In real-time applications life of lead-acid battery are affected by many factors such as state of charge, rate of charging /discharging, temperature and aging. If these factors of battery are frequently encountered thought-out the lifecycle, battery performance degradation is identified. Hence, in this communication a valve regulated lead-acid batteries (VRLA) electrical behavior are modeled using MATLAB/SIMULINK and the performance parameters related to the battery such as internal resistance (R), state of charge (SOC), and capacity under various operating conditions are predicted using artificial neural network (ANN). The relevant simulation results are compared with experimental results. A validation result shows that this model ca...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
The thesis deals with modelling of valve-regulated lead-acid (VRLA) batteries to answer the two bigg...
The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the...
Lead-Acid batteries continue to be the preferred choice for backup energy storage systems. However, ...
This thesis evaluates standard statistical and machine learning models for early fault detection for...
The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have...
Neural networking is a new approach to modeling batteries for electric vehicle applications. This mo...
This paper introduces a method, which joins a classical approach (ampere-hour balance) with a neural...
Lithium-ion (Li-ion) batteries have become a crucial factor in the recent electro-mobility trend. Pe...
The ability to calculate the battery available capacity (BAC) for electric vehicles (EVs) is very im...
The estimation of vehicle battery performance is typically addressed by testing the battery under sp...
Batteries are primary source of clean energy for various applications such as transportation, grid s...
Lithium-ion batteries are currently the most widely used form of energy storage in electric vehicles...
This work focuses on developing electric-vehicle battery models that can precisely predict voltage f...
The lithium-ion battery is a significant component in systems where electrification has been applied...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
The thesis deals with modelling of valve-regulated lead-acid (VRLA) batteries to answer the two bigg...
The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the...
Lead-Acid batteries continue to be the preferred choice for backup energy storage systems. However, ...
This thesis evaluates standard statistical and machine learning models for early fault detection for...
The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have...
Neural networking is a new approach to modeling batteries for electric vehicle applications. This mo...
This paper introduces a method, which joins a classical approach (ampere-hour balance) with a neural...
Lithium-ion (Li-ion) batteries have become a crucial factor in the recent electro-mobility trend. Pe...
The ability to calculate the battery available capacity (BAC) for electric vehicles (EVs) is very im...
The estimation of vehicle battery performance is typically addressed by testing the battery under sp...
Batteries are primary source of clean energy for various applications such as transportation, grid s...
Lithium-ion batteries are currently the most widely used form of energy storage in electric vehicles...
This work focuses on developing electric-vehicle battery models that can precisely predict voltage f...
The lithium-ion battery is a significant component in systems where electrification has been applied...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
The thesis deals with modelling of valve-regulated lead-acid (VRLA) batteries to answer the two bigg...
The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the...