7,836 research outputs found

    Decision support for build-to-order supply chain management through multiobjective optimization

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    This is the post-print version of the final paper published in International Journal of Production Economics. The published article is available from the link below. Changes resulting from the publishing process, such as peer review, editing, corrections, structural formatting, and other quality control mechanisms may not be reflected in this document. Changes may have been made to this work since it was submitted for publication. Copyright @ 2010 Elsevier B.V.This paper aims to identify the gaps in decision-making support based on multiobjective optimization (MOO) for build-to-order supply chain management (BTO-SCM). To this end, it reviews the literature available on modelling build-to-order supply chains (BTO-SC) with the focus on adopting MOO techniques as a decision support tool. The literature has been classified based on the nature of the decisions in different part of the supply chain, and the key decision areas across a typical BTO-SC are discussed in detail. Available software packages suitable for supporting decision making in BTO supply chains are also identified and their related solutions are outlined. The gap between the modelling and optimization techniques developed in the literature and the decision support needed in practice are highlighted. Future research directions to better exploit the decision support capabilities of MOO are proposed. These include: reformulation of the extant optimization models with a MOO perspective, development of decision supports for interfaces not involving manufacturers, development of scenarios around service-based objectives, development of efficient solution tools, considering the interests of each supply chain party as a separate objective to account for fair treatment of their requirements, and applying the existing methodologies on real-life data sets.Brunel Research Initiative and Enterprise Fund (BRIEF

    A multiple channel queueing model under an uncertain environment with multiclass arrivals for supplying demands in a cement industry

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    In recent years, cement consumption has increased in most Asian countries, including Malaysia. There are many factors which affect the supply of the increasing order demands in the cement industry, such as traffic congestion, logistics, weather and machine breakdowns. These factors hinder smooth and efficient supply, especially during periods of peak congestion at the main gate of the industry where queues occur as a result of inability to keep to the order deadlines. Basic elements, such as arrival and service rates, that cannot be predetermined must be considered under an uncertain environment. Solution approaches including conventional queueing techniques, scheduling models and simulations were unable to formulate the performance measures of the cement queueing system. Hence, a new procedure of fuzzy subset intervals is designed and embedded in a queuing model with the consideration of arrival and service rates. As a result, a multiple channel queueing model with multiclass arrivals, (M1, M2)/G/C/2Pr, under an uncertain environment is developed. The model is able to estimate the performance measures of arrival rates of bulk products for Class One and bag products for Class Two in the cement manufacturing queueing system. For the (M1, M2)/G/C/2Pr fuzzy queueing model, two defuzzification techniques, namely the Parametric Nonlinear Programming and Robust Ranking are used to convert fuzzy queues into crisp queues. This led to three proposed sub-models, which are sub-model 1, MCFQ-2Pr, sub-model 2, MCCQESR-2Pr and sub-model 3, MCCQ-GSR-2Pr. These models provide optimal crisp values for the performance measures. To estimate the performance of the whole system, an additional step is introduced through the TrMF-UF model utilizing a utility factor based on fuzzy subset intervals and the α-cut approach. Consequently, these models help decision-makers deal with order demands under an uncertain environment for the cement manufacturing industry and address the increasing quantities needed in future

    Stochastic multi-period multi-product multi-objective Aggregate Production Planning model in multi-echelon supply chain

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    In this paper a multi-period multi-product multi-objective aggregate production planning (APP) model is proposed for an uncertain multi-echelon supply chain considering financial risk, customer satisfaction, and human resource training. Three conflictive objective functions and several sets of real constraints are considered concurrently in the proposed APP model. Some parameters of the proposed model are assumed to be uncertain and handled through a two-stage stochastic programming (TSSP) approach. The proposed TSSP is solved using three multi-objective solution procedures, i.e., the goal attainment technique, the modified Δ-constraint method, and STEM method. The whole procedure is applied in an automotive resin and oil supply chain as a real case study wherein the efficacy and applicability of the proposed approaches are illustrated in comparison with existing experimental production planning method

    Affine arithmetic-based methodology for energy hub operation-scheduling in the presence of data uncertainty

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    In this study, the role of self-validated computing for solving the energy hub-scheduling problem in the presence of multiple and heterogeneous sources of data uncertainties is explored and a new solution paradigm based on affine arithmetic is conceptualised. The benefits deriving from the application of this methodology are analysed in details, and several numerical results are presented and discussed

    Decision support system to schedule and monitor crop production operations using fuzzy logic

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    Conventional analytical procedures based on classical set theory or first-order logic have led to only partial success in the tactical scheduling of agricultural operations, an important farm management problem. The partial success can be attributed to the fact that while information available in the agricultural environment is fuzzy in nature, the classical set theory and first-order logic manipulate information based on the assumption that it is not fuzzy. The theory of fuzzy subsets which allows representation of inexact information has been suggested as a possible tool that can be used successfully in such circumstances;Trafficability of the field has a great bearing in deciding whether or not to carry out a given agricultural operation. Classical set theory, which divides days into workable and not workable sets is inadequate for farm management decision making. An alternative approach using fuzzy set theory to assess the extent to which a field may be dry enough to be trafficable was suggested. This approach was compared with a classical set theory based approach and was found to yield results more informative in deciding whether or not to carry out an operation on a chosen day. This was particularly true at intermediate levels of soil moisture content;Agricultural operations are carried out to satisfy certain objectives like preparing the field for planting, planting the seeds, and applying fertilizer and herbicides at the right time. Deciding whether or not to carry out an agricultural operation on a chosen day requires evaluation of the extent to which each of the competing alternatives satisfy the manager\u27s objectives. The multi-objective decision making approach using linguistic approximation was modified to define a methodology for decision making. Operations on two farms with different urgency levels were used to illustrate the behaviour of the model under different situations;A fuzzy logic based program in the C computer language was developed to assist in deciding whether or not to carry out tillage operations on a given day. The decision procedure accounts for factors like soil moisture content, urgency of the operation, weather forecast, and importance of the operation. The program was evaluated using weather forecast data collected daily for a cropping season and the decisions made by the managers of two farms on whether or not to carry out tillage operations. The proportion of the total number of days compared on which the results were in agreement with the two managers were 0.75 for one with a relatively small and compact farm and 0.45 for the other, whose operation was distributed and relatively large

    Enhanced genetic algorithm-based fuzzy multiobjective strategy to multiproduct batch plant design

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    The design of such plants necessary involves how equipment may be utilized, which means that plant scheduling and production must form an integral part of the design problem. This work proposes an alternative treatment of the imprecision (demands) by using fuzzy concepts. In this study, we introduce a new approach to the design problem based on a multiobjective genetic algorithm, taking into account simultaneously maximization of the net present value NPV ~ and two other performance criteria, i.e. the production delay/advance and a flexibility criterion. The methodology provides a set of scenarios that are helpful to the decision’s maker and constitutes a very promising framework for taken imprecision into account in new product development stage. Besides, a hybrid selection method Pareto rank-tournament was proposed and showed a better performance than the classical Goldberg’s wheel, systematically leading to a higher number of non-dominated solutions

    Datacenter management for on-site intermittent and uncertain renewable energy sources

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    Les technologies de l'information et de la communication sont devenues, au cours des derniĂšres annĂ©es, un pĂŽle majeur de consommation Ă©nergĂ©tique avec les consĂ©quences environnementales associĂ©es. Dans le mĂȘme temps, l'Ă©mergence du Cloud computing et des grandes plateformes en ligne a causĂ© une augmentation en taille et en nombre des centres de donnĂ©es. Pour rĂ©duire leur impact Ă©cologique, alimenter ces centres avec des sources d'Ă©nergies renouvelables (EnR) apparaĂźt comme une piste de solution. Cependant, certaines EnR telles que les Ă©nergies solaires et Ă©oliennes sont liĂ©es aux conditions mĂ©tĂ©orologiques, et sont par consĂ©quent intermittentes et incertaines. L'utilisation de batteries ou d'autres dispositifs de stockage est souvent envisagĂ©e pour compenser ces variabilitĂ©s de production. De par leur coĂ»t important, Ă©conomique comme Ă©cologique, ainsi que les pertes Ă©nergĂ©tiques engendrĂ©es, l'utilisation de ces dispositifs sans intĂ©gration supplĂ©mentaire est insuffisante. La consommation Ă©lectrique d'un centre de donnĂ©es dĂ©pend principalement de l'utilisation des ressources de calcul et de communication, qui est dĂ©terminĂ©e par la charge de travail et les algorithmes d'ordonnancement utilisĂ©s. Pour utiliser les EnR efficacement tout en prĂ©servant la qualitĂ© de service du centre, une gestion coordonnĂ©e des ressources informatiques, des sources Ă©lectriques et du stockage est nĂ©cessaire. Il existe une grande diversitĂ© de centres de donnĂ©es, ayant diffĂ©rents types de matĂ©riel, de charge de travail et d'utilisation. De la mĂȘme maniĂšre, suivant les EnR, les technologies de stockage et les objectifs en termes Ă©conomiques ou environnementaux, chaque infrastructure Ă©lectrique est modĂ©lisĂ©e et gĂ©rĂ©e diffĂ©remment des autres. Des travaux existants proposent des mĂ©thodes de gestion d'EnR pour des couples bien spĂ©cifiques de modĂšles Ă©lectriques et informatiques. Cependant, les multiples combinaisons de ces deux parties rendent difficile l'extrapolation de ces approches et de leurs rĂ©sultats Ă  des infrastructures diffĂ©rentes. Cette thĂšse explore de nouvelles mĂ©thodes pour rĂ©soudre ce problĂšme de coordination. Une premiĂšre contribution reprend un problĂšme d'ordonnancement de tĂąches en introduisant une abstraction des sources Ă©lectriques. Un algorithme d'ordonnancement est proposĂ©, prenant les prĂ©fĂ©rences des sources en compte, tout en Ă©tant conçu pour ĂȘtre indĂ©pendant de leur nature et des objectifs de l'infrastructure Ă©lectrique. Une seconde contribution Ă©tudie le problĂšme de planification de l'Ă©nergie d'une maniĂšre totalement agnostique des infrastructures considĂ©rĂ©es. Les ressources informatiques et la gestion de la charge de travail sont encapsulĂ©es dans une boĂźte noire implĂ©mentant un ordonnancement sous contrainte de puissance. La mĂȘme chose s'applique pour le systĂšme de gestion des EnR et du stockage, qui agit comme un algorithme d'optimisation d'engagement de sources pour rĂ©pondre Ă  une demande. Une optimisation coopĂ©rative et multiobjectif, basĂ©e sur un algorithme Ă©volutionnaire, utilise ces deux boĂźtes noires afin de trouver les meilleurs compromis entre les objectifs Ă©lectriques et informatiques. Enfin, une troisiĂšme contribution vise les incertitudes de production des EnR pour une infrastructure plus spĂ©cifique. En utilisant une formulation en processus de dĂ©cision markovien (MDP), la structure du problĂšme de dĂ©cision sous-jacent est Ă©tudiĂ©e. Pour plusieurs variantes du problĂšme, des mĂ©thodes sont proposĂ©es afin de trouver les politiques optimales ou des approximations de celles-ci avec une complexitĂ© raisonnable.In recent years, information and communication technologies (ICT) became a major energy consumer, with the associated harmful ecological consequences. Indeed, the emergence of Cloud computing and massive Internet companies increased the importance and number of datacenters around the world. In order to mitigate economical and ecological cost, powering datacenters with renewable energy sources (RES) began to appear as a sustainable solution. Some of the commonly used RES, such as solar and wind energies, directly depends on weather conditions. Hence they are both intermittent and partly uncertain. Batteries or other energy storage devices (ESD) are often considered to relieve these issues, but they result in additional energy losses and are too costly to be used alone without more integration. The power consumption of a datacenter is closely tied to the computing resource usage, which in turn depends on its workload and on the algorithms that schedule it. To use RES as efficiently as possible while preserving the quality of service of a datacenter, a coordinated management of computing resources, electrical sources and storage is required. A wide variety of datacenters exists, each with different hardware, workload and purpose. Similarly, each electrical infrastructure is modeled and managed uniquely, depending on the kind of RES used, ESD technologies and operating objectives (cost or environmental impact). Some existing works successfully address this problem by considering a specific couple of electrical and computing models. However, because of this combined diversity, the existing approaches cannot be extrapolated to other infrastructures. This thesis explores novel ways to deal with this coordination problem. A first contribution revisits batch tasks scheduling problem by introducing an abstraction of the power sources. A scheduling algorithm is proposed, taking preferences of electrical sources into account, though designed to be independent from the type of sources and from the goal of the electrical infrastructure (cost, environmental impact, or a mix of both). A second contribution addresses the joint power planning coordination problem in a totally infrastructure-agnostic way. The datacenter computing resources and workload management is considered as a black-box implementing a scheduling under variable power constraint algorithm. The same goes for the electrical sources and storage management system, which acts as a source commitment optimization algorithm. A cooperative multiobjective power planning optimization, based on a multi-objective evolutionary algorithm (MOEA), dialogues with the two black-boxes to find the best trade-offs between electrical and computing internal objectives. Finally, a third contribution focuses on RES production uncertainties in a more specific infrastructure. Based on a Markov Decision Process (MDP) formulation, the structure of the underlying decision problem is studied. For several variants of the problem, tractable methods are proposed to find optimal policies or a bounded approximation
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