论文标题
在logistic-timpenential寿命下进行的一声设备测试数据分析,并应用于Seer胆囊癌数据
One-Shot Device Testing Data Analysis under Logistic-Exponential Lifetimes with an Application to SEER Gallbladder Cancer Data
论文作者
论文摘要
在文献中,在存在各种应力因素的情况下,在加速的寿命测试中发现了一声设备的可靠性分析。一声设备的应用可以扩展到生物医学领域,在那里我们经常证明,生存时间将在不同的压力因素下,例如环境压力,疾病的严重程度等。这项工作与单烟设备数据分析有关,并将其应用于SEERBLADDERDERDERDERDERDERDERDERDERDERDERDERCER CANCER CANCARDERDERCADDERCADDERCADDERCADDERCADDERCADDEDDERCADDERDERDERCER CANCARDER CANCAL CANCAL DATA。两参数逻辑指数分布被应用为寿命分布。对于强大的参数估计,获得加权最小密度差异估计器(WMDPDE)以及常规最大似然估计器(MLE)。还研究了WMDPDE的渐近行为和基于密度功率发散度量的鲁棒测试统计量。通过广泛的模拟实验评估估计器的性能。后来,这些发展应用于Seer胆囊癌数据。援引确切了解何时检查进行测试的单发设备的重要性,请搜索最佳检查时间。该优化旨在最大程度地减少定义的成本函数,从而在估计的精度和实验成本之间取消了权衡。搜索是通过基于人群的启发式优化方法遗传算法来完成的。
In the literature, the reliability analysis of one-shot devices is found under accelerated life testing in the presence of various stress factors. The application of one-shot devices can be extended to the bio-medical field, where we often evidence that inflicted with a certain disease, survival time would be under different stress factors like environmental stress, co-morbidity, the severity of disease etc. This work is concerned with a one-shot device data analysis and applies it to SEER Gallbladder cancer data. The two-parameter logistic exponential distribution is applied as a lifetime distribution. For robust parameter estimation, weighted minimum density power divergence estimators (WMDPDE) is obtained along with the conventional maximum likelihood estimators (MLE). The asymptotic behaviour of the WMDPDE and the robust test statistic based on the density power divergence measure are also studied. The performances of estimators are evaluated through extensive simulation experiments. Later those developments are applied to SEER Gallbladder cancer data. Citing the importance of knowing exactly when to inspect the one-shot devices put to the test, a search for optimum inspection times is performed. This optimization is designed to minimize a defined cost function which strikes a trade-off between the precision of the estimation and experimental cost. The search is accomplished through the population-based heuristic optimization method Genetic Algorithm.