Mingsong ChenYongxiang BaoXin FuGeguang PuTongquan Wei
Branch-and-bound (B&B) approaches are widely investigated in resource constrained scheduling (RCS). However, due to the lack of approaches that can generate a tight schedule at the beginning of the search, B&B approaches usually start with a large initial search space, which makes the following search of an optimal schedule time-consuming. To address this problem, this paper proposes a parallel two-phase B&B approach that can drastically reduce the overall RCS time. This paper makes three major contributions: i) it proposes three partial-search heuristics that can quickly find a tight schedule to compact the initial search space; ii) it presents a two-phase search framework that supports the efficient parallel search of an optimal schedule; iii) it investigates various bound sharing and speculation techniques among collaborative tasks to further improve the parallel search performance at different search phases. The experimental results based on well-established benchmarks demonstrate the efficacy of our proposed approach.
Mingsong ChenFan GuLei ZhouGeguang PuXiao Liu
Fortunato Crespo AbrilConcepción Maroto
Joel P. StinsonEdward W. DavisBasheer M. Khumawala
Mingsong ChenSaijie HuangGeguang PuPrabhat Mishra
Matthias HermannKarsten MüllerSebastian Engell