The Role of IOT & AI in Battery Management of Electric Vehicles

Kavitha Kumari.K.S, L. Chitra, Jibin M Abraham, Noyal Joseph, Yedu Krishnan T.K
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引用次数: 0

Abstract

Electric vehicle (EV) performance is influenced by a variety of parameters like battery life, cell voltage and health, safety and charging-discharging speeds. In EVs, the battery management is a crucial task which facilitates the effective functioning of battery. This paper suggests an improved monitoring of battery State-Of-Charge (SOC) using Internet of Things (IOT) and Artificial Intelligence (AI). This paper focus on a problem for researchers in order to ensure the safety of cars and users by exactly estimating SOC, monitoring and spotting in-time breakdowns of the rechargeable batteries of electric vehicles respectively. The voltage obtained from the Photovoltaic (PV) system is improved by the Boost integrated fly back rectifier energy DC-DC (BIFRED) converter which is controlled by an cascaded ANFIS controller. The SOC of the battery is monitored by Recurrent Neural Networks (RNN) and the data is stored in IOT. The IOT allows for the continuous monitoring and transmission of all battery-related data to the cloud, enabling for the capture of real-time battery information. Thus this paper clearly focus on monitoring and estimating time breakdown of the rechargeable batteries of vehicles.
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物联网和人工智能在电动汽车电池管理中的作用
电动汽车的性能受到电池寿命、电池电压、健康、安全和充放电速度等诸多参数的影响。在电动汽车中,电池管理是保证电池有效运行的关键。本文提出了利用物联网(IOT)和人工智能(AI)改进电池荷电状态(SOC)监测的方法。为了保证汽车和用户的安全,本文重点研究了对电动汽车充电电池的SOC进行准确估算、监测和及时发现故障的问题。由级联ANFIS控制器控制的Boost集成反飞整流能量DC-DC (BIFRED)变换器提高了光伏系统获得的电压。电池的SOC由循环神经网络(RNN)监控,数据存储在物联网中。物联网允许持续监控并将所有与电池相关的数据传输到云端,从而实现实时电池信息的捕获。因此,本文明确了对车辆可充电电池时间故障的监测和估计。
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