Recent advancements in lithium batteries technology are a major catalyst for the development of smart energy grids. Despite their large use and improvements in multiple fields, there are still some concerns regarding safety issues and fast degradation processes. For these reasons, the development of accurate State-Of-Health (SOH) estimation and prediction algorithm is essential to guarantee reliability, availability and safety of both the battery pack and the entire smart grid. Usually, most of the papers in literature deal with this problem using a single feature, which is the discharge capacity of the battery. However, considering the entire Prognostic and Health Management (PHM) framework, there are also other battery parameters that need to be estimated and predicted to ensure safe and reliable operations. Trying to fill this gap, this paper presents the comparison between three different LSTM-based (Long Short-Term Memory) algorithms for simultaneous and concatenated estimation and prediction of multiple battery features, including charge and discharge capacity, internal resistance, charge time and cell's temperature. The validation of the procedure is carried out on a large publicly available battery degradation dataset pointing out significant performances in the prediction of all features.

State of Health Prediction of Batteries for Smart Energy Grids Based on Multiple Features / Catelani M.; Ciani L.; Alfonso C.G.; Grasso F.; Patrizi G.. - ELETTRONICO. - (2024), pp. 1-6. (Intervento presentato al convegno 2024 IEEE International Instrumentation and Measurement Technology Conference, I2MTC 2024 tenutosi a Glasgow (UK) nel 20 May 2024 through 23 May 2024) [10.1109/I2MTC60896.2024.10560844].

State of Health Prediction of Batteries for Smart Energy Grids Based on Multiple Features

Catelani M.;Ciani L.;Grasso F.;Patrizi G.
2024

Abstract

Recent advancements in lithium batteries technology are a major catalyst for the development of smart energy grids. Despite their large use and improvements in multiple fields, there are still some concerns regarding safety issues and fast degradation processes. For these reasons, the development of accurate State-Of-Health (SOH) estimation and prediction algorithm is essential to guarantee reliability, availability and safety of both the battery pack and the entire smart grid. Usually, most of the papers in literature deal with this problem using a single feature, which is the discharge capacity of the battery. However, considering the entire Prognostic and Health Management (PHM) framework, there are also other battery parameters that need to be estimated and predicted to ensure safe and reliable operations. Trying to fill this gap, this paper presents the comparison between three different LSTM-based (Long Short-Term Memory) algorithms for simultaneous and concatenated estimation and prediction of multiple battery features, including charge and discharge capacity, internal resistance, charge time and cell's temperature. The validation of the procedure is carried out on a large publicly available battery degradation dataset pointing out significant performances in the prediction of all features.
2024
Conference Record - IEEE Instrumentation and Measurement Technology Conference
2024 IEEE International Instrumentation and Measurement Technology Conference, I2MTC 2024
Glasgow (UK)
20 May 2024 through 23 May 2024
Goal 7: Affordable and clean energy
Catelani M.; Ciani L.; Alfonso C.G.; Grasso F.; Patrizi G.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1393615
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