Machine Learning and Optimization in Energy Management Systems for Plug-In Hybrid Electric Vehicles: A Comprehensive Review
Abstract
:1. Introduction
2. Plug-In Hybrid Electric Vehicles (PHEVs) Overview
- Internal Combustion Engine (ICE): The vehicle is equipped with a traditional internal combustion engine, which runs on gasoline or another fuel. The engine is responsible for providing power to the vehicle and, in some cases, recharging the battery [13].
- Electric Motor/Generator: PHEVs have an electric motor that can propel the vehicle using electricity stored in the battery. Additionally, the motor can act as a generator during regenerative braking or when the internal combustion engine is running to generate electricity and recharge the battery [14].
- Transmission System: A PHEV features a unique transmission system that allows power to be split and distributed between the internal combustion engine, electric motor, and wheels. This system enables different operating modes, such as series and parallel hybrid modes [15].
- Battery Pack: PHEVs have a high-voltage battery pack that stores electrical energy. This battery is rechargeable, typically through an external power source such as a wall outlet or charging station [16].
- Power Split Device (PSD): The power split device is a key component that allows the distribution of power between the internal combustion engine and the electric motor. It consists of a planetary gear set that can adjust the power split ratio, enabling efficient power delivery to the wheels [17].
- Power Electronics: Power electronics components, including an inverter, are essential for converting the direct current (DC) stored in the high-voltage battery to alternating current (AC). This provides three-phase power to the electric motor [18].
- Onboard Charger: PHEVs are equipped with a charging system that allows the high-voltage battery to be charged from an external power source. Charging can occur through a standard electrical outlet (Level 1 charging), a dedicated charging station (Level 2 charging), or, in some cases, through fast charging stations (Level 3 charging) [19].
- Energy Management System (EMS): The EMS plays a crucial role in controlling and optimizing the power flow between the internal combustion engine and the electric motor. It determines when to use electric power, when to rely on the internal combustion engine, and when to switch between different modes to maximize efficiency and performance [20].
2.1. Series PHEV Configuration
2.2. Parallel PHEV Configuration
3. Energy Management Systems (EMS) in PHEVs
3.1. Importance of Energy Management Systems
3.2. Key Challenges in EMS for PHEVs
3.3. Recent Advances and Formulations of EMS for PHEVs
Application | Heuristic Algorithm | Convex Problem | Combination of Algorithms | Type | Findings |
---|---|---|---|---|---|
SOC optimization or fuel reduction | DDPG [5], DRL [40], DP [41], RL [42,43], DP, NN-based EMS [44], LTV-SMPC and PMP-stochastic MPC [45] | Projected interior point method [3], LQP [45] | DRL, rule-based, DDPG [40], Gaussian mixture model, SDP [41], QL, MPC [42], WF2SLOA [46], C/GMRES, BO [18], LQP, MPC, PMP [45] | Hierarchical EMS [5], Hybrid EMS with torque split between the ICE and ESS [46], MPC EMS with non-linear losses [3] | 16.34% of fuel savings [5], fuel economy improvement by 0.55% [40], LTV-SMPC and PMP-SMPC increase fuel economy by 8.79% and 14.42% respectively |
Prediction | LSTM [5], Markov chain and LSTM [45] | Power split with NN-based EMS [44] | Speed [5,40,42] | Prediction of mode and power split 2% higher compared to DP [44] | |
Real-time power distribution | MPC [5,42], C/GMRES [47] | Polynomial fitting approx. (methodical derivatives) [47] | MPC, RL [42] | Bi-level EMS [42], data-driven calibration [47] | Engine operating time is reduced by up to 2.96% [41] |
4. Machine Learning in PHEVs Energy Management
4.1. ML Applications for PHEVs
4.1.1. Optimized Power Distribution
- Data-driven decisions: Unlike rule-based systems, ML models learn from large datasets of driving patterns, road conditions, weather data, and battery characteristics. This enables them to predict future energy needs and adapt power distribution accordingly, rather than relying on pre-defined rules [70].
- Predictive optimization: ML models can anticipate driving conditions like upcoming hills or traffic lights, allowing the EMS to optimize power usage beforehand. This can involve maximizing electric vehicle (EV) propulsion during low-load situations like coasting or regenerative braking to recharge the battery for later use [71].
- Dynamic adjustments: Unlike static algorithms, ML models adapt to continuously changing driving conditions and battery state of charge. They can adjust power distribution in real-time to maintain optimal operating points for the engine and electric motors, reducing emissions and fuel consumption [72].
- Multi-objective optimization: Balancing conflicting objectives like fuel efficiency, emissions, and performance is achieved through algorithms considering various factors simultaneously. ML models can be trained to prioritize these objectives based on driver preferences, environmental conditions, and trip specifics [73].
4.1.2. Predictive Energy Management
- Predictive Modeling: ML models trained on historical driving patterns, traffic data, and weather forecasts predict future energy needs and road conditions.
- Dynamic Optimization: Based on the predictions, the EMS calculates optimal power distribution strategies to minimize fuel consumption, maximize EV propulsion, and optimize battery usage.
- Real-Time Control: The EMS continuously adjusts the power flow between the engine and electric motors based on the actual driving situation and the updated predictions.
4.1.3. Battery State-of-Health Monitoring
- Data Collection: Real-time data like voltage, current, temperature, and charging/ discharging cycles are collected from the battery management system (BMS).
- ML Modeling: Trained ML models analyze the features and predict the current BSHM, remaining useful life (RUL), and potential anomalies. Popular techniques include:
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- Regression models: Estimate BSHM and RUL based on historical data and operating conditions.
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- Time series analysis: Identify patterns and trends in battery data to predict future degradation.
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- Anomaly detection: Flag unusual battery behavior that could indicate potential faults.
4.1.4. Adaptive Control Strategies
- Real-time Data Input: The EMS ingests a constant stream of data—speed, battery state-of-charge, acceleration, terrain, and even weather.
- ML-based Prediction: Trained ML models analyze this data, forecasting:
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- Future energy demand: Predicting how much power the vehicle will need for upcoming hills, traffic lights, or highway stretches.
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- Optimal power distribution: Determining the ideal balance between the engine and electric motor to meet those demands while minimizing fuel consumption and maximizing battery life.
- Dynamic Power Flow Adjustment: The EMS continuously tweaks power distribution in real time based on the predictions. This might involve:
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- Prioritizing electric propulsion: Utilizing the EV motor during low-load situations, like coasting or city driving, for fuel-free efficiency.
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- Engaging the engine strategically: Calling on the ICE for high-power demands like hill climbs or rapid acceleration, ensuring optimal engine operating conditions.
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- Adaptive charging/discharging: Optimizing battery charging and discharging cycles based on predicted energy needs and battery health.
4.1.5. Regenerative Braking Optimization
- Real-time Data Acquisition: The EMS gathers data on speed, deceleration, battery SOC, and road conditions.
- ML-based Prediction: Trained ML models analyze this data to predict [79]:
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- Regenerative braking potential: Estimating the amount of energy that can be recovered based on vehicle dynamics and road conditions.
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- Optimal braking force: Determining the ideal balance between regenerative and friction braking to maximize energy recapture while maintaining safe stopping distances.
- Dynamic Braking Control: Based on the predictions, the EMS continuously adjusts the braking force distribution between the electric motor and conventional brakes in real-time [80]. This might involve:
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- Prioritizing regenerative braking: Utilizing the electric motor for most of the braking force during low-speed decelerations or gradual stops, maximizing energy recovery.
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- Engaging friction brakes strategically: Using conventional brakes only when necessary, such as sudden stops or high-speed decelerations, to supplement regenerative braking and ensure safety.
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- Adaptive charging control: Managing the battery’s charging rate to prevent overcharging and optimize battery health.
4.1.6. Energy Harvesting from Environmental Data
- Environmental Data Acquisition: Sensors collect real-time data on factors like solar radiation, wind speed, and road vibrations.
- ML-based Energy Prediction: Trained ML models analyze these data to predict:
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- Potential energy harvesting opportunities: Identifying periods of strong sunlight, gusts of wind, or rough road conditions where energy recovery could be maximized.
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- Optimal harvesting methods: Determining the most efficient way to capture and convert environmental energy into usable electricity for the battery, for example, through solar panels, wind turbines, or piezoelectric materials embedded in the tires.
- Dynamic Power Flow Management: The EMS adjusts power distribution in real-time based on the predictions [82]. This might involve:
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- Supplementing regenerative braking: Utilizing environmental energy sources to extend EV range further and reduce reliance on the engine.
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- Pre-charging the battery: Harvesting energy during stop-and-go traffic or downhill stretches to prepare for upcoming power demands.
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- Boosting acceleration: Providing an extra power kick from environmental energy sources during overtaking maneuvers or uphill climbs.
4.1.7. User Behavior Analysis
- Data Collection: The EMS gathers data on driving patterns like acceleration, braking, speed, and preferred travel routes. Factors like driver demographics, environmental preferences, and charging habits can also be considered.
- ML-based User Profiling: Trained ML models analyze this data to create a unique profile for each driver, identifying:
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- Driving style: Aggressive, cautious, eco-conscious – understanding how a driver typically operates is key [84].
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- Predictive energy demand: Anticipating future power needs based on past behavior and planned routes.
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- Charging preferences: Optimizing charging schedules and locations based on individual routines and infrastructure access.
- Adaptive Power Flow Management: The EMS personalizes power distribution in real time based on the user profile. This might involve:
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- Encouraging eco-friendly driving: Providing feedback and adjustments to promote fuel-efficient behavior.
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- Predictive hybrid mode utilization: Seamlessly switching between electric and engine power based on anticipated driving conditions and user preferences [28].
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- Innovative charging strategies: Scheduling charging during off-peak hours or utilizing renewable energy sources where available.
4.2. ML Techniques Applied to Apps in PHEVs
- Adaptive EMS Control (AEC): Based on ML predictions, the EMS can adjust charging/discharging patterns, optimize power flow, and activate preventive measures like preheating or cooling to extend battery life and prevent failures.
- Clustering (C): Grouping drivers with similar driving styles based on their data patterns.
- Deep learning (DL): Captures complex relationships between data points like speed, battery temperature, and terrain to predict energy demand and optimize power flow.
- Feature Engineering (FE): Relevant features are extracted from the raw data to capture the battery’s health condition. This might involve calculations like capacity fade rate, internal resistance, and voltage stability.
- Predictive control algorithms (PCA): These algorithms use model-based predictions to calculate optimal power trajectories for the entire trip, further enhancing efficiency.
- Reinforcement learning (RL): Learns optimal power distribution through trial and error in a simulated environment, constantly improving decision-making.
- Support vector machines (SVMs): Classify driving scenarios and predict optimal power distribution strategies based on past driving patterns and environmental data.
- Time Series Analysis (TSA): Identifies patterns and trends in environmental data to predict periods of high energy availability.
4.3. Dynamic Adaptation of ML-Based PHEV EMS
4.4. ML Challenges in PHEVs
4.5. Future of PHEV Energy Management with ML
- Hardware Advancements: As ML algorithms become more sophisticated, their computational demands increase. Faster on-board processors will be essential to handle these demands in real-time. This may involve the integration of dedicated hardware accelerators or more powerful central processing units (CPUs) specifically designed for efficient machine learning tasks within vehicles.
- Sensor Fusion: The effectiveness of ML algorithms heavily relies on the quality and richness of data they are trained on. Integrating diverse sensors beyond traditional ones can provide a more comprehensive picture of the driving environment and vehicle operation. Cameras, Lidar (Light Detection and Ranging) systems, and weather data can be valuable sources of information for ML models, allowing them to make more accurate predictions and optimize power distribution even further.
- Connectivity and Cloud-based Learning: PHEVs equipped with robust connectivity features can leverage cloud-based platforms for training ML models. By utilizing vast datasets collected from multiple vehicles operating in diverse conditions, these models can continuously learn and improve their performance. This collaborative learning approach can lead to more efficient and adaptable EMS strategies across the entire PHEV fleet.
5. Optimization in Plug-in Hybrid Electric Vehicles Energy Management
5.1. Deterministic Optimization Studies
5.1.1. Convex Optimization
5.1.2. Non-Convex optimization
5.2. Heuristic Optimization Studies
5.2.1. Evolutionary Algorithms (EAs)
5.2.2. Swarm Intelligence (SI)
5.2.3. Physics Based (PB)
- Analogous Modelling: Physics-based optimization algorithms often construct analogies between optimization problems and physical systems, translating problem-specific constraints and objectives into analogous physical concepts.
- Dynamic Evolution: Inspired by the dynamic nature of physical systems, these algorithms often incorporate iterative processes that simulate the evolution of a system towards equilibrium or optimal states. Therefore, PB algorithms sometimes are combined with SI algorithms, which results in a robust optimization technique.
- Global Exploration: Physics-based algorithms may exhibit characteristics conducive to global exploration of the solution space, mimicking the natural tendency of physical systems to seek equilibrium states.
- Energy Concepts: Concepts related to energy minimization or conservation are frequently integrated into these algorithms, contributing to the efficient exploration of solution spaces.
5.2.4. Fuzzy Logic (FL)
5.3. Optimization Techniques for PHEV EMS with Real-Time Constraints
- Computational Efficiency: Real-time applications demand fast decision-making. Techniques like rule-based control and Model Predictive Control (MPC) with a short prediction horizon are prime contenders in this category.
- Scalability: The ability to handle increasing system complexity is vital. Dynamic Programming (DP), for instance, struggles with intricate PHEV models, whereas techniques like Equivalent Consumption Minimization (ECMS) and Reinforcement Learning (RL) demonstrate better adaptability.
- Solution Quality: The ideal technique should effectively balance fuel efficiency, battery life, and performance. DP and MPC have the potential to deliver globally optimal solutions, while ECMS and RL strive for well-rounded approximations.
- Real-Time Suitability: Techniques that offer rapid computation and adaptation are best suited for real-time implementation. Rule-based control, ECMS, and MPC with limited prediction horizons generally excel in this area.
6. Challenges and Future Directions
6.1. Towards More Intelligence
6.2. Challenges
- Data and Modeling Accuracy: Obtaining accurate and representative data for training ML models is a hurdle, as driving conditions and user behaviors vary widely. Additionally, the complexity of the PHEV system poses a challenge for developing accurate models.
- Computer capabilities: Real-time implementation of optimization algorithms is constrained by computational limitations, impacting their responsiveness in dynamic driving environments. Moreover, the uncertainties associated with external factors, such as traffic conditions and weather, pose challenges for predictive modeling and optimization strategies.
- Addressing real-time operation conditions: Presents a significant challenge due to the dynamic and uncertain nature of driving conditions and powertrain operation. Real-time operation conditions refer to the need for the EMS to make rapid and accurate decisions in response to changing factors such as vehicle speed, road grade, traffic conditions, driver behavior, and power demand.
- Managing battery SOC: The SOC represents the amount of energy stored in the battery, and effective management of SOC is crucial for maximizing vehicle performance, extending battery life, and optimizing fuel economy. Managing SOC involves dynamic fluctuations of operating conditions, trade-offs between performance and battery health, uncertainty in driving patterns, modeling and control complexity, and integration with vehicle dynamics.
6.3. Future Vision for EMS
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
BMS | Battery Management System |
BHSM | Battery State-of-Health Monitoring |
DC | Direct Current |
DDPG | Deep Deterministic Policy Gradient |
EA | Evolutionary Algorithm |
EMS | Energy Management Systems |
ESS | Energy Storage System |
EV | Electric Vehicle |
FL | Fuzzy Logic |
ICE | Internal Combustion Engine |
ITS | Intelligent Transportation System |
ML | Machine Learning |
PB | Physics Based |
PHEV | Plug-in Hybrid Electric Vehicles |
PEM | Predictive Energy Management |
PSO | Particle Swarm Optimization |
PSD | Power Split Device |
SC | Smart Cities |
SG | Smart Grid |
SOC | State-of-Charge |
SI | Swarm Intelligence |
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Application | Objective | References |
---|---|---|
Predictive Analytics | Anticipating future energy demands Description: ML models analyze historical data to predict energy consumption patterns, helping EMS to manage energy resources proactively. | [50,51,52] |
Load Forecasting | Predicting future loads on the energy grid Description: ML algorithms analyze historical load data, weather patterns, and other relevant factors to forecast energy demand accurately. | [53,54] |
Demand Response | Modifying energy consumption based on demand signals Description: ML models enable real-time adjustments in energy consumption by predicting demand fluctuations and optimizing load profiles. | [55,56] |
Fault Detection and Diagnostics | Identifying and diagnosing faults in energy systems Description: ML algorithms analyze sensor data to detect anomalies or faults in equipment, facilitating preventive maintenance and reducing downtime. | [57,58,59,60] |
Energy Consumption Optimization | Optimizing energy consumption patterns for efficiency Description: ML algorithms learn from historical data and user behavior to optimize the operation of devices and systems, reducing overall energy consumption. | [61,62] |
Renewable Energy Forecasting | Predicting the output of renewable energy sources Description: ML models use weather data and historical renewable energy production to forecast the output of solar panels, wind turbines, etc., aiding in grid stability. | [61,63] |
Battery Management | Optimizing charging and discharging of batteries Description: ML algorithms analyze usage patterns and battery health data to optimize charging and discharging cycles, prolonging battery life and improving efficiency. | [64,65] |
Grid Optimization | Enhancing the efficiency and reliability of the energy grid Description: ML models optimize energy distribution, predict grid congestion, and manage grid resources to improve overall system performance. | [54,61,66] |
Dynamic Pricing | Adapting energy prices based on real-time demand Description: ML algorithms analyze demand patterns to set dynamic pricing, encouraging users to shift their energy consumption to non-peak hours, | [67,68,69] |
Building Energy Management | Optimizing energy use within buildings Description: ML models analyze occupancy patterns, weather data, and building characteristics to optimize heating, ventilation, and air conditioning (HVAC) systems and lighting for energy efficiency. | [66,68] |
Application | ML Techniques | Benefits | References |
---|---|---|---|
Optimized Power Distribution | DL, FE, RL, SVM | Enhanced Efficiency Improved performance Enhanced safety | [36,40,85,86,87] |
Predictive Energy Management | DL, PCA, RL, SVM | Enhanced fuel economy Improved performance Extended battery life Reduced emissions | [88] |
Battery State-of-Health Monitoring | AEC, DL, FE, PCA | Improved battery management Enhanced safety Predictive maintenance Optimized charging strategies | [89,90] |
Adaptive Control Strategies | AEC, DL, RL | Fuel Efficiency Breakthrough Performance Boost Battery Life Extension Eco-Friendly Edge | [91,92,93] |
Regenerative Braking Optimization | AEC, DL, RL | Fuel Efficiency Triumph Battery Life Extension Enhanced Safety Eco-Friendly | [85,94] |
Energy Harvesting from Environmental Data | DL, RL, TSA | Supercharged Efficiency Reduced Emissions Enhanced Performance Resilience to External Factors | [81,82,95] |
User Behavior Analysis | C, DL, RL, TSA | Enhanced Efficiency Personalized Driving Experience Environmental Consciousness Improved Infrastructure Utilization | [96,97] |
Real-Time Condition | ML-Based EMS Adaptation | Contribution to Performance and Efficiency |
---|---|---|
Battery State-of-Charge (SOC) |
|
|
Future Power Demand (Predicted) |
|
|
Regenerative Braking Opportunities |
|
|
Other Real-Time Conditions (Speed, Road Grade) |
|
|
Challenges | Description |
---|---|
Data acquisition and processing | Integrating diverse real-time data sources and efficiently processing them for accurate predictions remains challenging. |
Computational power | Implementing complex ML models in real-time requires robust onboard computing systems, which can add cost and complexity. |
Battery modeling | Accurately predicting battery behavior under varying conditions is crucial for optimal PEM performance and requires continuous research. |
Human-machine interaction | Integrating driver preferences and feedback into the PEM system can further personalize the driving experience and optimize energy usage. |
Model explainability and interpretability | Ensuring transparency in ML predictions is crucial for trust and acceptance in safety-critical applications like battery management. |
Limited training data | Obtaining diverse and high-quality battery data remains challenging for accurate ML model training [64]. |
Continuous model adaptation | Batteries degrade over time, and operating conditions vary, requiring constant model updates and retraining for reliable predictions. |
Integrating ML with existing BMS | Efficient and seamless integration of ML algorithms with existing Battery Management System (BMS) hardware and software infrastructure is necessary for practical implementation. |
Sensor Accuracy and Reliability | Precise braking control relies on accurate sensor data, requiring continuous sensor technology and calibration improvement. |
Driver Behavior Adaptation | Integrating driver preferences and adapting braking behavior accordingly can further personalize the driving experience and optimize energy recovery. |
Predictive Traffic Flow Integration | Anticipating upcoming traffic lights and congestion can further optimize braking strategies and energy recuperation. |
Supercharged Efficiency | Harvesting even modest amounts of environmental energy can significantly improve overall fuel economy and extend EV range. |
Reduced Emissions | Decreased reliance on the engine translates to lower emissions, promoting a cleaner environment. |
Enhanced Performance | Access to additional power sources can boost acceleration and responsiveness, making HEVs even more competitive with conventional vehicles. |
Resilience to External Factors | By diversifying energy sources, HEVs become less dependent on fuel availability and infrastructure, increasing their adaptability. |
Privacy Concerns | Balancing personalization with user privacy requires careful data anonymization and ethical considerations. |
Acceptance and User Education | Encouraging drivers to trust and actively participate in the system requires open communication and education. |
Continuous Learning and Adaptation | ML models must constantly learn and evolve to adapt to changing driving habits and preferences. |
Integration with Third-Party Services | Connecting the EMS with smart grids, weather data, and traffic information can enhance predictive capabilities and personalization. |
Technique | Impact | Practical Implications |
---|---|---|
Deep Learning for Enhanced Prediction | Deep learning algorithms like convolutional neural networks (CNNs) can analyze vast amounts of driving data, including traffic patterns, weather conditions, and driver behavior. This enables highly accurate predictions of future energy demands, allowing the EMS to optimize power distribution for maximum efficiency and performance. | Future PHEVs will leverage deep learning for proactive energy management. The EMS can anticipate upcoming hills and adjust power distribution accordingly, maximizing electric propulsion and minimizing fuel consumption. Additionally, driver behavior can be factored in, tailoring power delivery based on individual driving styles [108]. |
Reinforcement Learning for Adaptive Control | Reinforcement learning (RL) allows the EMS to learn optimal control strategies through trial and error in a simulated environment. This enables continuous adaptation to diverse driving conditions and driver behavior, optimizing power distribution in real-time for maximum efficiency. | Future PHEVs will benefit from RL algorithms that dynamically adjust powertrain operation. The EMS can learn from each driving experience, continuously refining its strategies to achieve optimal fuel economy and performance in various scenarios. Additionally, RL can personalize the driving experience by adapting to individual preferences for power delivery [109,110]. |
Improved Battery Modeling for Longevity and Efficiency | ML is facilitating the development of more accurate battery models that consider factors like temperature, aging, and charging/discharging patterns. This enables the EMS to optimize charging cycles and power distribution, maximizing battery life and overall system efficiency. | Future PHEVs will have more intelligent battery management systems thanks to improved ML models. The EMS can predict battery health and remaining useful life, allowing for preventive maintenance and extending battery lifespan. Additionally, charging strategies can be adjusted to minimize stress on the battery, further enhancing its longevity [111]. |
Optimization Technique | References | Application | Findings |
---|---|---|---|
Evolutionary algorithm | [114,115,116,117,118,119] | Battery State-of-Health Monitoring | Frequent sbtartup, shutdown, and rapid load changes that can diminish fuel cell lifespan using GA |
[120,121] | Battery State-of-Health Monitoring considering hierarchical strategy | Frequent startup, shutdown, and rapid load changes that can diminish fuel cell lifespan using GA | |
[4,122,123,124] | Real-time maximization of energy utilization | Optimum storage energy using GA | |
[125] | Intelligent energy management strategy of hybrid energy storage system for electric vehicle | Pattern recognition used for EM using GA | |
[126,127] | Design strategy for a plug-in HEV with HESS | Model prediction and rule-based energy management using GA | |
[7,8,10,128,129] | Optimized Power Distribution | Enhancement in GA combining other algorithms such as Biogeography-Based Optimizer, Clonal Flower Pollination [8,128], Fuzzy Harmony Search [129], Mutated Differential Evolution [10], and Imperialist Competitive Algorithm [7]. | |
Swarm Intelligence | [130] | Regenerative Braking Optimization | Optimal EM strategy incorporating PSO and fuzzy logic |
[126,131,132,133,134,135,136,137] | Battery State-of-Health Monitoring | Approach to efficiently distribute engine and motor power, enhance engine efficiency, and mitigate battery damage using PSO | |
Physics based | [138] | Battery State-of-Health Monitoring | Minimize the average operating cost, encompassing manufacturing cost and system end-of-life timing using simulated annealing |
[139,140] | Real-time maximization of energy utilization | Novel approach for velocity planning and EM of intelligent PHEVs using Whale Optimization Algorithm | |
[141] | Control parameters in a plug-in Hybrid Electric Vehicle | Substantial fuel economy improvements using modified PSO | |
[142] | Maximization of energy utilization | Cooperative optimal power split method for a cluster of intelligent electric vehicles equipped with battery/ supercapacitor hybrid using modified PSO | |
[143,144] | Design strategy for range extended EV | An approach for EM control parameters using modified PSO | |
Fuzzy logic | [115,145,146,147,148,149,150,151] | Optimized Power Distribution | An approach for enhancing overall vehicle performance using fuzzy logic combined neural network |
Technique | Description | Limitation | Computational Efficiency | Scalability | Solution Quality | Real-Time Suitability |
---|---|---|---|---|---|---|
Rule-based Control | Pre-defined rules govern power distribution based on factors like battery SOC, speed, and driver demand. | Can be inflexible and may not adapt well to unforeseen conditions. May not achieve optimal efficiency or performance. | High | High | Moderate | High |
Dynamic Programming | Breaks down the optimization problem into smaller sub-problems, finding the optimal solution for each stage. | Computationally expensive for real-time applications, especially with long prediction horizons. | Low | Low | High | Low |
Equivalent Consumption Minimization (ECMS) | A rule-based approach that approximates optimal control by minimizing a weighted sum of fuel consumption and equivalent electric energy consumption. | Requires careful tuning of weighting factors to achieve desired results. | Moderate | Moderate | High | Moderate |
Model Predictive Control (MPC) | Uses a model of the PHEV to predict future behavior and optimizes power distribution over a finite time horizon | Computational cost depends on model complexity and prediction horizon. | Low (online) | Moderate | High | Moderate |
Reinforcement Learning (RL) | Learns optimal control strategies through trial and error in a simulated environment or real-time experience. | Requires training time and can be computationally expensive. | Moderate | High | High (learning- based) | Moderate (learning required) |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Recalde, A.; Cajo, R.; Velasquez, W.; Alvarez-Alvarado, M.S. Machine Learning and Optimization in Energy Management Systems for Plug-In Hybrid Electric Vehicles: A Comprehensive Review. Energies 2024, 17, 3059. https://doi.org/10.3390/en17133059
Recalde A, Cajo R, Velasquez W, Alvarez-Alvarado MS. Machine Learning and Optimization in Energy Management Systems for Plug-In Hybrid Electric Vehicles: A Comprehensive Review. Energies. 2024; 17(13):3059. https://doi.org/10.3390/en17133059
Chicago/Turabian StyleRecalde, Angel, Ricardo Cajo, Washington Velasquez, and Manuel S. Alvarez-Alvarado. 2024. "Machine Learning and Optimization in Energy Management Systems for Plug-In Hybrid Electric Vehicles: A Comprehensive Review" Energies 17, no. 13: 3059. https://doi.org/10.3390/en17133059
APA StyleRecalde, A., Cajo, R., Velasquez, W., & Alvarez-Alvarado, M. S. (2024). Machine Learning and Optimization in Energy Management Systems for Plug-In Hybrid Electric Vehicles: A Comprehensive Review. Energies, 17(13), 3059. https://doi.org/10.3390/en17133059