IMPROVED MULTI-OBJECTIVE OPTIMIZATION IN BUSINESS PROCESS MANAGEMENT USING R-NSGA-II

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
V. O. Filatov, M. A. Yerokhin
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 Objective. The goal of this study is to improve upon the NSGA-II’s performance and, in turn, enhance the efficiency of multiobjective business process optimization. Specifically, we aim to incorporate reference points into NSGA-II. Our goal is to identify an optimized set of solutions that represent a trade-off between process execution time and the associated cost. We expect this set to have a higher spread and other quality metrics, compared to the prior outputs.
 Method. To accomplish our objective, we adopted a two-step approach. Firstly, we modified the original genetic algorithm by selecting and integrating the reference points that served to guide the search towards the Pareto-optimal front. This integration was designed to enhance the exploration and exploitation capabilities of the algorithm. Secondly, we employed the improved algorithm, namely R-NSGA-II, in the stochastic simulations of the business processes. The BPMN provided the input for these simulations, wherein we altered the resource allocation to observe the impact on process time and cost.
 Results. Our experimental results demonstrated that the R-NSGA-II significantly outperformed the original NSGA-II algorithm for the given process model, derived from the event log. The modified algorithm was able to identify a wider and more diverse Pareto-optimal front, thus providing a more comprehensive set of optimal solutions concerning cost and time.
 Conclusions. The study confirmed and underscored the potential of integrating the reference points into NSGA-II for optimizing business processes. The improved performance of R-NSGA-II, evident from the better Pareto-optimal front it identified, highlights its efficacy in multi-objective optimization problems, as well as the simplicity of the reference-based approaches in the scope of BPM. Our research poses the direction for the further exploration of the heuristics to improve the outcomes of the optimization techniques or their execution performance.","PeriodicalId":43783,"journal":{"name":"Radio Electronics Computer Science Control","volume":"41 1","pages":"0"},"PeriodicalIF":0.2000,"publicationDate":"2023-10-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Radio Electronics Computer Science Control","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.15588/1607-3274-2023-3-18","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"COMPUTER SCIENCE, HARDWARE & ARCHITECTURE","Score":null,"Total":0}
引用次数: 0

Abstract

Context. Business process management is a critical component in contemporary organizations for maintaining efficiency and achieving operational objectives. Optimization of these processes in terms of time and cost can lead to significant improvements in overall business performance. However, traditional optimization techniques often face challenges in handling multi-objective problems with a known time-cost trade-off, necessitating more effective solutions. The integration of a business process model and notation for a stochastic process simulation provides a robust foundation for analyzing these business processes and complies with stateof-the-art business process management. In prior studies, we applied several heuristic algorithms, including the evolutionary NSGAII, to find a Pareto-optimal set of solutions. We defined a solution as a pair of cost and time associated with a specific resource allocation. For one of the selected processes, the performance of NSGA-II was subpar compared to other techniques. Objective. The goal of this study is to improve upon the NSGA-II’s performance and, in turn, enhance the efficiency of multiobjective business process optimization. Specifically, we aim to incorporate reference points into NSGA-II. Our goal is to identify an optimized set of solutions that represent a trade-off between process execution time and the associated cost. We expect this set to have a higher spread and other quality metrics, compared to the prior outputs. Method. To accomplish our objective, we adopted a two-step approach. Firstly, we modified the original genetic algorithm by selecting and integrating the reference points that served to guide the search towards the Pareto-optimal front. This integration was designed to enhance the exploration and exploitation capabilities of the algorithm. Secondly, we employed the improved algorithm, namely R-NSGA-II, in the stochastic simulations of the business processes. The BPMN provided the input for these simulations, wherein we altered the resource allocation to observe the impact on process time and cost. Results. Our experimental results demonstrated that the R-NSGA-II significantly outperformed the original NSGA-II algorithm for the given process model, derived from the event log. The modified algorithm was able to identify a wider and more diverse Pareto-optimal front, thus providing a more comprehensive set of optimal solutions concerning cost and time. Conclusions. The study confirmed and underscored the potential of integrating the reference points into NSGA-II for optimizing business processes. The improved performance of R-NSGA-II, evident from the better Pareto-optimal front it identified, highlights its efficacy in multi-objective optimization problems, as well as the simplicity of the reference-based approaches in the scope of BPM. Our research poses the direction for the further exploration of the heuristics to improve the outcomes of the optimization techniques or their execution performance.
使用r-nsga-ii改进了业务流程管理中的多目标优化
上下文。业务流程管理是当代组织中保持效率和实现操作目标的关键组件。在时间和成本方面对这些流程进行优化可以显著改善整体业务绩效。然而,传统的优化技术在处理具有已知时间成本权衡的多目标问题时往往面临挑战,需要更有效的解决方案。业务流程模型和随机流程模拟符号的集成为分析这些业务流程提供了坚实的基础,并符合最先进的业务流程管理。在之前的研究中,我们使用了几种启发式算法,包括进化NSGAII,来寻找帕累托最优解集。我们将解决方案定义为与特定资源分配相关的一对成本和时间。对于其中一种选择的工艺,NSGA-II的性能低于其他工艺。 目标。本研究的目的是改善NSGA-II的性能,进而提高多目标业务流程优化的效率。具体来说,我们的目标是将参考点纳入NSGA-II。我们的目标是确定一组优化的解决方案,这些解决方案代表流程执行时间和相关成本之间的权衡。与之前的输出相比,我们希望这一组具有更高的传播和其他质量指标。 方法。为了实现我们的目标,我们采取了两步走的方法。首先,对原有的遗传算法进行改进,选择并积分用于引导搜索到帕累托最优前沿的参考点;这种集成旨在增强算法的探索和开发能力。其次,我们将改进后的R-NSGA-II算法应用于业务流程的随机模拟中。BPMN为这些模拟提供了输入,其中我们改变了资源分配,以观察对流程时间和成本的影响。 结果。我们的实验结果表明,对于给定的过程模型,R-NSGA-II显著优于原始NSGA-II算法,该算法源自事件日志。改进后的算法能够识别更广泛、更多样化的帕累托最优前沿,从而提供更全面的考虑成本和时间的最优解集。 结论。该研究证实并强调了将参考点集成到NSGA-II中以优化业务流程的潜力。R-NSGA-II的改进性能,从它识别的更好的帕累托最优前沿可以看出,突出了它在多目标优化问题中的有效性,以及在BPM范围内基于参考的方法的简单性。我们的研究为进一步探索启发式方法以改善优化技术的结果或其执行性能提供了方向。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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