Multi-objective parameter optimization of CNC plane milling for sustainable manufacturing
暂无分享,去创建一个
Shun Jia | Zhongwei Zhang | Yang Liu | Yang Yang | Shangchun Wang | Jian Hao | Wei Cai | Na Zhang | Yang Sui
[1] S. To,et al. Discover the trend and evolution of sustainable manufacturing: a thematic and bibliometric analysis , 2022, Environmental Science and Pollution Research.
[2] F. Pušavec,et al. Energy consumption and ecological analysis of sustainable and conventional cutting fluid strategies in machining 15–5 PHSS , 2022, Sustainable Materials and Technologies.
[3] G. Rosano-Ortega,et al. Circular economy strategy and waste management: a bibliometric analysis in its contribution to sustainable development, toward a post-COVID-19 era , 2021, Environmental Science and Pollution Research.
[4] Jingxiang Lv,et al. Multi-Objective Optimization of CNC Turning Process Parameters Considering Transient-Steady State Energy Consumption , 2021, Sustainability.
[5] N. Ahmad,et al. Promoting sustainability through green innovation adoption: a case of manufacturing industry , 2021, Environmental Science and Pollution Research.
[6] Jianfeng Li,et al. Multi-layer integration framework for low carbon design based on design features , 2021, Journal of Manufacturing Systems.
[7] Zhaoyu Li,et al. Multi-pass adaptive tool path generation for flank milling of thin-walled workpieces based on the deflection constraints , 2021, Journal of Manufacturing Processes.
[8] Shun Jia,et al. Energy modeling and visualization analysis method of drilling processes in the manufacturing industry , 2021 .
[9] Xueli Wei,et al. The impact of the COVID-19 pandemic on socio-economic and sustainability , 2021, Environmental Science and Pollution Research.
[10] Shun Jia,et al. Comparison of different approaches for predicting material removal power in milling process , 2021, The International Journal of Advanced Manufacturing Technology.
[11] Wei Cai,et al. Decoupling of wastewater eco-environmental damage and China's economic development. , 2021, The Science of the total environment.
[12] Li Li,et al. Energy efficient cutting parameter optimization , 2021, Frontiers of Mechanical Engineering.
[13] Zhigang Jiang,et al. A novel approach to CNC machining center processing parameters optimization considering energy-saving and low-cost , 2021 .
[14] Shun Jia,et al. An Improved Rapid Power and Energy Prediction Method of Drilling Process for Sustainable Manufacturing , 2021, IEEE Access.
[15] Mozammel Mia,et al. Multi-Response Optimization of Electrical Discharge Drilling Process of SS304 for Energy Efficiency, Product Quality, and Productivity , 2020, Materials.
[16] Liang Zou,et al. An integrated multi-objective optimization approach to determine the optimal feature processing sequence and cutting parameters for carbon emissions savings of CNC machining , 2020, Int. J. Comput. Integr. Manuf..
[17] S. Yeo,et al. Modelling and analysis of generation mechanism of micro-surface topography during elliptical ultrasonic assisted grinding , 2020 .
[18] Ling Wei,et al. Effectiveness analysis of resources consumption, environmental impact and production efficiency in traditional manufacturing using new technologies: Case from sand casting , 2020 .
[19] Y. Tariq,et al. Dynamic relationship among economic growth, energy, trade openness, tourism, and environmental degradation: fresh global evidence , 2020, Environmental Science and Pollution Research.
[20] Jian Pan,et al. Multi-component energy modeling and optimization for sustainable dry gear hobbing , 2019, Energy.
[21] B. C. Bal,et al. Surface roughness and processing time of a medium density fiberboard cabinet door processed via CNC router, and the energy consumption of the CNC router , 2019, BioResources.
[22] Xin Lu,et al. Energy-Efficient machining process analysis and optimisation based on BS EN24T alloy steel as case studies , 2019, Robotics Comput. Integr. Manuf..
[23] Wenjie Hu,et al. Effects of environmental regulation on the upgrading of Chinese manufacturing industry , 2019, Environmental Science and Pollution Research.
[24] Li Li,et al. Integrated optimization of cutting tool and cutting parameters in face milling for minimizing energy footprint and production time , 2019, Energy.
[25] K. Wegener,et al. Influence of energy fraction in EDM drilling of Inconel 718 by statistical analysis and finite element crater-modelling , 2019, Journal of Manufacturing Processes.
[26] Li Li,et al. Energy performance certification in mechanical manufacturing industry: A review and analysis , 2019, Energy Conversion and Management.
[27] Xinyu Shao,et al. MILP models for energy-aware flexible job shop scheduling problem , 2019, Journal of Cleaner Production.
[28] Li Li,et al. A comprehensive approach to parameters optimization of energy-aware CNC milling , 2019, J. Intell. Manuf..
[29] Li Li,et al. A knowledge-driven method of adaptively optimizing process parameters for energy efficient turning , 2019, Energy.
[30] Shun Jia,et al. Establishing prediction models for feeding power and material drilling power to support sustainable machining , 2018, The International Journal of Advanced Manufacturing Technology.
[31] Wei Cai,et al. Energy efficiency evaluation for machining systems through virtual part , 2018, Energy.
[32] Shun Jia,et al. Energy modeling method of machine-operator system for sustainable machining , 2018, Energy Conversion and Management.
[33] Wei Cai,et al. Establishment of an Improved Material-Drilling Power Model to Support Energy Management of Drilling Processes , 2018, Energies.
[34] Li Li,et al. Optimization of cutting parameters with a sustainable consideration of electrical energy and embodied energy of materials , 2018 .
[35] Gang Li,et al. Modified power prediction model based on infinitesimal cutting force during face milling process , 2018 .
[36] Ying Liu,et al. Therblig-embedded value stream mapping method for lean energy machining , 2017 .
[37] Li Li,et al. An integrated approach of process planning and cutting parameter optimization for energy-aware CNC machining , 2017 .
[38] Paul Mativenga,et al. An investigation on the impact of toolpath strategies and machine tool axes configurations on electrical energy demand in mechanical machining , 2017 .
[39] Renzhong Tang,et al. Pareto fronts of machining parameters for trade-off among energy consumption, cutting force and processing time , 2017 .
[40] Fei Liu,et al. A novel approach for acquiring the real-time energy efficiency of machine tools , 2017 .
[41] Shun Jia,et al. Energy consumption modeling of machining transient states based on finite state machine , 2017 .
[42] Shun Jia,et al. An investigation into reducing the spindle acceleration energy consumption of machine tools , 2017 .
[43] Li Li,et al. Selection of optimum parameters in multi-pass face milling for maximum energy efficiency and minimum production cost , 2017 .
[44] Qian Yi,et al. Multi-objective Tool Sequence Optimization in 2.5D Pocket CNC Milling for Minimizing Energy Consumption and Machining Cost ☆ , 2017 .
[45] Raman Kumar,et al. Optimization of energy consumption response parameters for turning operation using Taguchi method , 2016 .
[46] Paola Fantini,et al. A new approach for machine's management: from machine's signal acquisition to energy indexes , 2016 .
[47] Li Li,et al. A method integrating Taguchi, RSM and MOPSO to CNC machining parameters optimization for energy saving , 2016 .
[48] Shun Jia,et al. Energy modeling for variable material removal rate machining process: an end face turning case , 2016 .
[49] Lingling Li,et al. Operational strategies for energy efficiency improvement of CNC machining , 2016, 2016 IEEE International Conference on Automation Science and Engineering (CASE).
[50] Ying Liu,et al. Experimental study on energy consumption of computer numerical control machine tools , 2016 .
[51] Jing Li,et al. Energy consumption model and energy efficiency of machine tools: a comprehensive literature review , 2016 .
[52] Sara McMains,et al. Energy-efficient vector field based toolpaths for CNC pocketmachining , 2015 .
[53] Carmita Camposeco-Negrete,et al. Optimization of cutting parameters using Response Surface Method for minimizing energy consumption and maximizing cutting quality in turning of AISI 6061 T6 aluminum , 2015 .
[54] Shun Jia,et al. Therblig-based energy demand modeling methodology of machining process to support intelligent manufacturing , 2014, J. Intell. Manuf..
[55] Fei Liu,et al. Multi-objective optimization of machining parameters considering energy consumption , 2013, The International Journal of Advanced Manufacturing Technology.
[56] Shun Jia,et al. Therblig-based energy supply modeling of computer numerical control machine tools , 2014 .
[57] M. S. Sukumar,et al. Optimization and Prediction of Parameters in Face Milling of Al-6061 Using Taguchi and ANN Approach , 2014 .
[58] Lin Li,et al. Multi-objective optimization of milling parameters – the trade-offs between energy, production rate and cutting quality , 2013 .
[59] Fei Liu,et al. Content Architecture and Future Trends of Energy Efficiency Research on Machining Systems , 2013 .
[60] Rajesh Kumar Bhushan,et al. Optimization of cutting parameters for minimizing power consumption and maximizing tool life during machining of Al alloy SiC particle composites , 2013 .
[61] Lihui Wang,et al. Optimization of machining processes from the perspective of energy consumption: A case study , 2012 .
[62] Alexander Verl,et al. Model-based energy consumption optimisation in manufacturing system and machine control , 2011, Int. J. Manuf. Res..
[63] Sami Kara,et al. Unit process energy consumption models for material removal processes , 2011 .
[64] Markus Wabner,et al. Lightweight components for energy-efficient machine tools , 2011 .
[65] Jaynelle F Stichler,et al. A comprehensive approach. , 2004, Marketing health services.
[66] Kalyanmoy Deb,et al. Muiltiobjective Optimization Using Nondominated Sorting in Genetic Algorithms , 1994, Evolutionary Computation.
[67] H. Redkey,et al. A new approach. , 1967, Rehabilitation record.