The Architecture Optimization and Energy Management Technology of Aircraft Power Systems: A Review and Future Trends
Abstract
:1. Introduction
- (1)
- Architecture evaluation and optimization of the aircraft power systems;
- (2)
- Energy power source analysis for power systems with different sizes of aircraft;
- (3)
- Power load characteristic and requirements analysis for aircraft power system;
- (4)
- Energy management strategies and control architecture for aircraft power systems;
- (5)
- Electrical thermal coupling and integrated control methods for aircraft power system;
- (6)
- The energy or power interaction analysis and control between the electric aircraft power system and airport microgrid can improve the performance of both systems;
2. The Review of Power Architecture Research of Aircraft Power Systems
2.1. The Selection of the Architecture of Aircraft Power Systems
2.2. The Optimization and Evaluation of Architecture for Aircraft Power Systems
- Power Bus and Load Priority Constraints: Two kinds of priority constraints in the traditional AEPS can be regarded: the electric load priority constrants in the matter of critical and noncritical electric loads, and bus priority constraints in the matter of preset priority lists or the connections between each generator and primary power buses, and between each primary bus and secondary distributed power buses. The priority constraints are realized by adding a sequence of penalty factors in an objective function for different power buses and loads—the higher the priority, the larger the penalty factors [64].
- Generator and Bus Power Capacity Constraints: The power generated by each generator must be held within its limits of power rating change and capacity, while the power transferred through each bus should not exceed the upper bound. In some situations, this constraint is formed as the combined optimization problem [65].
- Power Balance Constraints With Consideration of Power Efficiency: The required power to the main power buses may only be supplied by one main generator. Similar to the secondary bus power allocation, a redundant or emergency bus should be considered in case of a failure of the first allocated generator. In addition, the power balance equation is normally a quadratic function; this can reduce the convexity of the objective function [66].
- Bus Connection Constraints: At each time instant, the main bus should only be connected to one generator. According to the optimization model of the aircraft power system, the objective function, decision variables, and constraints have been presented based on the above consideration. The distributed solid-state power distribution system can control the load by connecting or disconnecting the secondary bus by a discrete switching signal. The optimization objective function is a nonlinear function and is non-differential in parameter space [67].
- Linear programming (LP). The optimization objective function is a linear function for decision variation, while the constraints for variables are linear. Basically, this optimization model is a convex optimization. The simplex methods and interior points methods can solve this problem. For AEPS’s simple architecture or small-size dc power system, the optimization of energy efficiency can be realized as the LP problem [12,45].
- Quadratic Programming (QP): Allows the objective function to have quadratic terms, while set A must be specified with linear equalities and inequalities. Although some optimization models are not convex optimization, the relaxation and approximation of non-convex optimization can achieve the optimal solution accurately. For the AC power system of large-sized aircraft, the power scheduling optimization can be regarded as the QP problem [30,64].
- Nonlinear programming: Applies to the general case in which the objective function, or the constraints, or both, contain nonlinear parts. Regarding aircraft multi-energy power systems including electric power systems, hydraulic systems, and thermal management systems, the energy optimization problem is a nonlinear programming problem [27,37].
- Combinatorial optimization: Concerns problems where the set of feasible solutions is discrete or can be reduced to a discrete one. For example, some power loads with a different priority can be connected to a secondary power bus with limited power capacity, the optimal configuration of the electric load must be found with the different flight stages. In this situation, the aircraft power system optimization problem is a mixed integer linear programming problem (MILP) [31,48], which can be solved by some mature solver such as Gurobi, CPLEX, GAMS, and the special power system planning software.
- Evolutionary algorithm: Involves numerical methods based on a random search. Other heuristic-based methods such as particle swarm optimization (PSO), fuzzy logic-optimization, simulated annealing methods (SA), and the genetic algorithm (GA) can be used to find the optimal value space in aircraft power system architecture design [68]. While the optimization function of aircraft power systems is nonlinear and non-convex, heuristic methods can be applied to solve this problem. The solution to this optimization maybe not a global optimal solution, but a sub-optimal solution. The static optimization of the architecture of the power system is not enough, while the system’s configuration is optimal in terms of the size of the overall system. Therefore, the dynamic optimization of energy management for aircraft power systems is introduced in part 5.
3. The Energy Power Source Onboard the Aircraft (Uncertainty Analysis)
- Small aviation aircraft and UAV
- 2.
- Regional aircraft refers to short-haul aircraft flights
- 3.
- Narrowbody and widebody or two-aisle aircraft
4. The Power Characteristic of Load in Aircraft (Load Stochastic Analysis)
- Continuous-steady (e.g., avionics equipment)
- Occasional-steady (e.g., landing gear retract and the braking system engages)
- Impulsive (e.g., radar, electronic warfare, DEW)
- Continuous-variable (e.g., flight controls, fuel pump)
- CPL
- 2.
- PPL
- 3.
- Electro-thermal load
5. Energy and Power Management System and Strategies for AEA/MEA and EPA Power Systems
5.1. Energy Management Optimization and Power Control Question Formation
5.2. Energy and Power Management System Structure and Architecture
5.3. The Strategies of Energy and Power Management
6. The Electrical–Thermal Coupling Control and Energy Management of AEPS
7. The Developing Trends for EMS of EPA in the Future
8. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
Th ADP | Adaptive Dynamic Programming |
ADMM | Alternating Direction Method of Multipliers |
AEA | All-Electric Aircraft |
AEPS | Aircraft Electrical Power System |
AI | Artificial Intelligence |
APU | Auxiliary Power Unit |
ATRU | Auto Transformer Rectifier Unit |
BPCU | Bus Power Control Unit |
CPL | Constant Power Load |
CFAC | Constant Frequency Alternating Current |
DAB | Dual Active Bridge |
DEW | Direct Energy Weapon |
DDPG | Deep Deterministic Policy Gradient |
DP | Dynamic Programming |
DRL | Deep Reinforcement Learning |
ECS | Environmental Control System |
EPA | Electrical Propulsion Aircraft |
EPS | Electrical Power System |
EPU | Emergency Power Unit |
EMA | Electrical Mechanical Actuator |
EMS | Energy Management System |
EMT | Electricity, machinery and heat |
FC | Fuel Cell |
GA | Genetic Algorithm |
HEP | Hybrid Electric Propulsion Aircraft |
HEV | Hybrid Electric Vehicle |
HPS | High Pressure Spool |
HSPMSM | High Speed Permanent Magnet Synchronous Machine |
HSSPFC | Hamiltonian Surface Shaping Power Flow Control |
HVAC | High Voltage Alternating Current |
HVDC | High Voltage Direct Current |
LPS | Low Pressure Spool |
MB | Mission Bus |
MCMC | Markov Chain–Monte Carlo |
MDP | Markov Decision Process |
MILP | Mixed Integer Linear Programming |
MIQP | Mixed Integer Quadratic Programming |
MPC | Model Predictive Control |
PE | Power Electronics |
PHM | Prognostics and Health Management |
PMP | Pontryagin’s Minimum Principle |
PMSG | Permanent Magnetic Synchronous Generator |
PSD | Power Spectrum Density |
PSO | Particle Swarm Optimization |
PTMS | Power and Thermal Management System |
PV | Photo Voltaic |
PWM | Pulse Width Modulation |
QP | Quadratic Programming |
RL | Reinforcement Learning |
RSS | Root Square Summation |
SCDS | Stability Constraining Dichotomy Solution |
SDP | Stochastic Dynamic Programming |
SHEV | Series Hybrid Electric Vehicle |
SRMG | Switched Reluctance Magnetic Generator |
TMS | Thermal Management System |
TD | Time Difference |
NN | Neural Network |
UAM | Urban Air Mobility |
UAV | Unmanned Air Vehicle |
VF | Variable Frequency |
VSI | Voltage Source Inverter |
VTOL | Vertical Takeoff and Landing |
WIPS | Wing Ice Protector System |
ZIP | Constant Impedance (Z), Constant Current (I), and Constant Power Loads (P) |
Glossary | |
the objective function | |
the inequality constraints | |
the equality constraints. | |
a solution of this problem, which is a vector of n decision variable(s) or design parameters | |
a lower bound | |
upper bound | |
power generator | |
the coefficients for the efficiency of power generator from the polynomialfitting | |
the efficiency function of power generators | |
the is the set of power generators in EPS | |
the is the set of power converters in EPS. | |
the efficiency function of power converters for aircraft power system | |
, , , and | resistive storage elements |
, , and | capacitive storage components |
and | two HVDC generators which are considered located on the high pressure spool (HPS) and the low pressure spool (HPS) of a gas turbine respectively |
, , and | duty ratio control inputs |
and | inductive energy storage elements |
(x, u) | the minimizing object function for aircraft electric-thermal system |
and | the equality constraints |
, , , | the current for the MB and HP bus, FC bus |
the electrical current draw from the cooling system. | |
, and | the voltage for the MB and HP bus, FC bus. |
the air density | |
area of airfoil | |
climb angle | |
roll (bank) angle | |
velocity | |
velocity vector | |
the steady state thrust power | |
dynamic thrust power | |
aircraft acceleration vector | |
zero-lift drag coefficients | |
the transition probability | |
aircraft mass | |
acceleration of gravity | |
state variable of aircraft power system | |
input control variable | |
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Energy and Power Architectural Form | Performance Index of Optimization Function |
---|---|
All types of electric power system architecture | The highest overall efficiency of the power system |
Strong robustness, reliability, and fault tolerance | |
Minimal emissions of pollutants such as carbon dioxide | |
Lithium battery, fuel cell hybrid electric propulsion architecture | The longest service life of lithium batteries and fuel cells |
Fuel cell, oil gas, battery hybrid-electric propulsion architecture | Minimization of fuel or hydrogen consumption |
Solar and fuel cell electric propulsion architecture | Longest flight range and flight time |
Energy and Power Management Strategies | Aircraft Platform | Control and Optimization Objective | Features | Reference Paper |
---|---|---|---|---|
Rule-based | UAV, Aircraft APU system; More electric engine | Fuel or hydrogen consumption minimization | State machine; Power distribution based on expert experience | [50,51,71,89,90,91] |
Fuzzy logic | UAV, Aircraft APU system, Aircraft HVDC | Hydrogen consumption minimization, voltage stability | FLC to specific flight profile or APU load demand | [53,71,89,92] |
Hybrid electrical propulsion UAV | Fuel Consumption minimization | Equivalent consumption minimization strategy plus FLC | [93] | |
Fuel cell UAV | Hydrogen consumption minimization, voltage stability | PSO+FLC | [81,87] | |
Meta-heuristic | Aircraft emergency power system | Less hydrogen consumed; Optimal life time of electrical sources; | Artificial bee colony algorithm; Grey wolf optimization algorithm | [94] |
MPC-based | Hybrid-electrical propulsion aircraft | System efficiency Fuel-consumption Voltage stability | Conventional MPC | [66,95] |
Aircraft APU system | System efficiency | Traditional MPC | [89] | |
Aircraft distributed power system | Minimum switching of generator and power load shedding; power quality, minimization of THD | Stochastic MPC; INA-SQP MPC | [47,96] | |
Aircraft energy storage system | Reduce the DC bus voltage transient; Minimization of current draw from the storage system | SQP solver | [78] | |
MEA power system with PV | Stability of system; Steady and transient state Current control | FCS MPC + stability constraining dichotomy solution | [97] | |
MEA Electrical power system and Fuel thermal management system | Fuel consumption minimization; Increased capability of thermal management | Hierarchy MPC control with thermal coupling | [98,99] | |
Engines and electrical generation system in MEA | Fuel efficiency and emissions | Distributed MPC with ADMM algorithm | [86] | |
DP | Small-size aircraft, UAV | Fuel consumption minimization | Lookup-table | [65] |
Parallel hybrid-electric aircraft | Total mission fuel burn minimization over the flight envelope | Offline optimization | [100] | |
MEA power distribution system | Power loss minimization Amount of switching is minimized | Optimal reliability configuration | [48] | |
Adaptive energy management (ADP or RL) | more electrical aircraft with pulse load | Lowest possible rate of change of the main source of power or offers a fixed minimum rate of change in power | Integrated variable rate-limit of power | [101] |
Electrical power system in MEA | Optimization problem for power scheduling and allocation; minimize the fluctuation in power generation system; bus voltage regulation | Optimal adaptive control with MIQP, off-policy integral reinforcement learning | [82] | |
Electrical emergency power system in MEA | Fuel consumption and overall efficiency optimization under the false data injection attack and denial of service attack from the critical measurements | Adaptive neuro-fuzzy inference system and specific fuzzy deep belief network | [102] | |
Fuel cell electric UAV | Hydrogen consumption and battery lifetime | ADP and RL | [103] | |
Power decoupling methods based on filter frequency | Aircraft Fuel cell and battery hybrid emergency power system | Voltage stability; Minimization of power loss; Extend the lifetime of power source; | Slow power response for fuel cell; Fast power response for battery | [11] |
Optimal control and PMP | All electrical Propulsion Aircraft | Combination of time-related and battery charge costs | Pontryagin’s Minimum Principle | [83] |
Hybrid electrical aircraft | Minimization of fuel consumption with thermal management for the battery pack | Pontryagin’s Minimum Principle | [104] | |
Combinatorial optimization | MEA aircraft ECS system | Electrical consumption minimization | MILP | [46] |
MEA Power distribution | Three-phase load balanced; Increase the lifetime of power converter | Nonlinear optimization; Convex optimization | [51,105] | |
UAV | Flight mission planning and recharging optimization | SDP and QP | [106] | |
UAV | Minimize the fuel consumption (FC) and polluted gas emission | Bender decomposition-based method; (MIQP) | [107] | |
MEA power generation and distribution system | Optimal power allocation; Optimal generator sizing | MILP | [108] | |
MEA low voltage distribution system | Load allocation on the EPS | Knapsack problem | [67] | |
Droop control methods | Aircraft HVDC system | DC bus stability | Active stabilization methods, load sharing | [70,109,110] |
Aircraft APU | Dynamic response for power allocation optimization | Virtual impedance Droop control | [72] |
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Lei, T.; Min, Z.; Gao, Q.; Song, L.; Zhang, X.; Zhang, X. The Architecture Optimization and Energy Management Technology of Aircraft Power Systems: A Review and Future Trends. Energies 2022, 15, 4109. https://doi.org/10.3390/en15114109
Lei T, Min Z, Gao Q, Song L, Zhang X, Zhang X. The Architecture Optimization and Energy Management Technology of Aircraft Power Systems: A Review and Future Trends. Energies. 2022; 15(11):4109. https://doi.org/10.3390/en15114109
Chicago/Turabian StyleLei, Tao, Zhihao Min, Qinxiang Gao, Lina Song, Xingyu Zhang, and Xiaobin Zhang. 2022. "The Architecture Optimization and Energy Management Technology of Aircraft Power Systems: A Review and Future Trends" Energies 15, no. 11: 4109. https://doi.org/10.3390/en15114109
APA StyleLei, T., Min, Z., Gao, Q., Song, L., Zhang, X., & Zhang, X. (2022). The Architecture Optimization and Energy Management Technology of Aircraft Power Systems: A Review and Future Trends. Energies, 15(11), 4109. https://doi.org/10.3390/en15114109