2016
DOI: 10.3390/en9010025
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A Fuzzy-Logic Power Management Strategy Based on Markov Random Prediction for Hybrid Energy Storage Systems

Abstract: Abstract:Over the last few years; issues regarding the use of hybrid energy storage systems (HESSs) in hybrid electric vehicles have been highlighted by the industry and in academic fields. This paper proposes a fuzzy-logic power management strategy based on Markov random prediction for an active parallel battery-UC HESS. The proposed power management strategy; the inputs for which are the vehicle speed; the current electric power demand and the predicted electric power demand; is used to distribute the electr… Show more

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Cited by 56 publications
(37 citation statements)
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“…In the test progress, the fuel and electricity consumption are obtained by the integral at different moments and converted into the consumption of 100 km. In addition, the electricity consumption is converted into fuel consumption by Equation (6), and the sum of fuel and electricity is as the comprehensive energy consumption. The result is shown in Table 11; the proposed control strategy could improve the energy consumption by 4.94% compared with the original rule-based control strategy, and its validity and practicability are verified.…”
Section: Hardware-in-the-loop Testmentioning
confidence: 99%
See 1 more Smart Citation
“…In the test progress, the fuel and electricity consumption are obtained by the integral at different moments and converted into the consumption of 100 km. In addition, the electricity consumption is converted into fuel consumption by Equation (6), and the sum of fuel and electricity is as the comprehensive energy consumption. The result is shown in Table 11; the proposed control strategy could improve the energy consumption by 4.94% compared with the original rule-based control strategy, and its validity and practicability are verified.…”
Section: Hardware-in-the-loop Testmentioning
confidence: 99%
“…In [5], the rule-based strategy was used to allocate the output between the hybrid energy storage system (HESS) and the assistance power unit (APU), and the MPC was introduced to regulate the output between the battery and the ultracapacitor. Reference [6] predicted the electric power demand by the state transition probability matrices of the electrical power with different speeds, and the result was that the overall loss incurred by the whole HESS is reduced. Although the above control strategies have obtained some certain positive results, they rely on the standard driving cycles too much, resulting in a certain deviation with actual driving scenes.…”
Section: Introductionmentioning
confidence: 99%
“…To eliminate the feedthrough, the linearized plant in Equation (13) is augmented by adding first-order filters with time constant T a to inputs, as shown in Equation (15). T a is chosen as one-tenth or smaller of the AMPC sampling time [37,38].…”
Section: Eliminating Direct Feedthroughmentioning
confidence: 99%
“…Thus electricity or fuel prices can be predicted in order to best manage the HESS [21]. A Fuzzy HESS power management strategy based on Markov random prediction was introduced in [22]. Thus, the management of HESS takes into account the forecasts of future load and can execute a division of powers more successfully.…”
Section: Introductionmentioning
confidence: 99%