机械加工制造系统固有能效属性及其优化创建方法研究
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1.Lightweight Design of a Dump Truck Compartment Based on Response Surface Methodology
- 关键词:
- Design;Emission control;Energy conservation;Iterative methods;Surface properties;Condition;Design variables;Dump truck compartment;Dump trucks;Energy-saving and emission reductions;Lightweight design;Optimisations;Response surface modelling;Response surfaces methods;Response-surface methodology
- Wu, Dongyu;Gong, Qingshan;Zhang, Guangguo;Chen, Ruyun
- 《International Conference on Mechanical Design, ICMD 2021》
- 2022年
- August 11, 2021 - August 13, 2021
- Changsha, China
- 会议
The lightweight design of the dump truck compartment is an important way to achieve energy saving and emission reduction. In order to design a dump truck compartment with exceptional performance and lightweight, the lightweight design of the dump truck compartment is carried out by constructing a response surface model. Perform finite element analysis on the dump truck compartment under full load and constant speed conditions and lift conditions, and screen the optimized design variables according to the simulation results, and finally select 15 sets of shell element thicknesses from the 32 sets of design variables that have a greater impact on the response as a design variable. The Hammersley test design is selected to collect sample points, the response surface approximate model is fitted by moving least squares and the accuracy is tested, and the tested response surface model is introduced into the optimization mathematical model for optimization iteration. The results show that the maximum stress of the dump truck compartment under the two working conditions is reduced by 10%, the mass is reduced by 26.3%, and the maximum displacement is increased by 6.5 mm, which meets the design requirements and has a significant lightweight effect.© 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd....2.Energy efficiency optimization method for process parameters of machining system based on reinforcement learning
- Lu, Chenxun ; Yan, Wei ; Ma, Feng ; Zhang, Hua ; Zhang, Xumei
- 《Proceedings of SPIE - The International Society for Optical Engineering》
- 2021年
- 会议
3.Research on quantitative evaluation of green property of iron and steel enterprises based on bp neural network
- 关键词:
- Manufacture;Industrial research;Neural networks;BP neural networks;Green evaluation;Iron and steel enterprise;Manufacturing process;Production process;Quantitative evaluation;Resource efficiencies;Training sets
- Xiao, Junsong;Zhao, Gang;Yan, Pengcheng
- 《7th KES International Conference on Sustainable Design and Manufacturing, KES-SDM 2020》
- 2021年
- September 9, 2020 - September 11, 2020
- Split, Croatia
- 会议
To objectively evaluate the resource efficiency and environmental impact of iron and steel enterprises, it is necessary to comprehensively evaluate the greenness of their manufacturing process. In this paper, based on the green evaluation index of iron and steel enterprises, a two-level green evaluation system derived from the manufacturing process is established, and a green evaluation and prediction model of the manufacturing process are established. Firstly, the data in the actual production process of iron and steel enterprises are normalized. The first 75% of the data is taken as the training set, and the last 25% as the test set. Then, the data set is imported into the constructed BP neural network for training. Finally, through the analysis of the training results, it can simulate the experts to evaluate the diagnosis and predict the optimized manufacturing process.
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© The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd 2021.4.Data-driven method for predicting energy consumption of machine tool spindle acceleration
- 关键词:
- Acceleration;Genetic algorithms;Backpropagation;Energy efficiency;Forecasting;Neural networks;Machining;Energy utilization;Acceleration energy;Data driven;Data-driven methods;Energy characteristics;Energy prediction;Energy-consumption;GA-BP;Machine tool spindles;Machining Process;Spindle acceleration
- Huang, Binbin;Jiang, Guozhang;Yan, Wei;Jiang, Zhigang;Lu, Chenxun;Zhang, Hua
- 《17th IEEE International Conference on Automation Science and Engineering, CASE 2021》
- 2021年
- August 23, 2021 - August 27, 2021
- Lyon, France
- 会议
As an essential operation, spindle acceleration occurs frequently in the machining process, the energy consumption of which has an important impact on the energy efficiency of machine tools, cannot be ignored. However, due to its energy characteristics of short duration, high power peak and complex electromechanical operating of the spindle motor, the energy consumption of the spindle acceleration process is difficult to calculate accurately. To fill this gap, a data-driven method for machine tool spindle acceleration energy prediction is proposed in this paper. Firstly, the energy characteristics of spindle acceleration are studied, and a dataset for the energy prediction is determined. Secondly, an automatic extraction algorithm is developed to extract the time data of power peak, and then a framework for data collection and preprocessing is proposed. Thirdly, a spindle acceleration energy prediction model is established with Back-propagation Neural Network based on the Genetic Algorithm (GA-BP), and the network structure and the operation process are also studied. Finally, a case study of spindle acceleration is given to verify the validity of the proposed approach and model, and the accuracy is also verified with other algorithms.© 2021 IEEE....5.Research on green design of valve products based on response surface method
- 关键词:
- Ecodesign;Product design;Surface properties;Body structure;Coupling analysis;Equivalent stress;Finite element analysis software;Original design;Parameterized model;Response surface method;Target optimization
- Liu, Xiong;Zhao, Gang;Luo, Xiao-long;Zhang, Na;Huang, Xin
- 《7th KES International Conference on Sustainable Design and Manufacturing, KES-SDM 2020》
- 2021年
- September 9, 2020 - September 11, 2020
- Split, Croatia
- 会议
In order to realize the green design requirement of 550 mm gate valve in a valve system of an enterprise, the response surface method was used to optimize the body structure by single factor objective. Body wall thickness, height of stiffener, and thickness of stiffener as the objective factor, gate parameterized model is set up, using the finite element analysis software to optimize the former body strength that is numerically simulated, and based on DOE target optimization design for the parameters of optimized body coupling analysis, get the body by the maximum equivalent stress is 103 MPa. The results show that the strength of the improved valve body can apply to the requirements of the actual working condition, and the consumption of raw materials of the product is greatly reduced compared with the original design, which meets the requirements of the green design of valve products.
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© The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd 2021.6.Design and Implementation of Machine Tool Energy Consumption Information Management System
- 关键词:
- Information management;Process engineering;Data acquisition;Machine tools;Design and implementations;Energy consumption datum;Functional modules;Information management systems;Process Improvement;Process information;Processing technologies;Tool information
- Deng, Hong;Zhang, Hua
- 《9th International Conference on Frontier Computing, FC 2019》
- 2020年
- July 9, 2019 - July 12, 2019
- Kyushu, Japan
- 会议
In order to analyze the energy consumption state of machine tools in processing workpieces and improve the workpiece processing technology, an information management system of machine tool energy consumption is developed. The system consists of three functional modules: basic information input module, energy consumption data acquisition module, energy consumption data analysis module and corresponding model database. The system can effectively manage machine tool information, process information and workpiece information, collect energy consumption data of machine tool in processing workpiece, and provide help for process improvement.
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© 2020, Springer Nature Singapore Pte Ltd.7.A Framework for Carbon Emission Quantification of Mechanical Machining Process Based on IoT and MEFA
- 关键词:
- Decision support systems;Process engineering;Carbon;Machining centers;Machining;Systems engineering;Business Process Modeling Notation (BPMN);Carbon emission flows;Carbon emission managements;Decision supports;Internet of Things (IOT);Material and energy flows;Mechanical machining process;Quantification model
- Yao, Xin;Yan, Wei;Zhang, Hua;Jiang, Zhigang;Zhu, Shuo
- 《3rd IFAC Workshop on Cyber-Physical and Human Systems, CPHS 2020》
- 2020年
- December 3, 2020 - December 5, 2020
- Beijing, China
- 会议
Mechanical machining process consumes massive energy and material, which causes amount of carbon emissions. However, due to the complicated relationship of material flow and energy flow in machining process, It is difficult to comprehensively analyze carbon emission sources and quantify carbon emission clearly. Aiming to address this problem, a four-layer framework for quantifying carbon emissions in machining process based on Internet of Things(IoT) and Material and Energy Flow Analysis (MEFA) technology is proposed. Firstly, the carbon emission characteristic of machining process was studied with MEFA, and the carbon emission flow path of the machining process was clear with Business Process Modeling Notation (BPMN). Secondly, carbon emission related data obtained through IoT. Then, a carbon emission quantification model is established, and the results are analyzed and applied. With a case study of a convex boss, the proposed approach was verified, and which can be used to provide decision support for enterprise carbon emission management.© 2020 Elsevier B.V.. All rights reserved....8.Design of Resource and Environmental Attributes Database of Machine Tool Manufacturing Processes
- 关键词:
- Industrial research;Manufacture;Database systems;Design;Environmental technology;Energy utilization;Environmental attributes;Environmental emissions;Manufacturing research;Mechanical manufacturing;Processing technologies;Reduce energy consumption;Resource consumption;Tool manufacturing
- Deng, Hong;Zhang, Hua
- 《9th International Conference on Frontier Computing, FC 2019》
- 2020年
- July 9, 2019 - July 12, 2019
- Kyushu, Japan
- 会议
Machine tools are the main equipment in the process of mechanical manufacturing, which will consume resources and produce environmental emissions in the process of operation. How to effectively improve the processing technology of machine tools to reduce energy consumption and environmental emissions is one of the focuses of green manufacturing research. Based on the idea of green manufacturing, this paper constructs the resource and environmental attributes database of machine tool manufacturing processes and elaborates the structure and design method of the database. The system can be used to statistically analyze and analyze resource consumption and environmental emissions during machine tool processing, helping to study the machining procedure that need improvement.
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© 2020, Springer Nature Singapore Pte Ltd.9.A Framework for Carbon Emission Quantification of Mechanical Machining Process Based on IoT and MEFA
- 关键词:
- Decision support systems ; Process engineering ; Carbon ; Machining centers ; Machining ; Systems engineering;Business Process Modeling Notation (BPMN) ; Carbon emission flows ; Carbon emission managements ; Decision supports ; Internet of Things (IOT) ; Material and energy flows ; Mechanical machining process ; Quantification model
- YaoXin;YanWei;ZhangHua;JiangZhigang;ZhuShuo
- 《3rd IFAC Workshop on Cyber-Physical and Human Systems, CPHS 2020》
- 2020年
- December 3, 2020 - December 5, 2020
- Beijing, China
- 会议
Mechanical machining process consumes massive energy and material, which causes amount of carbon emissions. However, due to the complicated relationship of material flow and energy flow in machining process, It is difficult to comprehensively analyze carbon emission sources and quantify carbon emission clearly. Aiming to address this problem, a four-layer framework for quantifying carbon emissions in machining process based on Internet of Things(IoT) and Material and Energy Flow Analysis (MEFA) technology is proposed. Firstly, the carbon emission characteristic of machining process was studied with MEFA, and the carbon emission flow path of the machining process was clear with Business Process Modeling Notation (BPMN). Secondly, carbon emission related data obtained through IoT. Then, a carbon emission quantification model is established, and the results are analyzed and applied. With a case study of a convex boss, the proposed approach was verified, and which can be used to provide decision support for enterprise carbon emission management. © 2020 Elsevier B.V.. All rights reserved.
...10.Multi-objective disassembly sequence optimization aiming at quality uncertainty of end-of-life product
- 关键词:
- Environmental impact;Neural networks;Multiobjective optimization;Particle swarm optimization (PSO);Circular economy;Different effects;Disassembly sequence;End-of-life products;Particle swarm optimization algorithm;Quality uncertainty;Resource utilizations;Resources recycling
- Li, Shengqiang;Zhang, Hua;Yan, Wei;Jiang, Zhigang;Wang, Han;Wei, Weijie
- 《2019 5th International Conference on Applied Materials and Manufacturing Technology, ICAMMT 2019》
- 2019年
- June 21, 2019 - June 23, 2019
- Singapore, Singapore
- 会议
Remanufacturing plays a vital role in circular economy due to its enormous contribution in promoting resources recycling and utilizing. Disassembly of end of life (EOL) products, as a prerequisite of remanufacturing, is an effective means to improve resource utilization and reduce environmental impact. However, because of the complex quality conditions of EOL products, different disassembly method and sequence for components may lead to different effects. Based on this, a multi-objective disassembly sequence optimization model considering the quality uncertainty of EOL products is proposed in this paper. Firstly, remaining life of each component of an EOL product is calculated by using the Weibull distribution and artificial neural networks (ANN), and then the disassembly modes could be chosen according to their quality conditions. Secondly, a multi-objective disassembly sequence optimization model which takes minimum disassembly time and cost as the objective is established, and the particle swarm optimization (PSO) algorithm is employed to solve this model. Finally, a case study of drum washing machine disassembly is provided to verify the feasibility and superiority of the proposed methodology.
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