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MULTI-RESOURCE EQUILIBRIUM OPTIMIZATION OF SCIENTIFIC RESEARCH PROJECTS BASED ON PIGEON COLONY ALGORITHM

机译:基于鸽子群算法的科研项目多资源均衡优化

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摘要

Balanced use of multiple resources has a significant impact on the quality of scientific research projects. Resources can be balanced by rationally arranging the implementation time of each project task. Traditional optimization problem solutions such as 'fixed project cycle and resource balance' include intelligent optimization algorithms such as genetic algorithms and particle swarm optimization. However, this paper innovatively applies the pigeon population algorithm to balancing and optimizing the use of multiple resources in scientific research projects. Firstly, the three aspects of cost, time difference and work importance are considered in order to establish a comprehensive evaluation system based on resource importance. A multi-resource equilibrium optimization mathematical model is then proposed in order to minimize the resource use variance. Finally, an example is tested to verify the effectiveness of the algorithm. Experiments show that the pigeon colony algorithm can effectively solve the optimal solution of multi-resource equilibrium optimization in scientific research. The work plan arrangement provided is more balanced than the initial solution and the suboptimal result chosen by project managers. Therefore, the pigeon colony algorithm has wide application prospects for scientific research projects and will have wide application prospects.
机译:均衡使用多种资源对科研项目质量产生重大影响。通过合理地安排每个项目任务的实施时间,可以平衡资源。传统优化问题解决方案,如“固定项目周期和资源平衡”,包括智能优化算法,如遗传算法和粒子群优化。然而,本文创新了鸽子群体算法对科研项目中多元资源的平衡和优化使用。首先,考虑成本,时间差和工作重要性的三个方面,以建立基于资源重要性的综合评估系统。然后提出了一种多资源平衡优化数学模型,以最小化资源使用方差。最后,测试一个例子以验证算法的有效性。实验表明,鸽子群算法可以有效解决科研中多资源均衡优化的最优解。提供的工作计划安排比项目经理选择的初始解决方案更加平衡,并且项目经理选择的次优效果。因此,鸽子群算法对科研项目具有广泛的应用前景,并具有广泛的应用前景。

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