Ying Wu
[1] W. Zhu, Y. Xue, Z. Xu, and C. Peng, Symmetrical circulation gradient color system construction and gradient color yarn spun by a three-channel numerical control spinning system, Textile Research Journal, 92(11–12), 2022, 2046–2060. [2] F.J. Vasko, Y. Lu, and B. McNally, A simple methodology that e?ciently generates all optimal spanning trees for the cable-trench problem, Journal of Computational and Cognitive Engineering, 1(1), 2022, 13–20. [3] A. Sarkar, A. Biswas, and M. Kundu, Development of q- rung orthopair trapezoidal fuzzy einstein aggregation operators and their application in MCGDM problems, Journal of Computational and Cognitive Engineering, 1(3), 2022, 109–121. [4] Z. Xu, K. Zhang, J. He, and X. Liu, A novel membrane- inspired evolutionary framework for multi-objective multi- task optimization problems, Information Sciences, 596, 2022, 236–263. [5] G.B. Libotte, F.S. Lobato, F.D. Moura Neto, and G.M. Platt, A novel reliability-based robust design multiobjective optimization formulation applied in chemical engineering, Industrial and Engineering Chemistry Research, 61(9), 2022, 3483–3501. [6] N. Bahrami-Novin, E. Mahdavi, M. Shaban, and H. Mazaheri, Multi-objective optimization of tensile properties of the corrugated composite sheet, Journal of Composite Materials, 56(5), 2022, 811–821. [7] J.Y. Ji and M.L. Wong, An improved dynamic multi- objective optimization approach for nonlinear equation systems, Information Sciences, 576, 2021, 204–227. [8] Z.G. Xiao, N.M.S. Rao, K. Kannan, and D. Sinharoy, Multi- objective optimization of feature selection using hybrid cat swarm optimization, Science in China: Technical Sciences, 64(3), 2021, 508–520. [9] H. Wang, B. Sheng, Q. Lu, X. Yin, F. Zhao, X. Lu, R. Luo, and G. Fu, A novel multi-objective optimization algorithm for the integrated scheduling of ?exible job shops considering preventive maintenance activities and transportation processes, Soft Computing, 25(4), 2021, 2863–2889. [10] S. Xu, Q. Yue, and B. Lu, Grey correlation analysis on the synergistic development between innovation-driven strategy and marine industrial agglomeration: Based on China’s coastal provinces, Grey Systems: Theory and Application, 12(1), 2022, 269–289. [11] X. Yan, J. Jiao, B. Tang, and Y. Liang, and Z. Wang, Assessing sediment connectivity and its spatial response on land use using two ?ow direction algorithms in the catchment on the Chinese Loess Plateau, Journal of Mountain Science, 19(4), 2022, 1119–1138. [12] J. Zhou, E.S. Huebner, J. Chen, and L. Tian, Co–development of aggression in elementary school children: The predictive roles of victimization experiences, Aggressive Behavior, 48(2), 2022, 173–186. [13] A. Palanisamy, N. Jeyaprakash, V. Sivabharathi, and S. Sivasankaran, E?ects of dry turning parameters of Incoloy 800H superalloy using Taguchi-based Grey relational analysis and modeling by response surface methodology, Proceedings of the Institution of Mechanical Engineers, Part C: Journal of Mechanical Engineering Science, 236(1), 2022, 607–623. [14] Y. Han, G. Song, F. Liu, and Z. Geng, Fault monitoring using novel adaptive kernel principal component analysis integrating grey relational analysis, Process Safety and Environmental Protection, 157, 2022, 397–410. [15] V.T. Minh, R. Moezzi, J. Cyrus, and J. Hlava, Fuzzy system for clutch engagement and vibration control in parallel hybrid electric vehicle, Mechatronic Systems and Control, 51(1), 2023, 25–33. [16] X. Qian, C. Wu, Y. Liu, and C. Wang, Derating-based veri?cation method for rated fatigue pressure of pressure- containing envelopes, Mechatronic Systems and Control, 50(4), 2022, 182–188. [17] T. Zhang and L. Shi, Fault analysis of transmission line based on big data algorithm, Mechatronic Systems and Control, 50(4), 2022, 216–223. [18] S. Velchev, I. Kolev, K. Ivanov, and S. Gechevski, Empirical models for speci?c energy consumption and optimization of cutting parameters for minimizing energy consumption during turning, Journal of Cleaner Production, 80(1), 2014, 139–149. [19] L.C. Moreira, W.D. Li, X. Lu, and M.E. Fitzpatrick, Energy- E?cient machining process analysis and optimisation based on BS EN24T alloy steel as case studies, Robotics and Computer- Integrated Manufacturing, 58, 2019, 1–12. [20] X. Chen, C. Li, Y. Tang, L. Li, and H. Li, Energy e?cient cutting parameter optimization, Frontiers of Mechanical Engineering, 16, 2021, 221–248. [21] S. Jia, S. Wang, J. Lv, W. Cai, N. Zhang, Z. Zhang, and S. Bai, Multi-objective optimization of CNC turning process parameters considering transient-steady state energy consumption, Sustainability, 13(24), 2021, 13803–13803. 30 [22] C. Feng, Y. Wu, W. Li, B. Qiu, J. Zhang, and X. Xu, Energy consumption optimisation for machining processes based on numerical control programs, Advanced Engineering Informatics, 57(1), 2023, 102101. [23] Z. Feng, X. Ding, H. Zhang, and Y. Liu, An energy consumption estimation method for the tool setting process in CNC milling based on the modular arrangement of predetermined time standards, Energies, 16(20), 2023, 7064–7064. [24] Y. Hu, S. Lv, J. Wan C, Zheng, S. Dan, H Wang, Y. Tao, M. Li, and Y. Luo, Recent advances in nanomaterials for prostate cancer detection and diagnosis, Journal of Materials Chemistry, B. materials for biology and medicine, 26(10), 2022, 4907–4934. [25] M. Versaci, G. Angiulli, P. Barba, and F.C. Morabito, Joint use of eddy current imaging and fuzzy similarities to assess the integrity of steel plates, Open Physics, 18(1), 2020, 230–240.
Important Links:
Go Back