A Multiple Attribute Utility Theory Approach to Ranking and Selection
针对大型工业项目中多绩效指标的系统比较问题,结合多属性效用理论与统计排序选择方法,提出一种基于无差异区间的排序选择程序,并应用于陆地地震勘探项目的仿真结果。
Managers of large industrial projects often measure performance by multiple attributes. For example, our paper is motivated by the simulation of a large industrial project called a land seismic survey, in which project performance is based on duration, cost, and resource utilization. To address these types of problems, we develop a ranking and selection procedure for making comparisons of systems (e.g., project configurations) that have multiple performance measures. The procedure combines multiple attribute utility theory with statistical ranking and selection to select the best configuration from a set of possible configurations using the indifference-zone approach. We apply our procedure to results generated by the simulator for a land seismic survey that has six performance measures, and describe a particular type of sensitivity analysis that can be used as a robustness check.