Abstract

In recent years, alternative engine technologies are necessary to resolve the problems related to conventional vehicles. Electric vehicles (EVs) and hybrid electric vehicles (HEVs) are effective solutions to decarbonize the transportation sector. It also becomes important to shift from traditional houses to smart houses and from classical vehicles to EVs or HEVs. It is needed to combine renewable energy sources (RESs) such as solar photovoltaics, wind energy systems, and various forms of bio-energies. Among various HEV technologies, an effective battery management system (BMS) still remains a crucial issue that is majorly used for indicating the battery state of charge (SOC). Since over-charging and over-discharging result in inevitable impairment to the batteries, accurate SOC estimation desires to be presented by the BMS. Although several SOC estimation techniques exist to regulate the SOC of the battery cell, it is needed to improvise the SOC estimation performance on HEVs. In this view, this paper focuses on the design of a novel deep learning (DL) with SOC estimation model for secure renewable energy management (DLSOC-REM) technique for HEVs. The presented model employs a hybrid convolution neural network and long short-term memory (HCNN-LSTM) model for the accurate estimation of SOC. In order to improve the SOC estimation outcomes of the HCNN-LSTM model, the barnacles mating optimizer (BMO) is applied for the hyperpower tuning process. The utilization of the HCNN-LSTM model makes the modeling process easier and offers a precise depiction of the input–output relationship of the battery model. The design of BMO based HCNN-LSTM model for SOC estimation shows the novelty of the work. An extensive experimental analysis highlighted the supremacy of the proposed model over other existing methods in terms of different aspects.

Highlights

  • Energy deficiency and ecological degradation have become important global issues, increasing the stricter necessities on vehicle engineering

  • In order to demonstrate the enhanced performance of the DLSOC-REM technique, a series of simulations take place and the results are inspected under various aspects

  • This paper developed an effective DLSOC-REM technique for accurate state of charge (SOC) estimation in hybrid electric vehicles (HEVs)

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Summary

Introduction

Energy deficiency and ecological degradation have become important global issues, increasing the stricter necessities on vehicle engineering. The major process of the sampling circuit is to determine the voltage, current, and temperature signals This is followed by the control circuit utilizing the signals to estimate the state of charge (SOC), state of health (SOH), state of power (SOP), and state of life (SOL) of batteries. An unscented Kalman filter (UKF) is derived for smoothing the prediction outcomes of the LSTM These works have offered precise SOC estimates for varying dynamic profiles, such as the US06 test, dynamic stress test (DST), and federal urban driving schedule (FUDS). This paper presents an effective deep learning (DL) based SOC estimation model for renewable energy management (DLSOC-REM) technique for HEVs. The presented model involves the design of a hybrid convolution neural network and long short-term memory (HCNN-LSTM) based predictive model for accurate SOC estimation.

Literature Review
The Proposed SOC Estimation Model
Design of BMO Based Hyperparameter Optimization
Performance Validation
Conclusions
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