2020
DOI: 10.1016/j.ijhydene.2020.01.017
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Optimization based energy management strategy for fuel cell/battery/ultracapacitor hybrid vehicle considering fuel economy and fuel cell lifespan

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Cited by 89 publications
(19 citation statements)
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“…Optimization-based strategies (OBS) generally calculate (near) optimal results by using a strategy that minimizes the sum of objective functions over time (global optimization) or by instantly minimizing an objective function (local optimization). However, they can hardly be applied in real-time for the high dependency on driving cycles or online computational complexity [10]- [13]. To find a better trade-off technique to compromise optimization and computation load, a feasible solution is presented in this paper.…”
Section: A Literature Reviewmentioning
confidence: 99%
“…Optimization-based strategies (OBS) generally calculate (near) optimal results by using a strategy that minimizes the sum of objective functions over time (global optimization) or by instantly minimizing an objective function (local optimization). However, they can hardly be applied in real-time for the high dependency on driving cycles or online computational complexity [10]- [13]. To find a better trade-off technique to compromise optimization and computation load, a feasible solution is presented in this paper.…”
Section: A Literature Reviewmentioning
confidence: 99%
“…Classification Control Algorithm [7,10] Rule-based Operating mode control [8,9] Thermostat control [11] State machine control [10,[12][13][14] Fuzzy control [16] Optimization-based Particle swarm optimization [17,18] ECMS [19,20] DP [21] PMP…”
Section: Refmentioning
confidence: 99%
“…The rule-based strategies have strong practicability and high reliability [7][8][9][10][11][12][13][14][15]. However, most of them are based on the engineering experience, and the results are dependent on the design of the rules.…”
Section: Introductionmentioning
confidence: 99%
“…Such challenging optimization problems are those specific to the optimal (parameter) tuning of fuzzy (logic) controllers, where both the process and the controller are nonlinear and deterministic algorithms are not successful. The following metaheuristic algorithms have been applied most recently to the optimal tuning of fuzzy controllers in representative examples: adaptive weight Genetic Algorithm (GA) for gear shifting control [3], GA-based multiobjective optimization for electric vehicle powertrain control [4], GA for hybrid power systems control [5], engines control [6], energy management in hybrid vehicles [7], servo system control [2], wellhead back pressure control systems [8], micro-unmanned helicopter control [9], Particle Swarm Optimization (PSO) algorithm with compensating coefficient of inertia weight factor for filter time constant adaptation in hybrid energy storage systems control [10], set-based PSO algorithm with adaptive weights for optimal path planning of unmanned aerial vehicles [11], PSO algorithm for zinc production [12] and inverted pendulum control [13], hybrid PSO-Artificial Bee Colony algorithm for frequency regulation in microgrids [14], Imperialist Competitive Algorithm for human immunodeficiency control [15], Grey Wolf Optimizer (GWO) algorithms for sun-tracker systems [16] and servo system control [2], PSO, Cuckoo Search and Differential Evolution (DE) for gantry crane systems position control [17], Whale Optimization Algorithm (WOA) for vibration control of steel structures [18], Grasshopper Optimization Algorithm for load frequency control [19], DE for electro-hydraulic servo system control [20], Gravitational Search Algorithm (GSA) and Charged System Search (CSS) for servo system control [2].…”
Section: Introductionmentioning
confidence: 99%