预测的模型评估:估计最终用户节省的成本

Chunsheng Yang, S. Létourneau
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引用次数: 19

摘要

火车或飞机等复杂设备的意外故障会带来多余的成本,扰乱运营,影响消费者的满意度,并可能降低实践中的安全性。预测和健康管理(PHM)系统的目标之一是通过持续监测相关组件并提前充分预测其故障以进行适当规划,从而帮助减少意外故障的数量。换句话说,PHM系统可以帮助将意外故障转变为预期故障。最近的研究已经证明了数据挖掘在帮助建立PHM预测模型方面的有用性,但也确定了需要考虑到预测应用特殊性的新模型评估方法。本文对这一问题进行了研究。首先,它回顾了评估数据挖掘模型的经典和最新方法,并解释了它们在预测应用方面的不足。然后,本文提出了一种克服这些缺陷的新方法。这种方法集成了预测中涉及的各种成本和收益,以量化给定预测模型预期的成本节约。从最终用户的角度来看,该公式是实用的,因为它易于理解并且需要实际的输入。本文通过一个涉及数据挖掘预测模型和现实成本/收益信息的现实案例研究说明了这些方法的实用性。结果表明了该方法的可行性及其在各种预测应用中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model evaluation for prognostics: estimating cost saving for the end users
Unexpected failures of complex equipment such as trains or aircraft introduce superfluous costs, disrupt operation, have an effect on consumer's satisfaction, and potentially decrease safety in practice. One of the objectives of prognostics and health management (PHM) systems is to help reduce the number of unexpected failures by continuously monitoring the components of interest and predicting their failures sufficiently in advance to allow for proper planning. In other words, PHM systems may help turn unexpected failures into expected ones. Recent research has demonstrated the usefulness of data mining to help build prognostic models for PHM but also has identified the need for new model evaluation methods that take into account the specificities of prognostic applications. This paper investigates this problem. First, it reviews classical and recent methods to evaluate data mining models and it explains their deficiencies with respect to prognostic applications. The paper then proposes a novel approach that overcomes these deficiencies. This approach integrates the various costs and benefits involved in prognostics to quantify the cost saving expected from a given prognostic model. From the end user's perspective, the formula is practical as it is easy to understand and requires realistic inputs. The paper illustrates the usefulness of the methods through a real-world case study involving data-mining prognostic models and realistic costs/benefits information. The results show the feasibility of the approach and its applicability to various prognostic applications.
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