College counseling centers in various universities have been tasked with the important responsibility of attending to the mental health needs of their students. Owing to the unprecedented recent surge of demand for such services, college counseling centers are facing several crippling resource-level challenges. This is leading to longer wait times which limits access to critical mental health services. To address these challenges, we construct a discrete-event simulation model that captures several intricate details of their operations and provides a data-driven framework to quantify the effect of different policy changes. In contrast to existing work on this matter, which are primarily based on qualitative assessments, the considered quantitative approach has the potential to lead to key observations that can assist counseling directors in constructing a system with desirable performance. To demonstrate the benefit of the considered simulation model, we use data specific to Texas A&M's Counseling & Psychological Services to run a series of numerical experiments. Our results demonstrate the predictive power of the simulation model, highlight a number of key observations, and identify policy changes that result in desirable system performance.
翻译:各大学的学院咨询中心担负着照顾学生心理健康需求的重要责任。由于最近对这类服务的需求空前激增,大学咨询中心面临若干严重的资源挑战。这导致等待时间延长,限制了获得关键的心理健康服务的机会。为了应对这些挑战,我们建立了一个独立活动模拟模型,收集了各大学业务的复杂细节,并提供了一个数据驱动框架,以量化不同政策变化的影响。与目前主要基于定性评估的关于这一问题的工作形成对比的是,经过考虑的定量方法有可能导致关键观察,有助于咨询主任建立具有理想性能的系统。为了展示经过考虑的模拟模型的好处,我们使用德克萨斯州A&M咨询和心理服务公司特有的数据进行一系列数字实验。我们的结果展示了模拟模型的预测力,突出了一些关键观察,并确定了导致理想系统业绩的政策变化。