using Heterogeneous Wireless Networks

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    With the advent of autonomous driving, the driving experience for users of connected vehicles changes, as they may enjoy their travel time with entertainment, or work productively. In our modern society, both require a stable Internet access. However, future mobile networks are not expected to be able to satisfy application Quality of Service (QoS) requirements as needed, e.g. during rush hours. To address this problem, this dissertation investigates data transmission strategies that exploit the potential of using a heterogeneous wireless network environment. To this end, we combine two so far distinct concepts, firstly, network selection and, secondly, transmission time selection, creating a joint time-network selection strategy. It allows a vehicle to plan delay-tolerant data transmissions ahead, favoring transmission opportunities with the best prospective flow-network matches. In this context, our first contribution is a novel rating model for perceived transmission quality, which assesses transmission opportunities with respect to application QoS requirement violations, traded off by monetary cost. To enable unified assessment of all data transmissions, it generalizes existing specialized rating models from network selection and transmission time selection and extends them with a novel throughput requirement model. Based on that, we develop a novel joint time-network selection strategy, Joint Transmission Planning (JTP), as our second contribution, planning optimized data transmissions within a defined time horizon. We compare its transmission quality to that of three predominant state-of-the-art transmission strategies, revealing that JTP outperforms the others significantly by up to 26%. Due to extensive scenario variation, we discover broad stability of JTP reaching 87-91% of the optimum. As JTP is a planning approach relying on prediction data, the transmission quality is strongly impaired when executing its plans under environmental changes. To mitigate this impact, we develop a transmission plan adaptation as our third contribution, modifying the planned current transmission online in order to comply with the changes. Even under strong changes of the vehicle movement and the network environment, it sustains 57%, respectively 36%, of the performance gain from planning. Finally, we present our protocol Mobility management for Vehicular Networking (MoVeNet), pooling available network resources of the environment to enable flexible packet dispatching without breaking connections. Its distributed architecture provides broad scalability and robustness against node failures. It complements control mechanisms that allow a demand-based and connection-specific trade-off between overhead and latency. Less than 9 ms additional round trip time in our tests, instant handover and 0 to 4 bytes per-packet overhead prove its efficiency. Employing the presented strategies and mechanisms jointly, users of connected vehicles and other mobile devices can significantly profit from the demonstrated improvements in application QoS satisfaction and reduced monetary cost

    Location of charging stations in electric car sharing systems

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    Electric vehicles are prime candidates for use within urban car sharing systems, both from economic and environmental perspectives. However, their relatively short range necessitates frequent and rather time-consuming recharging throughout the day. Thus, charging stations must be built throughout the system's operational area where cars can be charged between uses. In this work, we introduce and study an optimization problem that models the task of finding optimal locations and sizes for charging stations, using the number of expected trips that can be accepted (or their resulting revenue) as a gauge of quality. Integer linear programming formulations and construction heuristics are introduced, and the resulting algorithms are tested on grid-graph-based instances, as well as on real-world instances from Vienna. The results of our computational study show that the best-performing exact algorithm solves most of the benchmark instances to optimality and usually provides small optimality gaps for the remaining ones, whereas our heuristics provide high-quality solutions very quickly. Our algorithms also provide better solutions than a sequential approach that considers strategic and operational decisions separately. A cross-validation study analyzes the algorithms' performance in cases where demand is uncertain and shows the advantage of combining individual solutions into a single consensus solution, and a simulation study investigates their behavior in car sharing systems that provide their customers with more flexibility regarding vehicle selection

    Integrated Models and Tools for Design and Management of Global Supply Chain

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    In modern and global supply chain, the increasing trend toward product variety, level of service, short delivery delay and response time to consumers, highlight the importance to set and configure smooth and efficient logistic processes and operations. In order to comply such purposes the supply chain management (SCM) theory entails a wide set of models, algorithms, procedure, tools and best practices for the design, the management and control of articulated supply chain networks and logistics nodes. The purpose of this Ph.D. dissertation is going in detail on the principle aspects and concerns of supply chain network and warehousing systems, by proposing and illustrating useful methods, procedures and support-decision tools for the design and management of real instance applications, such those currently face by enterprises. In particular, after a comprehensive literature review of the principal warehousing issues and entities, the manuscript focuses on design top-down procedure for both less-than-unit-load OPS and unit-load storage systems. For both, decision-support software platforms are illustrated as useful tools to address the optimization of the warehousing performances and efficiency metrics. The development of such interfaces enables to test the effectiveness of the proposed hierarchical top-down procedure with huge real case studies, taken by industry applications. Whether the large part of the manuscript deals with micro concerns of warehousing nodes, also macro issues and aspects related to the planning, design, and management of the whole supply chain are enquired and discussed. The integration of macro criticalities, such as the design of the supply chain infrastructure and the placement of the logistic nodes, with micro concerns, such the design of warehousing nodes and the management of material handling, is addressed through the definition of integrated models and procedures, involving the overall supply chain and the whole product life cycle. A new integrated perspective should be applied in study and planning of global supply chains. Each aspect of the reality influences the others. Each product consumed by a customer tells a story, made by activities, transformations, handling, processes, traveling around the world. Each step of this story accounts costs, time, resources exploitation, labor, waste, pollution. The economical and environmental sustainability of the modern global supply chain is the challenge to face

    Airline workforce scheduling based on multi-agent systems

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    El trabajo consiste en realizar una programación de horarios para los empleados del servicio al cliente de una aerolínea, junto con el transporte y ruteo de los mismos. Estos problemas son altamente complejos (NP-Hard), por consiguiente, se desarrolló un sistema basado en agentes que permitiera realizar la programación de horarios y simular escenarios inesperados para encontrar una solución eficaz y efectiva. Ademås, se busca comparar las soluciones de dos métodos diferentes, centralizado y distribuido, junto con la solución actual de la aerolínea, analizando el impacto que cada una de estas genera.This project focuses on the workforce scheduling for an airline's customer service employees, along with their transportation and routing. These problems are highly complex (NP-Hard), therefore, an agent-based system was developed that allowed scheduling and simulating unexpected scenarios to find an efficient and effective solution. In addition, it seeks to compare the solutions of two different methods, centralized and distributed, with the current solution of the airline, analyzing the impact that each of these generates.Ingeniero (a) IndustrialPregrad
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