强化学习
空调
控制理论(社会学)
能源消耗
PID控制器
温度控制
控制器(灌溉)
航程(航空)
气体压缩机
计算机科学
控制系统
高效能源利用
能量(信号处理)
汽车工程
气流
电动汽车
电能消耗
控制(管理)
控制工程
工程类
数学
人工智能
功率(物理)
电气工程
电能
机械工程
物理
航空航天工程
统计
生物
量子力学
农学
作者
Liange He,Pengpai Li,Yan Zhang,Haodong Jing,Zihan Gu
标识
DOI:10.1016/j.applthermaleng.2024.122817
摘要
The existing AC system of EVs consumes a lot of energy in summer, resulting in reduced range. Additionally, the cabin temperature (Tcabin) fluctuates due to varying driving conditions. In this paper, an innovative cooling strategy is designed to address the above drawbacks using deep reinforcement learning algorithms. The primary objective of this strategy is to achieve high-precision temperature control while concurrently minimizing the energy consumption of the AC system. The strategy combines compressor speed (Ncompressor) and blower airflow (Bairflow) control to optimize the AC system's performance. The RL controller minimizes energy consumption by reducing Ncompressor while increasing Bairflow, thus ensuring a constant cooling capacity (Q). And it effectively reduces temperature fluctuations within the cabin. Finally, the RL control strategy was compared with on/off control and proportional integral differential (PID) control. The results showed that RL control performed well in the multi-objective optimization of the AC system. In terms of temperature control, it effectively reduces the amount of overshooting, and the minimum temperature fluctuation achieved through RL control is merely 0.07 °C, exhibiting an 84.4 % and 86.5 % decrease compared to traditional control methods. The average absolute temperature error stands at 0.06–0.07℃, maintaining a remarkable precision in preserving the target temperature. Furthermore, RL control not only ensures superior energy efficiency but also reduces energy consumption by up to 5.98 % and 7.65 % compared with traditional control methods.
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