算法电动汽车充电策略的集体效应与性能

Miroslav Gardlo, L. Buzna, Rui Carvalho, R. Gibbens, F. Kelly
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引用次数: 0

摘要

将潮流模型与比例公平优化准则相结合,研究了配电网内的拥塞控制问题。数学优化问题的形式是一个凸二阶锥,可以用现代非线性内点法求解,是电动汽车加入和离开充电网络动态仿真的核心。以简单的算法策略表示电动汽车驾驶员的偏好,通过实时调整用户特定的权重参数,将其传递给优化组件,然后将其直接纳入目标函数。算法策略利用少量参数来描述用户的预算、对车辆可用性和充电过程的期望。我们研究了个体策略产生的集体行为,并通过计算机模拟来评估它们的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collective Effects and Performance of Algorithmic Electric Vehicle Charging Strategies
We combine the power flow model with the proportionally fair optimization criterion to study the control of congestion within a distribution electric grid network. The form of the mathematical optimization problem is a convex second order cone that can be solved by modern non-linear interior point methods and constitutes the core of a dynamic simulation of electric vehicles (EV) joining and leaving the charging network. The preferences of EV drivers, represented by simple algorithmic strategies, are conveyed to the optimizing component by realtime adjustments to user-specific weighting parameters that are then directly incorporated into the objective function. The algorithmic strategies utilize a small number of parameters that characterize the user's budgets, expectations on the availability of vehicles and the charging process. We investigate the collective behaviour emerging from individual strategies and evaluate their performance by means of computer simulation.
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