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41.
In this paper we propose some non‐greedy heuristics and develop an Augmented‐Neural‐Network (AugNN) formulation for solving the classical open‐shop scheduling problem (OSSP). AugNN is a neural network based meta‐heuristic approach that allows integration of domain‐specific knowledge. The OSSP is framed as a neural network with multiple layers of jobs and machines. Input, output and activation functions are designed to enforce the problem constraints and embed known heuristics to generate a good feasible solution fast. Suitable learning strategies are applied to obtain better neighborhood solutions iteratively. The new heuristics and the AugNN formulation are tested on several benchmark problem instances in the literature and on some new problem instances generated in this study. The results are very competitive with other meta‐heuristic approaches, both in terms of solution quality and computational times. © 2005 Wiley Periodicals, Inc. Naval Research Logistics, 2005. 相似文献
42.
Sunkyo Kim 《海军后勤学研究》2005,52(5):399-408
In this paper, we present the heavy‐traffic bottleneck phenomenon under multiclass deterministic routing and discuss how it can be addressed by decomposition approximation. Examples show that Bitran and Tirupati's method and Whitt's enhancements for deterministic routing may not properly account for this phenomenon. We propose refinements to these methods based on Whitt's variability functions. Results of numerical experiments on simple networks and semiconductor manufacturing process show significant improvement in the approximation of expected waiting time at bottleneck stations. © 2005 Wiley Periodicals, Inc. Naval Research Logistics, 2005. 相似文献
43.
人工神经网络诊断特点与基于模式识别的诊断特点非常相似。将ANN模式识别技术应用于某型导弹测试车配电系统故障诊断。根据测试车配电系统的故障特点,设计ANN为4层BP网络,具有9个输入、10个输出,两个隐含层神经元数目分别为9和6。测试结果表明该方法能有效诊断测试车配电系统故障。 相似文献
44.
从网络科学的观点出发对作战指挥机构进行研究,建立了指挥关系网络和通信网络,以及在两者基础上的指挥信息网络拓扑模型,分析了指挥信息网络的度分布特性,提出了描述指挥信息网络的特征参量,进行了针对指挥信息网络的体系破击仿真实验,得出了与战争实际相符的结论,为利用复杂网络知识研究信息化条件下的体系对抗进行了积极地尝试和探索。 相似文献
45.
李新市 《兵团教育学院学报》2011,21(5):28-31
把美育纳入社会管理的过程中并确定具体的管理、田野观察点,既可以使审美育人走出学者们的课堂和书斋,解决当前我国美育建设相对势弱问题,又可以使审美育人融入社会管理和人民群众的实践中,提高实践的质量和水平。要以个案来展示影响社会管理发展的某种重要因素、这种因素的张力以及它的存在和发展逻辑,以审美育人的标准和尺度考察社会管理者的行为,群众的感受和所见所闻、所思所想,关注群众现实生活的巨变。最理想的调查方式是选择那些与研究者成长背景完全不同的观察点,会收到最佳的效果,因为这样会避免先入为主的感觉。要特别注意运用相关的理论考察社会管理创新的机理,增强整体关照能力和深刻度。要在悬置经验本位和相关理论假设的前提下得出个案研究的新结论。 相似文献
46.
47.
针对多雷达多目标跟踪过程中分布未知的系统误差估计问题,提出了基于"分布式融合思想"的误差估计方法。给出相应误差估计方法的计算公式,利用改进截断奇异值方法来减轻矩阵病态性的影响,提高误差估计的稳健性。设置了两种不同的系统误差仿真场景,对"分布式"误差估计方法在两种情形下的估计性能进行了仔细对比分析。结合"分布式"误差估计方法与"集中式估计"方法所体现出的优缺点,提出了一种将两种方法结合起来的系统误差估计算法,算法通过合理选择阈值门限η,能够在多雷达多目标且系统误差分布未知的复杂环境下对两种误差估计算法自适应地进行切换,从而充分发挥两种误差估计算法各自的优点,给出更好的误差估计结果。 相似文献
48.
为解决目标检测中候选区域召回率低的问题,提出融合神经网络与超像素的目标候选区域算法。该算法利用神经网络提取更能清楚表达目标边界的特征,并使用聚类、相似性等策略,计算每个滑动窗口所含有的边缘信息量;将待测图像使用简单线性迭代聚类算法分割成若干个超像素,并利用超像素的空间位置、完整性、相邻超像素间的对比度信息,计算各个超像素的显著性得分及每个滑动窗口的显著性得分;根据每个滑动窗口的边缘信息及显著性得分筛选滑动窗口。在PASCAL VOC 2007测试集上进行对比实验,其实验结果表明:所述算法能够快速产生定位质量高的候选区域。 相似文献
49.
Studies on ballistic penetration to laminates is complicated, but important for design effective protection of structures. Experimental means of study is expensive and can often be dangerous. Numerical simu-lation has been an excellent supplement, but the computation is time-consuming. Main aim of this thesis was to develop and test an effective tool for real-time prediction of projectile penetrations to laminates by training a neural network and a decision tree regression model. A large number of finite element models were developed;the residual velocities of projectiles fromfinite element simulations were used as the target data and processed to produce sufficient number of training samples. Study focused on steel 4340tpolyurea laminates with various configurations. Four different 3D shapes of the projectiles were modeled and used in the training. The trained neural network and decision tree model was tested using independently generated test samples using finite element models. The predicted projectile velocity values using the trained machine learning models are then compared with thefinite element simulation to verify the effectiveness of the models. Additionally, both models were trained using a published experimental data of projectile impacts to predict residual velocity of projectiles for the unseen samples. Performance of both the models was evaluated and compared. Models trained with Finite element simulation data samples were found capable to give more accurate predication, compared to the models trained with experimental data, becausefinite element modeling can generate much larger training set, and thus finite element solvers can serve as an excellent teacher. This study also showed that neural network model performs better with small experimental dataset compared to decision tree regression model. 相似文献
50.