4.6 Article

Bi-Objective Scheduling Optimization for Discrete Time/Cost Trade-Off in Projects

Journal

SUSTAINABILITY
Volume 10, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/su10082802

Keywords

bi-objective optimization; heuristics; discrete time/cost trade-off; project scheduling

Funding

  1. Humanities and Social Sciences Foundation of the Ministry of Education of China [15YJCZH077]
  2. National Science Foundation of China [71602106, 71271019, 7161101015, 71702097]
  3. Fundamental Funds for Humanities and Social Sciences of Beijing Jiaotong University [2017jbwy004]
  4. College Young Teachers Training Program of Shanghai Municipal Education Commission [ZZSD16025]

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In sustainable project management, time and cost are two critical factors affecting the success of a project. Time/cost trade-offs in projects accelerate the execution of some activities by increasing the amount of non-renewable resources committed to them and therefore shorten the project duration. The discrete time/cost trade-off problem (DTCTP) has been extensively studied during the past 20 years. However, due to its complexity, the DTCTP-especially the DTCTP curve problem (DTCTP-C)-has only been solved for relatively small instances. To the best of our knowledge, there is no computational performance analysis for solving the DTCTP-C on large project instances with up to 500 activities. This paper aims to fill this gap. We present two bi-objective heuristic algorithms for the DTCTP-C where both project duration and cost are minimized. The objective is to obtain a good appropriate efficient set for the large-scale instances. The first algorithm is based on the non-dominated sorting genetic algorithm II (NSGA-II) and uses a specially designed critical path-based crossover operator. The second algorithm is a steepest descent heuristic which generates efficient solutions by iteratively solving the DTCTP with different deadlines. Computational experiments are conducted to validate the proposed algorithms on a large set of randomly generated problem instances.

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