Showing 441 - 460 results of 9,080 for search 'optimization mechanical process', query time: 0.14s Refine Results
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    Toward Extensive Utilization of Pulping Liquor from Chemical–Mechanical Pulping Process of Wheat Straw in Biorefinery View by Ning Sun, Xingxiang Ji, Zhongjian Tian, Baobin Wang

    Published 2024-11-01
    “…Wheat straw, as an important by-product of crops, is hardly ever efficiently utilized by conventional processes. Here, we proposed a mild acid-coupled-with-enzymatic-treatment process to realize the utilization of lignin and hemicelluloses from pulping liquor on the basis of the chemical–mechanical pulping process. …”
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  3. 443

    Laser Powder Bed Fusion of a Ti-16Nb-Based Alloy: Processability, Microstructure, and Mechanical Properties by Azim Gökçe, Vamsi Krishna Balla, Subrata Deb Nath, Arulselvan Arumugham Akilan, Sundar V. Atre

    Published 2025-06-01
    “…In this study, Ti-based multi-element alloy with 16 wt.% Nb samples were fabricated using laser powder bed fusion (L-PBF) from a premixed powder blend of Ti6Al4V and Nb-Hf-Ti. Processing high-melting Nb-based alloys via L-PBF poses challenges, which were mitigated through optimized parameters, including a maximum laser power of 100 W. …”
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    Rectified Adam Optimizer and LSTM with Attention Mechanism for ECG-Based Multi-class Classification of Cardiac Arrhythmia by T. Sivaranjani, B. Sasikumar, G. Sugitha

    Published 2025-06-01
    “…The research aims to develop an effective framework for detecting and classifying CA using advanced signal processing, feature extraction, feature selection, and classification for reliable medical diagnosis. …”
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  10. 450

    Three-three-three network architecture and learning optimization mechanism for B5G/6G by Jinkang ZHU, Mingyang CHAI, Wuyang ZHOU

    Published 2021-04-01
    “…Aiming at the problem that the future B5G/6G network is a complex intelligent network with large connections, coupled with the comprehensive application of 3G, 4G, 5G and even 6G, the future networks will inevitably become extremely complex, a three-three-three network architecture was proposed that was a network that includes three types of networks (core network, access network and terminal network), three resources (frequency band, power and time consumptions) and three requirements (active, work and service), which was a three-dimensional comprehensive optimization system architecture, referred to as the three-three-three network.Furthermore, the mathematical basic formulas of the three-dimensional complex network were analyzed, the knowledge + data-driven learning model and the optimization method of intelligent processing using the knowledge learning mechanism were presented.Finally, the numerical example and reachable performance of the three-three-three network were given.Those results demonstrate that the proposed network architecture and the learning optimization mechanism are beneficial for designing future large-connected complex intelligent networks.…”
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  11. 451

    Three-three-three network architecture and learning optimization mechanism for B5G/6G by Jinkang ZHU, Mingyang CHAI, Wuyang ZHOU

    Published 2021-04-01
    “…Aiming at the problem that the future B5G/6G network is a complex intelligent network with large connections, coupled with the comprehensive application of 3G, 4G, 5G and even 6G, the future networks will inevitably become extremely complex, a three-three-three network architecture was proposed that was a network that includes three types of networks (core network, access network and terminal network), three resources (frequency band, power and time consumptions) and three requirements (active, work and service), which was a three-dimensional comprehensive optimization system architecture, referred to as the three-three-three network.Furthermore, the mathematical basic formulas of the three-dimensional complex network were analyzed, the knowledge + data-driven learning model and the optimization method of intelligent processing using the knowledge learning mechanism were presented.Finally, the numerical example and reachable performance of the three-three-three network were given.Those results demonstrate that the proposed network architecture and the learning optimization mechanism are beneficial for designing future large-connected complex intelligent networks.…”
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    Article
  12. 452

    Operation mechanism analysis and parameter optimization of airflow-rotating disc separation device for agricultural film fragments by Jiali Li, Huijie Peng, Xinzhong Wang, Fengling Dou, Yefan Chen, Hewei Meng, Za Kan

    Published 2025-03-01
    “…Abstract To reduce the impurity and loss rates during agricultural film fragment separation, an integrated airflow and mechanical separation approach was devised, and the airflow-rotating disc separation device with air suction mechanism and curved disc rotating screening mechanism was designed. …”
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  13. 453

    Experimental and numerical study of welding-induced deformation and residual stress in 6082 aluminum: Model validation and process design guidance by Hamidreza Rohani Raftar, Amir Khodabakhshi, Juho Havia, Antti Ahola, Tuomas Skriko

    Published 2025-07-01
    “…Experimental validation demonstrated the model’s accuracy in predicting residual stress and deflection, supporting its applicability in welding process optimization. A parametric study, based on a Taguchi design of experiments and analysis of variance (ANOVA), quantified the influence of welding sequence, clamping, and interpass time. …”
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  14. 454

    Effect of process parameters on the rheological properties of banana (Musa acuminata) fiber and optimization using response surface methodology by Shubham Pandey, R.K. Naik, Vinay Kumar Pandey, Shivangi Srivastava, Gulden Goksen, Shivam Pandey, Sarvesh Rustagi

    Published 2024-12-01
    “…The results revealed that the decorticator speed, roller speed, and clearance between rollers are significantly influenced by their mechanical properties. Herein, the optimal process parameter values are identified as follows: a decorticator speed of 510 rpm, roller speed of 65 rpm, and clearance of 3 mm between rollers. …”
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