Abstract
Hybrid hydraulic technology has the advantages of high-power density and low price and shows good adaptability in construction machinery. A complex hybrid powertrain architecture requires optimization and management of power demand distribution and an accurate response to desired power distribution of the power source subsystems in order to achieve target performances in terms of fuel consumption, drivability, component lifetime, and exhaust emissions. For hybrid hydraulic vehicles (HHVs) that are used in construction machinery, the challenge is to design an appropriate control scheme to actually achieve fuel economy improvement taking into consideration the relatively low energy density of the hydraulic accumulator and frequent load changes, the randomness of the driving conditions, and the uncertainty of the engine dynamics. To improve fuel economy and adaptability of various driving conditions to online energy management and to enhance the response performance of an engine to a desired torque, a hierarchical model predictive control (MPC) scheme is presented in this paper using the example of a spray-painting construction vehicle. The upper layer is a stochastic MPC (SMPC) based energy management control strategy (EMS) and the lower layer is an MPC-based tracking controller with disturbance estimator of the diesel engine. In the SMPC-EMS of the upper-layer management, a Markov model is built using driving condition data of the actual construction vehicle to predict future torque demands over a finite receding horizon to deal with the randomness of the driving conditions. A multistage stochastic optimization problem is formulated, and a scenario-based enumeration approach is used to solve the stochastic optimization problem for online implementation. In the lower-layer tracking controller, a disturbance estimator is designed to handle the uncertainty of the engine, and the MPC is introduced to ensure the tracking performance of the output torque of the engine for the distributed torque from the upper-layer SMPC-EMS, and therefore really achieve high efficiency of the diesel engine. The proposed strategy is evaluated using both simulation MATLAB/Simulink and the experimental test platform through a comparison with several existing strategies in two real driving conditions. The results demonstrate that the proposed strategy (SMPC+MPC) improves miles per gallon an average by 7.3% and 5.9% as compared with the control strategy (RB+PID) consisting of a rule-based (RB) management strategy and proportional-integral-derivative (PID) controller of the engine in simulation and experiment, respectively.
Highlights
The development of clear and efficient city transportation is of significant importance to the solutions for energy shortages and environmental issues
In order to evaluate the performance of the proposed hierarchical model predictive control (MPC), a high-fidelity simulation model of hybrid hydraulic vehicles (HHVs) is built in Matlab/Simulink
A hierarchical model predictive control was developed for torque-coupled HHVs in order to further improve fuel economy in the presence of the relatively low energy density of the hydraulic accumulator and frequent load changes, the randomness of the driving conditions, and the uncertainty of the engine dynamics
Summary
The development of clear and efficient city transportation is of significant importance to the solutions for energy shortages and environmental issues. In a vehicle with a hybrid powertrain that involves an engine, the upper-layer EMS controls the power allocation between the engine and the additional power source which is undoubtedly crucial to reduce fuel consumption and exhaust emission; the lower-layer closed-loop control of the driving power source itself, especially the engine, is even more important to realize the effect of the EMS To this end, several researchers have focused on the lower-layer control design of an engine and pump/motor to achieve the power split for HHVs. For example, in [22], the engine on/off control strategy based on compensation of the used accumulator power is investigated and the effect of control parameters on the performance and efficiency of the hybrid power train is analyzed for improvement of fuel economy.
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