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A MODEL PREDICTIVE CONTROL-BASED ENERGY MANAGEMENT STRATEGY CONSIDERING ELECTRIC VEHICLE BATTERY THERMAL AND CABIN CLIMATE CONTROL

机译:基于模型预测控制的能量管理策略考虑电动车辆电池热和舱室气候控制

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The energy management strategy plays a critical role in scheduling the operations and enhancing the overall efficiency for electric vehicles. This paper proposes an effective model predictive control-based (MPC) energy management strategy to simultaneously control the battery thermal management system (BTMS) and the cabin air conditioning (AC) system for electric vehicles (EVs). We aim to improve the overall energy efficiency, wfiile retaining soft constraints from both BTMS and AC systems. It is implemented by optimizing the operation and discharging schedule to avoid peak load and by directly utilizing the regenerative power instead of recharging. Compared to the systematic performance without any control coordination between BTMS and AC, results reveal that there are a 4-3% reduction for the recharging energy, and a 6.5% improvement for the overall energy consumption that gained from the MPC-based energy management strategy. Overall the MPC-based energy management is a promising solution to enhance the efficiency for electric vehicles.
机译:能源管理战略在安排运营方面发挥着关键作用,并提高电动汽车的整体效率。本文提出了一种基于模型预测控制的(MPC)能源管理策略,以同时控制电池热管理系统(BTMS)和用于电动车辆的机舱空调(AC)系统(EVS)。我们的目标是提高BTMS和AC系统的整体能源效率,WFiile保留软限制。它通过优化操作和放电时间表来实现,以避免峰值负载,并且通过直接利用再生功率而不是再充电。与BTMS和AC之间没有任何控制协调的系统性能相比,结果表明,对充电能量有4-3%,对基于MPC的能源管理策略获得的整体能耗的提高6.5% 。总的来说,基于MPC的能量管理是提高电动汽车效率的有希望的解决方案。

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