series systems
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2022 ◽  
Vol 15 (2) ◽  
pp. 341-362
Author(s):  
Ebrahim Amini Seresht ◽  
Ghobad Barmalzan ◽  
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2022 ◽  
Vol 15 (2) ◽  
pp. 481-504
Author(s):  
Motahare ZaeamZadeh ◽  
Jafar Ahmadi ◽  
Bahareh Khatib Astaneh ◽  
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...  

2021 ◽  
Vol 2099 (1) ◽  
pp. 012043
Author(s):  
V G Nazarov

Abstract This paper considers the problem of partial identification of the chemical composition of an unknown medium by the multiple X-ray of this medium. A sample of an unknown substance is assumed to be homogeneous in its chemical composition, and the photon flux, collimated both in direction and in energy. A mathematical model for the identification problem is formulated. The approach proposed to solving the problem is based on the method of singular value decomposition of a matrix. At the first stage of the solution the problem is reduced to finding singular numbers and singular vectors for the series systems of algebraic equations linear with respect to products of unknown quantities. Then, based on the data obtained, a special function is built, called an indicator to the distinguishability of substances, which enables the sufficient conditions for the distinguishability of various substances. Based on the tabular data, calculations were made for a number of specific groups of chemical elements.


2021 ◽  
pp. 1-39
Author(s):  
Huiru Li ◽  
Xiaoping Du

Abstract Predicting system reliability is often a core task in systems design. System reliability depends on component reliability and dependence of components. Component reliability can be predicted with a physics-based approach if the associated physical models are available. If the models do not exist, component reliability may be estimated from data. When both types of components coexist, their dependence is often unknown, and the component states are therefore assumed independent by the traditional method, which can result in a large error. This work proposes a new system reliability method to recover the missing component dependence, thereby leading to a more accurate estimate of the joint probability density (PDF) of all the component states. The method works for series systems whose load is shared by its components that may fail due to excessive loading. For components without physical models available, the load data are recorded upon failure, and equivalent physical models are created; the model parameters are estimated by the proposed Bayesian approach. Then models of all component states become available, and the dependence of component states, as well as their joint PDF, can be estimated. Four examples are used to evaluate the proposed method, and the results indicate that the method can produce more accurate predictions of system reliability than the traditional method that assumes independent component states.


Author(s):  
Bin Lu ◽  
Jiandong Zhang ◽  
Rongfang Yan

Abstract This paper studies the optimal allocation policy of a coherent system with independent heterogeneous components and dependent subsystems, the systems are assumed to consist of two groups of components whose lifetimes follow proportional hazard (PH) or proportional reversed hazard (PRH) models. We investigate the optimal allocation strategy by finding out the number $k$ of components coming from Group A in the up-series system. First, some sufficient conditions are provided in the sense of the usual stochastic order to compare the lifetimes of two-parallel–series systems with dependent subsystems, and we obtain the hazard rate and reversed hazard rate orders when two subsystems have independent lifetimes. Second, similar results are also obtained for two-series–parallel systems under certain conditions. Finally, we generalize the corresponding results to parallel–series and series–parallel systems with multiple subsystems in the viewpoint of the minimal path and the minimal cut sets, respectively. Some numerical examples are presented to illustrate the theoretical findings.


2021 ◽  
Vol 213 ◽  
pp. 107673
Author(s):  
Marcos A. Valdebenito ◽  
Pengfei Wei ◽  
Jingwen Song ◽  
Michael Beer ◽  
Matteo Broggi

2021 ◽  
Author(s):  
Huiru Li ◽  
Xiaoping Du

Abstract Predicting system reliability is often a core task in systems design. System reliability depends on component reliability and dependence of components. Component reliability can be predicted with a physics-based approach if the associated physical models are available. If the models do not exist, component reliability may be estimated from data. When both types of components coexist, their dependence is often unknown, and the component states are therefore assumed independent by the traditional method, which can result in a large error. This work proposes a new system reliability method to recover the missing component dependence, thereby leading to a more accurate estimate of the joint probability density (PDF) of all the component states. The method works for series systems whose load is shared by its components that may fail due to excessive loading. For components without physical models available, the load data are recorded upon failure, and equivalent physical models are created; the model parameters are estimated by the proposed Bayesian approach. Then models of all component states become available, and the dependence of component states, as well as their joint PDF, can be estimated. Four examples are used to evaluate the proposed method, and the results indicate that the proposed method can produce more accurate predictions of system reliability than the traditional method that assumes independent component states.


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