基于区域经济发展需求的电动汽车产业链协同优化算法

IF 0.8 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Man Lu, Jianfei Sun
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引用次数: 0

摘要

随着经济的发展,很多地区都出现了经济增长放缓的现象。为了促进电动汽车(EV)产业的发展,国家也开始出台各种鼓励电动汽车产业发展的政策。在此背景下,许多地方政府开始出台与电动汽车产业发展相关的政策措施,如增加电动汽车产业发展用地、加大对新能源汽车产业的扶持力度等。这些政策措施对电动汽车产业的发展起到了积极的推动作用,但也存在一些问题。例如,很多地方政府在出台新能源汽车产业发展扶持政策时,对电动汽车产业的扶持力度并不大。本文针对电动汽车产业链中存在的技术实力不足、供需关系失衡、下游服务链能力不足等问题,研究了电动汽车产业链的协同优化问题。本文分析了电动汽车产业链的构成,并针对这些问题建立了电动汽车产业链模型。本文采用协同优化算法分析了电动汽车产业链中电动汽车的产量,以及上中下游的综合效率、纯技术效率和规模效率值。通过实验分析发现,使用协同优化算法后,电动汽车产业链上游的综合效率值比使用前提高了 0.0792。本文的研究成果为其他领域的协同优化算法分析提供了借鉴意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative optimization algorithm for electric vehicle industry chain based on regional economic development needs
With the development of the economy, many regions have experienced a slowdown in economic growth. In order to promote the development of the electric vehicle (EV) industry, the country has also begun to introduce various policies to encourage the development of the EV industry. In this context, many local governments have begun to introduce policies and measures related to the development of the EV industry, such as increasing land use for the development of the EV industry and increasing support for the new energy automobile industry. These policy measures have played a positive role in promoting the development of the EV industry, but there are also some problems. For example, when many local governments introduce policies to support the development of the new energy automobile industry, their support for the EV industry is not significant. This article studied the collaborative optimization of the EV industry chain in response to issues such as insufficient technical strength, imbalanced supply-demand relationship, and insufficient downstream service chain capabilities in the EV industry chain. This article analyzed the composition of the EV industry chain and established an EV industry chain model to address these issues. This article used collaborative optimization algorithms to analyze the production volume of EVs in the EV industry chain, as well as the comprehensive efficiency, pure technical efficiency, and scale efficiency values of upstream, midstream, and downstream. Through experimental analysis, it was found that the comprehensive efficiency value of the upstream of the EV industry chain after using the collaborative optimization algorithm was 0.0792 higher than before. The research results of this article have provided reference significance for the analysis of collaborative optimization algorithms in other fields.
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来源期刊
International Journal of Emerging Electric Power Systems
International Journal of Emerging Electric Power Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
3.00
自引率
10.00%
发文量
63
期刊介绍: International Journal of Emerging Electric Power Systems (IJEEPS) publishes significant research and scholarship related to latest and up-and-coming developments in power systems. The mandate of the journal is to assemble high quality papers from the recent research and development efforts in new technologies and techniques for generation, transmission, distribution and utilization of electric power. Topics The range of topics includes: electric power generation sources integration of unconventional sources into existing power systems generation planning and control new technologies and techniques for power transmission, distribution, protection, control and measurement power system analysis, economics, operation and stability deregulated power systems power system communication metering technologies demand-side management industrial electric power distribution and utilization systems.
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