Ali Almarzooqi;Mohammed Alhusin;Iraklis P. Nikolakakos;Motamen Salih;Ali Husnain;Hamad Albeshr
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Unique challenges associated with NaS batteries, such as the significant hysteresis effect, demand sophisticated estimation techniques. To address this, a Deep Neural Network (DNN)-based Temporal Fusion Transformer is employed for SOC estimation, yielding an exemplary R-square value of 0.997, thereby surpassing the performance metrics of conventional Recurrent Neural Network/Long Short-Term Memory (RNN/LSTM) and Gated Recurrent Units (GRU) architectures. For the estimation of SOH, a dual-strategy method is implemented, using support vector regression (SVR) coupled with an Isolation Forest model to facilitate the prediction of various operational cycles and enhance anomaly detection capabilities. The proposed approaches not only demonstrate superior accuracy in SOC and SOH estimation but also establish a robust framework for comprehensive assessment in NaS BESS. 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引用次数: 0
摘要
精确的充电状态(SOC)和健康状态(SOH)对于钠硫(NaS)电池储能系统(BESS)的有效运行和使用寿命至关重要。实时了解 SOC 可以优化放电计划并防止过度放电,而可靠的 SOH 评估则有助于预防性维护并减少意外系统故障。本文提出了一种数据驱动方法,以满足对 NaS BESS 中稳健 SOC 和 SOH 估算的需求。所提出的框架利用机器学习技术对 NaS BESS 中的 SOC 和 SOH 进行了精确估算,这对于将可再生能源并入电网以及深入了解电池的健康状况和容量至关重要。与 NaS 电池相关的独特挑战,如显著的滞后效应,需要复杂的估算技术。为此,我们采用了基于深度神经网络(DNN)的时态融合变换器来估算 SOC,其 R 方值达到了 0.997,超过了传统的递归神经网络/长短期记忆(RNN/LSTM)和门控递归单元(GRU)架构的性能指标。对于 SOH 的估计,采用了双策略方法,即使用支持向量回归 (SVR) 和隔离森林模型,以促进对各种运行周期的预测,并增强异常检测能力。所提出的方法不仅在 SOC 和 SOH 估算方面表现出卓越的准确性,还为 NaS BESS 的综合评估建立了一个稳健的框架。本研究的发现有助于推动电池管理系统的发展,从而支持可再生能源丰富的电网的可持续性和可靠性。
Improved NaS Battery State of Charge and State of Health Estimation: A Novel Integration of Temporal Fusion Transformer, Isolation Forest, and Support Vector Regression
Precise State of Charge (SOC) and State of Health (SOH) are crucial for the effective operation and longevity of Sodium-Sulfur (NaS) Battery Energy Storage Systems (BESS). Real-time knowledge of SOC allows for optimal discharge planning and prevents over-discharging, while a reliable SOH estimate facilitates preventive maintenance and diminishes unexpected system failures. This paper proposes a data-driven approach to address the need for robust SOC and SOH estimation in NaS BESS. The proposed framework utilizes machine learning techniques for precise SOC and SOH estimation in NaS BESS, essential for integrating renewable energy sources into the electrical grid and deriving valuable insights into battery health and capacity. Unique challenges associated with NaS batteries, such as the significant hysteresis effect, demand sophisticated estimation techniques. To address this, a Deep Neural Network (DNN)-based Temporal Fusion Transformer is employed for SOC estimation, yielding an exemplary R-square value of 0.997, thereby surpassing the performance metrics of conventional Recurrent Neural Network/Long Short-Term Memory (RNN/LSTM) and Gated Recurrent Units (GRU) architectures. For the estimation of SOH, a dual-strategy method is implemented, using support vector regression (SVR) coupled with an Isolation Forest model to facilitate the prediction of various operational cycles and enhance anomaly detection capabilities. The proposed approaches not only demonstrate superior accuracy in SOC and SOH estimation but also establish a robust framework for comprehensive assessment in NaS BESS. The findings of this study contribute to the advancement of battery management systems, which support the sustainability and reliability of renewable energy-rich power grids.
期刊介绍:
The scope of the IEEE Transactions on Industry Applications includes all scope items of the IEEE Industry Applications Society, that is, the advancement of the theory and practice of electrical and electronic engineering in the development, design, manufacture, and application of electrical systems, apparatus, devices, and controls to the processes and equipment of industry and commerce; the promotion of safe, reliable, and economic installations; industry leadership in energy conservation and environmental, health, and safety issues; the creation of voluntary engineering standards and recommended practices; and the professional development of its membership.