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基于PLC的污水净化处理控制系统的设计 被引量:8
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作者 肖佐无 陈小祝 肖爱武 《微计算机信息》 北大核心 2006年第10S期31-32,36,共3页
本文介绍了利用西门子公司的S7-224型PLC,来实现含氧化铁杂质的污水净化处理系统的自动控制,本文详细介绍了系统的硬件配置以及软件设计流程图,并且介绍了编程中的关键问题。
关键词 PLC 污水净化处理系统 顺序功能图 故障诊断 硬件配置 编程方法 竞争调度算法
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On-Line Scheduling on Parallel Machines to Minimize the Makespan 被引量:2
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作者 LI Songsong ZHANG Yuzhong 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2016年第2期472-477,共6页
This paper considers two parallel machine scheduling problems, where the objectives of both problems are to minimize the makespan, and the jobs arrive over time, on two uniform machines with speeds 1 and s (s 〉 1),... This paper considers two parallel machine scheduling problems, where the objectives of both problems are to minimize the makespan, and the jobs arrive over time, on two uniform machines with speeds 1 and s (s 〉 1), and on m identical machines, respectively. For the first problem, the authors show that the on-line LPT algorithm has a competitive ratio of (1 + √5)/2 ≈ 1.6180 and the bound is tight. Furthermore, the authors prove that the on-line LPT algorithm has the best possible competitive ratio if s ≥ 1.8020. For the second problem, the authors present a lower bound of (15 - √17)/8 ≈ 1.3596 on the competitive ratio of any deterministic on-line algorithm. This improves a previous result of 1.3473. 展开更多
关键词 Lower bound on-line algorithm scheduling.
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Stochastic extra-gradient based alternating direction methods for graph-guided regularized minimization
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作者 Qiang LAN Lin-bo QIAO Yi-jie WANG 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2018年第6期755-762,共8页
In this study, we propose and compare stochastic variants of the extra-gradient alternating direction method, named the stochastic extra-gradient alternating direction method with Lagrangian function(SEGL) and the s... In this study, we propose and compare stochastic variants of the extra-gradient alternating direction method, named the stochastic extra-gradient alternating direction method with Lagrangian function(SEGL) and the stochastic extra-gradient alternating direction method with augmented Lagrangian function(SEGAL), to minimize the graph-guided optimization problems, which are composited with two convex objective functions in large scale.A number of important applications in machine learning follow the graph-guided optimization formulation, such as linear regression, logistic regression, Lasso, structured extensions of Lasso, and structured regularized logistic regression. We conduct experiments on fused logistic regression and graph-guided regularized regression. Experimental results on several genres of datasets demonstrate that the proposed algorithm outperforms other competing algorithms, and SEGAL has better performance than SEGL in practical use. 展开更多
关键词 Stochastic optimization Graph-guided minimization Extra-gradient method Fused logistic regression Graph-guided regularized logistic regression
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