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A Neural Network-Based Robust Online SOC and SOH Estimation for Sealed Lead–Acid Batteries in Renewable Systems

机译:可再生系统中的密封铅酸电池的基于神经网络的强大稳健的在线SoC和SOH估计

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摘要

Sealed-type lead-acid batteries are most common energy storage devices used with renewable systems. Battery state of charge (SOC) and state of health (SOH) estimation is a crucial part which requires maximum possible accuracy to ensure a secure and long-lasting battery energy storage system by cutting off charging and discharging processes at right time (100-40%). In this research work, a neural network (NN)-based simplified SOC and SOH estimation technique is proposed. Proposed technique provides an accurate online SOC and SOH estimation without battery internal parameter information. This technique only requires real-time battery voltage and current information and very simple mathematical calculations to estimate SOC and SOH, which makes it easy to implement at any low-cost micro-controller unit (MCU). Training data for NN have been acquired by using Arduino mega MCU, voltage sensor circuit, and current sensor. The NN program is designed and trained by backpropagation technique in Arduino mega. The calculated weights are further used for estimation. Terminal voltage and open-circuit voltage are measured for different charging currents and discharging currents . Later on, these data are used for training the NN. Experimental results are provided to prove the preeminence of proposed SOC and SOH estimation technique.
机译:密封型铅酸电池是最常见的能量存储装置,可再生系统。电池充电状态(SOC)和健康状态(SOH)估计是一个重要的部分,这需要最大程度的精度,以确保通过在正确的时间切断充电和放电过程来确保安全和长持久的电池储能系统(100-40 %)。在该研究工作中,提出了基于基于简化的SOC和SOH估计技术的神经网络(NN)。提出的技术提供了无需电池内部参数信息的准确在线SOC和SOH估计。该技术仅需要实时电池电压和当前信息,并且非常简单的数学计算来估计SOC和SOH,这使得在任何低成本的微控制器单元(MCU)上易于实现。通过使用Arduino Mega MCU,电压传感器电路和电流传感器获得NN的训练数据。 NN程序是由Arduino Mega的BackProjagation技术设计和培训。计算的权重进一步用于估计。针对不同的充电电流测量端子电压和开路电压并进行排出电流。稍后,这些数据用于训练NN。提供实验结果来证明所提出的SOC和SOH估计技术的卓越。

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