Machine learning estimation of battery state of health in residential photovoltaic systems

Joaquin Luque , Benedikt Schroeder , Alejandro Carrasco , Houman Heidarabadi , Carlos León , Holger Hesse
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Abstract

As the global adoption of residential battery storage systems paired with local photovoltaic (PV) generation increases, prosumers are increasingly motivated to reduce both their electricity costs and dependence on the grid. This shift highlights the importance of accurately evaluating and predicting the battery's State of Health (SOH) and Remaining Useful Life (RUL). These factors are crucial for determining the operational costs and longevity of battery systems. Traditionally, SOH predictions have relied heavily on detailed measurement data and time-intensive simulations. In response, we introduce a new AI-based approach that simplifies SOH estimation. Our method, named "ML Battery Life Predictor (MLBatLife)," leverages forecasted or historical PV generation data and load consumption patterns to quickly forecast the SOH for various battery configurations. Tested on simulated data, this tool demonstrated a high accuracy, with a coefficient of determination of 0.986 for predictions one day ahead, and an impressively low average error of 0.1 % for projections five years into the future. This innovative AI-driven technique offers substantial benefits for evaluating the economic viability and warranty parameters of battery installations in different regions. It provides a valuable resource for both industry stakeholders and energy system planners aiming to assess and anticipate battery health outcomes efficiently.
住宅光伏系统中电池健康状态的机器学习估计
随着住宅电池存储系统与本地光伏发电的全球采用的增加,产消者越来越有动力降低他们的电力成本和对电网的依赖。这种转变凸显了准确评估和预测电池健康状态(SOH)和剩余使用寿命(RUL)的重要性。这些因素对于决定电池系统的运行成本和寿命至关重要。传统上,SOH预测在很大程度上依赖于详细的测量数据和耗时的模拟。因此,我们引入了一种新的基于人工智能的方法来简化SOH估计。我们的方法名为“ML电池寿命预测器(MLBatLife)”,利用预测或历史光伏发电数据和负载消耗模式,快速预测各种电池配置的SOH。在模拟数据上测试,该工具显示出很高的准确性,预测一天前的决定系数为0.986,预测未来五年的平均误差为0.1 %,令人印象深刻。这种创新的人工智能驱动技术为评估不同地区电池安装的经济可行性和保修参数提供了实质性的好处。它为旨在有效评估和预测电池健康结果的行业利益相关者和能源系统规划者提供了宝贵的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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