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Title: Coil batching to improve productivity and energy utilization in steel production
Authors: Tang, Lixin
Meng, Ying
Chen, Zhi-Long
Liu, Jiyin
Keywords: Steel production
Batch annealing
Batching decisions
Integer programming
Dynamic programming
Branch-and-price-and-cut
Tabu search
Issue Date: 2016
Publisher: © INFORMS
Citation: TANG, L. ... et al., 2016. Coil batching to improve productivity and energy utilization in steel production. Manufacturing and Service Operations Management, 18 (2), pp.262-279.
Abstract: This paper investigates a practical batching decision problem that arises in the batch annealing operations in the cold rolling stage of steel production faced by most large iron and steel companies in the world. The problem is to select steel coils from a set of waiting coils to form batches to be annealed in available batch annealing furnaces and choose a median coil for each furnace. The objective is to maximize the total reward of the selected coils less the total coil'coil and coil'furnace mismatching cost. For a special case of the problem that arises frequently in practical settings where the coils are all similar and there is only one type of furnace available, we develop a polynomial-time dynamic programming algorithm to obtain an optimal solution. For the general case of the problem, which is strongly NP-hard, an exact branch-and-price-and-cut solution algorithm is developed using a column and row generation framework. A variable reduction strategy is also proposed to accelerate the algorithm. The algorithm is capable of solving medium-size instances to optimality within a reasonable computation time. In addition, a tabu search heuristic is proposed for solving larger instances. Three simple search neighborhoods, as well as a sophisticated variable-depth neighborhood, are developed. This heuristic can generate near-optimal solutions for large instances within a short computation time. Using both randomly generated and real-world production data sets, we show that our algorithms are superior to the typical rule-based planning approach used by many steel plants. A decision support system that embeds our algorithms was developed and implemented at Baosteel to replace their rule-based planning method. The use of the system brings significant benefits to Baosteel, including an annual net profit increase of at least 1.76 million U.S. dollars and a large reduction of standard coal consumption and carbon dioxide emissions.
Description: This paper was accepted for publication in the journal Manufacturing and Service Operations Management and the definitive published version is available at http://dx.doi.org/10.1287/msom.2015.0558.
Version: Accepted for publication
DOI: 10.1287/msom.2015.0558
URI: https://dspace.lboro.ac.uk/2134/21455
Publisher Link: http://dx.doi.org/10.1287/msom.2015.0558
ISSN: 1523-4614
Appears in Collections:Published Articles (Business School)

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