首页> 外文会议>Annual Reliability and Maintainability Symposium >Forecasting Fleet Warranty Returns using Modified Reliability Growth Analysis
【24h】

Forecasting Fleet Warranty Returns using Modified Reliability Growth Analysis

机译:预测舰队保修退货使用改进的可靠性增长分析

获取原文

摘要

Forecasting the performance of a product on the market allows for quick correction of design and engineering dependent failures, repairs of eventual breakdowns and forecasting repair and warranty expenses. Warranty data can be used as a base for product reliability prediction according to various literature theories. In the first part of this paper, these theories are analyzed underlining the pros and cons. Neither classical reliability theory, nor Peugeot-Citroen model or RGA (Reliability Growth Analysis) seem to be able to model the fleet behaviour in terms of failure prediction. Therefore the pros of each model have been grouped up to build up a new hybrid model. Then the paper describes the new model that is based on RGA but modifications have been necessary in order to cope with the problem of missing data relevant to the so called untraceable vehicles. Censored data occurred because of the fact that the data used comes from field tests (from customers) instead of in-house tests (from professional testers). Therefore the RGA model has been implemented with estimation of fleet width, taking into account cancellations and thefts. Applications of the model could be: estimation of warranty costs; identification of strategic components; estimation of spare parts revenues; estimation of cost/profit of extended warranty period. Finally, the paper explains how the model seems to offer a wide applicability to any firm/product provided with data coming from the field. The model is currently applied by one of the main European motorcycles producers. Even if the development is still in progress, the company productively uses it in order to estimate the number of repairs requested under warranty and some cases are presented here.
机译:预测市场上产品的表现允许快速校正设计和工程依赖失败,最终故障维修和预测维修和保修费用。根据各种文献理论,保修数据可用作产品可靠性预测的基础。在本文的第一部分,分析了这些理论,强调了利弊。既不经典可靠性理论,也不是标致 - 雪铁龙模型或RGA(可靠性增长分析)似乎能够在故障预测方面模拟车队行为。因此,每个模型的优点已经被分组为建立一个新的混合模型。然后本文描述了基于RGA的新模型,但是需要修改,以便应对与所谓的无法可行的车辆相关的数据缺失的数据。被审查的数据发生,因为所使用的数据来自现场测试(来自客户)而不是内部测试(来自专业测试人员)。因此,RGA模型已经通过估算车队宽度来实现,考虑到取消和盗窃。模型的应用可能是:估计保修费用;识别战略组成部分;估计备件收入;估算延长保修期的成本/利润。最后,本文解释了模型似乎如何对来自该领域的数据提供的任何公司/产品提供广泛适用性。该模型目前由主要的欧洲摩托车生产商应用。即使发展仍在进行中,该公司也能耗尽它,以估计保修期要求的维修数量,这里有一些案例。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号