Artificial Intelligence/Machine Learning in Energy Management Systems, Control, and Optimization of Hydrogen Fuel Cell Vehicles
Abstract
:1. Introduction
2. Fuel Cell Vehicle (FCV)
2.1. Operating Principles of Fuel Cells
2.1.1. Fuel Cell Types
- Polymeric Electrolyte Membrane Fuel Cells (PEMFC);
- Direct Methanol Fuel Cells (DMFC);
- Alkaline Fuel Cells (AFC);
- Phosphoric Acid Fuel Cell (PAFC);
- Molten Carbonate Fuel Cell (MCFC);
- Solid Oxide Fuel Cell (SOFC).
2.1.2. Fuel Cells System Characteristics
- Higher efficiencies;
- Low emission;
- Fast setup and modularity;
- Easier to maintain;
- Fuel adaptability.
Higher Efficiency
Reduced Emissions
Modularity and Fast Startup
Low Maintenance
Fuel Flexibility
- The costs of stationary electric generation using fuel cells ((EUR /Wh)) are still too high and make them an appropriate replacement for technologies based on fossil fuels.
- There is still much to learn about the lifespan and rate of deterioration of many fuel cell technologies, particularly the high-temperature ones that are ideal for generating electricity.
- Hydrogen, one of the primary fuels for fuel cell technologies, is costly, and there is currently no system in place for its distribution and manufacture.
- The difficulty of containing a sufficient amount of hydrogen in small fuel containers and the hydrogen is a combustible and possibly explosive gas limit the usage of low-temperature fuel cells in the automotive industry (especially if compressed in small containers).
2.2. Fuel Cell Vehicle
2.2.1. Electric Vehicle
2.2.2. Fuel Cell Electric Vehicle (FCEV)
2.2.3. Fuel Cell Hybrid Electric Vehicle (FCHEV)
Powertrain Configurations
Energy Management Strategy
3. Artificial Intelligence (AI) and Machine Learning (ML) Methods
3.1. Fuzzy Logic System (FLS)
3.2. Model Predictive Control (MPC)
3.3. Genetic Algorithm (GA)
3.4. Machine Learning (ML)
4. AI and ML in EVs
4.1. Prediction of Fuel Cell Behaviour Using AI
4.1.1. State-of-Health (SOH) and Remaining Useful Life (RUL) Prediction Using AI
4.1.2. Fault Prediction and Classification Using AI
4.2. Optimization
4.2.1. Genetic Algorithm
4.2.2. Particle Swarm Optimization (PSO)
4.3. Control
4.4. Energy Management System (EMS)
4.4.1. Offline EMS
Fuzzy Logic Control
4.4.2. On-Line EMS
Equivalent Consumption Minimization Strategy (ECMS)
Model Predictive Control (MPC)
Learning-Based EMS
Q-Learning
DQN
DDPG
Twin Delayed DDPG (TD3)
4.4.3. V2X EMS
5. Remarks and Future Scope for Research
- Improve AI accuracy while the system is running, taking new input data in real time and improving the performance.
- With using AI methods should reduce costs and improve the share of FCVs
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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AFC | PEMFC | DMFC | PAFC | MCFC | SOFC | |
---|---|---|---|---|---|---|
Operating temp. (°C) | <100 | 60–120 | 60–120 | 160–220 | 600–800 | 800–1000 |
Electrolyte | KOH | Nafion membrane | Nafion membrane | H3PO4 | Li2CO3-K2CO3 | YSZ |
Charge carrier | OH− | H+ | H+ | H+ | CO32− | O2− |
Anode reaction | H2 + 2OH− → 2H2O + 2e− | H2 → 2H+ + 2e− | CH3OH + H2O → CO2 + 6H+ + 6e− | H2 → 2H+ + 2e− | H2 + CO32− → H2O + CO2 + 2e− | H2 + O2− → H2O + 2e− |
Cathode reaction | ½O2 + H2O + 2e− → 2OH− | ½O2 + 2H+ + 2e− → H2O | 3/2O2 + 6H+ + 6e− → 3H2O | ½O2 + 2H+ + 2e− → H2O | ½O2 + CO2 + 2e− → CO32− | ½O2 + 2e− → O2− |
Electrode materials | Anode: Ni Cathode: Ag | Anode: Pt, PtRu Cathode: Pt | Anode: Pt, PtRu Cathode: Pt | Anode: Pt, PtRu Cathode: Pt | Anode: Ni-5Cr Cathode: NiO(Li) | Anode: Ni-YSZ Cathode: LSM |
Power | 5–150 kW | 5–250 kW | <5 kW | 50 kW–11 MW | 100 kW–2 MW | 100–250 kW |
Author | AI Method | Pros | Cons |
---|---|---|---|
Vichard et al. [90] | Echo State Neural Network (ESN) | A representative experimental test is conducted on a 1 kW fuel to simulate realistic operation as a Postal delivery vehicle (start–stop and temperature variations) Highlights the influence of ambient temperature and Energy throughput in Ah on the State-of-health (SOH) Online application possible | Lack of representative test cycles, such as NEDC and UDDC. The selected fuel is air-cooled and self-humidifying, which could have amplified the dependence between the ambient condition and SoH |
Raeesi et al. [83] | Deep Neural Network (DNN) Recurrent Neural Network (RNN) Long Short-Term Memory Bi-directional LSTM (BLSTM) | Systematic comparison of different AI algorithms Experimental data used to train and compare the outputs | Inadequate information about the validation and generality of the fitted models |
Ma et al. [16] | LSTM & G-LSTM Relevance Vector Machine (RVM) Non-linear Autoregressive, Elman | Rigorous testing data of 8 different FC systems Systematic improvements to a long-established RNN framework by adding LSTM nodes and Grid-LSTM Both short-term and long-term degradation is predicted is documented | The test profiles are simple steps or stationary inputs. A more dynamic loading could trigger different degradation. The use of standardized drive cycle power demand scaled appropriately could be more appropriate |
Lin et al. [84] | LSTM with multi-layer perception (MLP) Linear support vector regression (L-SVR), Gaussian Kernel Support Vector Regression (GK-SVR), Artificial Neural Network (ANN) | Theoretical background on shortcomings of conventional CNNs and advantages of LSTM are well documented Experimental test data from a PROME P390 92 kW self-humidifying fuel cell system The model works better than other regression-based models By reducing the dimensionality and the computationally time | The lack of a standardized test cycle makes it difficult to compare the results with other literature The analysis understates the importance of inlet and outlet temperature and airflow rate, which contradicts the theoretical understanding |
Wang et al. [91] | Navigation Sequence Driven LSTM (NSD-LSTM) | Fuel cell failure is predicted using the degradation trends Predicting RUL | Prediction is quite inaccurate at some points |
Zuo et al. [92] | LSTM Gated Recurrent Unit (GRU) | Dynamic durability test data are used to test the prediction capability of the models | The lack of a standardized test cycle makes it difficult to compare the results with other literature |
Yue et al. [86] | Particle filters, Fuzzy logic controller, and Genetic algorithm | Combining advanced concepts, such as particle filters for online estimation and using fuzzy logic controller optimized by Genetic Algorithm. Non-linear FC systems and battery models are considered Objective function includes fuel cell degradation, change in SoC, and H2 consumption The total cost of ownership approach to evaluate the final EMS results | Charing and discharging and SoC estimation model of the battery are straightforward Lack of experimental data and validation |
Chen et al. [87] | GA + ELM Elman SVM, Adaptive Neuro-fuzzy Inference System (ANFIS) | The extreme learning method has a low computational cost. To increase the model’s accuracy, a GA algorithm is used to tune the parameters of the hidden layer. The method performs better than SVM and Elman network trained. Additionally, the prediction error is compared with the Adaptive neuro-fuzzy inference system (ANFIS) | Some other AI algorithms, such as LSTM, perform better with time-series data than SVM and Elman network. A comparison between LSTM and the proposed method would be more fruitful. |
Yang et al. [88] | ANN-MPR & Rectified Linear Unit Artificial Neural Network (ANN) | Dead-ended anode (DEA) and anode recirculation are explained in detail in this paper Detailed representation of physical interaction in the GDL and electrodes is presented | |
Huo et al. [89] | CNN + RF Deep Neural Network (DNN) | Serious consideration of important design factors by preprocessing the data using the RF method The dataset is based on 64 high-quality research articles k-Fold cross-validation method due to the small size of the training data set | Lack of representative test cycles or loading cycles for independent comparison between different modeling approaches from the literature |
Meraghni et al. [93] | Digital Twin Deep Transfer Learning (DTL) Stacked autoencoder Particle filter-based exponential empirical model | State-of-the-art DT prognostics methods and their industrial use is presented An evaluation study is carried out using real system measurements from the long-term PEMFC degradation experiment | |
Chen et al. [85] | Multi-kernel Relevance Vector Regression (MRVR) Whale Optimization Algorithm (WOA) Particle Swarm Optimization—MRVR (PSO-MRVR) GA-MRVR Back Propagation Neural Network (BPNN) K-Nearest Neighbors (kNNs) Support Vector Regression (SVR) Decision Tree (DT) | The proposed method is compared against several reference modeling methods, and the results show that a positive step up can be made using the MRVR approach Different combinations of MRVR with WOA, PSO, and GA are presented Both experimental and lab data are used to train multiple AI algorithms, and the results of the comparison are shown clearly |
Author | AI Methods | Pros | Cons |
---|---|---|---|
Zhou et al. [95] | SVM Metaclassifiers Back_Propagation Neural Networks (BPNN) LSTM neural Networks Wavelet Packet Decomposition (WPD) | Addresses multiple FC system faults such as flooding, starvation, and drying Use of PCC to reduce the data dimensions reduction The selected algorithm showed good precision and low computational time LSTM algorithm is suggested as the optimal | Only simulated data are used. However, Gaussian noise is added to data to simulate realistic environmental conditions The prediction accuracy and complexity are traded-off to decrease the computational cost |
Gu et al. [94] | LSTM SVM | Information from the literature and understanding based on physical phenomena is used to decide the model input parameters, as shown in the figure Shows the advantage of memory-based algorithms, such as LSTM, over traditional “memoryless” algorithms, such as SVM The results were validated using experimental data Experimental test on a large 92 kW vehicle fuel cell system used for validation | Lack of validation with the untrained data set |
Zuo et al. [96] | CNN with Batch Normalization Conventional ML Decision trees Gaussian Naïve Bayers Support Vector Machine (SVM) K-Nearest Neighbor | A real experimental FC fault dataset is adopted to evaluate the performance of the diagnostic method. The results indicated a 99% accuracy in predicting faults The proposed model has a low computational cost and online diagnosis functionality | Scaled-down prototype test rig (only 80 W) and lack of representative test cycles to create model results that can be objectively verified against similar models available in the relevant literature |
Zhou et al. [99] | XGBoost CNN LSTM CNN-SVM CNN-LSTM | Novel fault classification algorithm using XGBoost classifier The data comes from a Fuel cell vehicle tested in the field over a period of many months | Although a good background on the algorithm is provided. The type of faults that can be detected and how their detection occurs is not well documented. Non-standardized test cycles are used, making it difficult to objectively compare the results with other literature. Labeling of faulty data into different levels is poorly explained |
Morando et al. [98] | Reservoir Computing based on non-linear delayed feedback dynamics | Good description of RC computing for fault classification of FC system | Lack of comparison with established AI-based fault classifiers Lack of experimental data for training and validation |
Zhou et al. [97] | Binary matrix encoding and convolutional neural networks (BinE-CNN) LSTM SVM WPN | Predicting the seven different fault mechanisms is diagnosed Better time-series performance compared to SVM and LSTM Real-time feasible Model is experimentally validated |
Author | Research | Pros | Cons |
---|---|---|---|
Odeim et al. (2015) [103] | Proposed an experimental analysis of EMS incorporating PI, multi-objective, and proportional employing GA designed for FCHEV. | The result of the study obtained through simulation and experimentation were the same, which validates the authenticity of the study. | The study did not provide any relevant data on the improvement of battery life. |
Odeim et al. (2016) [104] | Conducted investigation on both real-time and offline optimization of a power management method of an FC/battery/SC hybrid system (vehicular). | The study showed that the real-time-based strategy consumes slightly more amount of hydrogen fuel as compared to the offline optimum while considerably improving the durability of the system. | The study only utilized NurembergR36 and Manhattan driving cycles. |
Zhang et al. (2017) [105] | Studied a genetic algorithm-based fuzzy EMS designated for FC-SC-based hybrid vehicle architectures. | The study showed that the proposed EMS provides less hydrogen fuel consumption (close to 9%) in comparison to other EMS based on fuzzy logic. | The study lacked experimental validation and was limited to simulations only. |
Ahmadi et al. (2018) [106] | Designed a structure of FCHEV and suggested a new EMS (optimized) to advance the dynamic performance of the vehicle while maintaining requirements (vehicle) and extended battery life. | Enhancement of fuel economy, improvement of vehicle performance, sustaining capability of battery charging, and optimal distribution of energy are a few of the important consequences attained by the suggested optimized EMS. | The study did not consider reducing the size of the components (FC/ Battery/UC) associated. |
Zhou et al. (2019) [107] | Suggested a constrained programming parameter (nonlinear) based model of optimization aiming at reducing consumption of fuel in FCHEVs. | The suggested strategy was able to reduce the total consumption of fuel associated with FCHEVs by 17.6% and 9.7%, correspondingly, under the UDDS and HWFET cycles, without negotiating the performance (dynamic) of the vehicle. | The study considered only HWFET and UDDS driving cycles. |
Author | Research | Pros | Cons |
---|---|---|---|
Trovao et al. (2013) [112] | Suggested rule-based meta-heuristic energy management and optimization method. | The suggested approach was able to achieve effective and fast splitting of power between the battery and SC. | The study considered only ARTEMIS and ECE15 driving cycles. |
Hegazy et al. (2013) [113] | Proposed a method for sizing of components associated with FC/SC, FC/Battery, and FC/Battery/SC hybrid architectures employing a control strategy founded on an efficiency map and PSO. | The study was able to demonstrate that the FC/Battery/SC-based topology provides improved performance as compared to the other two topologies. | The study considered only NEDC and FTP75 driving cycles. |
Chen et al. (2018) [114] | Suggested an online EMS and gear-shifting method utilizing DPSO. | The proposed study was able to achieve reliable characteristics related to power splitting among different sources of energy. The suggested strategy also achieved a considerable decrease associated with hydrogen fuel consumption as compared to classic rule-based controls. | The study considered only FTP and ECE40 driving cycles. The focus of the study was mainly concentrated on gear shifting rather than on EMS. |
Song et al. (2019) [115] | Suggested a multi-objective-based optimization design strategy depending on the PSO algorithm, aiming at optimizing the fuel economy, vehicle cost, and improved vehicle performance (dynamic). | The study was able to obtain the optimal scheme (hybrid) of the FCHV. The study can provide valuable insights toward the design of improved powertrains for FCHVs. | The study lacked experimental validation and was limited to simulations only. |
Tifour et al. (2020) [116] | The study utilized a PSO for optimization and monitoring of the parameters (fuzzy) under various conditions, aiming at identifying the finest sets that can provide great improvement in the domain of fuel economy while considering the SOC (battery) maintenance associated. | The suggested approach showed an improved fuel economy when compared with the Power-Tracking-Controller-based Adviser under all circumstances and also the efficiency (overall) in most circumstances. | The study did not consider the sizing factor associated with power sources. The study lacked experimental validation and was limited to simulations only. |
Author | Research | Pros | Cons |
---|---|---|---|
Mohammedi et al. (2014) [122] | Proposed a fuzzy logic system dependent on passivity control. | The suggested approach improved the robustness of the system, reduced the consumption of hydrogen fuel, and reduced the overshoot associated with the system. | The study lacked experimental validation. No proof associated with a reduction in the consumption of hydrogen fuel was provided in the study. |
Hemi et al. (2014) [123] | Suggested a fuzzy logic-based control on three configurations depending on the UDDS cycle of driving. | The study identified a practical configuration-based method to reduce the consumption of hydrogen fuel. | The study focused on hybrid configuration comparison only. The study lacked experimental validation. |
Saib et al. (2017) [120] | The study suggested an FL-based EMS applied on an FCHEV. | The study demonstrated that the restrictions are respected effectively by the hybrid system. | The study lacked experimental validation. |
Chen et al. (2018) [118] | The study suggested an EMS for an FC/ Battery hybrid energy system. | The study ensures that by altering the SOC and the demand (load), the battery current (actual) can be kept up with the reference value. The viability of the suggested EMS was validated through simulation results. | The study lacked experimental validation and was limited to simulations only. |
Zhang et al. (2018) [119] | The study proposed an EMS, towards achieving power-split with an FL-based controller, for the FCHEV powertrain. | The study showed that the suggested method could retain SOC associated with the battery at levels expected, can effectively absorb braking energy (regenerative), and minimize the load (dynamic) associated with the FC to evade fuel starvation | The study lacked experimental validation and was limited to simulations only. The study only focused on the power-split characteristics of the EMS. |
Essoufi et al. (2020) [121] | Suggested an FL-based EMS for an FCHEV (Considering fuel cell and Li-Ion based battery as a primary and secondary source of power correspondingly). | The simulation of FCHEV and the suggested EMS were established by employing a MATLAB/Simulink setting. The simulation outcomes demonstrated the viability of the suggested EMS. | The study lacked experimental validation. |
Author | Research | Pros | Cons |
---|---|---|---|
Hemi et al. (2015) [123] | Proposed an ECMS based on PMP, integrated with the approach of Markov chain. | The study was able to achieve the power demands of the hybrid system. | The study only considered the UDDS driving cycle. The study failed to show any difference in the consumption of hydrogen. |
Feroldi et al. (2016) [53] | Suggested a hierarchical EMS based on ECMS and low-pass filter, aiming at improving the lifespan of energy sources, performance, and fuel efficiency for FCHEVs. | The study showed a reduction in the consumption of fuel when compared to a conventional oversized fuel cell. The suggested strategy was able to improve the global efficiency associated with the FC and propulsion system. | The suggested strategy Displayed an increased consumption of hydrogen fuel associated with a smaller-size SC. |
Li et al. (2018) [125] | Suggested a SECMS for FCHEV powered by FC, battery, and SC. | The study demonstrated that the suggested SECMS has the minimal hydrogen fuel utilization and provides the highest FC durability. | The study considered only WVUCITY, LA92, and New York Bus driving cycle. The study lacked experimental validation and was limited to simulations only. |
Liu et al. (2019) [126] | Proposed an EMS founded on ECMS aiming at reducing hydrogen fuel utilization and enhancing the battery life of an FCHEV. | The study demonstrated that when compared with a RULE-based strategy, the suggested approach minimizes hydrogen fuel consumption by 0.87%, thus improving hydrogen fuel economy and providing an extended battery life. | The study lacked experimental validation and was limited to simulations only. |
Fu et al. (2019) [127] | Proposed a hierarchical EMS based on ECMS and low-pass filter, aiming at improving the lifespan of energy sources, performance, and fuel efficiency for FCHEVs. | The suggested EMS was modeled and tested by ADVISOR-Simulink and by utilizing an experiment bench. The effectiveness of the suggested EMS was validated both by experimentation and simulation. | The study did not consider the driver factor provided that the conditions of the road for the EMS suggested in this study are prior knowledge. |
Author | Research | Pros | Cons |
---|---|---|---|
Amin et al. (2012) [132] | Suggested an MPC EMS founded on DP. | The proposed strategy was experimentally validated, and it demonstrated the presence of a well-regulated DC-bus voltage. The proposed strategy was tested using dSPACE DS1104. | The study only focused on the voltage regulation of the DC-bus, and no focus was given to hydrogen fuel consumption. |
Ahmed et al. (2013) [134] | Suggested an MPC-based tuning strategy, designed by comparing a statistically constrained type controller with back-off-based control. | The study was able to eliminate constraint-based violations virtually. The study successfully compared the simulations among the different statistically constrained types of controllers. | The study only focused on feasibility, and no focus was given to battery life or hydrogen consumption. |
Mane et al. (2016) [117] | Suggested an MPC strategy for a two-loop control designed for an FC/UC-based HEV. | The suggested EMS achieved constant DC-bus voltage and efficient power splitting between UC and FC. | The study did not focus on hydrogen fuel consumption or its cost. |
Tianyu et al. (2018) [135] | Suggested an MPC-based EMS employing Markov chain and NN techniques. | The proposed EMS improved fuel efficiency, increased the lifetime of FCs, and sustained the SOC of SC using NNs. | The study lacked experimental validation and was limited to simulations only. |
Liu et al. (2018) [136] | Proposed a hierarchical- MPC strategy to optimize the performance and efficiency of a PEMFC-based HEV. | As per the suggested approach, 7.79% of equivalent fuel consumption is anticipated. | The study considered only the US06 driving cycle. |
Furquim et al. (2020) [137] | Proposed an EMS for an FCHEV. The suggested EMS depends on nonlinear-MPC and utilizes a neural network (recurrent) for modeling a PEMFC. | The suggested nonlinear-MPC-based EMS provides improved fuel economy and minimizes FC degradation. | The study lacked experimental validation on a real FCHEV. |
Author | Research | Pros | Cons |
---|---|---|---|
Zheng et al. (2022) [158] | Proposed a Deep Reinforcement Learning (DRL) energy management strategy for fuel cell hybrid buses to improve fuel economy | The study compared the DRL result with DP and RL algorithms which showed significant improvement. The degradation rate of fuel cells decreased by using the DRL algorithm. The DRL algorithm is adaptable to a new driving cycle. | The study lacked experimental validation and was limited to simulations only. |
Li et al. (2022) [146] | Suggested a speedy reinforcement learning-based energy management strategy for fuel cell vehicles considering fuel cell lifetime | The algorithm was able to extend the fuel cell system’s lifetime The study successfully trained the algorithm for three driving cycles and validated it on another driving cycle. The convergence speed of the algorithm is increased, and it has the potential to work in real-time mode. | The study did not compare its results with the optimized-based method as a baseline. The study lacked experimental validation and was limited to simulations only. |
Zhang et al. (2021) [145] | Suggested a learning-based EMS based on dual reward functions Q-learning algorithm, which can guarantee the safe and stable operation of FCHEV. | Suggested a learning-based EMS optimization with a three-level efficiency. The method can improve energy efficiency and slow the FC’s aging by reducing its operation stress. The proposed method has been tested on experimental 1.2 kW FCHEV. | The study has not checked the method’s adaptability for different driving cycles. |
Sun et al. (2018) [147] | Suggested a data-driven reinforcement learning-based hierarchical energy management strategy for FCHEV | The proposed EMS could achieve low computation cost, optimal fuel cell efficiency and energy consumption economy. For the simulation, the authors utilized experimental data. The method compared to DP as a baseline shows how much this method can be near to the optimized-based method. | |
Zheng et al. (2022) [151] Tang et al. (2022) [150] | Proposed a DQN energy management system considering the priority of experimental reply | The suggested method shows a significant impact on hydrogen consumption It compared to the DP-based method as a benchmark The method is adaptable to unknown environmental conditions and untrained situation | The study utilized real data, but there is not any experimental validation for the results |
Zheng et al. (2021) [152] | Proposed an EMS for an FCHEV. Based on the DDPG algorithm for continuous control strategy | The suggested method improves computational efficiency, and the results showed stable convergence, optimal and adaptive energy management strategy | The algorithm suffers from an overestimation of the Q value for the algorithm and creates unstable training sometimes The study lacked experimental validation on a real FCHEV. |
Huo et al.(2022) [153] | Suggested DDPG algorithms to minimize fuel consumption and prolong the fuel cell stack lifespan in fuel cell hybrid vehicles | It is utilized for different driving cycle sources, and it shows the adaptability f the DDPG as a multi-cycle algorithm | The computational efficiency is not convincing, and the training is unstable. |
Zhou et al. (2022) [154,155] | Proposed DDPG algorithm to minimize hydrogen consumption in FCHVs | This study focuses on SOC and power distribution, considering vehicle speed and acceleration. It can improve fuel economy significantly | There is not any experimental validation for the results The unstable training of the Q value is another problem. |
Deng et al. (2022) [156] | Suggested a TD3 algorithm for energy management control in transportation systems with different vehicles | The results show improvement in fuel economy. | The environmental data are just stochastic, and they are not real data. The long learning time, which is not working as a real-time controller |
Zhou et al. (2019) [157] | Suggested a TD3-based energy management algorithm for FCHVs | The method optimizes fuel consumption in the transportation system | The data are stochastic. The learning time or the algorithm is long. |
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Fayyazi, M.; Sardar, P.; Thomas, S.I.; Daghigh, R.; Jamali, A.; Esch, T.; Kemper, H.; Langari, R.; Khayyam, H. Artificial Intelligence/Machine Learning in Energy Management Systems, Control, and Optimization of Hydrogen Fuel Cell Vehicles. Sustainability 2023, 15, 5249. https://doi.org/10.3390/su15065249
Fayyazi M, Sardar P, Thomas SI, Daghigh R, Jamali A, Esch T, Kemper H, Langari R, Khayyam H. Artificial Intelligence/Machine Learning in Energy Management Systems, Control, and Optimization of Hydrogen Fuel Cell Vehicles. Sustainability. 2023; 15(6):5249. https://doi.org/10.3390/su15065249
Chicago/Turabian StyleFayyazi, Mojgan, Paramjotsingh Sardar, Sumit Infent Thomas, Roonak Daghigh, Ali Jamali, Thomas Esch, Hans Kemper, Reza Langari, and Hamid Khayyam. 2023. "Artificial Intelligence/Machine Learning in Energy Management Systems, Control, and Optimization of Hydrogen Fuel Cell Vehicles" Sustainability 15, no. 6: 5249. https://doi.org/10.3390/su15065249