热约束下电动赛车的时间最优控制

Alessandro Locatello, Mouleeswar Konda, O. Borsboom, T. Hofman, Mauro Salazar
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引用次数: 12

摘要

本文提出了一个准凸优化框架来计算电动赛车的最小圈速控制策略,准确地考虑了电动机的热限制。为此,我们利用先前开发的热无约束框架并将其扩展如下:首先,我们确定了内部永磁电磁的热网络模型,包括其轴,转子,磁铁,定子,绕组和端绕组,包括其各自的损耗模型。其次,我们设计了一个凸电池模型来捕捉能量状态对电池损耗的影响。第三,为了处理从时域到位置相关表示的问题转录所产生的非线性,我们利用基于二阶二次规划的迭代算法来有效地计算解。最后,我们将在勒芒赛道上展示我们的框架。与Motor-CAD中的高保真仿真相比,我们提出的模型可以准确地捕捉EM的温度动态,揭示端绕组和磁体分别是冷启动和长期运行场景中的限制元件。此外,我们的数值结果强调了电磁热动力学对单圈时间的重大影响,同时表明使用无级变速器可以显著提高单圈时间相对于固定齿轮变速器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-optimal Control of Electric Race Cars under Thermal Constraints
This paper presents a quasi-convex optimization framework to compute the minimum-lap-time control strategies of electric race cars, accurately accounting for the thermal limitations of the electric motor (EM). To this end, we leverage a previously developed thermally-unconstrained framework and extend it as follows: First, we identify a thermal network model of an interior permanent magnet EM comprising its shaft, rotor, magnets, stator, windings and end-windings, including their individual loss-models. Second, we devise a convex battery model capturing the impact of the state of energy on the battery losses. Third, in order to cope with the nonlinearities stemming from the transcription of the problem from time-domain to a position-dependent representation, we leverage an iterative algorithm based on second-order conic programming to efficiently compute the solution. Finally, we showcase our framework on the Le Mans racetrack. A comparison with high-fidelity simulations in Motor-CAD reveals that our proposed model can accurately capture the temperature dynamics of the EM, revealing the end-windings and the magnets to be the limiting components in a cold-start and a long-run operation scenario, respectively. Furthermore, our numerical results underline the considerable impact of the EM thermal dynamics on lap time, while suggesting that using a continuously variable transmission could significantly improve lap time with respect to a fixed-gear transmission.
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