Optimizing Decision Making on Business Processes Using a Combination of Process Mining, Job Shop, and Multivariate Resource Clustering

H. Prasetyo, R. Sarno, D. Wijaya, R. Budiraharjo, I. Waspada, K. R. Sungkono, A. F. Septiyanto
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引用次数: 1

Abstract

The current business environment has no room for inefficiency as it can cause companies to lose out to their competitors, to lose customer trust, and to experience cost overruns. Business processes within the company continue to grow and cause them to run more complex. The large scale and complexity of business processes pose a challenge in improving the quality of process model because the effectiveness of time and the efficiency of existing resources are the biggest challenges. In the context of optimizing business processes with a process mining approach, most current process models are optimized with a trace clustering approach to explore the model and to perform analysis on the resulting process model. Meanwhile, in the event log data, not only the activities but also the other resources, such as records of employee or staff working time, process service time, and processing costs, are recorded. This article proposes a mechanism alternative to optimize business processes by exploring the resources that occur in the process. The mechanism is carried out in three stages. The first stage is optimizing the job shop scheduling method from the generated event log. Scheduling the time becomes a problem in the job shop. Utilizing the right time can increase the effectiveness of performance in order to reduce costs. Scheduling can be defined as the allocation of multiple jobs in a series of machines, in which each machine only does one job at a time. In general, scheduling becomes a problem when sequencing the operations and allocating them into specific time slots without prolonging the technical and capacity constraints. The second stage is generating the resource value that is recorded in the event log from the results of analysis of the previous stage, namely, job shop scheduling. The resource values are multivariate and then clustered to determine homogeneous clusters. The last stage is optimizing the nonlinear multipolynomials in the homogeneous cluster formed by using the Hessian solution. The results obtained are analyzed to get recommendations on business processes that are appropriate for the company’s needs. The impact of long waiting times will increase service costs, but by improving workload, costs can be reduced. The process model and the value of service costs resulting from the mechanism in the research can be a reference for process owners in evaluating and improving ongoing processes.
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结合流程挖掘、作业车间和多元资源聚类优化业务流程决策
目前的商业环境没有低效率的空间,因为它可能导致公司输给竞争对手,失去客户信任,并经历成本超支。公司内部的业务流程继续增长,并导致其运行更加复杂。业务流程的大规模和复杂性对流程模型的质量改进提出了挑战,因为时间的有效性和现有资源的效率是最大的挑战。在使用流程挖掘方法优化业务流程的上下文中,大多数当前流程模型都使用跟踪聚类方法进行优化,以探索模型并对结果流程模型执行分析。同时,在事件日志数据中,不仅记录活动,还记录其他资源,如员工工作时间、流程服务时间和处理成本的记录。本文提出了一种机制替代方案,通过探索流程中出现的资源来优化业务流程。该机制分三个阶段进行。第一阶段是根据生成的事件日志优化作业车间调度方法。时间安排成为作业车间的一个问题。利用正确的时间可以提高性能的有效性,从而降低成本。调度可以定义为在一系列机器中分配多个作业,其中每台机器一次只做一个作业。通常,在不延长技术和容量限制的情况下,对操作进行排序并将其分配到特定的时隙时,调度成为一个问题。第二阶段是根据前一阶段的分析结果生成记录在事件日志中的资源值,即作业车间调度。资源值是多变量的,然后聚类以确定同质簇。最后一步是利用Hessian解对齐次簇中的非线性多重多项式进行优化。对获得的结果进行分析,以获得适合公司需求的业务流程建议。长时间等待的影响将增加服务成本,但通过改善工作量,可以降低成本。研究过程模型和由此产生的服务成本价值可以为过程所有者评估和改进正在进行的过程提供参考。
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