Energy management approach in electric vehicle with optimizing electricity consumption cost using hybrid method

IF 4 4区 环境科学与生态学 Q2 ENVIRONMENTAL STUDIES
M. Vijayaragavan, V. Krishnakumar, V. Vasan Prabhu
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引用次数: 1

Abstract

This paper proposes a hybrid approach for the optimal design of electric vehicle (EV) home energy management. The proposed hybrid system combines the execution of the Lichtenberg optimization algorithm and the heap-based optimizer; hence, it is named as LAHBO method. The main purpose of the proposed system is the reduction of costs and improvement of the power factor. Thus, two phases of optimization, such as Lichtenberg optimization algorithm–based cost minimization and heap-based optimizer–based power factor improvement. At initial phase, power conversation, and operating time of the smart home components are decided using the Lichtenberg optimization algorithm method. It is categorized into four groups, such as interruptible, uninterruptible, thermostatically controlled, and non-programmable loads. In second phase, the residential power factor at grid connection point is improved using the heap-based optimizer approach. Finally, the proposed system is carried out on MATLAB platform related to several existing approaches. The proposed method enhances the power factor and diminishes the cost than the existing method. The cost of proposed method is 0.16$ and existing approaches such as CGO, SMO, and SOA cost become 0.2, 0.3, and 0.35$, respectively.
基于混合动力方法优化电力消耗成本的电动汽车能量管理方法
提出了一种混合动力的电动汽车家庭能源管理优化设计方法。所提出的混合系统结合了Lichtenberg优化算法和基于堆的优化器的执行;因此,它被命名为LAHBO方法。提出的系统的主要目的是降低成本和提高功率因数。因此,两个阶段的优化,如基于Lichtenberg优化算法的成本最小化和基于堆优化器的功率因数改进。在初始阶段,使用Lichtenberg优化算法确定智能家居组件的功率会话和运行时间。它被分为四组,如可中断,不可中断,恒温控制和不可编程负载。在第二阶段,采用基于堆的优化方法改进并网点住宅功率因数。最后,结合已有的几种方法,在MATLAB平台上进行了系统的实现。与现有方法相比,该方法提高了功率因数,降低了成本。提出的方法的成本为0.16美元,而现有的方法如CGO、SMO和SOA的成本分别为0.2、0.3和0.35美元。
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来源期刊
Energy & Environment
Energy & Environment ENVIRONMENTAL STUDIES-
CiteScore
7.60
自引率
7.10%
发文量
157
期刊介绍: Energy & Environment is an interdisciplinary journal inviting energy policy analysts, natural scientists and engineers, as well as lawyers and economists to contribute to mutual understanding and learning, believing that better communication between experts will enhance the quality of policy, advance social well-being and help to reduce conflict. The journal encourages dialogue between the social sciences as energy demand and supply are observed and analysed with reference to politics of policy-making and implementation. The rapidly evolving social and environmental impacts of energy supply, transport, production and use at all levels require contribution from many disciplines if policy is to be effective. In particular E & E invite contributions from the study of policy delivery, ultimately more important than policy formation. The geopolitics of energy are also important, as are the impacts of environmental regulations and advancing technologies on national and local politics, and even global energy politics. Energy & Environment is a forum for constructive, professional information sharing, as well as debate across disciplines and professions, including the financial sector. Mathematical articles are outside the scope of Energy & Environment. The broader policy implications of submitted research should be addressed and environmental implications, not just emission quantities, be discussed with reference to scientific assumptions. This applies especially to technical papers based on arguments suggested by other disciplines, funding bodies or directly by policy-makers.
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