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Predictive air-conditioner control for electric buses with passenger amount variation forecast

机译:带有乘客量变化预测的电动客车空调预测控制

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Air-conditioners (AC) usually consume the most electricity among all of the auxiliary components in an electric bus, over 30% of the battery power at maximum. On-board passengers carried by the electric bus are important but random heat sources, which are obsessional disturbances for the cabin temperature control and energy management of the AC system. This paper aims to improve the AC energy efficiency via passenger amount variation analysis and forecast in a model predictive control (MPC) framework. Three forecasting approaches are proposed to realize the passenger amount variation prediction in real-time, namely, stochastic prediction based on Monte Carlo, radial basis function neural network (RBF-NN) prediction, and Markov-chain prediction. A sample passenger number database along a typical bus line in Beijing is built for passenger variation pattern analysis and forecast. A comparative study of the above three prediction approaches with different prediction lengths (bus stops in this case) is conducted, from both the energy consumption and temperature control perspectives. A predictive AC controller is developed, and evaluated by comparing with Dynamic Programming (DP) and a commonly used rule-based control strategy. Simulation results show that all the three forecasting methods integrated within the MPC framework are able to achieve more stable temperature performance. The energy consumptions of MPC with Markov-chain prediction, RBF-NN forecast and Monte Carlo prediction are 6.01%, 5.88% and 5.81% lower than rule-based control, respectively, on the Beijing bus route studied in this paper.
机译:在电动公交车的所有辅助组件中,空调(AC)通常消耗最多的电量,最多消耗电池电量的30%以上。由电动巴士载运的机上乘客是重要但随机的热源,对于空调系统的机舱温度控制和能量管理而言,这是令人困扰的干扰。本文旨在通过模型预测控制(MPC)框架中的乘客数量变化分析和预测来提高交流能效。提出了三种预测方法来实现实时的乘客量变化预测,即基于蒙特卡洛的随机预测,径向基函数神经网络(RBF-NN)预测和马尔可夫链预测。建立了北京典型公交线路上的样本乘客数量数据库,用于乘客变化模式的分析和预测。从能耗和温度控制的角度对上述三种具有不同预测长度(在这种情况下为公交车站)的预测方法进行了比较研究。通过与动态编程(DP)和常用的基于规则的控制策略进行比较,开发了预测性AC控制器并进行了评估。仿真结果表明,MPC框架中集成的所有三种预测方法均能够实现更稳定的温度性能。在本文研究的北京公交线路上,采用马尔可夫链预测,RBF-NN预测和蒙特卡洛预测的MPC的能耗分别比基于规则的控制要低6.01%,5.88%和5.81%。

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