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Collaborative optimization of maintenance and spare ordering of continuously degrading systems 被引量:6
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作者 Wei Zhou Dongfeng Wang +1 位作者 Jingyu Sheng Bo Guo 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2012年第1期63-70,共8页
A collaborative optimization model for maintenance and spare ordering of a single-unit degrading system is proposed in this paper based on the continuous detection. A gamma distribution is used to model the material d... A collaborative optimization model for maintenance and spare ordering of a single-unit degrading system is proposed in this paper based on the continuous detection. A gamma distribution is used to model the material degradation. The degrading decrement after the imperfect maintenance action is assumed as a random variable normal distribution. This model aims to ob- tain the optimal maintenance policy and spare ordering point with the expected cost rate within system lifecycle as the optimization objective. The rationality and feasibility of the model are proved through a numerical example. 展开更多
关键词 collaborative optimization maintenance spare order- ing degrading system.
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Application of the Improved Collaborative Optimization on Ships’Conceptual Design
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作者 YAO Zhuang-le CHEN Chao-he 《船舶力学》 EI CSCD 北大核心 2014年第12期1453-1459,共7页
The development of multidisciplinary design optimization method and its broad application prospects in ship design are presented.The collaborative optimization is described in detail.According to its disadvantage,a dy... The development of multidisciplinary design optimization method and its broad application prospects in ship design are presented.The collaborative optimization is described in detail.According to its disadvantage,a dynamic penalty function method is proposed.It is based on the modification of the system level optimization problem,and is turned into an unconstrained optimization problems.It can reduce the difficulties and improve the calculation accuracy.A resistance and structural optimization problem of certain SWATH is simplified and solved,and the final result lowers fuel consumption,and shows that this algorithm application in ship's conceptual design is feasible. 展开更多
关键词 collaborative optimization dynamic penalty function small waterplane area twin-hulls ship(SWATH)
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A robust multi-objective and multi-physics optimization of multi-physics behavior of microstructure
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作者 Hamda Chagraoui Mohamed Soula Mohamed Guedri 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第12期3225-3238,共14页
A new strategy is presented to solve robust multi-physics multi-objective optimization problem known as improved multi-objective collaborative optimization (IMOCO) and its extension improved multi-objective robust c... A new strategy is presented to solve robust multi-physics multi-objective optimization problem known as improved multi-objective collaborative optimization (IMOCO) and its extension improved multi-objective robust collaborative (IMORCO). In this work, the proposed IMORCO approach combined the IMOCO method, the worst possible point (WPP) constraint cuts and the Genetic algorithm NSGA-II type as an optimizer in order to solve the robust optimization problem of multi-physics of microstructures with uncertainties. The optimization problem is hierarchically decomposed into two levels: a microstructure level, and a disciplines levels, For validation purposes, two examples were selected: a numerical example, and an engineering example of capacitive micro machined ultrasonic transducers (CMUT) type. The obtained results are compared with those obtained from robust non-distributed and distributed optimization approach, non-distributed multi-objective robust optimization (NDMORO) and multi-objective collaborative robust optimization (McRO), respectively. Results obtained from the application of the IMOCO approach to an optimization problem of a CMUT cell have reduced the CPU time by 44% ensuring a Pareto front close to the reference non-distributed multi-objective optimization (NDMO) approach (mahalanobis distance, D2M =0.9503 and overall spread, So=0.2309). In addition, the consideration of robustness in IMORCO approach applied to a CMUT cell of optimization problem under interval uncertainty has reduced the CPU time by 23% keeping a robust Pareto front overlaps with that obtained by the robust NDMORO approach (D2M =10.3869 and So=0.0537). 展开更多
关键词 multi-physics multi-objective optimization robust optimization collaborative optimization non-distributed anddistributed optimization uncertainty interval
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