2013
DOI: 10.1021/ie302788g
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Hybrid Bilevel-Lagrangean Decomposition Scheme for the Integration of Planning and Scheduling of a Network of Batch Plants

Abstract: Motivated by a real-world industrial problem, this work deals with the integration of planning and scheduling in the operation of a network of batch plants. The network consists of single-stage, multiproduct batch plants located in different sites, which can exchange intermediate products in order to blend them to obtain finished products. The time horizon is given and divided into multiple time periods, at the end of which the customer demands have to be exactly satisfied. The planning model is a simplified a… Show more

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Cited by 31 publications
(24 citation statements)
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“…To tackle the computational challenge of MILP scheduling models, several solution methods have been proposed: (1) tightening methods based on preprocessing algorithms and valid inequalities [32][33][34][35][36][37][38]; (2) reformulations [5,37,[39][40][41]; (3) decomposition methods [42][43][44][45][46][47]; (4) heuristics [19,[48][49][50]; and (5) hybrid methods [51][52][53][54][55]. Finally, parallel computing has been utilized to obtain faster solutions [56][57][58].…”
Section: Solution Methodsmentioning
confidence: 99%
“…To tackle the computational challenge of MILP scheduling models, several solution methods have been proposed: (1) tightening methods based on preprocessing algorithms and valid inequalities [32][33][34][35][36][37][38]; (2) reformulations [5,37,[39][40][41]; (3) decomposition methods [42][43][44][45][46][47]; (4) heuristics [19,[48][49][50]; and (5) hybrid methods [51][52][53][54][55]. Finally, parallel computing has been utilized to obtain faster solutions [56][57][58].…”
Section: Solution Methodsmentioning
confidence: 99%
“…You et al proposed a strategy using both bi‐level and Lagrangian decomposition methods to solve a multi‐period MILP problem for a multisite system . Calfa et al proposed a hybrid method with bi‐level and Temporal Lagrangian decomposition strategies which dealt with the integration of planning and scheduling problems in the operation of a network of batch plants …”
Section: Solution Frameworkmentioning
confidence: 99%
“…Material balances of production and consumption in continuous time t are presented in Equations (30,31). Equation (32) calculates the amount of leftover materials during the operation.…”
Section: Furnace Time Sequence Constraintsmentioning
confidence: 99%
“…(1) tightening methods including preprocessing algorithms for fixing binary variables (Pinto and Grossmann, 1995;Blomer and Gunther, 2000) and generating valid inequalities , as well as the solution of auxiliary LP and MIP models for the generation of valid inequalities (Burkard and Hatzl 2005;Janak and Floudas, 2008); (2) reformulations including variable disaggregation (Sahinidis and Grossmann, 1991;Yee and Shah, 1998) and reformulation-linearization (Janak and Floudas, 2008) techniques; (3) decomposition methods relying on the structure of the network , the hierarchy of decisions Kelly and Zyngier, 2008), the iterative solution of a simpler MIP model , Lagrangean relaxation and decomposition (Wu and Ierapetritou, 2003;Calfa et al, 2013), and rolling horizon approaches (Dimitriadis et al, 1997;Lin et al, 2002); and (4) algorithmic enhancements including preprocessing algorithms to generate strong valid inequalities , and the use of heuristics (Mendez and Cerda, 2003;Roslof et al, 2001;Kopanos et al, 2010). Furthermore, researchers have proposed decomposition methods that rely on the integration of different solution methods, both for sequential (Jain and Grossmann, 2001;Harjunkoski and Grossmann, 2002;Maravelias, 2006) and network (Maravelias and Grossmann, 2004;Roe et al, 2005) environments.…”
Section: Literature Reviewmentioning
confidence: 99%