Showing 61 - 80 results of 296 for search 'binary (alo OR also) optimization', query time: 0.10s Refine Results
  1. 61

    Transfer Robustness Optimization for Urban Rail Transit Timetables by Liqiao Ning, Peng Zhao, Wenkai Xu, Ke Qiao

    Published 2018-01-01
    “…A good timetable is required to not only be efficient, but also yield effectiveness in preventing and counteracting delays. …”
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    Research on mechanisms for optimizing the risk resistance capability of hypernetworks by Lei Chen, Xiujuan Ma, Fuxiang Ma, Yalan Li

    Published 2024-12-01
    “…The results showed that these optimization mechanisms also improved the risk resistance of NW hypernetworks and BA ordinary networks, especially in the BA ordinary network, where the BIP could reach up to 73%. …”
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  4. 64

    Global–Local Cooperative Optimization in Photonic Inverse Design Algorithms by Mingzhe Li, Tong Wang, Yi Zhang, Yulin Shen, Jie Yang, Ke Zhang, Dehui Pan, Ming Xin

    Published 2025-07-01
    “…Compared to the conventional Direct Binary Search (DBS), the GLINT algorithm not only significantly enhances computational efficiency through its global search–local refinement framework but also achieves a superior 20 nm × 20 nm optimization resolution while maintaining its optimization speed—substantially advancing the design capability. …”
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  5. 65
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    Two-Stage Combined Model for Short-Term Electricity Forecasting in Ports by Wentao Song, Xiaohua Cao, Hanrui Jiang, Zejun Li, Ruobin Gao

    Published 2024-11-01
    “…Accurate electricity load forecasting is crucial for understanding power usage and optimizing energy allocation. This study introduces a novel approach that transcends the limitations of single prediction models by employing a Binary Fusion Weight Determination Method (BFWDM) to optimize and integrate three distinct prediction models: Temporal Pattern Attention Long Short-Term Memory (TPA-LSTM), Multi-Quantile Recurrent Neural Network (MQ-RNN), and Deep Factors. …”
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  7. 67

    Rapid Prototyping of a Dammann Grating in DMD-Based Maskless Lithography by Qi Zheng, Jinyun Zhou, Qiming Chen, Liang Lei, Kunhua Wen, Yiming Hu

    Published 2019-01-01
    “…Consequently, a Dammann grating with a 50% diffraction efficiency is successfully fabricated, which can not only guarantee the precision but also maintain the fabrication speed. This work demonstrates the potential of this method to rapidly and directly manufacture binary optical elements or structures at the nanoscale based on photocurable resin and DMD-based maskless lithography.…”
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  8. 68
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    Examining the effect of input factor allocation management on tangerine production: Evidence from Selayar Islands Regency, Indonesia by Abdushamad, Muslim Salam, A. NixiaTenriawaru, Muhammad Hatta Jamil, Didi Rukmana, Nurdjanah Hamid, Nitty Hirawaty Kamarulzaman, Rahmadanih, Heliawaty, Nurbaya Busthanul, Letty Fudjaja, Siti Hardiyanti Syam, Ahmad Imam Muslim, Muhammad Ridwan

    Published 2025-08-01
    “…Farmers can boost their output by improving their skills in tangerine farming management, joining farmer groups, and applying more urea and NPK fertilizers and manure. Optimizing pesticide use can also increase tangerine production. …”
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  10. 70

    Comparative Study of Portfolio Optimization Models for Cryptocurrency and Stock Markets by Bahram Alidaee, Haibo Wang, Wendy Wang

    Published 2025-01-01
    “…This study has examined the performance of various portfolio models that have explored the concept of MPT on U.S. stock and cryptocurrency markets, i.e., discrete Markowitz portfolio selection (DMPS), the optimal dynamic portfolio (ODP), the binary unconstrained ODP (BUODP) with a quantum annealing solver, and the 1/N naive diversification (ND). …”
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  11. 71

    Total fuzzy graph coloring by Smriti Saxena, Antika Thapar, Richa Bansal

    Published 2023-06-01
    “…TFGC is also converted into an equivalent binary programming problem and solved using a CPLEX solver. …”
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    Forest land cover optimization for water management in the Ichawaynochaway creek basin by Chambers J. English, Seth E. Younger, Steven T. Brantley, Puneet Dwivedi, Daniel Markewitz, Jeffery B. Cannon

    Published 2025-07-01
    “…Flow contributions and financial returns at the subbasin level were optimized using an Integer/Binary Linear Programming Model to maximize watershed-scale financial returns while meeting various flow increase objectives above a 2.6% low flow ecological threshold. …”
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  16. 76

    Optimization of Identification and Zoning Method for Landscape Characters of Urban Historic Districts by Hong YUN, Zixuan HU, Zehao HU

    Published 2025-01-01
    “…Based on this, this research optimizes the landscape gene theory for the buildings of urban historic districts by: 1) Strengthening the historic layering analysis of architectural gene; 2) adjusting the identification principles of architectural genes by not only adding a new principle of geographical representation, but also justifying the weight between principles; 3) implementing the binary identification of both architectural genes and recessive genes; 4) establishing a general classification system for architectural genes and recessive genes, with the new classification system involving three levels, of which the architectural genes and the recessive genes are respectively divided into six and seven subitems; 5) strengthening the correlation analysis of the binary genes. …”
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  17. 77

    Developing a hybrid feature selection method to detect botnet attacks in IoT devices by Alshaeaa H.Y., Ghadhban Z.M., Ministry of Education, Iraq

    Published 2024-07-01
    “…The results showed the correlation feature selection method had the most accurate botnet attack detection rate. RF also outperformed other models with a 95.11% detection rate in binary classification and 83.96% in multi-classification. …”
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  18. 78

    Study on medical professionals’ acceptance of and factors influencing drone delivery for medical supplies by Zhao Zhang, Chun-Yan Xiao, Ya Wang, Wan-Cui Song, Jia-Yi Sun, Zhi-Guo Zhang

    Published 2025-06-01
    “…Medical professionals are the primary users of medical delivery drones, hence, their opinions are crucial for the spread of the technology. To encourage the optimization and real-world use of this technology, it is crucial to methodically investigate the elements influencing medical staff’s approval of drone delivery.MethodsUsing a sample of medical personnel from the emergency department of a large hospital in Chengdu City (N=289), this study conducted regression analyses using a binary logistic model for each of the four categories of medical supplies to identify key factors that can influence medical personnel’s willingness to use drones. …”
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    Assessment and Optimization of Hydrological Connectivity for Effective Management of Water Resources in the Samian Watershed by Zeinab Hazbavi, Nazila Alaei

    Published 2024-09-01
    “…After constructing the hydrological network of the Samian Watershed, several connectivity indices were calculated to capture the internal complexity of the water flow transfer path network:River chain node ratio (β): Calculated to represent the degree of branching in the river networkActual bonding degree (γ): Determined to show the level of connectivity in the river networkIndex of Integration of Connectivity (IIC): Extracted based on binary theory using Conefor Sensinode 2.6 software to represent the overall connectivity of the transmission path networkProbability of Connectivity (PC): Also derived from binary theory to indicate the overall connectivity of the transmission path networkThe cost of water connection resistance was determined based on topographical, hydrological, and anthropogenic factors. 5 optimization levels were then defined according to the priority of optimization. …”
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