The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the highly nonlinear dynamic model of an automotive lead acid cell battery. Artificial neural network (ANN) take into consideration the dynamic behavior of both input-output variables of the battery charge-discharge processes. The ANN works as a benchmark, its inputs include delays and charging/discharging current values. To train our neural network, we performed a pulse discharge on a lead acid battery to collect experimental data. Results are presented and compared with a nonlinear Hammerstein-Wiener model. The ANN and nonlinear autoregressive exogenous model (NARX) models achieved satisfying results
The available capacity computation model based on the artificial neural network (ANN) for lead-acid ...
The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have...
Click on the DOI link to access the article (may not be free).This paper proposes a new self-cogniza...
The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the...
Neural networking is a new approach to modeling batteries for electric vehicle applications. This mo...
AbstractThis paper presents two artificial neural network (ANN) based algorithms for battery state-o...
In real-time applications life of lead-acid battery are affected by many factors such as state of ch...
This paper introduces a method, which joins a classical approach (ampere-hour balance) with a neural...
Among different methods that can be used to estimate the State of Charge of a battery in a dynamic p...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
Lead-Acid batteries continue to be the preferred choice for backup energy storage systems. However, ...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
In a bid to perform model-based diagnostics on the electrical network of an automobile, experimental...
The ability to calculate the battery available capacity (BAC) for electric vehicles (EVs) is very im...
In this paper, we propose an effective and online technique for modeling of Li-ion battery and estim...
The available capacity computation model based on the artificial neural network (ANN) for lead-acid ...
The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have...
Click on the DOI link to access the article (may not be free).This paper proposes a new self-cogniza...
The paper studies a nonlinear model based on time series neural network system (TSNN) to improve the...
Neural networking is a new approach to modeling batteries for electric vehicle applications. This mo...
AbstractThis paper presents two artificial neural network (ANN) based algorithms for battery state-o...
In real-time applications life of lead-acid battery are affected by many factors such as state of ch...
This paper introduces a method, which joins a classical approach (ampere-hour balance) with a neural...
Among different methods that can be used to estimate the State of Charge of a battery in a dynamic p...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
Lead-Acid batteries continue to be the preferred choice for backup energy storage systems. However, ...
Battery systems have traditionally relied on extensive build and test procedures for product realiza...
In a bid to perform model-based diagnostics on the electrical network of an automobile, experimental...
The ability to calculate the battery available capacity (BAC) for electric vehicles (EVs) is very im...
In this paper, we propose an effective and online technique for modeling of Li-ion battery and estim...
The available capacity computation model based on the artificial neural network (ANN) for lead-acid ...
The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have...
Click on the DOI link to access the article (may not be free).This paper proposes a new self-cogniza...