Traditional large-scale multi-objective optimization algorithms(LSMOEAs)encounter difficulties when dealing with sparse large-scale multi-objective optimization problems(SLM-OPs)where most decision variables are zero....Traditional large-scale multi-objective optimization algorithms(LSMOEAs)encounter difficulties when dealing with sparse large-scale multi-objective optimization problems(SLM-OPs)where most decision variables are zero.As a result,many algorithms use a two-layer encoding approach to optimize binary variable Mask and real variable Dec separately.Nevertheless,existing optimizers often focus on locating non-zero variable posi-tions to optimize the binary variables Mask.However,approxi-mating the sparse distribution of real Pareto optimal solutions does not necessarily mean that the objective function is optimized.In data mining,it is common to mine frequent itemsets appear-ing together in a dataset to reveal the correlation between data.Inspired by this,we propose a novel two-layer encoding learning swarm optimizer based on frequent itemsets(TELSO)to address these SLMOPs.TELSO mined the frequent terms of multiple particles with better target values to find mask combinations that can obtain better objective values for fast convergence.Experi-mental results on five real-world problems and eight benchmark sets demonstrate that TELSO outperforms existing state-of-the-art sparse large-scale multi-objective evolutionary algorithms(SLMOEAs)in terms of performance and convergence speed.展开更多
Sparse large-scale multi-objective optimization problems(SLMOPs)are common in science and engineering.However,the large-scale problem represents the high dimensionality of the decision space,requiring algorithms to tr...Sparse large-scale multi-objective optimization problems(SLMOPs)are common in science and engineering.However,the large-scale problem represents the high dimensionality of the decision space,requiring algorithms to traverse vast expanse with limited computational resources.Furthermore,in the context of sparse,most variables in Pareto optimal solutions are zero,making it difficult for algorithms to identify non-zero variables efficiently.This paper is dedicated to addressing the challenges posed by SLMOPs.To start,we introduce innovative objective functions customized to mine maximum and minimum candidate sets.This substantial enhancement dramatically improves the efficacy of frequent pattern mining.In this way,selecting candidate sets is no longer based on the quantity of nonzero variables they contain but on a higher proportion of nonzero variables within specific dimensions.Additionally,we unveil a novel approach to association rule mining,which delves into the intricate relationships between non-zero variables.This novel methodology aids in identifying sparse distributions that can potentially expedite reductions in the objective function value.We extensively tested our algorithm across eight benchmark problems and four real-world SLMOPs.The results demonstrate that our approach achieves competitive solutions across various challenges.展开更多
Objective To investigate the risk factors and variations in postoperative infection rates among different Class I surgical incisions,and to identify potential evaluation indicators that can impact the preoperative use...Objective To investigate the risk factors and variations in postoperative infection rates among different Class I surgical incisions,and to identify potential evaluation indicators that can impact the preoperative use of antimicrobial prophylaxis in Class I incisions.Methods Literature review was employed to establish inclusion and exclusion criteria,resulting in the initial examination of 4098 articles.Then,3149 articles were screened out,and after thorough reading of full texts,55 articles were studied carefully.Results and Conclusion Findings revealed that the incidence rate of surgical site infection(SSI)in Class I incisions ranged from 0.52%to 2.34%,with main risk factors including operation duration,underlying diseases,preoperative infections,antibiotic usage,length of hospital stay,and intraoperative bleeding.Risks of SSI varied significantly across different types of Class I incision surgeries.The key influencing factors in neurosurgery included emergency procedures,(nationalnosocomial-infection-surveillance)NNIS score,age,and postoperative drainage tubes.In orthopedics,surgery type was closely associated with infection risk.In addition,emergency surgeries,special surgery types,and low serum albumin levels were considered as risk factors for the increase of postoperative infections,but age showed little correlation.Although prophylactic use of antibiotics in thyroid,breast,and inguinal hernia surgeries was not recommended,research suggested that they should be considered based on varying surgical levels.Patient’s preoperative condition had to be thoroughly assessed to prevent postoperative infections.In clinical practice,combining the high-risk factors of postoperative infection in different Class I incisions,we should consider the evaluation indicators of preventive use of antibiotics before different surgeries,and decide the rational use of antibacterial drugs for Class I incisions.展开更多
大规模电动汽车作为移动存储的电力负荷,其无序充电行为将会导致电网出现负荷峰谷差加大、负荷率降低等问题。文中分别从电网侧和用户侧的角度,研究基于车网互动(V2G,vehicle to grid)的电动汽车有序充放电控制策略。在电网侧以负荷曲...大规模电动汽车作为移动存储的电力负荷,其无序充电行为将会导致电网出现负荷峰谷差加大、负荷率降低等问题。文中分别从电网侧和用户侧的角度,研究基于车网互动(V2G,vehicle to grid)的电动汽车有序充放电控制策略。在电网侧以负荷曲线均方差最小为目标函数,在用户侧以电动汽车用户参与V2G获得的经济收益最大化为目标函数,并且考虑到电动汽车实际充放电功率、可用容量及用户日常设置等约束条件,采用粒子群优化算法进行仿真求解。分别以重庆2020年、2025年和2030年电动汽车有序充放电为例,对电动汽车在电网侧和用户侧的有序充放电进行优化控制仿真分析。算例结果表明,所提出的电网侧和用户侧电动汽车有序充放电优化控制模型能有效降低负荷峰谷差、平滑负荷曲线并为参与V2G服务的用户带来经济收益。展开更多
基金supported by the Scientific Research Project of Xiang Jiang Lab(22XJ02003)the University Fundamental Research Fund(23-ZZCX-JDZ-28)+5 种基金the National Science Fund for Outstanding Young Scholars(62122093)the National Natural Science Foundation of China(72071205)the Hunan Graduate Research Innovation Project(ZC23112101-10)the Hunan Natural Science Foundation Regional Joint Project(2023JJ50490)the Science and Technology Project for Young and Middle-aged Talents of Hunan(2023TJ-Z03)the Science and Technology Innovation Program of Humnan Province(2023RC1002)。
文摘Traditional large-scale multi-objective optimization algorithms(LSMOEAs)encounter difficulties when dealing with sparse large-scale multi-objective optimization problems(SLM-OPs)where most decision variables are zero.As a result,many algorithms use a two-layer encoding approach to optimize binary variable Mask and real variable Dec separately.Nevertheless,existing optimizers often focus on locating non-zero variable posi-tions to optimize the binary variables Mask.However,approxi-mating the sparse distribution of real Pareto optimal solutions does not necessarily mean that the objective function is optimized.In data mining,it is common to mine frequent itemsets appear-ing together in a dataset to reveal the correlation between data.Inspired by this,we propose a novel two-layer encoding learning swarm optimizer based on frequent itemsets(TELSO)to address these SLMOPs.TELSO mined the frequent terms of multiple particles with better target values to find mask combinations that can obtain better objective values for fast convergence.Experi-mental results on five real-world problems and eight benchmark sets demonstrate that TELSO outperforms existing state-of-the-art sparse large-scale multi-objective evolutionary algorithms(SLMOEAs)in terms of performance and convergence speed.
基金support by the Open Project of Xiangjiang Laboratory(22XJ02003)the University Fundamental Research Fund(23-ZZCX-JDZ-28,ZK21-07)+5 种基金the National Science Fund for Outstanding Young Scholars(62122093)the National Natural Science Foundation of China(72071205)the Hunan Graduate Research Innovation Project(CX20230074)the Hunan Natural Science Foundation Regional Joint Project(2023JJ50490)the Science and Technology Project for Young and Middle-aged Talents of Hunan(2023TJZ03)the Science and Technology Innovation Program of Humnan Province(2023RC1002).
文摘Sparse large-scale multi-objective optimization problems(SLMOPs)are common in science and engineering.However,the large-scale problem represents the high dimensionality of the decision space,requiring algorithms to traverse vast expanse with limited computational resources.Furthermore,in the context of sparse,most variables in Pareto optimal solutions are zero,making it difficult for algorithms to identify non-zero variables efficiently.This paper is dedicated to addressing the challenges posed by SLMOPs.To start,we introduce innovative objective functions customized to mine maximum and minimum candidate sets.This substantial enhancement dramatically improves the efficacy of frequent pattern mining.In this way,selecting candidate sets is no longer based on the quantity of nonzero variables they contain but on a higher proportion of nonzero variables within specific dimensions.Additionally,we unveil a novel approach to association rule mining,which delves into the intricate relationships between non-zero variables.This novel methodology aids in identifying sparse distributions that can potentially expedite reductions in the objective function value.We extensively tested our algorithm across eight benchmark problems and four real-world SLMOPs.The results demonstrate that our approach achieves competitive solutions across various challenges.
文摘Objective To investigate the risk factors and variations in postoperative infection rates among different Class I surgical incisions,and to identify potential evaluation indicators that can impact the preoperative use of antimicrobial prophylaxis in Class I incisions.Methods Literature review was employed to establish inclusion and exclusion criteria,resulting in the initial examination of 4098 articles.Then,3149 articles were screened out,and after thorough reading of full texts,55 articles were studied carefully.Results and Conclusion Findings revealed that the incidence rate of surgical site infection(SSI)in Class I incisions ranged from 0.52%to 2.34%,with main risk factors including operation duration,underlying diseases,preoperative infections,antibiotic usage,length of hospital stay,and intraoperative bleeding.Risks of SSI varied significantly across different types of Class I incision surgeries.The key influencing factors in neurosurgery included emergency procedures,(nationalnosocomial-infection-surveillance)NNIS score,age,and postoperative drainage tubes.In orthopedics,surgery type was closely associated with infection risk.In addition,emergency surgeries,special surgery types,and low serum albumin levels were considered as risk factors for the increase of postoperative infections,but age showed little correlation.Although prophylactic use of antibiotics in thyroid,breast,and inguinal hernia surgeries was not recommended,research suggested that they should be considered based on varying surgical levels.Patient’s preoperative condition had to be thoroughly assessed to prevent postoperative infections.In clinical practice,combining the high-risk factors of postoperative infection in different Class I incisions,we should consider the evaluation indicators of preventive use of antibiotics before different surgeries,and decide the rational use of antibacterial drugs for Class I incisions.
文摘大规模电动汽车作为移动存储的电力负荷,其无序充电行为将会导致电网出现负荷峰谷差加大、负荷率降低等问题。文中分别从电网侧和用户侧的角度,研究基于车网互动(V2G,vehicle to grid)的电动汽车有序充放电控制策略。在电网侧以负荷曲线均方差最小为目标函数,在用户侧以电动汽车用户参与V2G获得的经济收益最大化为目标函数,并且考虑到电动汽车实际充放电功率、可用容量及用户日常设置等约束条件,采用粒子群优化算法进行仿真求解。分别以重庆2020年、2025年和2030年电动汽车有序充放电为例,对电动汽车在电网侧和用户侧的有序充放电进行优化控制仿真分析。算例结果表明,所提出的电网侧和用户侧电动汽车有序充放电优化控制模型能有效降低负荷峰谷差、平滑负荷曲线并为参与V2G服务的用户带来经济收益。